From 82a44e0d64afb8818ea98d68dc08108885d503c2 Mon Sep 17 00:00:00 2001 From: Adrian Kummerlaender Date: Mon, 21 Oct 2019 18:42:24 +0200 Subject: Pull in basics from symlbm_playground It's time to extract the generator-part of my GPU LBM playground and turn it into a nice reusable library. The goal is to produce a framework that can be used to generate collision and streaming programs from symbolic descriptions. i.e. it should be possible to select a LB model, the desired boundary conditions as well as a data structure / streaming model and use this information to automatically generate matching OpenCL / CUDA / C++ programs. --- boltzgen/lbm/__init__.py | 60 +++++++++++++++++++++++++++++++++++ boltzgen/lbm/model/D2Q9.py | 7 ++++ boltzgen/lbm/model/D3Q19.py | 18 +++++++++++ boltzgen/lbm/model/D3Q27.py | 7 ++++ boltzgen/lbm/model/D3Q7.py | 18 +++++++++++ boltzgen/lbm/model/characteristics.py | 27 ++++++++++++++++ 6 files changed, 137 insertions(+) create mode 100644 boltzgen/lbm/__init__.py create mode 100644 boltzgen/lbm/model/D2Q9.py create mode 100644 boltzgen/lbm/model/D3Q19.py create mode 100644 boltzgen/lbm/model/D3Q27.py create mode 100644 boltzgen/lbm/model/D3Q7.py create mode 100644 boltzgen/lbm/model/characteristics.py (limited to 'boltzgen/lbm') diff --git a/boltzgen/lbm/__init__.py b/boltzgen/lbm/__init__.py new file mode 100644 index 0000000..f80feaa --- /dev/null +++ b/boltzgen/lbm/__init__.py @@ -0,0 +1,60 @@ +from sympy import * +from sympy.codegen.ast import Assignment + +import utility.optimizations as optimizations +from lbm.model.characteristics import weights, c_s + + +def assign(names, definitions): + return list(map(lambda x: Assignment(*x), zip(names, definitions))) + +class LBM: + def __init__(self, descriptor): + self.descriptor = descriptor + self.f_next = symarray('f_next', descriptor.q) + self.f_curr = symarray('f_curr', descriptor.q) + + if not hasattr(descriptor, 'w'): + self.descriptor.w = weights(descriptor.d, descriptor.c) + + if not hasattr(descriptor, 'c_s'): + self.descriptor.c_s = c_s(descriptor.d, descriptor.c, self.descriptor.w) + + def moments(self, optimize = True): + rho = symbols('rho') + u = Matrix(symarray('u', self.descriptor.d)) + + exprs = [ Assignment(rho, sum(self.f_curr)) ] + + for i, u_i in enumerate(u): + exprs.append( + Assignment(u_i, sum([ (c_j*self.f_curr[j])[i] for j, c_j in enumerate(self.descriptor.c) ]) / sum(self.f_curr))) + + if optimize: + return cse(exprs, optimizations=optimizations.custom, symbols=numbered_symbols(prefix='m')) + else: + return ([], exprs) + + def equilibrium(self): + rho = symbols('rho') + u = Matrix(symarray('u', self.descriptor.d)) + + f_eq = [] + + for i, c_i in enumerate(self.descriptor.c): + f_eq_i = self.descriptor.w[i] * rho * ( 1 + + c_i.dot(u) / self.descriptor.c_s**2 + + c_i.dot(u)**2 / (2*self.descriptor.c_s**4) + - u.dot(u) / (2*self.descriptor.c_s**2) ) + f_eq.append(f_eq_i) + + return f_eq + + def bgk(self, tau, f_eq, optimize = True): + exprs = [ self.f_curr[i] + 1/tau * (f_eq_i - self.f_curr[i]) for i, f_eq_i in enumerate(f_eq) ] + + if optimize: + subexprs, f = cse(exprs, optimizations=optimizations.custom) + return (subexprs, assign(self.f_next, f)) + else: + return ([], assign(self.f_next, exprs)) diff --git a/boltzgen/lbm/model/D2Q9.py b/boltzgen/lbm/model/D2Q9.py new file mode 100644 index 0000000..e3ac9de --- /dev/null +++ b/boltzgen/lbm/model/D2Q9.py @@ -0,0 +1,7 @@ +from sympy import Matrix +from itertools import product + +d = 2 +q = 9 + +c = [ Matrix(x) for x in product([-1,0,1], repeat=d) ] diff --git a/boltzgen/lbm/model/D3Q19.py b/boltzgen/lbm/model/D3Q19.py new file mode 100644 index 0000000..e9e6eec --- /dev/null +++ b/boltzgen/lbm/model/D3Q19.py @@ -0,0 +1,18 @@ +from sympy import Matrix, Rational, sqrt + +d = 3 +q = 19 + +c = [ Matrix(x) for x in [ + ( 0, 1, 1), (-1, 0, 1), ( 0, 0, 1), ( 1, 0, 1), ( 0, -1, 1), + (-1, 1, 0), ( 0, 1, 0), ( 1, 1, 0), (-1, 0, 0), ( 0, 0, 0), ( 1, 0, 0), (-1,-1, 0), ( 0, -1, 0), ( 1, -1, 0), + ( 0, 1,-1), (-1, 0,-1), ( 0, 0,-1), ( 1, 0,-1), ( 0, -1,-1) +]] + +w = [Rational(*x) for x in [ + (1,36), (1,36), (1,18), (1,36), (1,36), + (1,36), (1,18), (1,36), (1,18), (1,3), (1,18), (1,36), (1,18), (1,36), + (1,36), (1,36), (1,18), (1,36), (1,36) +]] + +c_s = sqrt(Rational(1,3)) diff --git a/boltzgen/lbm/model/D3Q27.py b/boltzgen/lbm/model/D3Q27.py new file mode 100644 index 0000000..6fb1f80 --- /dev/null +++ b/boltzgen/lbm/model/D3Q27.py @@ -0,0 +1,7 @@ +from sympy import Matrix +from itertools import product + +d = 3 +q = 27 + +c = [ Matrix(x) for x in product([-1,0,1], repeat=d) ] diff --git a/boltzgen/lbm/model/D3Q7.py b/boltzgen/lbm/model/D3Q7.py new file mode 100644 index 0000000..04e16a3 --- /dev/null +++ b/boltzgen/lbm/model/D3Q7.py @@ -0,0 +1,18 @@ +from sympy import * + +q = 7 +d = 3 + +c = [ Matrix(x) for x in [ + ( 0, 0, 1), + ( 0, 1, 0), (-1, 0, 0), ( 0, 0, 0), ( 1, 0, 0), ( 0, -1, 0), + ( 0, 0,-1) +]] + +w = [Rational(*x) for x in [ + (1,8), + (1,8), (1,8), (1,4), (1,8), (1,8), + (1,8) +]] + +c_s = sqrt(Rational(1,4)) diff --git a/boltzgen/lbm/model/characteristics.py b/boltzgen/lbm/model/characteristics.py new file mode 100644 index 0000000..b68afeb --- /dev/null +++ b/boltzgen/lbm/model/characteristics.py @@ -0,0 +1,27 @@ +from sympy import * + +# copy of `sympy.integrals.quadrature.gauss_hermite` sans evaluation +def gauss_hermite(n): + x = Dummy("x") + p = hermite_poly(n, x, polys=True) + p1 = hermite_poly(n-1, x, polys=True) + xi = [] + w = [] + for r in p.real_roots(): + xi.append(r) + w.append(((2**(n-1) * factorial(n) * sqrt(pi))/(n**2 * p1.subs(x, r)**2))) + return xi, w + +# determine weights of a d-dimensional LBM model on velocity set c +# (only works for velocity sets that result into NSE-recovering LB models when +# plugged into Gauss-Hermite quadrature without any additional arguments +# i.e. D2Q9 and D3Q27 but not D3Q19) +def weights(d, c): + _, omegas = gauss_hermite(3) + return list(map(lambda c_i: Mul(*[ omegas[1+c_i[iDim]] for iDim in range(0,d) ]) / pi**(d/2), c)) + +# determine lattice speed of sound using directions and their weights +def c_s(d, c, w): + speeds = set([ sqrt(sum([ w[i] * c_i[j]**2 for i, c_i in enumerate(c) ])) for j in range(0,d) ]) + assert len(speeds) == 1 # verify isotropy + return speeds.pop() -- cgit v1.2.3