基于CLNet的恒温控制负荷聚合功率预测

Yaping Li, Min Xia, Junhao Qian, Xiaodong Zhang
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引用次数: 0

摘要

用户侧温控负荷调度灵活,对用户舒适度影响小。然而,由于TCL的分散分布,调度中心很难直接获得其聚合功率和响应潜力。为了引导TCL参与电网调节运行,采用卷积神经网络与LightGBM相结合的深度学习算法建立了TCL与LightGBM的聚合模型,可以方便地确定聚合功率的估计值和上下限范围。在此基础上,提出了一种新的TCL综合响应势评价方法。并对TCL的总体响应势和分布特征进行了评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Thermostatically Controlled Load Aggregated Power Prediction Based on CLNet
The user side thermostatically controlled load (TCL) scheduling is flexible and has little influence on the user comfort level. However, due to the decentralized distribution of TCL, it is difficult for the dispatching center to directly obtain its aggregated power and response potential. In order to guide TCL to participate in the grid regulation operation, the aggregation model of them is established by using a deep learning algorithm combining convolutional neural network and LightGBM, and the estimation value and upper and lower limit range of the aggregated power can be easily determined. Based on the model, a new evaluation method of TCL's aggregated response potential was proposed. The aggregated response potential and distribution characteristics of TCL were also evaluated.
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