Exemplo n.º 1
0
    def solve(self, model, **kwds):
        """Solve the model.
        Warning: this solver is still in beta. Keyword arguments subject to
        change. Undocumented keyword arguments definitely subject to change.
        Warning: at this point in time, if you try to use PSC or GBD with
        anything other than IPOPT as the NLP solver, bad things will happen.
        This is because the suffixes are not in place to extract dual values
        from the variable bounds for any other solver.
        TODO: fix needed with the GBD implementation.
        Args:
            model (Block): a Pyomo model or block to be solved
        """
        config = self.CONFIG(kwds.pop('options', {}))
        config.set_value(kwds)

        # configuration confirmation
        if config.single_tree:
            config.iteration_limit = 1
            config.add_slack = False
            config.add_nogood_cuts = False
            config.mip_solver = 'cplex_persistent'
            config.logger.info(
                "Single tree implementation is activated. The defalt MIP solver is 'cplex_persistent'"
            )
        # if the slacks fix to zero, just don't add them
        if config.max_slack == 0.0:
            config.add_slack = False

        if config.strategy == "GOA":
            config.add_nogood_cuts = True
            config.add_slack = True
            config.use_mcpp = True
            config.integer_to_binary = True
            config.use_dual = False
            config.use_fbbt = True

        if config.nlp_solver == "baron":
            config.use_dual = False
        # if ecp tolerance is not provided use bound tolerance
        if config.ecp_tolerance is None:
            config.ecp_tolerance = config.bound_tolerance

        # if the objective function is a constant, dual bound constraint is not added.
        obj = next(model.component_data_objects(ctype=Objective, active=True))
        if obj.expr.polynomial_degree() == 0:
            config.use_dual_bound = False

        solve_data = MindtPySolveData()
        solve_data.results = SolverResults()
        solve_data.timing = Container()
        solve_data.curr_int_sol = []
        solve_data.prev_int_sol = []

        if config.use_fbbt:
            fbbt(model)
            config.logger.info(
                "Use the fbbt to tighten the bounds of variables")

        solve_data.original_model = model
        solve_data.working_model = model.clone()
        if config.integer_to_binary:
            TransformationFactory('contrib.integer_to_binary'). \
                apply_to(solve_data.working_model)

        new_logging_level = logging.INFO if config.tee else None
        with time_code(solve_data.timing, 'total', is_main_timer=True), \
                lower_logger_level_to(config.logger, new_logging_level), \
                create_utility_block(solve_data.working_model, 'MindtPy_utils', solve_data):
            config.logger.info("---Starting MindtPy---")

            MindtPy = solve_data.working_model.MindtPy_utils
            setup_results_object(solve_data, config)
            process_objective(solve_data, config, use_mcpp=config.use_mcpp)

            # Save model initial values.
            solve_data.initial_var_values = list(
                v.value for v in MindtPy.variable_list)

            # Store the initial model state as the best solution found. If we
            # find no better solution, then we will restore from this copy.
            solve_data.best_solution_found = None
            solve_data.best_solution_found_time = None

            # Record solver name
            solve_data.results.solver.name = 'MindtPy' + str(config.strategy)

            # Validate the model to ensure that MindtPy is able to solve it.
            if not model_is_valid(solve_data, config):
                return

            # Create a model block in which to store the generated feasibility
            # slack constraints. Do not leave the constraints on by default.
            feas = MindtPy.MindtPy_feas = Block()
            feas.deactivate()
            feas.feas_constraints = ConstraintList(
                doc='Feasibility Problem Constraints')

            # Create a model block in which to store the generated linear
            # constraints. Do not leave the constraints on by default.
            lin = MindtPy.MindtPy_linear_cuts = Block()
            lin.deactivate()

            # Integer cuts exclude particular discrete decisions
            lin.integer_cuts = ConstraintList(doc='integer cuts')
            # Feasible integer cuts exclude discrete realizations that have
            # been explored via an NLP subproblem. Depending on model
            # characteristics, the user may wish to revisit NLP subproblems
            # (with a different initialization, for example). Therefore, these
            # cuts are not enabled by default.
            #
            # Note: these cuts will only exclude integer realizations that are
            # not already in the primary integer_cuts ConstraintList.
            lin.feasible_integer_cuts = ConstraintList(
                doc='explored integer cuts')
            lin.feasible_integer_cuts.deactivate()

            # Set up iteration counters
            solve_data.nlp_iter = 0
            solve_data.mip_iter = 0
            solve_data.mip_subiter = 0

            # set up bounds
            solve_data.LB = float('-inf')
            solve_data.UB = float('inf')
            solve_data.LB_progress = [solve_data.LB]
            solve_data.UB_progress = [solve_data.UB]
            if config.single_tree and config.add_nogood_cuts:
                solve_data.stored_bound = {}
            if config.strategy == 'GOA' and config.add_nogood_cuts:
                solve_data.num_no_good_cuts_added = {}

