Source code for grid2op.Reward.LinesCapacityReward

# Copyright (c) 2019-2020, RTE (https://www.rte-france.com)
# See AUTHORS.txt
# This Source Code Form is subject to the terms of the Mozilla Public License, version 2.0.
# If a copy of the Mozilla Public License, version 2.0 was not distributed with this file,
# you can obtain one at http://mozilla.org/MPL/2.0/.
# SPDX-License-Identifier: MPL-2.0
# This file is part of Grid2Op, Grid2Op a testbed platform to model sequential decision making in power systems.

import numpy as np
from grid2op.Reward.BaseReward import BaseReward
from grid2op.dtypes import dt_float


[docs]class LinesCapacityReward(BaseReward): """ Reward based on lines capacity usage Returns max reward if no current is flowing in the lines Returns min reward if all lines are used at max capacity Compared to `:class:L2RPNReward`: This reward is linear (instead of quadratic) and only considers connected lines capacities Examples --------- You can use this reward in any environment with: .. code-block: import grid2op from grid2op.Reward import LinesCapacityReward # then you create your environment with it: NAME_OF_THE_ENVIRONMENT = "rte_case14_realistic" env = grid2op.make(NAME_OF_THE_ENVIRONMENT,reward_class=LinesCapacityReward) # and do a step with a "do nothing" action obs = env.reset() obs, reward, done, info = env.step(env.action_space()) # the reward is computed with the LinesCapacityReward class """
[docs] def __init__(self, logger=None): BaseReward.__init__(self, logger=logger) self.reward_min = dt_float(0.0) self.reward_max = dt_float(1.0)
[docs] def initialize(self, env): pass
[docs] def __call__(self, action, env, has_error, is_done, is_illegal, is_ambiguous): if has_error or is_illegal or is_ambiguous: return self.reward_min obs = env.get_obs() n_connected = np.sum(obs.line_status.astype(dt_float)) usage = np.sum(obs.rho[obs.line_status == True]) usage = np.clip(usage, 0.0, float(n_connected)) reward = np.interp( n_connected - usage, [dt_float(0.0), float(n_connected)], [self.reward_min, self.reward_max], ) return reward