考虑可再生能源整合不确定性的灵活输电规划

Hui Ren, Xiaozhou Fan, D. Watts, Xingchen Lv
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引用次数: 3

摘要

从气候变化到技术发展等多种因素将推动电力系统发生巨大变化。预计电网将变得更加灵活,以应付日益增加的不确定性,这些不确定性来自未来发电技术及其地点以及来自系统操作实践的不确定性。这些发展将要求对电力系统的规划方式进行根本性的改变。本文介绍了一种在电网规划过程中假定传统纠偏控制作用的柔性输电网络规划方法。提出了一种结合遗传算法和蒙特卡罗仿真的两阶段求解算法。候选规划方案由遗传算法确定。利用蒙特卡罗仿真和灵敏度法找到网络中最脆弱的部分,然后决定需要安装修正的控制装置,以实现最优目标函数并满足运行约束(对于每个被测试的规划方案)。为了使仿真更加真实,还包括了与电压控制装置相关的离散约束。最灵活的规划方案被定义为需要最少额外控制设备投资的方案。在一个18总线测试系统上实现了该方法,验证了其可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Flexible transmission planning considering growing uncertainties from Renewable energy integration
Power systems are set to undergo dramatic changes driven by several factors ranging from climate change to technological developments. It is expected that networks will become more flexible to deal with increasing uncertainties, in those coming from future generation technologies and their locations as well as those from system operation practices. These developments will require fundamental changes in the way power systems are planned. This paper introduces a method of flexible transmission network planning with the traditional corrective control action assumed in the course of network planning. A two-stage solution algorithm is proposed combing Genetic Algorithm and Monte Carlo simulation. Candidate planning schemes are decided by Genetic Algorithm. Monte Carlo simulation and sensitivity method are used to find the most vulnerable part of the network, and then decides the amended control devices needed to be installed to achieve the optimum objective function and satisfy operational constraints (for each tested planning scheme). Discrete constraints associated with voltage control devices are included to make the simulation more realistic. The most flexible planning scheme is then defined as the one which needs the least investment on extra control devices. The proposed approach is implemented on an 18- bus test system and its feasibility is demonstrated.
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