            # Set of NLP iterations for which cuts were generated
            lin.nlp_iters = Set(dimen=1)

            # Set of MIP iterations for which cuts were generated in ECP
            lin.mip_iters = Set(dimen=1)

            if config.feasibility_norm == 'L1' or config.feasibility_norm == 'L2':
                feas.nl_constraint_set = Set(
                    initialize=[
                        i
                        for i, constr in enumerate(MindtPy.constraint_list, 1)
                        if constr.body.polynomial_degree() not in (1, 0)
                    ],
                    doc="Integer index set over the nonlinear constraints."
                    "The set corresponds to the index of nonlinear constraint in constraint_set"
                )
                # Create slack variables for feasibility problem
                feas.slack_var = Var(feas.nl_constraint_set,
                                     domain=NonNegativeReals,
                                     initialize=1)
            else:
                feas.slack_var = Var(domain=NonNegativeReals, initialize=1)

            # Create slack variables for OA cuts
            if config.add_slack:
                lin.slack_vars = VarList(bounds=(0, config.max_slack),
                                         initialize=0,
                                         domain=NonNegativeReals)

            # Flag indicating whether the solution improved in the past
            # iteration or not
            solve_data.solution_improved = False

            if config.nlp_solver == 'ipopt':
                if not hasattr(solve_data.working_model, 'ipopt_zL_out'):
                    solve_data.working_model.ipopt_zL_out = Suffix(
                        direction=Suffix.IMPORT)
                if not hasattr(solve_data.working_model, 'ipopt_zU_out'):
                    solve_data.working_model.ipopt_zU_out = Suffix(
                        direction=Suffix.IMPORT)

            # Initialize the master problem
            with time_code(solve_data.timing, 'initialization'):
                MindtPy_initialize_master(solve_data, config)

            # Algorithm main loop
            with time_code(solve_data.timing, 'main loop'):
                MindtPy_iteration_loop(solve_data, config)

            if solve_data.best_solution_found is not None:
                # Update values in original model
                copy_var_list_values(from_list=solve_data.best_solution_found.
                                     MindtPy_utils.variable_list,
                                     to_list=MindtPy.variable_list,
                                     config=config)
                # MindtPy.objective_value.set_value(
                #     value(solve_data.working_objective_expr, exception=False))
                copy_var_list_values(
                    MindtPy.variable_list,
                    solve_data.original_model.component_data_objects(Var),
                    config)

            solve_data.results.problem.lower_bound = solve_data.LB
            solve_data.results.problem.upper_bound = solve_data.UB

        solve_data.results.solver.timing = solve_data.timing
        solve_data.results.solver.user_time = solve_data.timing.total
        solve_data.results.solver.wallclock_time = solve_data.timing.total

        solve_data.results.solver.iterations = solve_data.mip_iter
        solve_data.results.solver.best_solution_found_time = solve_data.best_solution_found_time

        if config.single_tree:
            solve_data.results.solver.num_nodes = solve_data.nlp_iter - \
                (1 if config.init_strategy == 'rNLP' else 0)

        return solve_data.results
Exemplo n.º 2
0
    def solve(self, model, **kwds):
        """Solve the model.
        Warning: this solver is still in beta. Keyword arguments subject to
        change. Undocumented keyword arguments definitely subject to change.
        Warning: at this point in time, if you try to use PSC or GBD with
        anything other than IPOPT as the NLP solver, bad things will happen.
        This is because the suffixes are not in place to extract dual values
        from the variable bounds for any other solver.
        TODO: fix needed with the GBD implementation.
        Args:
            model (Block): a Pyomo model or block to be solved
        """
        config = self.CONFIG(kwds.pop('options', {}))
        config.set_value(kwds)
        solve_data = MindtPySolveData()
        solve_data.results = SolverResults()
        solve_data.timing = Container()

        old_logger_level = config.logger.getEffectiveLevel()
        with time_code(solve_data.timing, 'total'), \
             restore_logger_level(config.logger), \
             create_utility_block(model, 'MindtPy_utils', solve_data):
            if config.tee and old_logger_level > logging.INFO:
                # If the logger does not already include INFO, include it.
                config.logger.setLevel(logging.INFO)
            config.logger.info("---Starting MindtPy---")

            solve_data.original_model = model
            solve_data.working_model = model.clone()
            MindtPy = solve_data.working_model.MindtPy_utils
            setup_results_object(solve_data, config)
            process_objective(solve_data, config)

            # Save model initial values.
            solve_data.initial_var_values = list(
                v.value for v in MindtPy.variable_list)

            # Store the initial model state as the best solution found. If we
            # find no better solution, then we will restore from this copy.
            solve_data.best_solution_found = None

            # Record solver name
            solve_data.results.solver.name = 'MindtPy' + str(config.strategy)

            # Validate the model to ensure that MindtPy is able to solve it.
            if not model_is_valid(solve_data, config):
                return

            # Create a model block in which to store the generated feasibility
            # slack constraints. Do not leave the constraints on by default.
            feas = MindtPy.MindtPy_feas = Block()
            feas.deactivate()
            feas.feas_constraints = ConstraintList(
                doc='Feasibility Problem Constraints')

            # Create a model block in which to store the generated linear
            # constraints. Do not leave the constraints on by default.
            lin = MindtPy.MindtPy_linear_cuts = Block()
            lin.deactivate()

