1# Theory and Background 2 3HONEE solves the time-dependent Navier-Stokes equations of compressible gas dynamics in a static Eulerian three-dimensional frame using unstructured high-order finite/spectral element spatial discretizations and explicit or implicit high-order time-stepping (available in PETSc). 4Moreover, the Navier-Stokes example has been developed using PETSc, so that the pointwise physics (defined at quadrature points) is separated from the parallelization and meshing concerns. 5 6## The Navier-Stokes equations 7 8The mathematical formulation (from {cite}`shakib1991femcfd`) is given in what follows. 9The compressible Navier-Stokes equations in conservative form are 10 11$$ 12\begin{aligned} 13\frac{\partial \rho}{\partial t} + \nabla \cdot \bm{U} &= 0 \\ 14\frac{\partial \bm{U}}{\partial t} + \nabla \cdot \left( \frac{\bm{U} \otimes \bm{U}}{\rho} + P \bm{I}_3 -\bm\sigma \right) - \rho \bm{b} &= 0 \\ 15\frac{\partial E}{\partial t} + \nabla \cdot \left( \frac{(E + P)\bm{U}}{\rho} -\bm{u} \cdot \bm{\sigma} - k \nabla T \right) - \rho \bm{b} \cdot \bm{u} &= 0 \, , \\ 16\end{aligned} 17$$ (eq-ns) 18 19where $\bm{\sigma} = \mu(\nabla \bm{u} + (\nabla \bm{u})^T + \lambda (\nabla \cdot \bm{u})\bm{I}_3)$ is the Cauchy (symmetric) stress tensor, with $\mu$ the dynamic viscosity coefficient, and $\lambda = - 2/3$ the Stokes hypothesis constant. 20In equations {eq}`eq-ns`, $\rho$ represents the volume mass density, $U$ the momentum density (defined as $\bm{U}=\rho \bm{u}$, where $\bm{u}$ is the vector velocity field), $E$ the total energy density (defined as $E = \rho e$, where $e$ is the total energy including thermal and kinetic but not potential energy), $\bm{I}_3$ represents the $3 \times 3$ identity matrix, $\bm{b}$ is a body force vector (e.g., gravity vector $\bm{g}$), $k$ the thermal conductivity constant, $T$ represents the temperature, and $P$ the pressure, given by the following equation of state 21 22$$ 23P = \left( {c_p}/{c_v} -1\right) \left( E - {\bm{U}\cdot\bm{U}}/{(2 \rho)} \right) \, , 24$$ (eq-state) 25 26where $c_p$ is the specific heat at constant pressure and $c_v$ is the specific heat at constant volume (that define $\gamma = c_p / c_v$, the specific heat ratio). 27 28The system {eq}`eq-ns` can be rewritten in vector form 29 30$$ 31\frac{\partial \bm{q}}{\partial t} + \nabla \cdot \bm{F}(\bm{q}) -S(\bm{q}) = 0 \, , 32$$ (eq-vector-ns) 33 34for the state variables 5-dimensional vector 35 36$$ 37\bm{q} = 38\begin{pmatrix} 39 \rho \\ 40 \bm{U} \equiv \rho \bm{ u }\\ 41 E \equiv \rho e 42\end{pmatrix} 43\begin{array}{l} 44 \leftarrow\textrm{ volume mass density}\\ 45 \leftarrow\textrm{ momentum density}\\ 46 \leftarrow\textrm{ energy density} 47\end{array} 48$$ 49 50where the flux and the source terms, respectively, are given by 51 52$$ 53\begin{aligned} 54\bm{F}(\bm{q}) &= 55\underbrace{\begin{pmatrix} 56 \bm{U}\\ 57 {(\bm{U} \otimes \bm{U})}/{\rho} + P \bm{I}_3 \\ 58 {(E + P)\bm{U}}/{\rho} 59\end{pmatrix}}_{\bm F_{\text{adv}}} + 60\underbrace{\begin{pmatrix} 610 \\ 62- \bm{\sigma} \\ 63 - \bm{u} \cdot \bm{\sigma} - k \nabla T 64\end{pmatrix}}_{\bm F_{\text{diff}}},\\ 65S(\bm{q}) &= 66 \begin{pmatrix} 67 0\\ 68 \rho \bm{b}\\ 69 \rho \bm{b}\cdot \bm{u} 70\end{pmatrix}. 71\end{aligned} 72$$ (eq-ns-flux) 73 74### Finite Element Formulation (Spatial Discretization) 75 76Let the discrete solution be 77 78$$ 79\bm{q}_N (\bm{x},t)^{(e)} = \sum_{k=1}^{P}\psi_k (\bm{x})\bm{q}_k^{(e)} 80$$ 81 82with $P=p+1$ the number of nodes in the element $e$. 83We use tensor-product bases $\psi_{kji} = h_i(X_0)h_j(X_1)h_k(X_2)$. 84 85To obtain a finite element discretization, we first multiply the strong form {eq}`eq-vector-ns` by a test function $\bm v \in H^1(\Omega)$ and integrate, 86 87$$ 88\int_{\Omega} \bm v \cdot \left(\frac{\partial \bm{q}_N}{\partial t} + \nabla \cdot \bm{F}(\bm{q}_N) - \bm{S}(\bm{q}_N) \right) \,dV = 0 \, , \; \forall \bm v \in \mathcal{V}_p\,, 89$$ 90 91with $\mathcal{V}_p = \{ \bm v(\bm x) \in H^{1}(\Omega_e) \,|\, \bm v(\bm x_e(\bm X)) \in P_p(\bm{I}), e=1,\ldots,N_e \}$ a mapped space of polynomials containing at least polynomials of degree $p$ (with or without the higher mixed terms that appear in tensor product spaces). 92 93Integrating by parts on the divergence term, we arrive at the weak form, 94 95$$ 96\begin{aligned} 97\int_{\Omega} \bm v \cdot \left( \frac{\partial \bm{q}_N}{\partial t} - \bm{S}(\bm{q}_N) \right) \,dV 98- \int_{\Omega} \nabla \bm v \!:\! \bm{F}(\bm{q}_N)\,dV & \\ 99+ \int_{\partial \Omega} \bm v \cdot \bm{F}(\bm q_N) \cdot \widehat{\bm{n}} \,dS 100 &= 0 \, , \; \forall \bm v \in \mathcal{V}_p \,, 101\end{aligned} 102$$ (eq-weak-vector-ns) 103 104where $\bm{F}(\bm q_N) \cdot \widehat{\bm{n}}$ is typically replaced with a boundary condition. 105 106:::{note} 107The notation $\nabla \bm v \!:\! \bm F$ represents contraction over both fields and spatial dimensions while a single dot represents contraction in just one, which should be clear from context, e.g., $\bm v \cdot \bm S$ contracts over fields while $\bm F \cdot \widehat{\bm n}$ contracts over spatial dimensions. 108::: 109 110### Time Discretization 111For the time discretization, we use two types of time stepping schemes through PETSc. 112 113#### Explicit time-stepping method 114 115 The following explicit formulation is solved with the adaptive Runge-Kutta-Fehlberg (RKF4-5) method by default (any explicit time-stepping scheme available in PETSc can be chosen at runtime) 116 117 $$ 118 \bm{q}_N^{n+1} = \bm{q}_N^n + \Delta t \sum_{i=1}^{s} b_i k_i \, , 119 $$ 120 121 where 122 123 $$ 124 \begin{aligned} 125 k_1 &= f(t^n, \bm{q}_N^n)\\ 126 k_2 &= f(t^n + c_2 \Delta t, \bm{q}_N^n + \Delta t (a_{21} k_1))\\ 127 k_3 &= f(t^n + c_3 \Delta t, \bm{q}_N^n + \Delta t (a_{31} k_1 + a_{32} k_2))\\ 128 \vdots&\\ 129 k_i &= f\left(t^n + c_i \Delta t, \bm{q}_N^n + \Delta t \sum_{j=1}^s a_{ij} k_j \right)\\ 130 \end{aligned} 131 $$ 132 133 and with 134 135 $$ 136 f(t^n, \bm{q}_N^n) = - [\nabla \cdot \bm{F}(\bm{q}_N)]^n + [S(\bm{q}_N)]^n \, . 137 $$ 138 139#### Implicit time-stepping method 140 141 This time stepping method which can be selected using the option `-implicit` is solved with Backward Differentiation Formula (BDF) method by default (similarly, any implicit time-stepping scheme available in PETSc can be chosen at runtime). 142 The implicit formulation solves nonlinear systems for $\bm q_N$: 143 144 $$ 145 \bm f(\bm q_N) \equiv \bm g(t^{n+1}, \bm{q}_N, \bm{\dot{q}}_N) = 0 \, , 146 $$ (eq-ts-implicit-ns) 147 148 where the time derivative $\bm{\dot q}_N$ is defined by 149 150 $$ 151 \bm{\dot{q}}_N(\bm q_N) = \alpha \bm q_N + \bm z_N 152 $$ 153 154 in terms of $\bm z_N$ from prior state and $\alpha > 0$, both of which depend on the specific time integration scheme (backward difference formulas, generalized alpha, implicit Runge-Kutta, etc.). 155 Each nonlinear system {eq}`eq-ts-implicit-ns` will correspond to a weak form, as explained below. 156 In determining how difficult a given problem is to solve, we consider the Jacobian of {eq}`eq-ts-implicit-ns`, 157 158 $$ 159 \frac{\partial \bm f}{\partial \bm q_N} = \frac{\partial \bm g}{\partial \bm q_N} + \alpha \frac{\partial \bm g}{\partial \bm{\dot q}_N}. 