基于遗传算法的风力发电混合动力系统充分性评估

Lingfeng Wang, C. Singh
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引用次数: 7

摘要

为了保证电力系统在不确定条件下的可靠运行,必须对发电的充分性进行合理的评估。最近,风力发电吸引了大量的关注,主要是因为它不消耗化石燃料,对环境无害。然而,由于风力资源的间歇性,无法准确预测风力发电机组的输出。本文采用一种基于遗传算法的搜索程序来完成风力发电机组等发电系统的充分性评估。寻找最可能的故障状态,这些状态对负荷期望损失(LOLE)、负荷频率损失(LOLF)和期望不提供能量(EENS)等充分性指标有重要影响。采用改进的IEEE可靠性测试系统(IEEE- rts)验证了该方法的适用性和有效性。
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Genetic Algorithm Based Adequacy Evaluation of Hybrid Power Generation System Including Wind Turbine Generators
The adequacy of power generation should be properly evaluated to facilitate the reliable operations of power systems under uncertainties. More recently, wind power has attracted significant attention primarily because it does not consume fossil fuels and is environmentally benign. However, the output from wind turbine generator (WTG) can not be precisely predicted due to the intermittent nature of wind resources. In this paper, a genetic algorithm (GA) based search procedure is adopted to accomplish the adequacy assessment for power generating system including wind turbine generators. The most probable failure states are sought out, which contribute significantly to the adequacy indices including loss of load expectation (LOLE), loss of load frequency (LOLF), and expected energy not supplied (EENS). A modified IEEE Reliability Test System (IEEE-RTS) is used to verify the applicability and effectiveness of the proposed approach.
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