            # Integer cuts exclude particular discrete decisions
            lin.integer_cuts = ConstraintList(doc='integer cuts')
            # Feasible integer cuts exclude discrete realizations that have
            # been explored via an NLP subproblem. Depending on model
            # characteristics, the user may wish to revisit NLP subproblems
            # (with a different initialization, for example). Therefore, these
            # cuts are not enabled by default.
            #
            # Note: these cuts will only exclude integer realizations that are
            # not already in the primary integer_cuts ConstraintList.
            lin.feasible_integer_cuts = ConstraintList(
                doc='explored integer cuts')
            lin.feasible_integer_cuts.deactivate()

            # Set up iteration counters
            solve_data.nlp_iter = 0
            solve_data.mip_iter = 0
            solve_data.mip_subiter = 0

            # set up bounds
            solve_data.LB = float('-inf')
            solve_data.UB = float('inf')
            solve_data.LB_progress = [solve_data.LB]
            solve_data.UB_progress = [solve_data.UB]

            # Set of NLP iterations for which cuts were generated
            lin.nlp_iters = Set(dimen=1)

            # Set of MIP iterations for which cuts were generated in ECP
            lin.mip_iters = Set(dimen=1)

            nonlinear_constraints = [c for c in MindtPy.constraint_list if
                                     c.body.polynomial_degree() not in (1, 0)]
            lin.nl_constraint_set = RangeSet(
                len(nonlinear_constraints),
                doc="Integer index set over the nonlinear constraints")
            feas.constraint_set = RangeSet(
                len(MindtPy.constraint_list),
                doc="integer index set over the constraints")

            # # Mapping Constraint -> integer index
            # MindtPy.feas_map = {}
            # # Mapping integer index -> Constraint
            # MindtPy.feas_inverse_map = {}
            # # Generate the two maps. These maps may be helpful for later
            # # interpreting indices on the slack variables or generated cuts.
            # for c, n in zip(MindtPy.constraint_list, feas.constraint_set):
            #     MindtPy.feas_map[c] = n
            #     MindtPy.feas_inverse_map[n] = c

            # Create slack variables for OA cuts
            lin.slack_vars = VarList(bounds=(0, config.max_slack), initialize=0, domain=NonNegativeReals)
            # Create slack variables for feasibility problem
            feas.slack_var = Var(feas.constraint_set,
                                 domain=NonNegativeReals, initialize=1)

            # Flag indicating whether the solution improved in the past
            # iteration or not
            solve_data.solution_improved = False

            if not hasattr(solve_data.working_model, 'ipopt_zL_out'):
                solve_data.working_model.ipopt_zL_out = Suffix(
                    direction=Suffix.IMPORT)
            if not hasattr(solve_data.working_model, 'ipopt_zU_out'):
                solve_data.working_model.ipopt_zU_out = Suffix(
                    direction=Suffix.IMPORT)

            # Initialize the master problem
            with time_code(solve_data.timing, 'initialization'):
                MindtPy_initialize_master(solve_data, config)

            # Algorithm main loop
            with time_code(solve_data.timing, 'main loop'):
                MindtPy_iteration_loop(solve_data, config)

            if solve_data.best_solution_found is not None:
                # Update values in original model
                copy_var_list_values(
                    from_list=solve_data.best_solution_found.MindtPy_utils.variable_list,
                    to_list=MindtPy.variable_list,
                    config=config)
                # MindtPy.objective_value.set_value(
                #     value(solve_data.working_objective_expr, exception=False))
                copy_var_list_values(
                    MindtPy.variable_list,
                    solve_data.original_model.MindtPy_utils.variable_list,
                    config)

            solve_data.results.problem.lower_bound = solve_data.LB
            solve_data.results.problem.upper_bound = solve_data.UB
Exemplo n.º 3
0
    def solve(self, model, **kwds):
        """Solve the model.
        Warning: this solver is still in beta. Keyword arguments subject to
        change. Undocumented keyword arguments definitely subject to change.
        Warning: at this point in time, if you try to use PSC or GBD with
        anything other than IPOPT as the NLP solver, bad things will happen.
        This is because the suffixes are not in place to extract dual values
        from the variable bounds for any other solver.
        TODO: fix needed with the GBD implementation.
        Args:
            model (Block): a Pyomo model or block to be solved
        """
        config = self.CONFIG(kwds.pop('options', {}))
        config.set_value(kwds)
        solve_data = MindtPySolveData()
        solve_data.results = SolverResults()
        solve_data.timing = Container()

        solve_data.original_model = model
        solve_data.working_model = model.clone()
        if config.integer_to_binary:
            TransformationFactory('contrib.integer_to_binary'). \
                apply_to(solve_data.working_model)

        new_logging_level = logging.INFO if config.tee else None
        with time_code(solve_data.timing, 'total', is_main_timer=True), \
             lower_logger_level_to(config.logger, new_logging_level), \
             create_utility_block(solve_data.working_model, 'MindtPy_utils', solve_data):
            config.logger.info("---Starting MindtPy---")

            MindtPy = solve_data.working_model.MindtPy_utils
            setup_results_object(solve_data, config)
            process_objective(solve_data, config)

            # Save model initial values.
            solve_data.initial_var_values = list(
                v.value for v in MindtPy.variable_list)

            # Store the initial model state as the best solution found. If we
            # find no better solution, then we will restore from this copy.
            solve_data.best_solution_found = None

