基于人工智能方法的应急电力系统安全评估与控制

M. Negnevitsky, C. Rehtanz, U. Hager, N. Tomin, V. Kurbatsky, D. Panasetsky
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引用次数: 4

摘要

现代电网仍然容易受到大规模停电的影响。在过去十年中,北美、欧洲和亚洲发生的事件清楚地表明,大规模停电的可能性越来越大。如果预先确定了紧急情况,就可以采取预防措施,避免大规模停电。在目前的竞争环境中,这种情况可能不容易发现,因为不同的问题可能同时发生在不同管辖范围内的大型网络的不同部分。本文提出了一种新的可行的方法,以尽量减少大规模停电的威胁。该系统主要由报警触发、基于智能神经网络的电力系统可能报警状态早期检测系统和多智能体竞争协同控制系统两部分组成。我们在改进的53总线IEEE电力系统上演示了该方法。提出并讨论了结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pre-emergency power system security assessment and control using artificial intelligence approaches
Modern electricity grids continue to be vulnerable to large-scale blackouts. During the past ten years events in North America, Europe and Asia have clearly demonstrated an increasing likelihood of large blackouts. If pre-emergency conditions are identified, preventive actions can be taken, and large-scale blackouts avoided. In the current competitive environment, such conditions may not be easily detected because different problems may simultaneously occur in different parts of a large network within different jurisdictions. In the paper a novel viable approach is proposed to minimise the threat of large-scale blackouts. The proposed system consist of two main parts: the alarm trigger, an intelligent neural network-based system for early detection of possible alarm states in a power system, and the competitive-collaborative multi-agent control system. We demonstrated the approach on the modified 53-bus IEEE power system. Results are presented and discussed.
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