def test_check_values(self): pyomo_model = po.ConcreteModel() pyomo_model.new_set = po.Set(initialize=["a", "b"]) pyomo_model.new_param = po.Param( pyomo_model.new_set, initialize={"a": 1}, mutable=True, within=po.NonNegativeReals, ) assert check_value(pyomo_model.new_param["a"]) is False assert check_value(pyomo_model.new_param["b"]) is True
def resource_area_constraint_rule(backend_model, constraint_group, what): """ Enforce upper and lower bounds of resource_area for groups of technologies and locations. .. container:: scrolling-wrapper .. math:: \\boldsymbol{resource_{area}}(loc::tech) \\leq group\\_resource\\_area\\_max\\\\ \\boldsymbol{resource_{area}}(loc::tech) \\geq group\\_resource\\_area\\_min """ threshold = get_param( backend_model, "group_resource_area_{}".format(what), (constraint_group) ) if check_value(threshold): return return_noconstraint("resource_area", constraint_group) else: lhs_loc_techs = getattr( backend_model, "group_constraint_loc_techs_{}".format(constraint_group) ) lhs = sum(backend_model.resource_area[loc_tech] for loc_tech in lhs_loc_techs) rhs = threshold return equalizer(lhs, rhs, what)
def energy_cap_share_constraint_rule(backend_model, constraint_group, what): """ Enforces shares of energy_cap for groups of technologies and locations. The share is relative to ``supply`` and ``supply_plus`` technologies only. .. container:: scrolling-wrapper .. math:: \\sum_{loc::tech \\in given\\_group} energy_{cap}(loc::tech) \\leq share \\times \\sum_{loc::tech \\in loc\\_tech\\_supply\\_all \\in given\\_locations} energy_{cap}(loc::tech) """ share = get_param( backend_model, "group_energy_cap_share_{}".format(what), (constraint_group) ) if check_value(share): return return_noconstraint("energy_cap_share", constraint_group) else: lhs_loc_techs = getattr( backend_model, "group_constraint_loc_techs_{}".format(constraint_group) ) lhs_locs = [loc_tech.split("::")[0] for loc_tech in lhs_loc_techs] rhs_loc_techs = [ i for i in backend_model.loc_techs_supply_conversion_all if i.split("::")[0] in lhs_locs ] lhs = sum(backend_model.energy_cap[loc_tech] for loc_tech in lhs_loc_techs) rhs = share * sum( backend_model.energy_cap[loc_tech] for loc_tech in rhs_loc_techs ) return equalizer(lhs, rhs, what)
def carrier_prod_constraint_rule(backend_model, constraint_group, carrier, what): """ Enforces carrier_prod for groups of technologies and locations, as a sum over the entire model period. .. container:: scrolling-wrapper .. math:: \\sum_{loc::tech::carrier \\in given\\_group, timestep \\in timesteps} carrier_{prod}(loc::tech::carrier, timestep) \\leq supply_max """ limit = get_param( backend_model, "group_carrier_prod_{}".format(what), (carrier, constraint_group) ) if check_value(limit): return return_noconstraint("carrier_prod", constraint_group) else: # We won't actually use the rhs techs lhs_loc_techs, rhs_loc_techs = get_carrier_prod_share_lhs_and_rhs_loc_techs( backend_model, constraint_group ) lhs = sum( backend_model.carrier_prod[loc_tech + "::" + carrier, timestep] for loc_tech in lhs_loc_techs for timestep in backend_model.timesteps if loc_tech + "::" + carrier in backend_model.loc_tech_carriers_prod ) return equalizer(lhs, limit, what)
def net_import_share_constraint_rule(backend_model, constraint_group, carrier, what): """ Enforces demand shares of net imports from transmission technologies for groups of locations, on average over the entire model period. Transmission within the group are ignored. The share is relative to ``demand`` technologies only. .. container:: scrolling-wrapper .. math:: \\sum_{loc::tech::carrier \\in loc\\_tech\\_carriers\\_transmission \\in given\\_locations, timestep \\in timesteps} carrier_{prod}(loc::tech::carrier, timestep) + \\sum_{loc::tech::carrier \\in loc\\_tech\\_carriers\\_transmission \\in given\\_locations, timestep \\in timesteps} carrier_{con}(loc::tech::carrier, timestep) \\leq share \\times \\sum_{loc::tech:carrier \\in loc\\_tech\\_demand \\in given\\_locations, timestep\\in timesteps} carrier_{con}(loc::tech::carrier, timestep) """ share = get_param( backend_model, "group_net_import_share_{}".format(what), (carrier, constraint_group), ) if check_value(share): return return_noconstraint("net_import_share", constraint_group) else: