Cascade feedforward neural network and deep neural network controller on photovoltaic system with cascaded multilevel inverters: Comparison on standalone and grid integrated system

M. Rupesh, Vishwanath Shivalingappa Tegampure
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Abstract

The introduction of a micro-grid-based power generation network will help to meet the demands of consumers while reducing environmental impact. Several industrialized and emerging countries allocate considerable resources to renewable energy-based power generation and invest significant sums of money in this area. This study examines the challenges involved with electricity generation through photovoltaic (PV) systems and the integration of the same with the grid to mitigate power quality issues and improve the power factor for various loading conditions. An innovative multilayer inverter for grid-connected PV systems has been developed to enhance the voltage profile and resulted in a drop in total harmonic distortion (THD). A cascade multilevel inverter (associated with a grid-integrated PV system and managed using multiple innovative artificial intelligence controllers) was developed in this research project. Various advanced intelligent controllers, such as cascade feedforward neural networks (CFFNN) and deep neural networks (DNN), have been analyzed under various operating situations and observed that the THD of voltage, current at the grid, and the load is less than 3 % as per the IEEE 519 standards along with this power factor is maintained nearly unity for the grid-connected system. The quality of power in terms of voltage, frequency, total harmonics distortion, and power factor are improved by using a novel deep neural network algorithm in a cascaded multilevel inverter and verified according to IEEE 1547 and IEEE 519 standards to determine the efficacy of the proposed system.
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级联多电平逆变器光伏系统的级联前馈神经网络和深度神经网络控制器:独立系统和并网系统的比较
引入基于微电网的发电网络将有助于满足消费者的需求,同时减少对环境的影响。一些工业化国家和新兴国家为可再生能源发电分配了大量资源,并在这一领域投入了大量资金。这项研究考察了通过光伏(PV)系统发电以及将其与电网集成以缓解电能质量问题和提高各种负载条件下的功率因数所涉及的挑战。已经开发了一种用于并网光伏系统的创新多层逆变器,以增强电压分布并降低总谐波失真(THD)。本研究项目开发了一种级联多级逆变器(与电网集成光伏系统相关,并使用多个创新的人工智能控制器进行管理)。对级联前馈神经网络(CFFNN)和深度神经网络(DNN)等各种先进的智能控制器在各种运行情况下进行了分析,发现根据IEEE 519标准,电网电压、电流和负载的THD小于3%,并且该功率因数在并网系统中几乎保持一致。在级联多级逆变器中使用一种新的深度神经网络算法,改善了电压、频率、总谐波失真和功率因数方面的电能质量,并根据IEEE 1547和IEEE 519标准进行了验证,以确定所提出的系统的有效性。
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0.70
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发文量
10
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