SIZING ALGORITHM OF SOLAR-POWERED WATER PUMPING SYSTEM FOR DOMESTIC APPLICATION USING PARTICLE SWARM OPTIMIZATION

Siang Hong Jing, S. M. Hussin, Assoc. Prof. Dr. Norzanah Rosmin, Dalila Mat Said, A. Nawabjan, Madihah Md Rasid
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Abstract

Due to some issues faced in rural areas such as increasing water demand, the limited reach of electricity, as well as the scarcity of fossil fuel and its negative impact on the environment, renewable energy water pumping systems emerges as an excellent solution to solve those problems. In this case, the components in the renewable energy water pumping system ought to be optimized to improve the effectiveness of the system. This study was aimed at developing and analyzing an optimization model for the sizing of solar-powered water pumping systems for domestic applications. The sizing algorithm was developed using Particle Swarm Optimization (PSO) in MATLAB software. As a result of optimization, a summary of the main findings was provided, which include the optimal values for the number of solar panels, water tank capacity, and water pump power that minimize system costs and fulfill the water demand simultaneously. To investigate the performance of the proposed algorithm, several case studies have been evaluated by varying the total dynamic head (TDH) and water demands. In summary, TDH value primarily affects the number of PV panels and pump power, leaving the water tank capacity unchanged. However, the variations in water demand can impact all three parameters: the number of PV panels, water tank capacity, and water pump power. Overall, by applying the PSO method in the sizing algorithm of a solar-powered water pumping system, the cost could be minimized, and it would be able to cover the cost of water storage that supports the water demand of a certain application.  
基于粒子群优化的家用太阳能水泵系统选型算法
由于农村地区面临的一些问题,如水需求增加,电力覆盖范围有限,以及化石燃料的稀缺性及其对环境的负面影响,可再生能源抽水系统成为解决这些问题的一个很好的解决方案。在这种情况下,需要对可再生能源抽水系统中的组件进行优化,以提高系统的有效性。本研究的目的是开发和分析一个用于家庭应用的太阳能水泵系统尺寸的优化模型。在MATLAB软件中,利用粒子群算法(PSO)开发了分级算法。作为优化的结果,提供了一个主要发现的总结,其中包括太阳能电池板的数量,水箱容量和水泵功率的最佳值,使系统成本最小化,同时满足水的需求。为了研究所提出的算法的性能,通过改变总动态水头(TDH)和需水量来评估几个案例研究。综上所述,TDH值主要影响光伏板数量和水泵功率,水箱容量不变。然而,水需求的变化会影响所有三个参数:光伏板的数量,水箱容量和水泵功率。总体而言,将粒子群算法应用于太阳能抽水系统的规模算法,可以使成本最小化,并且能够覆盖支持特定应用用水需求的储水成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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