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Multi-fidelity modeling of wind farm wakes based on a novel super-fidelity network

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warwick-icse/SFNet

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Energy Conversion and Management, 2022, Rui Li, Jincheng Zhang and Xiaowei Zhao.

Introduction

This project (SFNet) is the pretrained model and test code for Multi-fidelity modeling of wind farm wakes based on a novel super-fidelity network.

Preparation

python==3.6.13
torch==1.10.2
torchvision==0.11.3
floris==2.4
pandas==1.1.5
numpy==1.19.5

Visualization

After installing required libraries mentioned above, then you can run the test.py based on provided low-fidelity flow fields generated by FLORIS (8 m/s, 9 m/s and 10 m/s). We provide three pretrained models which are trained based on 45, 90 and 135 samples (you can choose different models by changing the value of pre_trained_sample in test.py). To test different wind speeds, you need to change of the value of wind_speed in test.py.

Or you can generate your own data using gene_floris_farm.py.

Results

The flow fields generated by FLORIS (left) and enhanced by SFNet (right):

Citation

If you find this project useful in your research, please consider citing our paper:

@article{
        li2022multi,
        title={Multi-fidelity modeling of wind farm wakes based on a novel super-fidelity network},
        author={Li, Rui and Zhang, Jincheng and Zhao, Xiaowei},
        journal={Energy Conversion and Management},
        volume={270},
        pages={116185},
        year={2022},
        publisher={Elsevier}
}

Acknowledgement

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Multi-fidelity modeling of wind farm wakes based on a novel super-fidelity network

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