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体系架构下考虑虚假信息注入的微电网群分布式优化调度

Automation of electric power systems(2023)

国网浙江省电力有限公司电力科学研究院 | 贵州电网有限责任公司电力科学研究院

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Abstract
真实信息交互是进行微电网群协同优化调度的关键因素之一.从体系角度出发,形成微电网群进行协同优化运行追求的是整体与个体利益最大化.因此,损害微电网群运行效益的信息交互为虚假信息.虚假信息注入势必给微电网群的安全、经济、稳定运行带来影响.针对处理虚假信息注入给微电网群优化运行带来影响的问题,文中引入体系方法在构建计及虚假信息注入的微电网群体系架构的基础上,建立考虑虚假信息注入的微电网群完全分布式优化调度模型,并结合改进交替方向乘子法和一致性算法提出微电网群虚假信息检测、定位及惩罚机制,有效减少虚假信息注入对微电网群协同优化运行的影响.最后,通过算例分析验证所建模型和虚假信息处理机制的有效性.
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