'''
Exact integration for linear equations.
'''
import itertools
import sympy as sp
from sympy import Wild, Symbol, I, re, im
from brian2.equations.codestrings import is_constant_over_dt
from brian2.parsing.sympytools import sympy_to_str, str_to_sympy
from brian2.stateupdaters.base import (StateUpdateMethod,
UnsupportedEquationsException,
extract_method_options)
from brian2.utils.logger import get_logger
__all__ = ['linear', 'exact', 'independent']
logger = get_logger(__name__)
[docs]def get_linear_system(eqs, variables):
'''
Convert equations into a linear system using sympy.
Parameters
----------
eqs : `Equations`
The model equations.
Returns
-------
(diff_eq_names, coefficients, constants) : (list of str, `sympy.Matrix`, `sympy.Matrix`)
A tuple containing the variable names (`diff_eq_names`) corresponding
to the rows of the matrix `coefficients` and the vector `constants`,
representing the system of equations in the form M * X + B
Raises
------
ValueError
If the equations cannot be converted into an M * X + B form.
'''
diff_eqs = eqs.get_substituted_expressions(variables)
diff_eq_names = [name for name, _ in diff_eqs]
symbols = [Symbol(name, real=True) for name in diff_eq_names]
coefficients = sp.zeros(len(diff_eq_names))
constants = sp.zeros(len(diff_eq_names), 1)
for row_idx, (name, expr) in enumerate(diff_eqs):
s_expr = str_to_sympy(expr.code, variables).expand()
current_s_expr = s_expr
for col_idx, symbol in enumerate(symbols):
current_s_expr = current_s_expr.collect(symbol)
constant_wildcard = Wild('c', exclude=[symbol])
factor_wildcard = Wild('c_'+name, exclude=symbols)
one_pattern = factor_wildcard*symbol + constant_wildcard
matches = current_s_expr.match(one_pattern)
if matches is None:
raise UnsupportedEquationsException(('The expression "%s", '
'defining the variable '
'%s, could not be '
'separated into linear '
'components.') %
(expr, name))
coefficients[row_idx, col_idx] = matches[factor_wildcard]
current_s_expr = matches[constant_wildcard]
# The remaining constant should be a true constant
constants[row_idx] = current_s_expr
return (diff_eq_names, coefficients, constants)
[docs]class IndependentStateUpdater(StateUpdateMethod):
'''
A state update for equations that do not depend on other state variables,
i.e. 1-dimensional differential equations. The individual equations are
solved by sympy.
.. deprecated:: 2.1
This method might be removed from future versions of Brian.
'''
[docs] def __call__(self, equations, variables=None, method_options=None):
logger.warn("The 'independent' state updater is deprecated and might be "
"removed in future versions of Brian.",
'deprecated_independent', once=True)
method_options = extract_method_options(method_options, {})
if equations.is_stochastic:
raise UnsupportedEquationsException('Cannot solve stochastic '
'equations with this state '
'updater')
if variables is None:
variables = {}
diff_eqs = equations.get_substituted_expressions(variables)
t = Symbol('t', real=True, positive=True)
dt = Symbol('dt', real=True, positive=True)
t0 = Symbol('t0', real=True, positive=True)
code = []
for name, expression in diff_eqs:
rhs = str_to_sympy(expression.code, variables)
# We have to be careful and use the real=True assumption as well,
# otherwise sympy doesn't consider the symbol a match to the content
# of the equation
var = Symbol(name, real=True)
f = sp.Function(name)
rhs = rhs.subs(var, f(t))
derivative = sp.Derivative(f(t), t)
diff_eq = sp.Eq(derivative, rhs)
# TODO: simplify=True sometimes fails with 0.7.4, see:
# https://github.com/sympy/sympy/issues/2666
try:
general_solution = sp.dsolve(diff_eq, f(t), simplify=True)
except RuntimeError:
general_solution = sp.dsolve(diff_eq, f(t), simplify=False)
# Check whether this is an explicit solution
if not getattr(general_solution, 'lhs', None) == f(t):
raise UnsupportedEquationsException('Cannot explicitly solve: '
+ str(diff_eq))
# Solve for C1 (assuming "var" as the initial value and "t0" as time)
if general_solution.has(Symbol('C1')):
if general_solution.has(Symbol('C2')):
raise UnsupportedEquationsException('Too many constants in solution: %s' % str(general_solution))
constant_solution = sp.solve(general_solution, Symbol('C1'))
if len(constant_solution) != 1:
raise UnsupportedEquationsException(("Couldn't solve for the constant "
"C1 in : %s ") % str(general_solution))
constant = constant_solution[0].subs(t, t0).subs(f(t0), var)
solution = general_solution.rhs.subs('C1', constant)
else:
solution = general_solution.rhs.subs(t, t0).subs(f(t0), var)
# Evaluate the expression for one timestep
solution = solution.subs(t, t + dt).subs(t0, t)
# only try symplifying it -- it sometimes raises an error
try:
solution = solution.simplify()
except ValueError:
pass
code.append(name + ' = ' + sympy_to_str(solution))
return '\n'.join(code)
[docs]class LinearStateUpdater(StateUpdateMethod):
'''
A state updater for linear equations. Derives a state updater step from the
analytical solution given by sympy. Uses the matrix exponential (which is
only implemented for diagonalizable matrices in sympy).
