Chance constraint based risk-aware optimal power flow for cascading failure prevention

Chao Luo, Jun Yang, Yufei Tang, Haibo He, Mingsong Liu
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引用次数: 1

Abstract

Once part or whole of the power system is exposed to some dangerous situations, e.g., malicious terrorist attacks or extreme weather conditions, the potential cascading failure is a severe threat to the power system. However, some feasible prevention control strategies can be used to enhance the system robust to cope with the impact of cascading failure. This paper proposed a chance constraint based optimal power flow model considering the impact of cascading failure. Compared to the conventional optimal power flow model, the proposed one can obtain the optimal generation profile that satisfies the chance constraint on the risk level of cascading failure. Power redispatch that is implemented according to the obtained generation profile can be seen as a prevention strategy, which can reduce the threat of cascading failure to an acceptable level. PSO algorithm and Monte Carlo method were used to search for the optimal solution. Case studies on the IEEE 39-bus system illustrate the effectiveness of the proposed model.
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基于机会约束的风险感知级联故障预防最优潮流
一旦部分或整个电力系统暴露在某些危险情况下,如恶意恐怖袭击或极端天气条件下,潜在的级联故障将对电力系统构成严重威胁。然而,可以采用一些可行的预防控制策略来增强系统的鲁棒性,以应对级联故障的影响。提出了一种考虑级联故障影响的基于机会约束的最优潮流模型。与传统的最优潮流模型相比,该模型可以得到满足级联故障风险水平机会约束的最优发电曲线。根据获得的发电配置文件实现的电力重新分配可以被视为一种预防策略,它可以将级联故障的威胁降低到可接受的水平。采用粒子群算法和蒙特卡罗方法寻找最优解。以IEEE 39总线系统为例,验证了该模型的有效性。
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