Robust Dispatch of Integrated Electric-Heat Systems Considering Weather-Parameter-Driven Residential Thermal Demands

Guanghui Hua, Chen Li, Yong Zhang, Dan Li, Chuang Liu, Cheng Wang
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Abstract

Conventional day-ahead scheduling strategies of integrated electricity and heating system (IEHS) are oversimplified for the thermal demand modeling and cannot meet the thermal comfort of the users. Furthermore, this unbalanced power may lead to reserve capacity deficiency in the power system, due to the thermal-electric coupling of the combined heat and power (CHP) units in IEHS. This paper derives a tractable and accurate residential thermal demand (RTD) model, which comprehensively considers the impact of weather conditions. Then, a robust scheduling strategy is employed to tackle the uncertainties of the renewable generation outputs and RTDs, suggesting a double-stage optimization model. The first stage is to identify the unit commitment with minimum operational cost. In the second stage, the feasibility of the first stage unit commitment would be checked to minimize the summation of slack variables. Besides, the robust optimization model is converted into a mixed-integer linear program via the big-M method and solved by column and constraint generation (C & CG) algorithm. The simulation results show the effectiveness of the proposed RTD model, as well as the robust scheduling strategy for IEHS.
考虑天气参数驱动的住宅热需求的综合电-热系统鲁棒调度
传统的电热一体化系统日前调度策略在热需求建模上过于简单化,不能满足用户的热舒适。此外,由于IEHS中热电联产机组的热电耦合,这种不平衡功率可能导致电力系统的备用容量不足。本文建立了一个可处理的、准确的住宅热需求(RTD)模型,该模型综合考虑了天气条件的影响。然后,采用鲁棒调度策略解决可再生能源发电输出和rtd的不确定性,提出了一种双阶段优化模型。第一阶段是确定具有最小操作成本的单位承诺。在第二阶段,将检查第一阶段机组承诺的可行性,以最小化松弛变量的总和。通过大m法将鲁棒优化模型转化为混合整数线性规划,并采用列生成和约束生成(c&cg)算法求解。仿真结果表明了所提出的RTD模型的有效性,以及IEHS的鲁棒调度策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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