Author
Listed:
- Zhang, Yulu
- Chen, Zhiwei
- Dong, Xinghui
- Dui, Hongyan
- Chang, Min
- Bai, Junqiang
Abstract
Microgrid reliability is the ability to maintain a stable energy supply in a variable environment. However, such an environment (wind direction, temperature, humidity, pressure, and wind speed) renders the power supply with randomness, intermittency, and volatility. To ensure power stability in variable environments, a data-driven microgrid (DDMG) reliability analysis method is proposed based on the power supply chain (PSC) model, which fully considers the data-dependent output power. Firstly, a convolutional neural network-support vector machine (CNN-SVM) model is developed to effectively fuse multi-source data features. Secondly, a temporal convolutional network-bidirectional gated recurrent unit (TCN-BiGRU) approach is introduced to capture temporal dependencies to predict equipment states. The above two deep learning models provide accurate input values for reliability assessment. Then, a reliability assessment model is established based on the PSC model, complemented by an importance-measure-based reliability improvement strategy. Finally, the feasibility of methodology is validated with a case. The results show that compared with the traditional methods, the classification accuracy of CNN-SVM is up to 98.9747 %, the R2 of TCN-BiGRU is up to 96.1962 %, and the recovered ranking based on the importance measure markedly and stably improves the reliability, which would guide microgrid reliability design.
Suggested Citation
Zhang, Yulu & Chen, Zhiwei & Dong, Xinghui & Dui, Hongyan & Chang, Min & Bai, Junqiang, 2025.
"Multi-source-data-driven microgrids reliability analysis via power supply chain using deep learning,"
Reliability Engineering and System Safety, Elsevier, vol. 264(PA).
Handle:
RePEc:eee:reensy:v:264:y:2025:i:pa:s0951832025005770
DOI: 10.1016/j.ress.2025.111376
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