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Deterministic and stochastic approach for safety and reliability optimization of captive power plant maintenance scheduling using GA/SA-based hybrid techniques: A comparison of results

机译:使用基于GA / SA的混合技术对自备电厂维护计划进行安全性和可靠性优化的确定性和随机方法:结果比较

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This paper presents a comparison of results for optimization of captive power plant maintenance scheduling using genetic algorithm (GA) as well as hybrid GA/simulated annealing (SA) techniques. As utilities catered by captive power plants are very sensitive to power failure, therefore both deterministic and stochastic reliability objective functions have been considered to incorporate statutory safety regulations for maintenance of boilers, turbines and generators. The significant contribution of this paper is to incorporate stochastic feature of generating units and that of load using levelized risk method. Another significant contribution of this paper is to evaluate confidence interval for loss of load probability (LOLP) because some variations from optimum schedule are anticipated while executing maintenance schedules due to different real-life unforeseen exigencies. Such exigencies are incorporated in terms of near-optimum schedules obtained from hybrid GA/SA technique during the final stages of convergence. Case studies corroborate that same optimum schedules are obtained using GA and hybrid GA/SA for respective deterministic and stochastic formulations. The comparison of results in terms of interval of confidence for LOLP indicates that levelized risk method adequately incorporates the stochastic nature of power system as compared with levelized reserve method. Also the interval of confidence for LOLP denotes the possible risk in a quantified manner and it is of immense use from perspective of captive power plants intended for quality power.
机译:本文介绍了使用遗传算法(GA)以及混合遗传算法/模拟退火(SA)技术优化自备电厂维护计划的结果的比较。由于自备电厂提供的公用事业对停电非常敏感,因此,确定性和随机可靠性目标函数均已考虑纳入法定安全规定,以维护锅炉,涡轮机和发电机。本文的重要贡献是将发电单元的随机特征和负荷的随机特征结合在一起,采用了分级风险法。本文的另一个重要贡献是评估了失载概率(LOLP)的置信区间,因为在执行维护计划时,由于现实生活中不可预见的不同紧急情况,预计与最佳计划会有一些差异。这些紧急情况是根据融合的最后阶段从混合GA / SA技术获得的近乎最佳的计划而合并的。案例研究证实,对于各自的确定性和随机公式,使用GA和混合GA / SA可获得相同的最佳计划。根据LOLP的置信区间进行的结果比较表明,与均衡储备法相比,均衡风险方法充分融合了电力系统的随机性。 LOLP的置信区间也以量化的方式表示可能存在的风险,并且从打算用于优质电力的自备电厂的角度来看,它具有巨大的用途。

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