            # Record solver name
            solve_data.results.solver.name = 'MindtPy' + str(config.strategy)

            # Validate the model to ensure that MindtPy is able to solve it.
            if not model_is_valid(solve_data, config):
                return

            # Create a model block in which to store the generated feasibility
            # slack constraints. Do not leave the constraints on by default.
            feas = MindtPy.MindtPy_feas = Block()
            feas.deactivate()
            feas.feas_constraints = ConstraintList(
                doc='Feasibility Problem Constraints')

            # Create a model block in which to store the generated linear
            # constraints. Do not leave the constraints on by default.
            lin = MindtPy.MindtPy_linear_cuts = Block()
            lin.deactivate()

            # Integer cuts exclude particular discrete decisions
            lin.integer_cuts = ConstraintList(doc='integer cuts')
            # Feasible integer cuts exclude discrete realizations that have
            # been explored via an NLP subproblem. Depending on model
            # characteristics, the user may wish to revisit NLP subproblems
            # (with a different initialization, for example). Therefore, these
            # cuts are not enabled by default.
            #
            # Note: these cuts will only exclude integer realizations that are
            # not already in the primary integer_cuts ConstraintList.
            lin.feasible_integer_cuts = ConstraintList(
                doc='explored integer cuts')
            lin.feasible_integer_cuts.deactivate()

            # Set up iteration counters
            solve_data.nlp_iter = 0
            solve_data.mip_iter = 0
            solve_data.mip_subiter = 0

            # set up bounds
            solve_data.LB = float('-inf')
            solve_data.UB = float('inf')
            solve_data.LB_progress = [solve_data.LB]
            solve_data.UB_progress = [solve_data.UB]

            # Set of NLP iterations for which cuts were generated
            lin.nlp_iters = Set(dimen=1)

            # Set of MIP iterations for which cuts were generated in ECP
            lin.mip_iters = Set(dimen=1)

            nonlinear_constraints = [
                c for c in MindtPy.constraint_list
                if c.body.polynomial_degree() not in (1, 0)
            ]
            lin.nl_constraint_set = RangeSet(
                len(nonlinear_constraints),
                doc="Integer index set over the nonlinear constraints")
            feas.constraint_set = RangeSet(
                len(MindtPy.constraint_list),
                doc="integer index set over the constraints")

            # # Mapping Constraint -> integer index
            # MindtPy.feas_map = {}
            # # Mapping integer index -> Constraint
            # MindtPy.feas_inverse_map = {}
            # # Generate the two maps. These maps may be helpful for later
            # # interpreting indices on the slack variables or generated cuts.
            # for c, n in zip(MindtPy.constraint_list, feas.constraint_set):
            #     MindtPy.feas_map[c] = n
            #     MindtPy.feas_inverse_map[n] = c

            # Create slack variables for OA cuts
            lin.slack_vars = VarList(bounds=(0, config.max_slack),
                                     initialize=0,
                                     domain=NonNegativeReals)
            # Create slack variables for feasibility problem
            feas.slack_var = Var(feas.constraint_set,
                                 domain=NonNegativeReals,
                                 initialize=1)

            # Flag indicating whether the solution improved in the past
            # iteration or not
            solve_data.solution_improved = False

            if not hasattr(solve_data.working_model, 'ipopt_zL_out'):
                solve_data.working_model.ipopt_zL_out = Suffix(
                    direction=Suffix.IMPORT)
            if not hasattr(solve_data.working_model, 'ipopt_zU_out'):
                solve_data.working_model.ipopt_zU_out = Suffix(
                    direction=Suffix.IMPORT)

            # Initialize the master problem
            with time_code(solve_data.timing, 'initialization'):
                MindtPy_initialize_master(solve_data, config)

            # Algorithm main loop
            with time_code(solve_data.timing, 'main loop'):
                MindtPy_iteration_loop(solve_data, config)

            if solve_data.best_solution_found is not None:
                # Update values in original model
                copy_var_list_values(from_list=solve_data.best_solution_found.
                                     MindtPy_utils.variable_list,
                                     to_list=MindtPy.variable_list,
                                     config=config)
                # MindtPy.objective_value.set_value(
                #     value(solve_data.working_objective_expr, exception=False))
                copy_var_list_values(
                    MindtPy.variable_list,
                    solve_data.original_model.component_data_objects(Var),
                    config)

            solve_data.results.problem.lower_bound = solve_data.LB
            solve_data.results.problem.upper_bound = solve_data.UB

        solve_data.results.solver.timing = solve_data.timing
        solve_data.results.solver.user_time = solve_data.timing.total
        solve_data.results.solver.wallclock_time = solve_data.timing.total

        solve_data.results.solver.iterations = solve_data.mip_iter

        return solve_data.results
Exemplo n.º 4
0
    def solve(self, model, **kwds):
        """Solve the model.

        Parameters
        ----------
        model : Pyomo model
            The MINLP model to be solved.