trans_loc_tech = getattr( backend_model, "group_constraint_loc_techs_{}".format(constraint_group) ) locs = set(loc_tech.split("::")[0] for loc_tech in trans_loc_tech) trans_loc_tech = filter( lambda loc_tec: loc_tec.split(":")[-1] not in locs, trans_loc_tech ) demand_loc_tech = [ i for i in backend_model.loc_tech_carriers_demand if i.split("::")[0] in locs ] lhs = sum( ( backend_model.carrier_prod[loc_tech + "::" + carrier, timestep] + backend_model.carrier_con[loc_tech + "::" + carrier, timestep] ) for loc_tech in trans_loc_tech for timestep in backend_model.timesteps ) rhs = -share * sum( backend_model.carrier_con[loc_tech, timestep] for loc_tech in demand_loc_tech for timestep in backend_model.timesteps ) return equalizer(lhs, rhs, what)
def demand_share_per_timestep_constraint_rule( backend_model, group_name, carrier, timestep, what ): """ Enforces shares of demand of a carrier to be met by the given groups of technologies at the given locations, in each timestep. The share is relative to ``demand`` technologies only. .. container:: scrolling-wrapper .. math:: \\sum_{loc::tech::carrier \\in given\\_group} carrier_{prod}(loc::tech::carrier, timestep) \\leq share \\times \\sum_{loc::tech:carrier \\in loc\\_techs\\_demand \\in given\\_locations} carrier_{con}(loc::tech::carrier, timestep) for timestep \\in timesteps """ share = get_param( backend_model, "group_demand_share_per_timestep_{}".format(what), (carrier, group_name), ) if check_value(share): return return_noconstraint("demand_share_per_timestep", group_name) else: ( lhs_loc_tech_carriers, rhs_loc_tech_carriers, ) = get_demand_share_lhs_and_rhs_loc_tech_carriers( backend_model, group_name, carrier ) lhs = sum( backend_model.carrier_prod[loc_tech_carrier, timestep] for loc_tech_carrier in lhs_loc_tech_carriers ) rhs = ( share * -1 * sum( backend_model.carrier_con[loc_tech_carrier, timestep] for loc_tech_carrier in rhs_loc_tech_carriers ) ) return equalizer(lhs, rhs, what)
def cost_var_cap_constraint_rule(backend_model, group_name, cost, what): """ Limit variable costs specific to a cost class to a certain value, i.e. Ɛ-constrained costs, for groups of technologies and locations. .. container:: scrolling-wrapper .. math:: \\sum{loc::tech \\in loc\\_techs_{group\\_name}, timestep \\in timesteps} \\boldsymbol{cost\\_{var}}(cost, loc::tech, timestep) \\begin{cases} \\leq cost\\_var\\_max(cost) \\geq cost\\_var\\_min(cost) = cost\\_var\\_equals(cost) \\end{cases} """ cost_cap = get_param( backend_model, "group_cost_var_{}".format(what), (cost, group_name) ) if check_value(cost_cap): return return_noconstraint("cost_var_cap", group_name) else: loc_techs = [ i for i in getattr( backend_model, "group_constraint_loc_techs_{}".format(group_name) ) if i in backend_model.loc_techs_om_cost ] sum_cost = sum( backend_model.cost_var[cost, loc_tech, timestep] for loc_tech in loc_techs for timestep in backend_model.timesteps ) return equalizer(sum_cost, cost_cap, what)
def carrier_prod_share_per_timestep_constraint_rule( backend_model, constraint_group, carrier, timestep, what ): """ Enforces shares of carrier_prod for groups of technologies and locations, in each timestep. The share is relative to ``supply`` and ``supply_plus`` technologies only. .. container:: scrolling-wrapper .. math:: \\sum_{loc::tech::carrier \\in given\\_group} carrier_{prod}(loc::tech::carrier, timestep) \\leq share \\times \\sum_{loc::tech:carrier \\in loc\\_tech\\_carriers\\_supply\\_all \\in given\\_locations} carrier_{prod}(loc::tech::carrier, timestep) for timestep \\in timesteps """ share = get_param( backend_model, "group_carrier_prod_share_per_timestep_{}".format(what), (carrier, constraint_group), ) if check_value(share): return return_noconstraint("carrier_prod_share_per_timestep", constraint_group) else: lhs_loc_techs, rhs_loc_techs = get_carrier_prod_share_lhs_and_rhs_loc_techs( backend_model, constraint_group ) lhs = sum( backend_model.carrier_prod[loc_tech + "::" + carrier, timestep] for loc_tech in lhs_loc_techs ) rhs = share * sum( backend_model.carrier_prod[loc_tech + "::" + carrier, timestep] for loc_tech in rhs_loc_techs ) return equalizer(lhs, rhs, what)