160 $$ 161 162 The scalar "shift" $\alpha$ scales inversely with the time step $\Delta t$, so small time steps result in the Jacobian being dominated by the second term, which is a sort of "mass matrix", and typically well-conditioned independent of grid resolution with a simple preconditioner (such as Jacobi). 163 In contrast, the first term dominates for large time steps, with a condition number that grows with the diameter of the domain and polynomial degree of the approximation space. 164 Both terms are significant for time-accurate simulation and the setup costs of strong preconditioners must be balanced with the convergence rate of Krylov methods using weak preconditioners. 165 166More details of PETSc's time stepping solvers can be found in the [TS User Guide](https://petsc.org/release/docs/manual/ts/). 167 168### Stabilization 169We solve {eq}`eq-weak-vector-ns` using a Galerkin discretization (default) or a stabilized method, as is necessary for most real-world flows. 170 171Galerkin methods produce oscillations for transport-dominated problems (any time the cell Péclet number is larger than 1), and those tend to blow up for nonlinear problems such as the Euler equations and (low-viscosity/poorly resolved) Navier-Stokes, in which case stabilization is necessary. 172Our formulation follows {cite}`hughesetal2010`, which offers a comprehensive review of stabilization and shock-capturing methods for continuous finite element discretization of compressible flows. 173 174- **SUPG** (streamline-upwind/Petrov-Galerkin) 175 176 In this method, the weighted residual of the strong form {eq}`eq-vector-ns` is added to the Galerkin formulation {eq}`eq-weak-vector-ns`. 177 The weak form for this method is given as 178 179 $$ 180 \begin{aligned} 181 \int_{\Omega} \bm v \cdot \left( \frac{\partial \bm{q}_N}{\partial t} - \bm{S}(\bm{q}_N) \right) \,dV 182 - \int_{\Omega} \nabla \bm v \!:\! \bm{F}(\bm{q}_N)\,dV & \\ 183 + \int_{\partial \Omega} \bm v \cdot \bm{F}(\bm{q}_N) \cdot \widehat{\bm{n}} \,dS & \\ 184 + \int_{\Omega} \nabla\bm v \tcolon\left(\frac{\partial \bm F_{\text{adv}}}{\partial \bm q}\right) \bm\tau \left( \frac{\partial \bm{q}_N}{\partial t} \, + \, 185 \nabla \cdot \bm{F} \, (\bm{q}_N) - \bm{S}(\bm{q}_N) \right) \,dV &= 0 186 \, , \; \forall \bm v \in \mathcal{V}_p 187 \end{aligned} 188 $$ (eq-weak-vector-ns-supg) 189 190 This stabilization technique can be selected using the option `-stab supg`. 191 192- **SU** (streamline-upwind) 193 194 This method is a simplified version of *SUPG* {eq}`eq-weak-vector-ns-supg` which is developed for debugging/comparison purposes. The weak form for this method is 195 196 $$ 197 \begin{aligned} 198 \int_{\Omega} \bm v \cdot \left( \frac{\partial \bm{q}_N}{\partial t} - \bm{S}(\bm{q}_N) \right) \,dV 199 - \int_{\Omega} \nabla \bm v \!:\! \bm{F}(\bm{q}_N)\,dV & \\ 200 + \int_{\partial \Omega} \bm v \cdot \bm{F}(\bm{q}_N) \cdot \widehat{\bm{n}} \,dS & \\ 201 + \int_{\Omega} \nabla\bm v \tcolon\left(\frac{\partial \bm F_{\text{adv}}}{\partial \bm q}\right) \bm\tau \nabla \cdot \bm{F} \, (\bm{q}_N) \,dV 202 & = 0 \, , \; \forall \bm v \in \mathcal{V}_p 203 \end{aligned} 204 $$ (eq-weak-vector-ns-su) 205 206 This stabilization technique can be selected using the option `-stab su`. 207 208In both {eq}`eq-weak-vector-ns-su` and {eq}`eq-weak-vector-ns-supg`, $\bm\tau \in \mathbb R^{5\times 5}$ (field indices) is an intrinsic time scale matrix. 209The SUPG technique and the operator $\frac{\partial \bm F_{\text{adv}}}{\partial \bm q}$ (rather than its transpose) can be explained via an ansatz for subgrid state fluctuations $\tilde{\bm q} = -\bm\tau \bm r$ where $\bm r$ is a strong form residual. 210The forward variational form can be readily expressed by differentiating $\bm F_{\text{adv}}$ of {eq}`eq-ns-flux` 211 212$$ 213\begin{aligned} 214\diff\bm F_{\text{adv}}(\diff\bm q; \bm q) &= \frac{\partial \bm F_{\text{adv}}}{\partial \bm q} \diff\bm q \\ 215&= \begin{pmatrix} 216\diff\bm U \\ 217(\diff\bm U \otimes \bm U + \bm U \otimes \diff\bm U)/\rho - (\bm U \otimes \bm U)/\rho^2 \diff\rho + \diff P \bm I_3 \\ 218(E + P)\diff\bm U/\rho + (\diff E + \diff P)\bm U/\rho - (E + P) \bm U/\rho^2 \diff\rho 219\end{pmatrix}, 220\end{aligned} 221$$ 222 223where $\diff P$ is defined by differentiating {eq}`eq-state`. 224 225:::{dropdown} Stabilization scale $\bm\tau$ 226A velocity vector $\bm u$ can be pulled back to the reference element as $\bm u_{\bm X} = \nabla_{\bm x}\bm X \cdot \bm u$, with units of reference length (non-dimensional) per second. 227To build intuition, consider a boundary layer element of dimension $(1, \epsilon)$, for which $\nabla_{\bm x} \bm X = \bigl(\begin{smallmatrix} 2 & \\ & 2/\epsilon \end{smallmatrix}\bigr)$. 228So a small normal component of velocity will be amplified (by a factor of the aspect ratio $1/\epsilon$) in this transformation. 229The ratio $\lVert \bm u \rVert / \lVert \bm u_{\bm X} \rVert$ is a covariant measure of (half) the element length in the direction of the velocity. 230A contravariant measure of element length in the direction of a unit vector $\hat{\bm n}$ is given by $\lVert \bigl(\nabla_{\bm X} \bm x\bigr)^T \hat{\bm n} \rVert$. 231While $\nabla_{\bm X} \bm x$ is readily computable, its inverse $\nabla_{\bm x} \bm X$ is needed directly in finite element methods and thus more convenient for our use. 232If we consider a parallelogram, the covariant measure is larger than the contravariant measure for vectors pointing between acute corners and the opposite holds for vectors between oblique corners. 233 234The cell Péclet number is classically defined by $\mathrm{Pe}_h = \lVert \bm u \rVert h / (2 \kappa)$ where $\kappa$ is the diffusivity (units of $m^2/s$). 235This can be generalized to arbitrary grids by defining the local Péclet number 236 237$$ 238\mathrm{Pe} = \frac{\lVert \bm u \rVert^2}{\lVert \bm u_{\bm X} \rVert \kappa}. 239$$ (eq-peclet) 240 241For scalar advection-diffusion, the stabilization is a scalar 242 243$$ 244\tau = \frac{\xi(\mathrm{Pe})}{\lVert \bm u_{\bm X} \rVert}, 245$$ (eq-tau-advdiff) 246 247where $\xi(\mathrm{Pe}) = \coth \mathrm{Pe} - 1/\mathrm{Pe}$ approaches 1 at large local Péclet number. 248Note that $\tau$ has units of time and, in the transport-dominated limit, is proportional to element transit time in the direction of the propagating wave. 249For advection-diffusion, $\bm F(q) = \bm u q$, and thus the SU stabilization term is 250 251$$ 252\nabla v \cdot \bm u \tau \bm u \cdot \nabla q = \nabla_{\bm X} v \cdot (\bm u_{\bm X} \tau \bm u_{\bm X}) \cdot \nabla_{\bm X} q . 253$$ (eq-su-stabilize-advdiff) 254 255where the term in parentheses is a rank-1 diffusivity tensor that has been pulled back to the reference element. 256See {cite}`hughesetal2010` equations 15-17 and 34-36 for further discussion of this formulation. 257 258For the Navier-Stokes and Euler equations, {cite}`whiting2003hierarchical` defines a $5\times 5$ diagonal stabilization $\mathrm{diag}(\tau_c, \tau_m, \tau_m, \tau_m, \tau_E)$ consisting of 2591. continuity stabilization $\tau_c$ 2602. momentum stabilization $\tau_m$ 2613. energy stabilization $\tau_E$ 262 263The Navier-Stokes code in this example uses the following formulation for $\tau_c$, $\tau_m$, $\tau_E$: 264 265$$ 266\begin{aligned} 267 268\tau_c &= \frac{C_c \mathcal{F}}{8\rho \trace(\bm g)} \\ 269\tau_m &= \frac{C_m}{\mathcal{F}} \\ 270\tau_E &= \frac{C_E}{\mathcal{F} c_v} \\ 271\end{aligned} 272$$ 273 274$$ 275\mathcal{F} = \sqrt{ \rho^2 \left [ \left(\frac{2C_t}{\Delta t}\right)^2 276+ \bm u \cdot (\bm u \cdot \bm g)\right] 277+ C_v \mu^2 \Vert \bm g \Vert_F ^2} 278$$ 279 280where $\bm g = \nabla_{\bm x} \bm{X}^T \cdot \nabla_{\bm x} \bm{X}$ is the metric tensor and $\Vert \cdot \Vert_F$ is the Frobenius norm. 281This formulation is currently not available in the Euler code. 282 283For Advection-Diffusion, we use a modified version of the formulation for Navier-Stokes: 284 285$$ 286\tau = \left [ \left(\frac{2 C_t}{\Delta t}\right)^2 287+ \frac{\bm u \cdot (\bm u \cdot \bm g)}{C_a} 288+ \frac{\kappa^2 \Vert \bm g \Vert_F ^2}{C_d} \right]^{-1/2} 289$$ 290for $C_t$, $C_a$, $C_d$ being some scaling coefficients. 