'''
[docs] def __call__(self, equations, variables=None, method_options=None):
method_options = extract_method_options(method_options,
{'simplify': True})
if equations.is_stochastic:
raise UnsupportedEquationsException('Cannot solve stochastic '
'equations with this state '
'updater.')
if variables is None:
variables = {}
# Get a representation of the ODE system in the form of
# dX/dt = M*X + B
varnames, matrix, constants = get_linear_system(equations, variables)
# No differential equations, nothing to do (this occurs sometimes in the
# test suite where the whole model is nothing more than something like
# 'v : 1')
if matrix.shape == (0, 0):
return ''
# Make sure that the matrix M is constant, i.e. it only contains
# external variables or constant variables
t = Symbol('t', real=True, positive=True)
# Check for time dependence
dt_value = variables['dt'].get_value()[0] if 'dt' in variables else None
# This will raise an error if we meet the symbol "t" anywhere
# except as an argument of a locally constant function
for entry in itertools.chain(matrix, constants):
if not is_constant_over_dt(entry, variables, dt_value):
raise UnsupportedEquationsException(
('Expression "{}" is not guaranteed to be constant over a '
'time step').format(sympy_to_str(entry)))
symbols = [Symbol(variable, real=True) for variable in varnames]
solution = sp.solve_linear_system(matrix.row_join(constants), *symbols)
if solution is None or set(symbols) != set(solution.keys()):
raise UnsupportedEquationsException('Cannot solve the given '
'equations with this '
'stateupdater.')
b = sp.ImmutableMatrix([solution[symbol] for symbol in symbols])
# Solve the system
dt = Symbol('dt', real=True, positive=True)
try:
A = (matrix * dt).exp()
except NotImplementedError:
raise UnsupportedEquationsException('Cannot solve the given '
'equations with this '
'stateupdater.')
if method_options['simplify']:
A = A.applyfunc(lambda x:
sp.factor_terms(sp.cancel(sp.signsimp(x))))
C = sp.ImmutableMatrix(A * b) - b
_S = sp.MatrixSymbol('_S', len(varnames), 1)
updates = A * _S + C
updates = updates.as_explicit()
# The solution contains _S[0, 0], _S[1, 0] etc. for the state variables,
# replace them with the state variable names
abstract_code = []
for idx, (variable, update) in enumerate(zip(varnames, updates)):
rhs = update
if rhs.has(I, re, im):
raise UnsupportedEquationsException('The solution to the linear system '
'contains complex values '
'which is currently not implemented.')
for row_idx, varname in enumerate(varnames):
rhs = rhs.subs(_S[row_idx, 0], varname)
# Do not overwrite the real state variables yet, the update step
# of other state variables might still need the original values
abstract_code.append('_' + variable + ' = ' + sympy_to_str(rhs))
# Update the state variables
for variable in varnames:
abstract_code.append('{variable} = _{variable}'.format(variable=variable))
return '\n'.join(abstract_code)
def __repr__(self):
return '%s()' % self.__class__.__name__
independent = IndependentStateUpdater()
linear = LinearStateUpdater()
exact = linear