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python-microgrid

A Python library to generate and simulate a large number of microgrids.
https://github.com/ahalev/python-microgrid

Category: Energy Systems
Sub Category: Grid Management and Microgrid

Keywords from Contributors

control energy-management-systems microgrid microgrid-model reinforcement-learning

Last synced: about 16 hours ago
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Repository metadata

python-microgrid is a python library to generate and simulate a large number of microgrids.

README.md

python-microgrid

Build

python-microgrid is a python library to generate and simulate a large number of microgrids. It is an extension of TotalEnergies' pymgrid.

For more context, please see the presentation done at Climate Change AI
and the documentation.

Installation

The easiest way to install python-microgrid is with pip:

pip install -U python-microgrid

Alternatively, you can install from source. First clone the repo:

git clone https://github.com/ahalev/python-microgrid.git

Then navigate to the root directory of python-microgrid and call

pip install .

Getting Started

Microgrids are straightforward to generate from scratch. Simply define some modules and pass them
to a microgrid:

import numpy as np
from pymgrid import Microgrid
from pymgrid.modules import GensetModule, BatteryModule, LoadModule, RenewableModule


genset = GensetModule(running_min_production=10,
                      running_max_production=50,
                      genset_cost=0.5)

battery = BatteryModule(min_capacity=0,
                        max_capacity=100,
                        max_charge=50,
                        max_discharge=50,
                        efficiency=1.0,
                        init_soc=0.5)

# Using random data
renewable = RenewableModule(time_series=50*np.random.rand(100))

load = LoadModule(time_series=60*np.random.rand(100),
                  loss_load_cost=10)

microgrid = Microgrid([genset, battery, ("pv", renewable), load])

This creates a microgrid with the modules defined above, as well as an unbalanced energy module --
which reconciles situations when energy demand cannot be matched to supply.

Printing the microgrid gives us its architecture:

>> microgrid

Microgrid([genset x 1, load x 1, battery x 1, pv x 1, balancing x 1])

A microgrid is contained of fixed modules and flex modules. Some modules can be both -- GridModule, for example
-- but not at the same time.

A fixed module has requires a request of a certain amount of energy ahead of time, and then attempts to
produce or consume said amount. LoadModule is an example of this; you must tell it to consume a certain amount of energy
and it will then do so.

A flex module, on the other hand, is able to adapt to meet demand. RenewableModule is an example of this as
it allows for curtailment of any excess renewable produced.

A microgrid will tell you which modules are which:

>> microgrid.fixed_modules

{
 "genset": "[GensetModule(running_min_production=10, running_max_production=50, genset_cost=0.5, co2_per_unit=0, cost_per_unit_co2=0, start_up_time=0, wind_down_time=0, allow_abortion=True, init_start_up=True, raise_errors=False, provided_energy_name=genset_production)]",
 "load": "[LoadModule(time_series=<class 'numpy.ndarray'>, loss_load_cost=10, forecaster=NoForecaster, forecast_horizon=0, forecaster_increase_uncertainty=False, raise_errors=False)]",
 "battery": "[BatteryModule(min_capacity=0, max_capacity=100, max_charge=50, max_discharge=50, efficiency=1.0, battery_cost_cycle=0.0, battery_transition_model=None, init_charge=None, init_soc=0.5, raise_errors=False)]"
}

>>microgrid.flex_modules

{
 "pv": "[RenewableModule(time_series=<class 'numpy.ndarray'>, raise_errors=False, forecaster=NoForecaster, forecast_horizon=0, forecaster_increase_uncertainty=False, provided_energy_name=renewable_used)]",
 "balancing": "[UnbalancedEnergyModule(raise_errors=False, loss_load_cost=10, overgeneration_cost=2)]"
}

Running the microgrid is straightforward. Simply pass an action for each fixed module to microgrid.run. The microgrid
can also provide you a random action by calling microgrid.sample_action. Once the microgrid has been run for a
certain number of steps, results can be viewed by calling microgrid.get_log.

>> for j in range(10):
>>    action = microgrid.sample_action(strict_bound=True)
>>    microgrid.step(action)

>> microgrid.get_log(drop_singleton_key=True)

      genset  ...                     balance
      reward  ... fixed_absorbed_by_microgrid
0  -5.000000  ...                   10.672095
1 -14.344353  ...                   50.626726
2  -5.000000  ...                   17.538018
3  -0.000000  ...                   15.492778
4  -0.000000  ...                   35.748724
5  -0.000000  ...                   30.302300
6  -5.000000  ...                   36.451662
7  -0.000000  ...                   66.533872
8  -0.000000  ...                   20.645077
9  -0.000000  ...                   10.632957

Benchmarking

pymgrid also comes pre-packaged with a set of 25 microgrids for benchmarking.
The config files for these microgrids are available in data/scenario/pymgrid25.
Simply deserialize one of the yaml files to load one of the saved microgrids; for example,
to load the zeroth microgrid:

import yaml
from pymgrid import PROJECT_PATH

yaml_file = PROJECT_PATH / 'data/scenario/pymgrid25/microgrid_0/microgrid_0.yaml'
microgrid = yaml.safe_load(yaml_file.open('r'))

Alternatively, Microgrid.load(yaml_file.open('r')) will perform the same deserialization.