def storage_cap_constraint_rule(backend_model, constraint_group, what): """ Enforce upper and lower bounds for storage_cap of storage_cap for groups of technologies and locations. .. container:: scrolling-wrapper .. math:: \\sum_{loc::tech \\in given\\_group} storage_{cap}(loc::tech) \\leq storage\\_cap\\_max\\\\ \\sum_{loc::tech \\in given\\_group} storage_{cap}(loc::tech) \\geq storage\\_cap\\_min """ threshold = get_param( backend_model, "group_storage_cap_{}".format(what), (constraint_group) ) if check_value(threshold): return return_noconstraint("storage_cap", constraint_group) else: lhs_loc_techs = getattr( backend_model, "group_constraint_loc_techs_{}".format(constraint_group) ) # Transmission techs only contribute half their capacity in each direction lhs = [] for loc_tech in lhs_loc_techs: if loc_tech_is_in(backend_model, loc_tech, "loc_techs_transmission"): weight = 0.5 else: weight = 1 lhs.append(weight * backend_model.storage_cap[loc_tech]) rhs = threshold return equalizer(sum(lhs), rhs, what)
def demand_share_per_timestep_decision_sum_constraint_rule( backend_model, group_name, carrier ): """ Allows the model to decide on how a fraction of demand for a carrier is met by the given groups, which will all have the same share in each timestep. The share is relative to the actual demand from ``demand`` technologies only. The sum constraint ensures that all decision shares add up to the share of carrier demand specified in the constraint. This constraint is only applied if the share of carrier demand has been set to a not-None value. .. container:: scrolling-wrapper .. math:: share = \\sum_{loc::tech::carrier \\in given\\_group} demand\\_share\\_per\\_timestep\\_decision(loc::tech::carrier) """ share_of_carrier_demand = get_param( backend_model, "group_demand_share_per_timestep_decision", (carrier, group_name) ) # If inf was given that means that we don't limit the total share if check_value(share_of_carrier_demand) or np.isinf(share_of_carrier_demand): return return_noconstraint("demand_share_per_timestep_decision_sum", group_name) else: lhs_loc_tech_carriers, _ = get_demand_share_lhs_and_rhs_loc_tech_carriers( backend_model, group_name, carrier ) return share_of_carrier_demand == sum( backend_model.demand_share_per_timestep_decision[loc_tech_carrier] for loc_tech_carrier in lhs_loc_tech_carriers )
def demand_share_per_timestep_decision_main_constraint_rule( backend_model, group_name, carrier, tech, timestep ): """ Allows the model to decide on how a fraction demand for a carrier is met by the given groups, which will all have the same share in each timestep. The share is relative to the actual demand from ``demand`` technologies only. The main constraint enforces that the shares are the same in each timestep. .. container:: scrolling-wrapper .. math:: \\sum_{loc::tech::carrier \\in given\\_group} carrier_{prod}(loc::tech::carrier, timestep) = \\sum_{loc::tech::carrier \\in given\\_group} required\\_resource(loc::tech::carrier, timestep) \\times \\sum_{loc::tech::carrier \\in given\\_group} demand\\_share\\_per\\_timestep\\_decision(loc::tech::carrier) \\forall timestep \\in timesteps \\forall tech \\in techs """ share_of_carrier_demand = get_param( backend_model, "group_demand_share_per_timestep_decision", (carrier, group_name) ) if check_value(share_of_carrier_demand): return return_noconstraint( "demand_share_per_timestep_decision_main", group_name ) else: # lhs are the supply technologies, rhs are the demand technologies ( lhs_loc_tech_carriers, rhs_loc_tech_carriers, ) = get_demand_share_lhs_and_rhs_loc_tech_carriers( backend_model, group_name, carrier ) # Filter the supply loc_tech_carriers by the current tech lhs_loc_tech_carriers = [ i for i in lhs_loc_tech_carriers if "::{}::".format(tech) in i ] # Only techs that are in the given group are considered if len(lhs_loc_tech_carriers) == 0: return return_noconstraint( "demand_share_per_timestep_decision_main", group_name ) lhs = sum( backend_model.carrier_prod[loc_tech_carrier, timestep] for loc_tech_carrier in lhs_loc_tech_carriers ) rhs = ( -1 * sum( backend_model.required_resource[ rhs_loc_tech_carrier.rsplit("::", 1)[0], timestep ] for rhs_loc_tech_carrier in rhs_loc_tech_carriers ) * sum( backend_model.demand_share_per_timestep_decision[lhs_loc_tech_carrier] for lhs_loc_tech_carrier in lhs_loc_tech_carriers ) ) return equalizer(lhs, rhs, "equals")