/
helper_data_test.py
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/
helper_data_test.py
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# 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.dtypes import dt_float
_case_14_layout = [
(-280, -81),
(-100, -270),
(366, -270),
(366, -54),
(-64, -54),
(-64, 54),
(450, 0),
(550, 0),
(326, 54),
(222, 108),
(79, 162),
(-170, 270),
(-64, 270),
(222, 216),
]
_case_5_layout = [(0, 0), (0, 400), (200, 400), (400, 400), (400, 0)]
case14_test_layout = _case_14_layout
case14_test_TH_LIM = np.array(
[
352.8251645,
352.8251645,
183197.68156979,
183197.68156979,
183197.68156979,
12213.17877132,
183197.68156979,
352.8251645,
352.8251645,
352.8251645,
352.8251645,
352.8251645,
183197.68156979,
183197.68156979,
183197.68156979,
352.8251645,
352.8251645,
352.8251645,
2721.79412618,
2721.79412618,
]
).astype(dt_float)
case14_redisp_layout = _case_14_layout
case14_redisp_TH_LIM = np.array(
[
3.84900179e02,
3.84900179e02,
2.28997102e05,
2.28997102e05,
2.28997102e05,
1.52664735e04,
2.28997102e05,
3.84900179e02,
3.84900179e02,
1.83285800e02,
3.84900179e02,
3.84900179e02,
2.28997102e05,
2.28997102e05,
6.93930612e04,
3.84900179e02,
3.84900179e02,
2.40562612e02,
3.40224266e03,
3.40224266e03,
]
).astype(dt_float)
case14_real_layout = _case_14_layout
case14_real_TH_LIM = np.array(
[
384.900179,
384.900179,
380.0,
380.0,
157.0,
380.0,
380.0,
1077.7205012,
461.8802148,
769.80036,
269.4301253,
384.900179,
760.0,
380.0,
760.0,
384.900179,
230.9401074,
170.79945452,
3402.24266,
3402.24266,
]
).astype(dt_float)
L2RPN_2019_layout = _case_14_layout
L2RPN_2019_dict = {
"loads": {
"2_C-10.61": "load_1_0",
"3_C151.15": "load_2_1",
"14_C63.6": "load_13_10",
"4_C-9.47": "load_3_2",
"5_C201.84": "load_4_3",
"6_C-6.27": "load_5_4",
"9_C130.49": "load_8_5",
"10_C228.66": "load_9_6",
"11_C-138.89": "load_10_7",
"12_C-27.88": "load_11_8",
"13_C-13.33": "load_12_9",
},
"lines": {
"1_2_1": "0_1_0",
"1_5_2": "0_4_1",
"9_10_16": "8_9_16",
"9_14_17": "8_13_15",
"10_11_18": "9_10_17",
"12_13_19": "11_12_18",
"13_14_20": "12_13_19",
"2_3_3": "1_2_2",
"2_4_4": "1_3_3",
"2_5_5": "1_4_4",
"3_4_6": "2_3_5",
"4_5_7": "3_4_6",
"6_11_11": "5_10_12",
"6_12_12": "5_11_11",
"6_13_13": "5_12_10",
"4_7_8": "3_6_7",
"4_9_9": "3_8_8",
"5_6_10": "4_5_9",
"7_8_14": "6_7_13",
"7_9_15": "6_8_14",
},
"prods": {
"1_G137.1": "gen_0_4",
"3_G36.31": "gen_1_0",
"6_G63.29": "gen_2_1",
"2_G-56.47": "gen_5_2",
"8_G40.43": "gen_7_3",
},
}