Investigation of Adaptive Intelligent MPPT Algorithm for a Low-cost IoT Enabled Standalone PV System

Q3 Engineering
Santanu Kumar Dash, Priyanka Garg, Soumya Mishra, Suprava Chakraborty, D. Elangovan
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引用次数: 6

Abstract

ABSTRACT This paper explicates a standalone solar photovoltaic system design to track maximum power by utilising intelligent adaptive control algorithms. Conventional MPPT algorithms are not efficient enough to follow the maximum power variable irradiation and temperature conditions. Therefore, an intelligent algorithm has been required to extract the maximum power in a standalone PV system. The present paper incorporates adaptive intelligent maximum power point tracking (MPPT) method adaptive neuro-fuzzy inference system (ANFIS) techniques to extract maximum voltage and power. The fuzzy logic controller (FLC) has been implemented to analyse the performance compared to the ANFIS method. Because of the utilisation of conventional techniques, the point of maximum power gets oscillated in a low irradiance level and the values move between forward and backwards but do not have a fixed value. The used ANFIS method takes all the possibility values from 0 to 1, increasing efficiency. The efficiency of the ANFIS-based MPPT method is 90% more accurate than those of other conventional methods, which has been presented in the paper. For the remote monitoring of the obtained voltage, current and power, internet of things (IoT) features have been incorporated into the considered standalone PV system. The presented standalone PV system has been experimentally verified and validated for the efficiency evaluation of the proposed ANFIS algorithm.
低成本物联网独立式光伏系统自适应智能MPPT算法研究
摘要:本文阐述了一种利用智能自适应控制算法跟踪最大功率的独立太阳能光伏系统设计。传统的MPPT算法不能有效地跟踪最大功率可变辐照和温度条件。因此,需要一种智能算法来提取独立光伏系统的最大功率。本文结合自适应智能最大功率点跟踪(MPPT)、自适应神经模糊推理系统(ANFIS)等技术提取最大电压和功率。实现了模糊逻辑控制器(FLC),并与ANFIS方法进行了性能分析。由于传统技术的使用,最大功率的点在低辐照水平下振荡,值在向前和向后之间移动,但没有固定的值。使用的ANFIS方法取0到1的所有可能性值,提高了效率。本文提出了一种基于anfiss的MPPT方法,其准确率比其他传统方法提高了90%。为了远程监控获得的电压、电流和功率,物联网(IoT)功能已被纳入考虑的独立光伏系统中。所提出的独立光伏系统已经过实验验证,并验证了所提出的ANFIS算法的效率评估。
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来源期刊
Australian Journal of Electrical and Electronics Engineering
Australian Journal of Electrical and Electronics Engineering Engineering-Electrical and Electronic Engineering
CiteScore
2.30
自引率
0.00%
发文量
46
期刊介绍: Engineers Australia journal and conference papers.
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