GA-Aided Power Flow Management in a Multi-Vector Energy System

Xiangping Chen, W. Cao, Lei Xing
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Abstract

Utilization of renewable energy (e.g. wind, solar, bio-energy) is high on the governmental agenda globally. In order to tackle energy poverty and increase energy efficiency in energy systems, a hybrid energy system including wind, hydrogen and fuel cells is proposed to supplement to the main power grid. Wind energy is firstly converted into electrical energy while part of the generated electricity is used for water electrolysis to generate hydrogen for energy storage. Hydrogen is used by fuel cells to convert to electricity when electrical energy demand peaks. An analytical model is developed to coordinate the operation of the system involving energy conversion between hydrogen, electrical and mechanical forms. The proposed system is primarily designed to meet the electrical demand of a rural village while the energy storage system can meet the discrepancy between intermittent renewable energy supplies and fluctuated energy demands so as to improve the system efficiency. Genetic Algorithm (GA) is used as an optimization strategy to determine the operational scheme for the multi-vector energy system. In this work, case studies are carried out based on actual measurement data. The test results have confirmed the effectiveness of the proposed methodology and maximizing the wind energy consumption locally. This is an alternative to battery energy storage and can be widely used in wind-rich rural areas.
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基于遗传算法的多矢量能量系统潮流管理
利用可再生能源(如风能、太阳能、生物能源)是全球各国政府的重要议程。为了解决能源贫困问题,提高能源系统的能源效率,提出了一个包括风能、氢能和燃料电池在内的混合能源系统来补充主电网。风能首先转化为电能,产生的部分电能用于水电解产生氢气用于储能。当电能需求达到峰值时,氢被燃料电池用来转换成电能。建立了一个解析模型来协调系统的运行,包括氢、电和机械形式之间的能量转换。本文提出的系统主要是为了满足农村的用电需求,而储能系统可以满足间歇性可再生能源供应与波动性能源需求之间的差异,从而提高系统效率。采用遗传算法作为优化策略确定多矢量能量系统的运行方案。在这项工作中,基于实际测量数据进行了案例研究。测试结果证实了所提出方法的有效性,并最大限度地提高了当地的风能消耗。这是电池储能的一种替代方案,可以广泛应用于风力丰富的农村地区。
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