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An artificial intelligence approach to optimization of an off-grid hybrid wind/hydrogen system

机译:优化外网杂交风/氢系统的人工智能方法

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Off-grid electrification of remote areas using a hybrid renewable energy scheme is a requirement to achieve the goals of sustainable development. However, the optimization and sizing for the capacity of such systems are challenging. In this regard, this study targets an improved optimization algorithm with high efficiency for optimization and longterm capacity planning of an off-grid hybrid renewable energy scheme composed of wind, fuel cell, and hydrogen storage schemes. The suggested methods are three improved versions of the global dynamic harmony search to do pitch adjustment mechanism. The objective function of this study is to reduce the total net annual cost of the system and the loss of power supply probability to a minimum. The performance of this hybrid system is examined via a simulation study, which had been performed on a remote area located in eastern Iran over a long period. The results of the three improved proposed algorithms are compared with the original global dynamic harmony search algorithm. Also, sensitivity analysis is proposed to showcase the influence of uncertainties on the system and input parameters on the algorithm. The simulation results indicate that three improved versions of the global dynamic harmony search algorithm find more promising results than the original algorithm, and confirm the superior accuracy, convergence speed, and robustness of the global dynamic harmony search-II. Also, reliability level and iteration values have a? Three improved versions of global dynamic harmony search (GDHS) are presented in term of best fitness function. ? GDHS-II yields the most promising results in terms of convergence speed, robustness, and accuracy. ? Off-grid hybrid system based on wind and hydrogen energy reduces system costs and increase reliability. ? Reliability level and iteration values have a considerable impact on each component and TNAC of the optimal hybrid system.Off-grid electrification of remote areas using a hybrid renewable energy scheme is a requirement to achieve the goals of sustainable development. However, the optimization and sizing for the capacity of such systems are challenging. In this regard, this study targets an improved optimization algorithm with high efficiency for optimization and long -term capacity planning of an off-grid hybrid renewable energy scheme composed of wind, fuel cell, and hydrogen storage schemes. The suggested methods are three improved versions of the global dynamic harmony search to do pitch adjustment mechanism. The objective function of this study is to reduce the total net annual cost of the system and the loss of power supply probability to a minimum. The performance of this hybrid system is examined via a simulation study, which had been performed on a remote area located in eastern Iran over a long period. The results of the three improved proposed algorithms are compared with the original global dynamic harmony search algorithm. Also, sensitivity analysis is proposed to showcase the influence of uncertainties on the system and input parameters on the algorithm. The simulation results indicate that three improved versions of the global dynamic harmony search algorithm find more promising results than the original algorithm, and confirm the superior accuracy, convergence speed, and robustness of the global dynamic harmony search-II. Also, reliability level and iteration values have a considerable impact on the total net annual cost of the optimal hybrid energy system based on wind and hydrogen energy.(c) 2021 Hydrogen Energy Publications LLC. Published by Elsevier Ltd. All rights reserved.
机译:使用混合可再生能源方案的偏远地区的离网电气化是实现可持续发展目标的要求。然而,这种系统的能力的优化和尺寸是具有挑战性的。在这方面,该研究针对由风力,燃料电池和储氢方案组成的外网混合可再生能源方案的优化和长期容量规划的高效率的改进优化算法。建议的方法是全球动态和谐搜索的三种改进版本,以进行音高调整机制。本研究的目标职能是减少系统的总净年度成本,并将电源概率损失到最低限度。通过仿真研究检查了这种混合系统的性能,该研究已经在长期内的遥远区域上进行。将三种改进的提出算法的结果与原始全球动态和谐搜索算法进行了比较。此外,提出了敏感性分析来展示不确定性对算法上的系统和输入参数的影响。仿真结果表明,全球动态和谐搜索算法的三种改进版本的结果比原始算法更有前景,并确认全球动态和谐搜索-II的卓越精度,收敛速度和鲁棒性。此外,可靠性水平和迭代值有一个?在最佳健身功能的任期内提出了三种改进的全局动态和声搜索(GDH)。还是GDHS-II在收敛速度,鲁棒性和准确性方面产生最有前途的结果。还是基于风和氢能的离网混合动力系统降低了系统成本并提高了可靠性。还是可靠性水平和迭代值对每个组件和TNAC的最佳混合系统的TNAC具有相当大的影响。使用混合可再生能源方案的偏远地区的电网电气化是达到可持续发展目标的要求。然而,这种系统的能力的优化和尺寸是具有挑战性的。在这方面,该研究靶向了一种改进的优化算法,具有高效率的优化和长网混合可再生能源方案的优化和长期容量规划,包括风,燃料电池和储氢方案。建议的方法是全球动态和谐搜索的三种改进版本,以进行音高调整机制。本研究的目标职能是减少系统的总净年度成本,并将电源概率损失到最低限度。通过仿真研究检查了这种混合系统的性能,该研究已经在长期内的遥远区域上进行。将三种改进的提出算法的结果与原始全球动态和谐搜索算法进行了比较。此外,提出了敏感性分析来展示不确定性对算法上的系统和输入参数的影响。仿真结果表明,全球动态和谐搜索算法的三种改进版本的结果比原始算法更有前景,并确认全球动态和谐搜索-II的卓越精度,收敛速度和鲁棒性。此外,可靠性水平和迭代值对基于风能和氢能的最佳混合能源系统的总净年成本具有相当大的影响。(c)2021氢能出版物LLC。 elsevier有限公司出版。保留所有权利。

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