Citation

If you use this package for your research, please cite the following paper:

@misc{henri2020pymgrid,
title={pymgrid: An Open-Source Python Microgrid Simulator for Applied Artificial Intelligence Research},
author={Gonzague Henri, Tanguy Levent, Avishai Halev, Reda Alami and Philippe Cordier},
year={2020},
eprint={2011.08004},
archivePrefix={arXiv},
primaryClass={cs.AI}
}

You can find it on Arxiv here: https://arxiv.org/abs/2011.08004

Data

Data in pymgrid are based on TMY3 (data based on representative weather). The PV data comes from DOE/NREL/ALLIANCE (https://nsrdb.nrel.gov/about/tmy.html) and the load data comes from OpenEI (https://openei.org/doe-opendata/dataset/commercial-and-residential-hourly-load-profiles-for-all-tmy3-locations-in-the-united-states)

The CO2 data is from Jacque de Chalendar and his gridemissions API.

Contributing

Pull requests are welcome for bug fixes. For new features, please open an issue first to discuss what you would like to add.

Please make sure to update tests as appropriate.

License

This repo is under a GNU LGPL 3.0 (https://github.com/total-sa/pymgrid/edit/master/LICENSE)

Contact

For any questions or bugs, please open an issue in the Issues tab.


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Last synced: 7 days ago

Total Commits: 1,751
Total Committers: 10
Avg Commits per committer: 175.1
Development Distribution Score (DDS): 0.158

Commits in past year: 30
Committers in past year: 1
Avg Commits per committer in past year: 30.0
Development Distribution Score (DDS) in past year: 0.0

Name Email Commits
ahalev a****v@g****m 1475
Gonzague Henri g****i@t****m 149
Gonzague Henri g****i@g****m 107
Tanguy t****2@g****m 9
Reda ALAMI 3****9 4
Yann BERTHERLOT y****t@c****m 3
pochelu p****u@t****m 1
RoKe2017 1****7 1
Alexis de Talhouët a****9@g****m 1
Bipin Paudel b****l@j****u 1

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Issue and Pull Request metadata

Last synced: 1 day ago

Total issues: 22
Total pull requests: 95
Average time to close issues: about 1 month
Average time to close pull requests: 5 days
Total issue authors: 13
Total pull request authors: 2
Average comments per issue: 0.95
Average comments per pull request: 0.01
Merged pull request: 86
Bot issues: 0
Bot pull requests: 0

Past year issues: 8
Past year pull requests: 5
Past year average time to close issues: 2 months
Past year average time to close pull requests: 15 days
Past year issue authors: 8
Past year pull request authors: 2
Past year average comments per issue: 1.38
Past year average comments per pull request: 0.0
Past year merged pull request: 3
Past year bot issues: 0
Past year bot pull requests: 0

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Package metadata

pypi.org: python-microgrid

A simulator for tertiary control of electrical microgrids

  • Homepage:
  • Documentation: https://python-microgrid.readthedocs.io/
  • Licenses: GNU LGPL 3.0
  • Latest release: 1.4.1 (published about 1 year ago)
  • Last Synced: 2025-04-26T19:01:39.518Z (1 day ago)
  • Versions: 3
  • Dependent Packages: 0
  • Dependent Repositories: 1
  • Downloads: 137 Last month
  • Rankings:
    • Dependent packages count: 10.109%
    • Stargazers count: 10.712%
    • Forks count: 15.369%
    • Average: 18.151%
    • Dependent repos count: 21.559%
    • Downloads: 33.007%
  • Maintainers (1)

Dependencies

.github/workflows/build.yml actions
  • actions/checkout v3 composite
  • actions/setup-python v3 composite
.github/workflows/documentation-links.yaml actions
  • readthedocs/actions/preview v1 composite
.github/workflows/garage-compat.yml actions
  • actions/checkout v3 composite
  • actions/setup-python v3 composite
  • wei/wget v1 composite
docs/requirements.txt pypi
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  • numpydoc ==1.5.0
  • pydata_sphinx_theme ==0.12.0
requirements.txt pypi
  • cufflinks >=0.17.3
  • cvxpy >=1.1.4
  • gym >=0.15.7
  • matplotlib >=3.1.1
  • numpy >=1.19.5
  • pandas >=1.0.3
  • plotly >=4.9.0
  • pyyaml >=1.5
  • scipy >=1.5.3
  • statsmodels >=0.11.1
  • tqdm >=4.1.0
setup.py pypi
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  • cvxpy *
  • gym *
  • matplotlib *
  • numpy *
  • pandas *
  • plotly *
  • pyyaml *
  • statsmodels *
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pyproject.toml pypi

Score: 11.702967144779322