        Returns
        -------
        results : SolverResults
            Results from solving the MINLP problem by MindtPy.
        """
        config = self.CONFIG(kwds.pop('options', {
        }), preserve_implicit=True)  # TODO: do we need to set preserve_implicit=True?
        config.set_value(kwds)
        set_up_logger(config)
        check_config(config)

        solve_data = set_up_solve_data(model, config)

        if config.integer_to_binary:
            TransformationFactory('contrib.integer_to_binary'). \
                apply_to(solve_data.working_model)

        new_logging_level = logging.INFO if config.tee else None
        with time_code(solve_data.timing, 'total', is_main_timer=True), \
                lower_logger_level_to(config.logger, new_logging_level), \
                create_utility_block(solve_data.working_model, 'MindtPy_utils', solve_data):
            config.logger.info(
                '---------------------------------------------------------------------------------------------\n'
                '              Mixed-Integer Nonlinear Decomposition Toolbox in Pyomo (MindtPy)               \n'
                '---------------------------------------------------------------------------------------------\n'
                'For more information, please visit https://pyomo.readthedocs.io/en/stable/contributed_packages/mindtpy.html')

            MindtPy = solve_data.working_model.MindtPy_utils
            setup_results_object(solve_data, config)
            # In the process_objective function, as long as the objective function is nonlinear, it will be reformulated and the variable/constraint/objective lists will be updated.
            # For OA/GOA/LP-NLP algorithm, if the objective funtion is linear, it will not be reformulated as epigraph constraint.
            # If the objective function is linear, it will be reformulated as epigraph constraint only if the Feasibility Pump or ROA/RLP-NLP algorithm is activated. (move_objective = True)
            # In some cases, the variable/constraint/objective lists will not be updated even if the objective is epigraph-reformulated.
            # In Feasibility Pump, since the distance calculation only includes discrete variables and the epigraph slack variables are continuous variables, the Feasibility Pump algorithm will not affected even if the variable list are updated.
            # In ROA and RLP/NLP, since the distance calculation does not include these epigraph slack variables, they should not be added to the variable list. (update_var_con_list = False)
            # In the process_objective function, once the objective function has been reformulated as epigraph constraint, the variable/constraint/objective lists will not be updated only if the MINLP has a linear objective function and regularization is activated at the same time.
            # This is because the epigraph constraint is very "flat" for branching rules. The original objective function will be used for the main problem and epigraph reformulation will be used for the projection problem.
            # TODO: The logic here is too complicated, can we simplify it?
            process_objective(solve_data, config,
                              move_objective=(config.init_strategy == 'FP'
                                                     or config.add_regularization is not None
                                                     or config.move_objective),
                              use_mcpp=config.use_mcpp,
                              update_var_con_list=config.add_regularization is None,
                              partition_nonlinear_terms=config.partition_obj_nonlinear_terms,
                              obj_handleable_polynomial_degree=solve_data.mip_objective_polynomial_degree,
                              constr_handleable_polynomial_degree=solve_data.mip_constraint_polynomial_degree
                              )
            # The epigraph constraint is very "flat" for branching rules.
            # If ROA/RLP-NLP is activated and the original objective function is linear, we will use the original objective for the main mip.
            if MindtPy.objective_list[0].expr.polynomial_degree() in solve_data.mip_objective_polynomial_degree and config.add_regularization is not None:
                MindtPy.objective_list[0].activate()
                MindtPy.objective_constr.deactivate()
                MindtPy.objective.deactivate()

            # Save model initial values.
            solve_data.initial_var_values = list(
                v.value for v in MindtPy.variable_list)

            # Store the initial model state as the best solution found. If we
            # find no better solution, then we will restore from this copy.
            solve_data.best_solution_found = None
            solve_data.best_solution_found_time = None

            # Record solver name
            solve_data.results.solver.name = 'MindtPy' + str(config.strategy)

            # Validate the model to ensure that MindtPy is able to solve it.
            if not model_is_valid(solve_data, config):
                return

            # Create a model block in which to store the generated feasibility
            # slack constraints. Do not leave the constraints on by default.
            feas = MindtPy.feas_opt = Block()
            feas.deactivate()
            feas.feas_constraints = ConstraintList(
                doc='Feasibility Problem Constraints')

            # Create a model block in which to store the generated linear
            # constraints. Do not leave the constraints on by default.
            lin = MindtPy.cuts = Block()
            lin.deactivate()

            # no-good cuts exclude particular discrete decisions
            lin.no_good_cuts = ConstraintList(doc='no-good cuts')
            # Feasible no-good cuts exclude discrete realizations that have
            # been explored via an NLP subproblem. Depending on model
            # characteristics, the user may wish to revisit NLP subproblems
            # (with a different initialization, for example). Therefore, these
            # cuts are not enabled by default.
            #
            # Note: these cuts will only exclude integer realizations that are
            # not already in the primary no_good_cuts ConstraintList.
            lin.feasible_no_good_cuts = ConstraintList(
                doc='explored no-good cuts')
            lin.feasible_no_good_cuts.deactivate()

            if config.feasibility_norm == 'L1' or config.feasibility_norm == 'L2':
                feas.nl_constraint_set = RangeSet(len(MindtPy.nonlinear_constraint_list),
                                                  doc='Integer index set over the nonlinear constraints.')
                # Create slack variables for feasibility problem
                feas.slack_var = Var(feas.nl_constraint_set,
                                     domain=NonNegativeReals, initialize=1)
            else:
                feas.slack_var = Var(domain=NonNegativeReals, initialize=1)