291Otherwise, $C_a$ is set via `-Ctau_a` and $C_t$ via `-Ctau_t`. 292 293In the Euler code, we follow {cite}`hughesetal2010` in defining a $3\times 3$ diagonal stabilization according to spatial criterion 2 (equation 27) as follows. 294 295$$ 296\tau_{ii} = c_{\tau} \frac{2 \xi(\mathrm{Pe})}{(\lambda_{\max \text{abs}})_i \lVert \nabla_{x_i} \bm X \rVert} 297$$ (eq-tau-conservative) 298 299where $c_{\tau}$ is a multiplicative constant reported to be optimal at 0.5 for linear elements, $\hat{\bm n}_i$ is a unit vector in direction $i$, and $\nabla_{x_i} = \hat{\bm n}_i \cdot \nabla_{\bm x}$ is the derivative in direction $i$. 300The flux Jacobian $\frac{\partial \bm F_{\text{adv}}}{\partial \bm q} \cdot \hat{\bm n}_i$ in each direction $i$ is a $5\times 5$ matrix with spectral radius $(\lambda_{\max \text{abs}})_i$ equal to the fastest wave speed. 301The complete set of eigenvalues of the Euler flux Jacobian in direction $i$ are (e.g., {cite}`toro2009`) 302 303$$ 304\Lambda_i = [u_i - a, u_i, u_i, u_i, u_i+a], 305$$ (eq-eigval-advdiff) 306 307where $u_i = \bm u \cdot \hat{\bm n}_i$ is the velocity component in direction $i$ and $a = \sqrt{\gamma P/\rho}$ is the sound speed for ideal gasses. 308Note that the first and last eigenvalues represent nonlinear acoustic waves while the middle three are linearly degenerate, carrying a contact wave (temperature) and transverse components of momentum. 309The fastest wave speed in direction $i$ is thus 310 311$$ 312\lambda_{\max \text{abs}} \Bigl( \frac{\partial \bm F_{\text{adv}}}{\partial \bm q} \cdot \hat{\bm n}_i \Bigr) = |u_i| + a 313$$ (eq-wavespeed) 314 315Note that this wave speed is specific to ideal gases as $\gamma$ is an ideal gas parameter; other equations of state will yield a different acoustic wave speed. 316 317::: 318 319Currently, this demo provides three types of problems/physical models that can be selected at run time via the option `-problem`. 320{ref}`problem-advection`, the problem of the transport of energy in a uniform vector velocity field, {ref}`problem-euler-vortex`, the exact solution to the Euler equations, and the so called {ref}`problem-density-current` problem. 321 322### Statistics Collection 323For scale-resolving simulations (such as LES and DNS), statistics for a simulation are more often useful than time-instantaneous snapshots of the simulation itself. 324To make this process more computationally efficient, averaging in the spanwise direction, if physically correct, can help reduce the amount of simulation time needed to get converged statistics. 325 326First, let's more precisely define what we mean by spanwise average. 327Denote $\langle \phi \rangle$ as the Reynolds average of $\phi$, which in this case would be a average over the spanwise direction and time: 328 329$$ 330\langle \phi \rangle(x,y) = \frac{1}{L_z + (T_f - T_0)}\int_0^{L_z} \int_{T_0}^{T_f} \phi(x, y, z, t) \mathrm{d}t \mathrm{d}z 331$$ 332 333where $z$ is the spanwise direction, the domain has size $[0, L_z]$ in the spanwise direction, and $[T_0, T_f]$ is the range of time being averaged over. 334Note that here and in the code, **we assume the spanwise direction to be in the $z$ direction**. 335 336To discuss the details of the implementation we'll first discuss the spanwise integral, then the temporal integral, and lastly the statistics themselves. 337 338#### Spanwise Integral 339The function $\langle \phi \rangle (x,y)$ is represented on a 2-D finite element grid, taken from the full domain mesh itself. 340If isoperiodicity is set, the periodic face is extracted as the spanwise statistics mesh. 341Otherwise the negative z face is used. 342We'll refer to this mesh as the *parent grid*, as for every "parent" point in the parent grid, there are many "child" points in the full domain. 343Define a function space on the parent grid as $\mathcal{V}_p^\mathrm{parent} = \{ \bm v(\bm x) \in H^{1}(\Omega_e^\mathrm{parent}) \,|\, \bm v(\bm x_e(\bm X)) \in P_p(\bm{I}), e=1,\ldots,N_e \}$. 344We enforce that the order of the parent FEM space is equal to the full domain's order. 345 346Many statistics are the product of 2 or more solution functions, which results in functions of degree higher than the parent FEM space, $\mathcal{V}_p^\mathrm{parent}$. 347To represent these higher-order functions on the parent FEM space, we perform an $L^2$ projection. 348Define the spanwise averaged function as: 349 350$$ 351\langle \phi \rangle_z(x,y,t) = \frac{1}{L_z} \int_0^{L_z} \phi(x, y, z, t) \mathrm{d}z 352$$ 353 354where the function $\phi$ may be the product of multiple solution functions and $\langle \phi \rangle_z$ denotes the spanwise average. 355The projection of a function $u$ onto the parent FEM space would look like: 356 357$$ 358\bm M u_N = \int_0^{L_x} \int_0^{L_y} u \psi^\mathrm{parent}_N \mathrm{d}y \mathrm{d}x 359$$ 360where $\bm M$ is the mass matrix for $\mathcal{V}_p^\mathrm{parent}$, $u_N$ the coefficients of the projected function, and $\psi^\mathrm{parent}_N$ the basis functions of the parent FEM space. 361Substituting the spanwise average of $\phi$ for $u$, we get: 362 363$$ 364\bm M [\langle \phi \rangle_z]_N = \int_0^{L_x} \int_0^{L_y} \left [\frac{1}{L_z} \int_0^{L_z} \phi(x,y,z,t) \mathrm{d}z \right ] \psi^\mathrm{parent}_N(x,y) \mathrm{d}y \mathrm{d}x 365$$ 366 367The triple integral in the right hand side is just an integral over the full domain 368 369$$ 370\bm M [\langle \phi \rangle_z]_N = \frac{1}{L_z} \int_\Omega \phi(x,y,z,t) \psi^\mathrm{parent}_N(x,y) \mathrm{d}\Omega 371$$ 372 373We need to evaluate $\psi^\mathrm{parent}_N$ at quadrature points in the full domain. 374To do this efficiently, **we assume and exploit the full domain grid to be a tensor product in the spanwise direction**. 375This assumption means quadrature points in the full domain have the same $(x,y)$ coordinate location as quadrature points in the parent domain. 376This also allows the use of the full domain quadrature weights for the triple integral. 377 378#### Temporal Integral/Averaging 379To calculate the temporal integral, we do a running average using left-rectangle rule. 380At the beginning of each simulation, the time integral of a statistic is set to 0, $\overline{\phi} = 0$. 381Periodically, the integral is updated using left-rectangle rule: 382 383$$\overline{\phi}_\mathrm{new} = \overline{\phi}_{\mathrm{old}} + \phi(t_\mathrm{new}) \Delta T$$ 384where $\phi(t_\mathrm{new})$ is the statistic at the current time and $\Delta T$ is the time since the last update. 385When stats are written out to file, this running sum is then divided by $T_f - T_0$ to get the time average. 