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A Python implementation of the Benchmark Simulation Model 2 (BSM2) plant layout according to the IWA standard.

Project description

BSM2-Python

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BSM2 with Energy Management in Python

A Python implementation of the Benchmark Simulation Model 2 (BSM2) plant layout according to the IWA standard. A technical description of BSM2 can be found here.

Installation

Easy way

To run the project, install the latest release via PyPI: pip install bsm2-python

Build from source

If you want the bleeding edge version from the repo, build it yourself via hatch build. See the Contribution Guide for more details on how to install hatch (or simply use the Docker image). Then you can install it to arbitrary environments via pip install dist/bsm2_python<version-hash>.whl

Quickstart

Run default model

You could then use the following convenience function:

from bsm2_python import BSM2OL

# initialise the BSM2 Open Loop model
bsm2_ol = BSM2OL()

# run the simulation
bsm2_ol.simulate()

This will run the BSM2 Open Loop model for the default 609 days of simulation time. It will then plot IQI, EQI and OCI values for the effluent over the last few days of simulation. Further, relevant data will be saved to data/output_evaluation.csv for further analysis.

Run with custom aeration

You can also run the BSM2 models with your own aeration control - this example selects a random kla value for each reactor every timestep. The final performance is then saved in the oci variable:

import numpy as np
from bsm2_python import BSM2OL
from tqdm import tqdm


bsm2_ol = BSM2OL()

# The kla values to choose from
select_klas = np.array([0, 60, 120, 180, 240])

for idx, _ in enumerate(tqdm(bsm2_ol.simtime)):
    # select random klas for all five ASM1 reactors
    klas = np.random.choice(select_klas, 5)

    # make a step in the simulation with the specified kla values
    bsm2_ol.step(idx, klas)


oci = bsm2_ol.get_final_performance()[-1]

Run Closed Loop simulation with custom DO setpoint

You can also run the BSM2 Closed Loop model with your own dissolved oxygen (SO4) setpoints. Please note: The Closed Loop model runs with a resolution of 1 minute for the sake of sensor stability, so it might take a while to run the simulation.

from bsm2_python import BSM2CL
from tqdm import tqdm


bsm2_cl = BSM2CL()

# The custom DO setpoint for the BSM2 default aeration control
so4_ref = 1.5

for idx, _ in enumerate(tqdm(bsm2_cl.simtime)):
    bsm2_cl.step(idx, so4_ref)

# get the final performance of the plant
oci = bsm2_cl.get_final_performance()[-1]

Run with energy management model

We introduced a simple energy management model (including CHPs, Boilers, Flares and a small techno-economic analysis) that can be used to simulate the energy consumption and production of the plant.

from bsm2_python import BSM2OLEM

bsm2_olem = BSM2OLEM()

bsm2_olem.simulate()

# get the cumulated cash flow of the plant
cash_flow = bsm2_olem.economics.cum_cash_flow

And much more...

You can also implement your own plant layout. Lots of classes are available to choose from. See the Documentation for more information. The tests folder contains a lot of examples on how to use the plant layouts.

Dev container

There is also a fully functional Dev Container image available for development. Just open the repo in VSCode and install the Remote Containers extension. Then, open the repo in a container and you are ready to go.

Project structure

The project is structured as follows:

bsm2-python
├───docs
│   └────Documentation of the project
├───notebooks
|   └────Jupyter notebooks as explanatory examples
├───src
│   └────bsm2_python
│        |      └─Root folder of the project code
│        │        Contains pre-defined plant layouts and controllers
│        ├───bsm2
│        │   │  └─All modules for the BSM2 plant layouts
│        │   └───init
│        │       └─Initialisation files for the BSM2 plant layouts
│        └───data
│        │      └─Standard datasets for influent data
│        │        and sensor noise
│        └───gas_management
│            │  └─Modules for the gas management side of the BSM2 plant
│            └───init
│                └─Initialisation files for the gas management side
└───tests
    |  └─Unit tests for the BSM2 components in both
    │    steady state and dynamic mode
    └───simulink_files
         └─Reference files for validation purposes

Usage

At the moment, you can choose between 3 different ready-to-use configurations of the plant:

  1. BSM2OL: BSM2 without any control (dynamic or static influent data - you choose)
  2. BSM2CL: BSM2 with aeration control in tanks 3-5
  3. BSM2OLEM: BSM2OL with energy management model and a default gas management. You can as well create your own plant layout. Just use the classes in the bsm2 folder and mix them as you like.

The results of the pre-made configurations are saved inside the objects and can be accessed via calling the attribute names. For the plant effluent, just call bsm2.y_eff_all. With tempmodel and activate, differential equations for temperature dependency and additional components can be added. If you want to create your own plant layout, use the bsm2_xx.py files as template. Put your own parameters and values in separate init files.

Support

Your help is highly appreciated! Please read through the CONTRIBUTING.md file for details on our code of conduct, and the process for submitting pull requests to us. If you find any issues inside the repo, don't hesitate to raise an Issue.

Roadmap

In the future, this repo will be extended by the following features:

  • Graphical User Interface for easy plant setup and parameter setting
  • Faster computation through Rust-based backend
  • Support of more experimental tools, e.g. photovoltaics, methanation or electrolysis

Authors and acknowledgment

Thanks to Maike Böhm for first implementing the Activated Sludge Models in Python in her Masters Thesis. Thanks as well to Lukas Meier for implementing the Gas management side of the BSM2 plant and Nick Salomon for prettifying the documentation.

The development of this package was done in the context of the KLÄFFIZIENT and KLÄFFIZIENTER projects. Both are funded by the German Federal Ministry for Economic Affairs and Climate Action (BMWK) and are part of the 7th and 8th Energy Research Program of the Federal Government.

License

This project is licensed under BSD 3 Clause.

Project status

As we are maintaining this repo in our free time, don't expect rapid development. However, if any Issues are popping up, we will try to fix them in time.

Citation

If you use this package in your research, please cite it as follows:

@article{miederer2024bsm2python,
    title={Energy Management Model for Wastewater Treatment Plants},
    author={Jonas Miederer and Lukas Meier and Nora Elhaus and Simon Markthaler and J{\"u}rgen Karl},
    journal={Journal of Energy Conversion and Management},
    year={2024}
}

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