            # Create slack variables for OA cuts
            if config.add_slack:
                lin.slack_vars = VarList(
                    bounds=(0, config.max_slack), initialize=0, domain=NonNegativeReals)

            # Initialize the main problem
            with time_code(solve_data.timing, 'initialization'):
                MindtPy_initialize_main(solve_data, config)

            # Algorithm main loop
            with time_code(solve_data.timing, 'main loop'):
                MindtPy_iteration_loop(solve_data, config)
            if solve_data.best_solution_found is not None:
                # Update values in original model
                copy_var_list_values(
                    from_list=solve_data.best_solution_found.MindtPy_utils.variable_list,
                    to_list=MindtPy.variable_list,
                    config=config)
                copy_var_list_values(
                    MindtPy.variable_list,
                    [i for i in solve_data.original_model.component_data_objects(
                        Var) if not i.fixed],
                    config)
                # exclude fixed variables here. This is consistent with the definition of variable_list in GDPopt.util
            if solve_data.objective_sense == minimize:
                solve_data.results.problem.lower_bound = solve_data.dual_bound
                solve_data.results.problem.upper_bound = solve_data.primal_bound
            else:
                solve_data.results.problem.lower_bound = solve_data.primal_bound
                solve_data.results.problem.upper_bound = solve_data.dual_bound

            solve_data.results.solver.timing = solve_data.timing
            solve_data.results.solver.user_time = solve_data.timing.total
            solve_data.results.solver.wallclock_time = solve_data.timing.total
            solve_data.results.solver.iterations = solve_data.mip_iter
            solve_data.results.solver.num_infeasible_nlp_subproblem = solve_data.nlp_infeasible_counter
            solve_data.results.solver.best_solution_found_time = solve_data.best_solution_found_time
            solve_data.results.solver.primal_integral = get_primal_integral(solve_data, config)
            solve_data.results.solver.dual_integral = get_dual_integral(solve_data, config)
            solve_data.results.solver.primal_dual_gap_integral = solve_data.results.solver.primal_integral + \
                solve_data.results.solver.dual_integral
            config.logger.info(' {:<25}:   {:>7.4f} '.format(
                'Primal-dual gap integral', solve_data.results.solver.primal_dual_gap_integral))

            if config.single_tree:
                solve_data.results.solver.num_nodes = solve_data.nlp_iter - \
                    (1 if config.init_strategy == 'rNLP' else 0)

        return solve_data.results
Exemplo n.º 5
0
    def solve(self, model, **kwds):
        """Solve the model.

        Warning: this solver is still in beta. Keyword arguments subject to
        change. Undocumented keyword arguments definitely subject to change.

        Args:
            model (Block): a Pyomo model or block to be solved.
        """
        config = self.CONFIG(kwds.pop('options', {}))
        config.set_value(kwds)
        set_up_logger(config)
        check_config(config)

        solve_data = set_up_solve_data(model, config)

        if config.integer_to_binary:
            TransformationFactory('contrib.integer_to_binary'). \
                apply_to(solve_data.working_model)

        new_logging_level = logging.INFO if config.tee else None
        with time_code(solve_data.timing, 'total', is_main_timer=True), \
                lower_logger_level_to(config.logger, new_logging_level), \
                create_utility_block(solve_data.working_model, 'MindtPy_utils', solve_data):
            config.logger.info(
                '---------------------------------------------------------------------------------------------\n'
                '              Mixed-Integer Nonlinear Decomposition Toolbox in Pyomo (MindtPy)               \n'
                '---------------------------------------------------------------------------------------------\n'
                'For more information, please visit https://pyomo.readthedocs.io/en/stable/contributed_packages/mindtpy.html')

            MindtPy = solve_data.working_model.MindtPy_utils
            setup_results_object(solve_data, config)
            process_objective(solve_data, config,
                              move_linear_objective=(config.init_strategy == 'FP'
                                                     or config.add_regularization is not None),
                              use_mcpp=config.use_mcpp,
                              updata_var_con_list=config.add_regularization is None
                              )
            # The epigraph constraint is very "flat" for branching rules,
            # we want to use to original model for the main mip.
            if MindtPy.objective_list[0].expr.polynomial_degree() in {1, 0} and config.add_regularization is not None:
                MindtPy.objective_list[0].activate()
                MindtPy.objective_constr.deactivate()
                MindtPy.objective.deactivate()

            # Save model initial values.
            solve_data.initial_var_values = list(
                v.value for v in MindtPy.variable_list)

            # Store the initial model state as the best solution found. If we
            # find no better solution, then we will restore from this copy.
            solve_data.best_solution_found = None
            solve_data.best_solution_found_time = None

            # Record solver name
            solve_data.results.solver.name = 'MindtPy' + str(config.strategy)

            # Validate the model to ensure that MindtPy is able to solve it.
            if not model_is_valid(solve_data, config):
                return

            # Create a model block in which to store the generated feasibility
            # slack constraints. Do not leave the constraints on by default.
            feas = MindtPy.feas_opt = Block()
            feas.deactivate()
            feas.feas_constraints = ConstraintList(
                doc='Feasibility Problem Constraints')

            # Create a model block in which to store the generated linear
            # constraints. Do not leave the constraints on by default.
            lin = MindtPy.cuts = Block()
            lin.deactivate()