386 387With this method of calculating the running time average, we can plug this into the $L^2$ projection of the spanwise integral: 388 389$$ 390\bm M [\langle \phi \rangle]_N = \frac{1}{L_z + (T_f - T_0)} \int_\Omega \int_{T_0}^{T_f} \phi(x,y,z,t) \psi^\mathrm{parent}_N \mathrm{d}t \mathrm{d}\Omega 391$$ 392where the integral $\int_{T_0}^{T_f} \phi(x,y,z,t) \mathrm{d}t$ is calculated on a running basis. 393 394 395#### Running 396As the simulation runs, it takes a running time average of the statistics at the full domain quadrature points. 397This running average is only updated at the interval specified by `-ts_monitor_turbulence_spanstats_collect_interval` as number of timesteps. 398The $L^2$ projection problem is only solved when statistics are written to file, which is controlled by `-ts_monitor_turbulence_spanstats_viewer_interval`. 399Note that the averaging is not reset after each file write. 400The average is always over the bounds $[T_0, T_f]$, where $T_f$ in this case would be the time the file was written at and $T_0$ is the solution time at the beginning of the run. 401 402#### Turbulent Statistics 403 404The focus here are those statistics that are relevant to turbulent flow. 405The terms collected are listed below, with the mathematical definition on the left and the label (present in CGNS output files) is on the right. 406 407| Math | Label | 408| ----------------- | -------- | 409| $\langle \rho \rangle$ | MeanDensity | 410| $\langle p \rangle$ | MeanPressure | 411| $\langle p^2 \rangle$ | MeanPressureSquared | 412| $\langle p u_i \rangle$ | MeanPressureVelocity[$i$] | 413| $\langle \rho T \rangle$ | MeanDensityTemperature | 414| $\langle \rho T u_i \rangle$ | MeanDensityTemperatureFlux[$i$] | 415| $\langle \rho u_i \rangle$ | MeanMomentum[$i$] | 416| $\langle \rho u_i u_j \rangle$ | MeanMomentumFlux[$ij$] | 417| $\langle u_i \rangle$ | MeanVelocity[$i$] | 418 419where [$i$] are suffixes to the labels. So $\langle \rho u_x u_y \rangle$ would correspond to MeanMomentumFluxXY. 420This naming convention attempts to mimic the CGNS standard. 421 422To get second-order statistics from these terms, simply use the identity: 423 424$$ 425\langle \phi' \theta' \rangle = \langle \phi \theta \rangle - \langle \phi \rangle \langle \theta \rangle 426$$ 427 428### Subgrid Stress Modeling 429 430When a fluid simulation is under-resolved (the smallest length scale resolved by the grid is much larger than the smallest physical scale, the [Kolmogorov length scale](https://en.wikipedia.org/wiki/Kolmogorov_microscales)), this is mathematically interpreted as filtering the Navier-Stokes equations. 431This is known as large-eddy simulation (LES), as only the "large" scales of turbulence are resolved. 432This filtering operation results in an extra stress-like term, $\bm{\tau}^r$, representing the effect of unresolved (or "subgrid" scale) structures in the flow. 433Denoting the filtering operation by $\overline \cdot$, the LES governing equations are: 434 435$$ 436\frac{\partial \bm{\overline q}}{\partial t} + \nabla \cdot \bm{\overline F}(\bm{\overline q}) -S(\bm{\overline q}) = 0 \, , 437$$ (eq-vector-les) 438 439where 440 441$$ 442\bm{\overline F}(\bm{\overline q}) = 443\bm{F} (\bm{\overline q}) + 444\begin{pmatrix} 445 0\\ 446 \bm{\tau}^r \\ 447 \bm{u} \cdot \bm{\tau}^r 448\end{pmatrix} 449$$ (eq-les-flux) 450 451More details on deriving the above expression, filtering, and large eddy simulation can be found in {cite}`popeTurbulentFlows2000`. 452To close the problem, the subgrid stress must be defined. 453For implicit LES, the subgrid stress is set to zero and the numerical properties of the discretized system are assumed to account for the effect of subgrid scale structures on the filtered solution field. 454For explicit LES, it is defined by a subgrid stress model. 455 456(sgs-dd-model)= 457#### Data-driven SGS Model 458 459The data-driven SGS model implemented here uses a small neural network to compute the SGS term. 460The SGS tensor is calculated at nodes using an $L^2$ projection of the velocity gradient and grid anisotropy tensor, and then interpolated onto quadrature points. 461More details regarding the theoretical background of the model can be found in {cite}`prakashDDSGS2022` and {cite}`prakashDDSGSAnisotropic2022`. 462 463The neural network itself consists of 1 hidden layer and 20 neurons, using Leaky ReLU as its activation function. 464The slope parameter for the Leaky ReLU function is set via `-sgs_model_dd_leakyrelu_alpha`. 465The outputs of the network are assumed to be normalized on a min-max scale, so they must be rescaled by the original min-max bounds. 466Parameters for the neural network are put into files in a directory found in `-sgs_model_dd_parameter_dir`. 467These files store the network weights (`w1.dat` and `w2.dat`), biases (`b1.dat` and `b2.dat`), and scaling parameters (`OutScaling.dat`). 468The first row of each files stores the number of columns and rows in each file. 469Note that the weight coefficients are assumed to be in column-major order. 470This is done to keep consistent with legacy file compatibility. 471 472:::{note} 473The current data-driven model parameters are not accurate and are for regression testing only. 474::: 475 476##### Data-driven Model Using External Libraries 477 478There are two different modes for using the data-driven model: fused and sequential. 479 480In fused mode, the input processing, model inference, and output handling were all done in a single CeedOperator. 481Fused mode is generally faster than the sequential mode, however fused mode requires that the model architecture be manually implemented into a libCEED QFunction. 482To use the fused mode, set `-sgs_model_dd_implementation fused`. 483 484Sequential mode has separate function calls/CeedOperators for input creation, model inference, and output handling. 485By separating the three steps of the model evaluation, the sequential mode allows for functions calling external libraries to be used for the model inference step. 486The use of these external libraries allows us to leverage the flexibility of those external libraries in their model architectures. 487 488PyTorch is currently the only external library implemented with the sequential mode. 489This is enabled with `USE_TORCH=1` during the build process, which will use the PyTorch accessible from the build environment's Python interpreter. 490To specify the path to the PyTorch model file, use `-sgs_model_dd_torch_model_path`. 491The hardware used to run the model inference is determined automatically from the libCEED backend chosen, but can be overridden with `-sgs_model_dd_torch_model_device`. 492Note that if you chose to run the inference on host while using a GPU libCEED backend (e.g. `/gpu/cuda`), then host-to-device transfers (and vice versa) will be done automatically. 493 494The sequential mode is available using a libCEED based inference evaluation via `-sgs_model_dd_implementation sequential_ceed`, but it is only for verification purposes. 495 496(differential-filtering)= 497### Differential Filtering 498 499There is the option to filter the solution field using differential filtering. 500This was first proposed in {cite}`germanoDiffFilterLES1986`, using an inverse Hemholtz operator. 