Coordinated Preventive-Corrective Control for Power System Transient Stability Enhancement Based on Machine Learning-assisted Optimization

Yunyang Xu, Kangkang Wang, Wei Wei, Xi Wang, Junyong Liu, Kangwen Li
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引用次数: 1

Abstract

A machine learning-assisted optimization method is proposed in this paper to coordinate the preventive generation rescheduling and the corrective generatio\load shedding for power system transient stability enhancement. The coordinated control problem is firstly formulated as an extended security constrained optimal power flow (SCOPF) model that includes the corrective generation\load shedding as controlling measures. Considering that the conventional methods are computationally intensive due to the repeated time-domain simulation (TDS)-based transient stability assessment (TSA), the neural process (NP) is proposed to develop the machine learning-based predictor for fast and simulation-free TSA. With the neural process-based predictor to be the surrogate model for fast TSA, the surrogate-assisted evolution programming approach is proposed for online coordinated preventive and corrective control against power system transient instability. The effectiveness of the proposed machine learning-assisted optimization method is demonstrated by the case study on the IEEE 39-bus system and numerical results show that the proposed method can generate the effective coordinated control actions for transient instability mitigation.
基于机器学习辅助优化的电力系统暂态稳定增强协调预防-纠偏控制
为了提高电力系统暂态稳定性,提出了一种机器学习辅助优化方法来协调预防性发电重调度和纠偏性发电减载。首先将协调控制问题表述为包含纠偏发电和减载作为控制措施的扩展安全约束最优潮流(SCOPF)模型。针对基于重复时域仿真(TDS)的暂态稳定评估(TSA)的传统方法计算量大的问题,提出利用神经过程(NP)开发基于机器学习的快速、无仿真的暂态稳定评估预测器。以基于神经过程的预测器作为快速TSA的代理模型,提出了基于代理辅助进化规划的电力系统暂态失稳在线协调预防与纠错控制方法。以IEEE 39总线系统为例,验证了所提机器学习辅助优化方法的有效性,数值结果表明所提方法能够产生有效的暂态失稳协调控制动作。
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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