            # no-good cuts exclude particular discrete decisions
            lin.no_good_cuts = ConstraintList(doc='no-good cuts')
            # Feasible no-good cuts exclude discrete realizations that have
            # been explored via an NLP subproblem. Depending on model
            # characteristics, the user may wish to revisit NLP subproblems
            # (with a different initialization, for example). Therefore, these
            # cuts are not enabled by default.
            #
            # Note: these cuts will only exclude integer realizations that are
            # not already in the primary no_good_cuts ConstraintList.
            lin.feasible_no_good_cuts = ConstraintList(
                doc='explored no-good cuts')
            lin.feasible_no_good_cuts.deactivate()

            if config.feasibility_norm == 'L1' or config.feasibility_norm == 'L2':
                feas.nl_constraint_set = RangeSet(len(MindtPy.nonlinear_constraint_list),
                                                  doc='Integer index set over the nonlinear constraints.')
                # Create slack variables for feasibility problem
                feas.slack_var = Var(feas.nl_constraint_set,
                                     domain=NonNegativeReals, initialize=1)
            else:
                feas.slack_var = Var(domain=NonNegativeReals, initialize=1)

            # Create slack variables for OA cuts
            if config.add_slack:
                lin.slack_vars = VarList(
                    bounds=(0, config.max_slack), initialize=0, domain=NonNegativeReals)

            # Initialize the main problem
            with time_code(solve_data.timing, 'initialization'):
                MindtPy_initialize_main(solve_data, config)

            # Algorithm main loop
            with time_code(solve_data.timing, 'main loop'):
                MindtPy_iteration_loop(solve_data, config)
            if solve_data.best_solution_found is not None:
                # Update values in original model
                copy_var_list_values(
                    from_list=solve_data.best_solution_found.MindtPy_utils.variable_list,
                    to_list=MindtPy.variable_list,
                    config=config)
                copy_var_list_values(
                    MindtPy.variable_list,
                    [i for i in solve_data.original_model.component_data_objects(
                        Var) if not i.fixed],
                    config)
                # exclude fixed variables here. This is consistent with the definition of variable_list in GDPopt.util

            solve_data.results.problem.lower_bound = solve_data.LB
            solve_data.results.problem.upper_bound = solve_data.UB

        solve_data.results.solver.timing = solve_data.timing
        solve_data.results.solver.user_time = solve_data.timing.total
        solve_data.results.solver.wallclock_time = solve_data.timing.total
        solve_data.results.solver.iterations = solve_data.mip_iter
        solve_data.results.solver.num_infeasible_nlp_subproblem = solve_data.nlp_infeasible_counter
        solve_data.results.solver.best_solution_found_time = solve_data.best_solution_found_time

        if config.single_tree:
            solve_data.results.solver.num_nodes = solve_data.nlp_iter - \
                (1 if config.init_strategy == 'rNLP' else 0)

        return solve_data.results
Exemplo n.º 6
0
    def solve(self, model, **kwds):
        """Solve the model.

        Warning: this solver is still in beta. Keyword arguments subject to
        change. Undocumented keyword arguments definitely subject to change.

        Args:
            model (Block): a Pyomo model or block to be solved
        """
        config = self.CONFIG(kwds.pop('options', {}))
        config.set_value(kwds)

        solve_data = MindtPySolveData()
        solve_data.results = SolverResults()
        solve_data.timing = Bunch()
        solve_data.curr_int_sol = []
        solve_data.should_terminate = False
        solve_data.integer_list = []

        check_config(config)

        # if the objective function is a constant, dual bound constraint is not added.
        obj = next(model.component_data_objects(ctype=Objective, active=True))
        if obj.expr.polynomial_degree() == 0:
            config.use_dual_bound = False

        if config.use_fbbt:
            fbbt(model)
            # TODO: logging_level is not logging.INFO here
            config.logger.info(
                'Use the fbbt to tighten the bounds of variables')

        solve_data.original_model = model
        solve_data.working_model = model.clone()
        if config.integer_to_binary:
            TransformationFactory('contrib.integer_to_binary'). \
                apply_to(solve_data.working_model)

        new_logging_level = logging.INFO if config.tee else None
        with time_code(solve_data.timing, 'total', is_main_timer=True), \
                lower_logger_level_to(config.logger, new_logging_level), \
                create_utility_block(solve_data.working_model, 'MindtPy_utils', solve_data):
            config.logger.info('---Starting MindtPy---')

            MindtPy = solve_data.working_model.MindtPy_utils
            setup_results_object(solve_data, config)
            process_objective(
                solve_data,
                config,
                move_linear_objective=(config.init_strategy == 'FP' or
                                       config.add_regularization is not None),
                use_mcpp=config.use_mcpp,
                updata_var_con_list=config.add_regularization is None)
            # The epigraph constraint is very "flat" for branching rules,
            # we want to use to original model for the main mip.
            if MindtPy.objective_list[0].expr.polynomial_degree() in {
                    1, 0
            } and config.add_regularization is not None:
                MindtPy.objective_list[0].activate()
                MindtPy.objective_constr.deactivate()
                MindtPy.objective.deactivate()

            # Save model initial values.
            solve_data.initial_var_values = list(
                v.value for v in MindtPy.variable_list)