501The strong form of the differential equation is 502 503$$ 504\overline{\phi} - \nabla \cdot (\beta (\bm{D}\bm{\Delta})^2 \nabla \overline{\phi} ) = \phi 505$$ 506 507for $\phi$ the scalar solution field we want to filter, $\overline \phi$ the filtered scalar solution field, $\bm{\Delta} \in \mathbb{R}^{3 \times 3}$ a symmetric positive-definite rank 2 tensor defining the width of the filter, $\bm{D}$ is the filter width scaling tensor (also a rank 2 SPD tensor), and $\beta$ is a kernel scaling factor on the filter tensor. 508This admits the weak form: 509 510$$ 511\int_\Omega \left( v \overline \phi + \beta \nabla v \cdot (\bm{D}\bm{\Delta})^2 \nabla \overline \phi \right) \,d\Omega 512- \cancel{\int_{\partial \Omega} \beta v \nabla \overline \phi \cdot (\bm{D}\bm{\Delta})^2 \bm{\hat{n}} \,d\partial\Omega} = 513\int_\Omega v \phi \, , \; \forall v \in \mathcal{V}_p 514$$ 515 516The boundary integral resulting from integration-by-parts is crossed out, as we assume that $(\bm{D}\bm{\Delta})^2 = \bm{0} \Leftrightarrow \overline \phi = \phi$ at boundaries (this is reasonable at walls, but for convenience elsewhere). 517 518#### Filter width tensor, Δ 519For homogenous filtering, $\bm{\Delta}$ is defined as the identity matrix. 520 521:::{note} 522It is common to denote a filter width dimensioned relative to the radial distance of the filter kernel. 523Note here we use the filter *diameter* instead, as that feels more natural (albeit mathematically less convenient). 524For example, under this definition a box filter would be defined as: 525 526$$ 527B(\Delta; \bm{r}) = 528\begin{cases} 5291 & \Vert \bm{r} \Vert \leq \Delta/2 \\ 5300 & \Vert \bm{r} \Vert > \Delta/2 531\end{cases} 532$$ 533::: 534 535For inhomogeneous anisotropic filtering, we use the finite element grid itself to define $\bm{\Delta}$. 536This is set via `-diff_filter_grid_based_width`. 537Specifically, we use the filter width tensor defined in {cite}`prakashDDSGSAnisotropic2022`. 538For finite element grids, the filter width tensor is most conveniently defined by $\bm{\Delta} = \bm{g}^{-1/2}$ where $\bm g = \nabla_{\bm x} \bm{X} \cdot \nabla_{\bm x} \bm{X}$ is the metric tensor. 539 540#### Filter width scaling tensor, $\bm{D}$ 541The filter width tensor $\bm{\Delta}$, be it defined from grid based sources or just the homogenous filtering, can be scaled anisotropically. 542The coefficients for that anisotropic scaling are given by `-diff_filter_width_scaling`, denoted here by $c_1, c_2, c_3$. 543The definition for $\bm{D}$ then becomes 544 545$$ 546\bm{D} = 547\begin{bmatrix} 548 c_1 & 0 & 0 \\ 549 0 & c_2 & 0 \\ 550 0 & 0 & c_3 \\ 551\end{bmatrix} 552$$ 553 554In the case of $\bm{\Delta}$ being defined as homogenous, $\bm{D}\bm{\Delta}$ means that $\bm{D}$ effectively sets the filter width. 555 556The filtering at the wall may also be damped, to smoothly meet the $\overline \phi = \phi$ boundary condition at the wall. 557The selected damping function for this is the van Driest function {cite}`vandriestWallDamping1956`: 558 559$$ 560\zeta = 1 - \exp\left(-\frac{y^+}{A^+}\right) 561$$ 562 563where $y^+$ is the wall-friction scaled wall-distance ($y^+ = y u_\tau / \nu = y/\delta_\nu$), $A^+$ is some wall-friction scaled scale factor, and $\zeta$ is the damping coefficient. 564For this implementation, we assume that $\delta_\nu$ is constant across the wall and is defined by `-diff_filter_friction_length`. 565$A^+$ is defined by `-diff_filter_damping_constant`. 566 567To apply this scalar damping coefficient to the filter width tensor, we construct the wall-damping tensor from it. 568The construction implemented currently limits damping in the wall parallel directions to be no less than the original filter width defined by $\bm{\Delta}$. 569The wall-normal filter width is allowed to be damped to a zero filter width. 570It is currently assumed that the second component of the filter width tensor is in the wall-normal direction. 571Under these assumptions, $\bm{D}$ then becomes: 572 573$$ 574\bm{D} = 575\begin{bmatrix} 576 \max(1, \zeta c_1) & 0 & 0 \\ 577 0 & \zeta c_2 & 0 \\ 578 0 & 0 & \max(1, \zeta c_3) \\ 579\end{bmatrix} 580$$ 581 582#### Filter kernel scaling, β 583While we define $\bm{D}\bm{\Delta}$ to be of a certain physical filter width, the actual width of the implied filter kernel is quite larger than "normal" kernels. 584To account for this, we use $\beta$ to scale the filter tensor to the appropriate size, as is done in {cite}`bullExplicitFilteringExact2016`. 585To match the "size" of a normal kernel to our differential kernel, we attempt to have them match second order moments with respect to the prescribed filter width. 586To match the box and Gaussian filters "sizes", we use $\beta = 1/10$ and $\beta = 1/6$, respectively. 587$\beta$ can be set via `-diff_filter_kernel_scaling`. 588 589### *In Situ* Machine-Learning Model Training 590Training machine-learning models normally uses *a priori* (already gathered) data stored on disk. 591This is computationally inefficient, particularly as the scale of the problem grows and the data that is saved to disk reduces to a small percentage of the total data generated by a simulation. 592One way of working around this to to train a model on data coming from an ongoing simulation, known as *in situ* (in place) learning. 593 594This is implemented in the code using [SmartSim](https://www.craylabs.org/docs/overview.html). 595Briefly, the fluid simulation will periodically place data for training purposes into a database that a separate process uses to train a model. 596The database used by SmartSim is [Redis](https://redis.com/modules/redis-ai/) and the library to connect to the database is called [SmartRedis](https://www.craylabs.org/docs/smartredis.html). 597More information about how to utilize this code in a SmartSim configuration can be found on [SmartSim's website](https://www.craylabs.org/docs/overview.html). 598 599To use this code in a SmartSim *in situ* setup, first the code must be built with SmartRedis enabled. 600This is done by specifying the installation directory of SmartRedis using the `SMARTREDIS_DIR` environment variable when building: 601 602``` 603make SMARTREDIS_DIR=~/software/smartredis/install 604``` 605 606#### SGS Data-Driven Model *In Situ* Training 607Currently the code is only setup to do *in situ* training for the SGS data-driven model. 608Training data is split into the model inputs and outputs. 609The model inputs are calculated as the same model inputs in the SGS Data-Driven model described {ref}`earlier<sgs-dd-model>`. 610The model outputs (or targets in the case of training) are the subgrid stresses. 611Both the inputs and outputs are computed from a filtered velocity field, which is calculated via {ref}`differential-filtering`. 612The settings for the differential filtering used during training are described in {ref}`differential-filtering`. 613The training will create multiple sets of data per each filter width defined in `-sgs_train_filter_widths`. 614Those scalar filter widths correspond to the scaling correspond to $\bm{D} = c \bm{I}$, where $c$ is the scalar filter width. 615 616The SGS *in situ* training can be enabled using the `-sgs_train_enable` flag. 617Data can be processed and placed into the database periodically. 618The interval between is controlled by `-sgs_train_write_data_interval`. 619There's also the choice of whether to add new training data on each database write or to overwrite the old data with new data. 620This is controlled by `-sgs_train_overwrite_data`. 