快速变化气候条件下基于前馈神经网络的MPPT性能比较分析

Fuad Alhaj Omar
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摘要

气候条件的快速和突然变化对传统的MPPT技术提出了挑战,因为它们偏离了MPP,导致功率损失。本文提出了一种基于前馈人工神经网络(FFANN)和直接控制技术的MPPT新技术。在该方法中,FFAAN估计PV输出电压V_MPP的最优值,而直接控制技术实现了占空比的最优调整,使工作点在MPP。为了评估该技术的性能,在MATLAB/Simulink环境下建立了系统部件的精确电气模型并进行了仿真。模拟结果是在快速变化的气候条件下收集的。仿真结果表明,与基于ic和fl的MPPT系统相比,所提出的MPPT技术在跟踪效率和收敛速度方面都取得了更高的性能。结果表明,该方法能够准确估计V_MPP,跟踪效率达到99.9%,而基于fl的MPPT的跟踪效率为94%,基于ic的MPPT的跟踪效率为91.5%。这表明,与传统技术相比,该技术在快速变化的气候条件下表现出优越的性能,并提高了能源生产效率。
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COMPARATIVE PERFORMANCE ANALYSIS OF A FEED-FORWARD NEURAL NETWORK-BASED MPPT FOR RAPIDLY CHANGING CLIMATIC CONDITIONS
Rapid and abrupt changes in climatic conditions present a challenge to classical MPPT techniques as they drift from the MPP, resulting in loss of power. This paper presents a new MPPT technique based on a feed-forward artificial neural network (FFANN) and a direct control technique. In the proposed approach, FFAAN estimates the optimum value of the PV output voltage V_MPP, while the direct control technique achieves an optimal adjustment of the duty cycle making the operating point at MPP. To evaluate the performance of the proposed technique, the accurate electrical model of the system parts was built and simulated in MATLAB/Simulink environment. The simulation results are collected under rapidly changing climatic conditions. Simulation results show that the proposed MPPT technique achieves higher performance in terms of tracking efficiency and convergence speed compared to both the IC-based MPPT and FL-based MPPT systems. The results show that the proposed technique accurately estimates V_MPP, achieving a tracking efficiency of 99.9%, while the tracking efficiency is 94% when using FL-based MPPT and 91.5% when using IC-based MPPT. This demonstrates that the proposed technique exhibits superior performance under rapidly changing climatic conditions and increases energy production efficiency compared to classical techniques.
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