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Metaheuristic searching genetic algorithm based reliability assessment of hybrid power generation system

机译:基于混合发电系统可靠性评估的核培养学算法

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摘要

Generating systems are known as adequately reliable when satisfying the load demand. Meanwhile, the efficiency of electrical systems is currently being more influenced by the growing adoption of the Wind/Solar energy in power systems compared to other conventional power sources. This paper proposed a new optimization approach called Metaheuristic Scanning Genetic Algorithm (MSGA) for the evaluation of the efficiency of power generating systems. The MSGA is based on a combination of metaheuristic scanning and Genetic Algorithm. The MSGA technique is used for evaluating the reliability and adequacy of generation systems integrated with wind/Solar energy is developed. The usefulness of the proposed algorithm was tested using Reliability Test System 'IEEE-RTS-79' which include both of wind power and solar power generation. The result approve the effectiveness of the proposed algorithm in improving the computation time by 85% and 2% in comparison with the particle swarm optimization (PSO) and differential evolution optimization algorithm (DEOA) respectively. In addition, the proposed model can be used to test the power capacity forecasting scheme of the hybrid power generation system with the wind, solar and storage.
机译:在满足负载需求时,发电系统被称为足够的可靠性。同时,与其他传统电源相比,电气系统的效率目前正在受到电力系统中的风/太阳能的越来越多的影响。本文提出了一种新的优化方法,称为成群质扫描遗传算法(MSGA),用于评估发电系统效率。 MSGA基于成逐扫描和遗传算法的组合。 MSGA技术用于评估与风/太阳能集成的产生系统的可靠性和充分性。使用可靠性测试系统的“IEEE-RTS-79”测试了所提出的算法的有用性,包括风电和太阳能发电。结果批准了所提出的算法在与粒子群优化(PSO)和差分演进优化算法(DEOA)相比提高计算时间85%和2%。此外,所提出的模型可用于测试随风,太阳能和储存的混合发电系统的电力容量预测方案。

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