621 622The database may also be located on the same node as a MPI rank (collocated) or located on a separate node (distributed). 623It's necessary to know how many ranks are associated with each collocated database, which is set by `-smartsim_collocated_database_num_ranks`. 624 625(problem-advection)= 626## Advection-Diffusion 627 628A simplified version of system {eq}`eq-ns`, only accounting for the transport of total energy, is given by 629 630$$ 631\frac{\partial E}{\partial t} + \nabla \cdot (\bm{u} E ) - \kappa \nabla E = 0 \, , 632$$ (eq-advection) 633 634with $\bm{u}$ the vector velocity field and $\kappa$ the diffusion coefficient. 635In this particular test case, a blob of total energy (defined by a characteristic radius $r_c$) is transported by two different wind types. 636 637- **Rotation** 638 639 In this case, a uniform circular velocity field transports the blob of total energy. 640 We have solved {eq}`eq-advection` applying zero energy density $E$, and no-flux for $\bm{u}$ on the boundaries. 641 642- **Translation** 643 644 In this case, a background wind with a constant rectilinear velocity field, enters the domain and transports the blob of total energy out of the domain. 645 646 For the inflow boundary conditions, a prescribed $E_{wind}$ is applied weakly on the inflow boundaries such that the weak form boundary integral in {eq}`eq-weak-vector-ns` is defined as 647 648 $$ 649 \int_{\partial \Omega_{inflow}} \bm v \cdot \bm{F}(\bm q_N) \cdot \widehat{\bm{n}} \,dS = \int_{\partial \Omega_{inflow}} \bm v \, E_{wind} \, \bm u \cdot \widehat{\bm{n}} \,dS \, , 650 $$ 651 652 For the outflow boundary conditions, we have used the current values of $E$, following {cite}`papanastasiou1992outflow` which extends the validity of the weak form of the governing equations to the outflow instead of replacing them with unknown essential or natural boundary conditions. 653 The weak form boundary integral in {eq}`eq-weak-vector-ns` for outflow boundary conditions is defined as 654 655 $$ 656 \int_{\partial \Omega_{outflow}} \bm v \cdot \bm{F}(\bm q_N) \cdot \widehat{\bm{n}} \,dS = \int_{\partial \Omega_{outflow}} \bm v \, E \, \bm u \cdot \widehat{\bm{n}} \,dS \, , 657 $$ 658 659(problem-euler-vortex)= 660 661## Isentropic Vortex 662 663Three-dimensional Euler equations, which are simplified and nondimensionalized version of system {eq}`eq-ns` and account only for the convective fluxes, are given by 664 665$$ 666\begin{aligned} 667\frac{\partial \rho}{\partial t} + \nabla \cdot \bm{U} &= 0 \\ 668\frac{\partial \bm{U}}{\partial t} + \nabla \cdot \left( \frac{\bm{U} \otimes \bm{U}}{\rho} + P \bm{I}_3 \right) &= 0 \\ 669\frac{\partial E}{\partial t} + \nabla \cdot \left( \frac{(E + P)\bm{U}}{\rho} \right) &= 0 \, , \\ 670\end{aligned} 671$$ (eq-euler) 672 673Following the setup given in {cite}`zhang2011verification`, the mean flow for this problem is $\rho=1$, $P=1$, $T=P/\rho= 1$ (Specific Gas Constant, $R$, is 1), and $\bm{u}=(u_1,u_2,0)$ while the perturbation $\delta \bm{u}$, and $\delta T$ are defined as 674 675$$ 676\begin{aligned} (\delta u_1, \, \delta u_2) &= \frac{\epsilon}{2 \pi} \, e^{0.5(1-r^2)} \, (-\bar{y}, \, \bar{x}) \, , \\ \delta T &= - \frac{(\gamma-1) \, \epsilon^2}{8 \, \gamma \, \pi^2} \, e^{1-r^2} \, , \\ \end{aligned} 677$$ 678 679where $(\bar{x}, \, \bar{y}) = (x-x_c, \, y-y_c)$, $(x_c, \, y_c)$ represents the center of the domain, $r^2=\bar{x}^2 + \bar{y}^2$, and $\epsilon$ is the vortex strength ($\epsilon$ < 10). 680There is no perturbation in the entropy $S=P/\rho^\gamma$ ($\delta S=0)$. 681 682(problem-shock-tube)= 683 684## Shock Tube 685 686This test problem is based on Sod's Shock Tube (from{cite}`sodshocktubewiki`), a canonical test case for discontinuity capturing in one dimension. For this problem, the three-dimensional Euler equations are formulated exactly as in the Isentropic Vortex problem. The default initial conditions are $P=1$, $\rho=1$ for the driver section and $P=0.1$, $\rho=0.125$ for the driven section. The initial velocity is zero in both sections. Symmetry boundary conditions are applied to the side walls and wall boundary conditions are applied at the end walls. 687 688SU upwinding and discontinuity capturing have been implemented into the explicit timestepping operator for this problem. Discontinuity capturing is accomplished using a modified version of the $YZ\beta$ operator described in {cite}`tezduyar2007yzb`. This discontinuity capturing scheme involves the introduction of a dissipation term of the form 689 690$$ 691\int_{\Omega} \nu_{SHOCK} \nabla \bm v \!:\! \nabla \bm q dV 692$$ 693 694The shock capturing viscosity is implemented following the first formulation described in {cite}`tezduyar2007yzb`. The characteristic velocity $u_{cha}$ is taken to be the acoustic speed while the reference density $\rho_{ref}$ is just the local density. Shock capturing viscosity is defined by the following 695 696$$ 697\nu_{SHOCK} = \tau_{SHOCK} u_{cha}^2 698$$ 699 700where, 701 702$$ 703\tau_{SHOCK} = \frac{h_{SHOCK}}{2u_{cha}} \left( \frac{ \,|\, \nabla \rho \,|\, h_{SHOCK}}{\rho_{ref}} \right)^{\beta} 704$$ 705 706$\beta$ is a tuning parameter set between 1 (smoother shocks) and 2 (sharper shocks. The parameter $h_{SHOCK}$ is a length scale that is proportional to the element length in the direction of the density gradient unit vector. This density gradient unit vector is defined as $\hat{\bm j} = \frac{\nabla \rho}{|\nabla \rho|}$. The original formulation of Tezduyar and Senga relies on the shape function gradient to define the element length scale, but this gradient is not available to qFunctions in libCEED. To avoid this problem, $h_{SHOCK}$ is defined in the current implementation as 707 708$$ 709h_{SHOCK} = 2 \left( C_{YZB} \,|\, \bm p \,|\, \right)^{-1} 710$$ 711 712where 713 714$$ 715p_k = \hat{j}_i \frac{\partial \xi_i}{x_k} 716$$ 717 718The constant $C_{YZB}$ is set to 0.1 for piecewise linear elements in the current implementation. Larger values approaching unity are expected with more robust stabilization and implicit timestepping. 719 720(problem-density-current)= 721 722## Gaussian Wave 723This test case is taken/inspired by that presented in {cite}`mengaldoCompressibleBC2014`. It is intended to test non-reflecting/Riemann boundary conditions. It's primarily intended for Euler equations, but has been implemented for the Navier-Stokes equations here for flexibility. 724 725The problem has a perturbed initial condition and lets it evolve in time. The initial condition contains a Gaussian perturbation in the pressure field: 726 727$$ 728\begin{aligned} 729\rho &= \rho_\infty\left(1+A\exp\left(\frac{-(\bar{x}^2 + \bar{y}^2)}{2\sigma^2}\right)\right) \\ 730\bm{U} &= \bm U_\infty \\ 731E &= \frac{p_\infty}{\gamma -1}\left(1+A\exp\left(\frac{-(\bar{x}^2 + \bar{y}^2)}{2\sigma^2}\right)\right) + \frac{\bm U_\infty \cdot \bm U_\infty}{2\rho_\infty}, 732\end{aligned} 733$$ 734 735where $A$ and $\sigma$ are the amplitude and width of the perturbation, respectively, and $(\bar{x}, \bar{y}) = (x-x_e, y-y_e)$ is the distance to the epicenter of the perturbation, $(x_e, y_e)$. 736The simulation produces a strong acoustic wave and leaves behind a cold thermal bubble that advects at the fluid velocity. 