使用递归神经网络控制器与直流-直流升压、Cuk 和单端初级电感转换器 (SEPIC) 转换器对太阳能进行优化

Kasim Ali, Mohammad, Sarhan M. Musa
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引用次数: 0

摘要

温室效应问题迫在眉睫,需要制定战略来减少二氧化碳(CO2)的排放,因为二氧化碳是一种有害气体,具有广泛的负面影响。太阳作为最终的可再生能源,可以产生不排放二氧化碳的能源。利用太阳能需要光伏(PV)系统配备最大功率点跟踪器(MPPT),以优化能量输出。MPPT 可适应不断变化的环境条件,并通过脉冲宽度调制器 (PWM) 与绝缘栅双极晶体管 (IGBT) 通信,后者可改变占空比,使系统电阻与负载保持一致。传统的扰动和观测(P&O)算法难以应对环境变化,但先进的基于人工智能的循环神经网络(RNN)控制器可提高效率。本研究使用 104、201 和 1001 条目的三个数据集,对 RNN 控制器与三种 DC-DC 转换器进行了比较:升压、Cuk 和单端初级电感器转换器 (SEPIC)。
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Optimization of solar energy using recurrent neural network controller with dc-dc boost, Cuk, and single-ended primary inductor converter (SEPIC) Converters
The pressing issue of the greenhouse effect demands strategies to reduce carbon dioxide (CO2) emissions, a detrimental gas with widespread adverse effects. The sun, as the ultimate renewable energy source, generates energy without CO2 emissions. Harnessing solar power necessitates a photovoltaic (PV) system equipped with a Maximum Power Point Tracker (MPPT) to optimize energy output. The MPPT adapts to changing environmental conditions and communicates through a Pulse Width Modulator (PWM) to an Insulated Gate Bipolar Transistor (IGBT), which alters its duty cycle to align system resistance with the load. Traditional Perturbation and Observation (P&O) algorithms struggled with environmental variations, but advanced AI-based Recurrent Neural Network (RNN) controllers enhance efficiency. This research compares RNN controllers using three data sets of 104, 201, and 1001 entries with three DC-DC converters: Boost, Cuk, and Single-Ended Primary Inductor Converter (SEPIC).
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