            # Store the initial model state as the best solution found. If we
            # find no better solution, then we will restore from this copy.
            solve_data.best_solution_found = None
            solve_data.best_solution_found_time = None

            # Record solver name
            solve_data.results.solver.name = 'MindtPy' + str(config.strategy)

            # Validate the model to ensure that MindtPy is able to solve it.
            if not model_is_valid(solve_data, config):
                return

            # Create a model block in which to store the generated feasibility
            # slack constraints. Do not leave the constraints on by default.
            feas = MindtPy.feas_opt = Block()
            feas.deactivate()
            feas.feas_constraints = ConstraintList(
                doc='Feasibility Problem Constraints')

            # Create a model block in which to store the generated linear
            # constraints. Do not leave the constraints on by default.
            lin = MindtPy.cuts = Block()
            lin.deactivate()

            # no-good cuts exclude particular discrete decisions
            lin.no_good_cuts = ConstraintList(doc='no-good cuts')
            # Feasible no-good cuts exclude discrete realizations that have
            # been explored via an NLP subproblem. Depending on model
            # characteristics, the user may wish to revisit NLP subproblems
            # (with a different initialization, for example). Therefore, these
            # cuts are not enabled by default.
            #
            # Note: these cuts will only exclude integer realizations that are
            # not already in the primary no_good_cuts ConstraintList.
            lin.feasible_no_good_cuts = ConstraintList(
                doc='explored no-good cuts')
            lin.feasible_no_good_cuts.deactivate()

            # Set up iteration counters
            solve_data.nlp_iter = 0
            solve_data.mip_iter = 0
            solve_data.mip_subiter = 0
            solve_data.nlp_infeasible_counter = 0
            if config.init_strategy == 'FP':
                solve_data.fp_iter = 1

            # set up bounds
            solve_data.LB = float('-inf')
            solve_data.UB = float('inf')
            solve_data.LB_progress = [solve_data.LB]
            solve_data.UB_progress = [solve_data.UB]
            if config.single_tree and (config.add_no_good_cuts
                                       or config.use_tabu_list):
                solve_data.stored_bound = {}
            if config.strategy == 'GOA' and (config.add_no_good_cuts
                                             or config.use_tabu_list):
                solve_data.num_no_good_cuts_added = {}

            # Set of NLP iterations for which cuts were generated
            lin.nlp_iters = Set(dimen=1)

            # Set of MIP iterations for which cuts were generated in ECP
            lin.mip_iters = Set(dimen=1)

            if config.feasibility_norm == 'L1' or config.feasibility_norm == 'L2':
                feas.nl_constraint_set = RangeSet(
                    len(MindtPy.nonlinear_constraint_list),
                    doc='Integer index set over the nonlinear constraints.')
                # Create slack variables for feasibility problem
                feas.slack_var = Var(feas.nl_constraint_set,
                                     domain=NonNegativeReals,
                                     initialize=1)
            else:
                feas.slack_var = Var(domain=NonNegativeReals, initialize=1)

            # Create slack variables for OA cuts
            if config.add_slack:
                lin.slack_vars = VarList(bounds=(0, config.max_slack),
                                         initialize=0,
                                         domain=NonNegativeReals)

            # Flag indicating whether the solution improved in the past
            # iteration or not
            solve_data.solution_improved = False
            solve_data.bound_improved = False

            if config.nlp_solver == 'ipopt':
                if not hasattr(solve_data.working_model, 'ipopt_zL_out'):
                    solve_data.working_model.ipopt_zL_out = Suffix(
                        direction=Suffix.IMPORT)
                if not hasattr(solve_data.working_model, 'ipopt_zU_out'):
                    solve_data.working_model.ipopt_zU_out = Suffix(
                        direction=Suffix.IMPORT)

            # Initialize the main problem
            with time_code(solve_data.timing, 'initialization'):
                MindtPy_initialize_main(solve_data, config)

            # Algorithm main loop
            with time_code(solve_data.timing, 'main loop'):
                MindtPy_iteration_loop(solve_data, config)
            if solve_data.best_solution_found is not None:
                # Update values in original model
                copy_var_list_values(from_list=solve_data.best_solution_found.
                                     MindtPy_utils.variable_list,
                                     to_list=MindtPy.variable_list,
                                     config=config)
                copy_var_list_values(MindtPy.variable_list, [
                    i
                    for i in solve_data.original_model.component_data_objects(
                        Var) if not i.fixed
                ], config)
                # exclude fixed variables here. This is consistent with the definition of variable_list in GDPopt.util

            solve_data.results.problem.lower_bound = solve_data.LB
            solve_data.results.problem.upper_bound = solve_data.UB

        solve_data.results.solver.timing = solve_data.timing
        solve_data.results.solver.user_time = solve_data.timing.total
        solve_data.results.solver.wallclock_time = solve_data.timing.total
        solve_data.results.solver.iterations = solve_data.mip_iter
        solve_data.results.solver.num_infeasible_nlp_subproblem = solve_data.nlp_infeasible_counter
        solve_data.results.solver.best_solution_found_time = solve_data.best_solution_found_time

        if config.single_tree:
            solve_data.results.solver.num_nodes = solve_data.nlp_iter - \
                (1 if config.init_strategy == 'rNLP' else 0)

        return solve_data.results