737 738The boundary conditions are freestream in the x and y directions. When using an HLL (Harten, Lax, van Leer) Riemann solver {cite}`toro2009` (option `-freestream_riemann hll`), the acoustic waves exit the domain cleanly, but when the thermal bubble reaches the boundary, it produces strong thermal oscillations that become acoustic waves reflecting into the domain. 739This problem can be fixed using a more sophisticated Riemann solver such as HLLC {cite}`toro2009` (option `-freestream_riemann hllc`, which is default), which is a linear constant-pressure wave that transports temperature and transverse momentum at the fluid velocity. 740 741## Vortex Shedding - Flow past Cylinder 742This test case, based on {cite}`shakib1991femcfd`, is an example of using an externally provided mesh from Gmsh. 743A cylinder with diameter $D=1$ is centered at $(0,0)$ in a computational domain $-4.5 \leq x \leq 15.5$, $-4.5 \leq y \leq 4.5$. 744We solve this as a 3D problem with (default) one element in the $z$ direction. 745The domain is filled with an ideal gas at rest (zero velocity) with temperature 24.92 and pressure 7143. 746The viscosity is 0.01 and thermal conductivity is 14.34 to maintain a Prandtl number of 0.71, which is typical for air. 747At time $t=0$, this domain is subjected to freestream boundary conditions at the inflow (left) and Riemann-type outflow on the right, with exterior reference state at velocity $(1, 0, 0)$ giving Reynolds number $100$ and Mach number $0.01$. 748A symmetry (adiabatic free slip) condition is imposed at the top and bottom boundaries $(y = \pm 4.5)$ (zero normal velocity component, zero heat-flux). 749The cylinder wall is an adiabatic (no heat flux) no-slip boundary condition. 750As we evolve in time, eddies appear past the cylinder leading to a vortex shedding known as the vortex street, with shedding period of about 6. 751 752The Gmsh input file, `examples/meshes/cylinder.geo` is parametrized to facilitate experimenting with similar configurations. 753The Strouhal number (nondimensional shedding frequency) is sensitive to the size of the computational domain and boundary conditions. 754 755Forces on the cylinder walls are computed using the "reaction force" method, which is variationally consistent with the volume operator. 756Given the force components $\bm F = (F_x, F_y, F_z)$ and surface area $S = \pi D L_z$ where $L_z$ is the spanwise extent of the domain, we define the coefficients of lift and drag as 757 758$$ 759\begin{aligned} 760C_L &= \frac{2 F_y}{\rho_\infty u_\infty^2 S} \\ 761C_D &= \frac{2 F_x}{\rho_\infty u_\infty^2 S} \\ 762\end{aligned} 763$$ 764 765where $\rho_\infty, u_\infty$ are the freestream (inflow) density and velocity respectively. 766 767## Density Current 768 769For this test problem (from {cite}`straka1993numerical`), we solve the full Navier-Stokes equations {eq}`eq-ns`, for which a cold air bubble (of radius $r_c$) drops by convection in a neutrally stratified atmosphere. 770Its initial condition is defined in terms of the Exner pressure, $\pi(\bm{x},t)$, and potential temperature, $\theta(\bm{x},t)$, that relate to the state variables via 771 772$$ 773\begin{aligned} \rho &= \frac{P_0}{( c_p - c_v)\theta(\bm{x},t)} \pi(\bm{x},t)^{\frac{c_v}{ c_p - c_v}} \, , \\ e &= c_v \theta(\bm{x},t) \pi(\bm{x},t) + \bm{u}\cdot \bm{u} /2 + g z \, , \end{aligned} 774$$ 775 776where $P_0$ is the atmospheric pressure. 777For this problem, we have used no-slip and non-penetration boundary conditions for $\bm{u}$, and no-flux for mass and energy densities. 778 779## Channel 780 781A compressible channel flow. Analytical solution given in 782{cite}`whitingStabilizedFEM1999`: 783 784$$ u_1 = u_{\max} \left [ 1 - \left ( \frac{x_2}{H}\right)^2 \right] \quad \quad u_2 = u_3 = 0$$ 785$$T = T_w \left [ 1 + \frac{Pr \hat{E}c}{3} \left \{1 - \left(\frac{x_2}{H}\right)^4 \right \} \right]$$ 786$$p = p_0 - \frac{2\rho_0 u_{\max}^2 x_1}{Re_H H}$$ 787 788where $H$ is the channel half-height, $u_{\max}$ is the center velocity, $T_w$ is the temperature at the wall, $Pr=\frac{\mu}{c_p \kappa}$ is the Prandlt number, $\hat E_c = \frac{u_{\max}^2}{c_p T_w}$ is the modified Eckert number, and $Re_h = \frac{u_{\max}H}{\nu}$ is the Reynolds number. 789 790Boundary conditions are periodic in the streamwise direction, and no-slip and non-penetration boundary conditions at the walls. 791The flow is driven by a body force determined analytically from the fluid properties and setup parameters $H$ and $u_{\max}$. 792 793## Flat Plate Boundary Layer 794 795### Laminar Boundary Layer - Blasius 796 797Simulation of a laminar boundary layer flow, with the inflow being prescribed 798by a [Blasius similarity 799solution](https://en.wikipedia.org/wiki/Blasius_boundary_layer). At the inflow, 800the velocity is prescribed by the Blasius soution profile, density is set 801constant, and temperature is allowed to float. Using `weakT: true`, density is 802allowed to float and temperature is set constant. At the outlet, a user-set 803pressure is used for pressure in the inviscid flux terms (all other inviscid 804flux terms use interior solution values). The wall is a no-slip, 805no-penetration, no-heat flux condition. The top of the domain is treated as an 806outflow and is tilted at a downward angle to ensure that flow is always exiting 807it. 808 809### Turbulent Boundary Layer 810 811Simulating a turbulent boundary layer without modeling the turbulence requires 812resolving the turbulent flow structures. These structures may be introduced 813into the simulations either by allowing a laminar boundary layer naturally 814transition to turbulence, or imposing turbulent structures at the inflow. The 815latter approach has been taken here, specifically using a *synthetic turbulence 816generation* (STG) method. 817 818#### Synthetic Turbulence Generation (STG) Boundary Condition 819 820We use the STG method described in 821{cite}`shurSTG2014`. Below follows a re-description of the formulation to match 822the present notation, and then a description of the implementation and usage. 823 824##### Equation Formulation 825 826$$ 827\bm{u}(\bm{x}, t) = \bm{\overline{u}}(\bm{x}) + \bm{C}(\bm{x}) \cdot \bm{v}' 828$$ 829 830$$ 831\begin{aligned} 832\bm{v}' &= 2 \sqrt{3/2} \sum^N_{n=1} \sqrt{q^n(\bm{x})} \bm{\sigma}^n \cos(\kappa^n \bm{d}^n \cdot \bm{\hat{x}}^n(\bm{x}, t) + \phi^n ) \\ 833\bm{\hat{x}}^n &= \left[(x - U_0 t)\max(2\kappa_{\min}/\kappa^n, 0.1) , y, z \right]^T 834\end{aligned} 835$$ 836 837Here, we define the number of wavemodes $N$, set of random numbers $ \{\bm{\sigma}^n, 838\bm{d}^n, \phi^n\}_{n=1}^N$, the Cholesky decomposition of the Reynolds stress 839tensor $\bm{C}$ (such that $\bm{R} = \bm{CC}^T$ ), bulk velocity $U_0$, 840wavemode amplitude $q^n$, wavemode frequency $\kappa^n$, and $\kappa_{\min} = 8410.5 \min_{\bm{x}} (\kappa_e)$. 