输电系统拥塞管理优化

E. Semshchikov, M. Negnevitsky
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引用次数: 2

摘要

输电系统的拥塞管理是可再生能源高渗透率电力系统面临的重要挑战之一。当期望的潮流不能在不违反系统运行限制的情况下通过网络传输时,就会发生系统拥塞。为了防止严重的系统损坏,已经开发了大量的拥塞管理方法,包括节点定价、减载、可再生能源发电的削减、发电机重新调度、最优传输切换等。然而,这些方法大多不符合受动态约束(机动性、启停时间等)的常规电厂的最优运行。本文采用改进的粒子群优化(PSO)算法解决了重调度发电(或再调度优化)问题,该算法考虑了常规电厂的启动和关闭时间以及可操作性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Congestion management optimization in electric transmission system
Congestion management in electric transmission systems is one of the most important challenges for power systems with high penetration of renewable energy. System congestion occurs when the desired power flow cannot be transmitted through the network without violating system operating limits. In order to prevent severe system damage, a significant number of congestion management methods have been developed, including nodal pricing, load shedding, curtailment of renewable energy generation, generator rescheduling, optimal transmission switching, etc. Most of these methods, however, do not comply with the optimal operation of conventional power plants subjected to dynamic constraints (manoeuvrability, start-up and shut down times, etc.). In this paper, the rescheduling generation (or re-dispatch optimization) problem is solved using a modified particle swarm optimization (PSO) algorithm which accounts for start up as well as shut down times, and the manoeuvrability of conventional power plants.
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