基于灰狼优化的水泵SPV系统最大功率提取

Astitva Kumar, M. Bilal, M. Rizwan, U. Nangia
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引用次数: 1

摘要

可再生能源的使用正在增加,以提供节能和不间断的电力供应。由于其丰富的可用性和其他优势,太阳能光伏发电(SPV)在农业部门的使用越来越重要。本文介绍了印度农村农业实践中基于SPV的抽水系统(WPS)。所提出的水泵系统由SPV系统、最大功率点控制器、升压变换器、逆变器和3台-Φ感应电机驱动水泵组成。SPV功率的随机性是电气工程师关注的问题。因此,使用最大功率点跟踪(MPPT)算法是提高SPV系统效率和保证系统鲁棒性的关键。本文提出的SPV系统采用人工智能方法来设计MPPT算法。本文介绍了一种灰狼优化算法来提取SPV系统在不同辐照度条件下的最大功率。在计算量、最大功率跟踪和波动等方面,比较了该算法在部分阴影条件下与其他算法的性能。该控制器的性能较好,上升时间最小为0.11 s,跟踪误差为0%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Grey Wolf Optimization Inspired Maximum Power Extraction from SPV System for Water Pumping Application
The use of renewable energy resources is increasing to provide energy efficient and uninterrupted supply of power. The use of solar photovoltaics (SPV) in the agriculture sector is gaining importance due to its availability in abundance and other advantages. This paper presents SPV based water pumping system (WPS) for rural agricultural practice in Indian scenario. The proposed water pumping system comprises of SPV system, maximum power point controller, boost converter, inverter, and 3-Φ induction motor driving a water pump. The stochastic nature of SPV power is a concern for electrical engineers. Thus, the use of maximum power point tracking (MPPT) algorithms is of key focus to improve the efficiency and ensure the robust performance of SPV system. The proposed SPV system incorporates an artificial intelligence method for designing MPPT algorithm. The paper introduces a grey wolf optimization inspired algorithm to extract the maximum power under varying irradiance conditions from SPV system. The performance of the proposed algorithm is compared with other algorithms for partially shaded conditions on the basis of computational burden, maximum power tracked, and fluctuations. The proposed controller is better with least rise time of 0.11 s, and 0% error in tracking the power.
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