842 843$$ 844\kappa_e = \frac{2\pi}{\min(2d_w, 3.0 l_t)} 845$$ 846 847where $l_t$ is the turbulence length scale, and $d_w$ is the distance to the 848nearest wall. 849 850 851The set of wavemode frequencies is defined by a geometric distribution: 852 853$$ 854\kappa^n = \kappa_{\min} (1 + \alpha)^{n-1} \ , \quad \forall n=1, 2, ... , N 855$$ 856 857The wavemode amplitudes $q^n$ are defined by a model energy spectrum $E(\kappa)$: 858 859$$ 860q^n = \frac{E(\kappa^n) \Delta \kappa^n}{\sum^N_{n=1} E(\kappa^n)\Delta \kappa^n} \ ,\quad \Delta \kappa^n = \kappa^n - \kappa^{n-1} 861$$ 862 863$$ E(\kappa) = \frac{(\kappa/\kappa_e)^4}{[1 + 2.4(\kappa/\kappa_e)^2]^{17/6}} f_\eta f_{\mathrm{cut}} $$ 864 865$$ 866f_\eta = \exp \left[-(12\kappa /\kappa_\eta)^2 \right], \quad 867f_\mathrm{cut} = \exp \left( - \left [ \frac{4\max(\kappa-0.9\kappa_\mathrm{cut}, 0)}{\kappa_\mathrm{cut}} \right]^3 \right) 868$$ 869 870$\kappa_\eta$ represents turbulent dissipation frequency, and is given as $2\pi 871(\nu^3/\varepsilon)^{-1/4}$ with $\nu$ the kinematic viscosity and 872$\varepsilon$ the turbulent dissipation. $\kappa_\mathrm{cut}$ approximates the 873effective cutoff frequency of the mesh (viewing the mesh as a filter on 874solution over $\Omega$) and is given by: 875 876$$ 877\kappa_\mathrm{cut} = \frac{2\pi}{ 2\min\{ [\max(h_y, h_z, 0.3h_{\max}) + 0.1 d_w], h_{\max} \} } 878$$ 879 880The enforcement of the boundary condition is identical to the blasius inflow; 881it weakly enforces velocity, with the option of weakly enforcing either density 882or temperature using the the `-weakT` flag. 883 884##### Initialization Data Flow 885 886Data flow for initializing function (which creates the context data struct) is 887given below: 888```{mermaid} 889flowchart LR 890 subgraph STGInflow.dat 891 y 892 lt[l_t] 893 eps 894 Rij[R_ij] 895 ubar 896 end 897 898 subgraph STGRand.dat 899 rand[RN Set]; 900 end 901 902 subgraph User Input 903 u0[U0]; 904 end 905 906 subgraph init[Create Context Function] 907 ke[k_e] 908 N; 909 end 910 lt --Calc-->ke --Calc-->kn 911 y --Calc-->ke 912 913 subgraph context[Context Data] 914 yC[y] 915 randC[RN Set] 916 Cij[C_ij] 917 u0 --Copy--> u0C[U0] 918 kn[k^n]; 919 ubarC[ubar] 920 ltC[l_t] 921 epsC[eps] 922 end 923 ubar --Copy--> ubarC; 924 y --Copy--> yC; 925 lt --Copy--> ltC; 926 eps --Copy--> epsC; 927 928 rand --Copy--> randC; 929 rand --> N --Calc--> kn; 930 Rij --Calc--> Cij[C_ij] 931``` 932 933This is done once at runtime. The spatially-varying terms are then evaluated at 934each quadrature point on-the-fly, either by interpolation (for $l_t$, 935$\varepsilon$, $C_{ij}$, and $\overline{\bm u}$) or by calculation (for $q^n$). 936 937The `STGInflow.dat` file is a table of values at given distances from the wall. 938These values are then interpolated to a physical location (node or quadrature 939point). It has the following format: 940``` 941[Total number of locations] 14 942[d_w] [u_1] [u_2] [u_3] [R_11] [R_22] [R_33] [R_12] [R_13] [R_23] [sclr_1] [sclr_2] [l_t] [eps] 943``` 944where each `[ ]` item is a number in scientific notation (ie. `3.1415E0`), and `sclr_1` and 945`sclr_2` are reserved for turbulence modeling variables. They are not used in 946this example. 947 948The `STGRand.dat` file is the table of the random number set, $\{\bm{\sigma}^n, 949\bm{d}^n, \phi^n\}_{n=1}^N$. It has the format: 950``` 951[Number of wavemodes] 7 952[d_1] [d_2] [d_3] [phi] [sigma_1] [sigma_2] [sigma_3] 953``` 954 955The following table is presented to help clarify the dimensionality of the 956numerous terms in the STG formulation. 957 958| Math | Label | $f(\bm{x})$? | $f(n)$? | 959| ----------------- | -------- | -------------- | --------- | 960| $ \{\bm{\sigma}^n, \bm{d}^n, \phi^n\}_{n=1}^N$ | RN Set | No | Yes | 961| $\bm{\overline{u}}$ | ubar | Yes | No | 962| $U_0$ | U0 | No | No | 963| $l_t$ | l_t | Yes | No | 964| $\varepsilon$ | eps | Yes | No | 965| $\bm{R}$ | R_ij | Yes | No | 966| $\bm{C}$ | C_ij | Yes | No | 967| $q^n$ | q^n | Yes | Yes | 968| $\{\kappa^n\}_{n=1}^N$ | k^n | No | Yes | 969| $h_i$ | h_i | Yes | No | 970| $d_w$ | d_w | Yes | No | 971 972#### Internal Damping Layer (IDL) 973The STG inflow boundary condition creates large amplitude acoustic waves. 974We use an internal damping layer (IDL) to damp them out without disrupting the synthetic structures developing into natural turbulent structures. 975This implementation was inspired by {cite}`shurSTG2014`, but is implemented here as a ramped volumetric forcing term, similar to a sponge layer (see 8.4.2.4 in {cite}`colonius2023turbBC` for example). 976It takes the following form: 977 978$$ 979S(\bm{q}) = -\sigma(\bm{x})\left.\frac{\partial \bm{q}}{\partial \bm{Y}}\right\rvert_{\bm{q}} \bm{Y}' 980$$ 981 982where $\bm{Y}' = [P - P_\mathrm{ref}, \bm{0}, 0]^T$, and $\sigma(\bm{x})$ is a linear ramp starting at `-idl_start` with length `-idl_length` and an amplitude of inverse `-idl_decay_rate`. 983The damping is defined in terms of a pressure-primitive anomaly $\bm Y'$ converted to conservative source using $\partial \bm{q}/\partial \bm{Y}\rvert_{\bm{q}}$, which is linearized about the current flow state. 984$P_\mathrm{ref}$ has a default value equal to `-reference_pressure` flag, with an optional flag `-idl_pressure` to set it to a different value. 985 986### Meshing 987 988The flat plate boundary layer example has custom meshing features to better resolve the flow when using a generated box mesh. 989These meshing features modify the nodal layout of the default, equispaced box mesh and are enabled via `-mesh_transform platemesh`. 990One of those is tilting the top of the domain, allowing for it to be a outflow boundary condition. 991The angle of this tilt is controlled by `-platemesh_top_angle`. 992 993The primary meshing feature is the ability to grade the mesh, providing better 994resolution near the wall. There are two methods to do this; algorithmically, or 995specifying the node locations via a file. Algorithmically, a base node 996distribution is defined at the inlet (assumed to be $\min(x)$) and then 997linearly stretched/squeezed to match the slanted top boundary condition. Nodes 998are placed such that `-platemesh_Ndelta` elements are within 999`-platemesh_refine_height` of the wall. They are placed such that the element 1000height matches a geometric growth ratio defined by `-platemesh_growth`. The 1001remaining elements are then distributed from `-platemesh_refine_height` to the 1002top of the domain linearly in logarithmic space. 1003 1004Alternatively, a file may be specified containing the locations of each node. 1005The file should be newline delimited, with the first line specifying the number 1006of points and the rest being the locations of the nodes. The node locations 1007used exactly at the inlet (assumed to be $\min(x)$) and linearly 1008stretched/squeezed to match the slanted top boundary condition. The file is 1009specified via `-platemesh_y_node_locs_path`. If this flag is given an empty 1010string, then the algorithmic approach will be performed. 1011 1012## Taylor-Green Vortex 1013 1014This problem is really just an initial condition, the [Taylor-Green Vortex](https://en.wikipedia.org/wiki/Taylor%E2%80%93Green_vortex): 1015 1016$$ 1017\begin{aligned} 1018u &= V_0 \sin(\hat x) \cos(\hat y) \sin(\hat z) \\ 1019v &= -V_0 \cos(\hat x) \sin(\hat y) \sin(\hat z) \\ 1020w &= 0 \\ 1021p &= p_0 + \frac{\rho_0 V_0^2}{16} \left ( \cos(2 \hat x) + \cos(2 \hat y)\right) \left( \cos(2 \hat z) + 2 \right) \\ 1022\rho &= \frac{p}{R T_0} \\ 1023\end{aligned} 1024$$ 1025 1026where $\hat x = 2 \pi x / L$ for $L$ the length of the domain in that specific direction. 1027This coordinate modification is done to transform a given grid onto a domain of $x,y,z \in [0, 2\pi)$. 1028 1029This initial condition is traditionally given for the incompressible Navier-Stokes equations. 1030The reference state is selected using the `-reference_{velocity,pressure,temperature}` flags (Euclidean norm of `-reference_velocity` is used for $V_0$). 1031