Author
Listed:
- Song, Meng
- Deng, Rongnan
- Yan, Xingyu
- Sun, Wei
- Gao, Ciwei
- Yan, Mingyu
- Ban, Mingfei
- Xia, Shiwei
Abstract
Service restoration is a critical function of the self-healing distribution system to cope with extreme events. Cold load pickup (CLPU) caused by thermostatically controlled loads (TCLs) requires extra generation power to retore loads, slowing down the distribution system restoration process. Meanwhile, increasing renewable energy brings the supply-demand imbalance because of the power variability and may cause voltage or current violations. Accordingly, a two-stage decision-dependent demand response (DR) methodology is proposed to address the two barriers to distribution system resilience enhancement. Specifically, two load control strategies are developed in the first-stage DR to regulate TCLs for CLPU mitigation, which reduces the additional power requirement when re-energized. In the second-stage DR, the restored TCLs that can be controlled to provide flexibility are characterized as virtual energy storage (VES) for managing renewable energy variability. In this way, the required power generation is reduced, and the power fluctuation problem caused by renewable energy can be well addressed. It helps to speed up the load restoration and keep the distribution system operating securely. Moreover, the load profiles with CLPU mitigation control, VES parameters and VES availability time, depend on the re-energization time. In other words, load restoration decisions determine the two-stage DR. This is the most important finding of this paper and explicitly formulated in the load restoration model for accurate load characterization. The load restoration model is described by a mixed integer second-order cone programming (MISOCP) problem and solved using MATLAB 2021 with Gurobi solver. Case studies show that the proposed methodology can significantly mitigate CLPU and restore more loads. The decision-dependent behaviors of the two-stage DR are also validated.
Suggested Citation
Song, Meng & Deng, Rongnan & Yan, Xingyu & Sun, Wei & Gao, Ciwei & Yan, Mingyu & Ban, Mingfei & Xia, Shiwei, 2024.
"Two-stage decision-dependent demand response driven by TCLs for distribution system resilience enhancement,"
Applied Energy, Elsevier, vol. 361(C).
Handle:
RePEc:eee:appene:v:361:y:2024:i:c:s0306261924002770
DOI: 10.1016/j.apenergy.2024.122894
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