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Modeling, control, and simulation of grid connected intelligent hybrid battery/photovoltaic system using new hybrid fuzzy-neural method

机译:新型混合模糊神经网络的并网智能混合电池/光伏系统建模,控制与仿真

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摘要

Nowadays, photovoltaic (PV) generation is growing increasingly fast as a renewable energy source. Nevertheless, the drawback of the PV system is its dependence on weather conditions. Therefore, battery energy storage (BES) can be considered to assist for a stable and reliable output from PV generation system for loads and improve the dynamic performance of the whole generation system in grid connected mode. In this paper, a novel topology of intelligent hybrid generation systems with PV and BES in a DC-coupled structure is presented. Each photovoltaic cell has a specific point named maximum power point on its operational curve (i.e. current-voltage or power-voltage curve) in which it can generate maximum power. Irradiance and temperature changes affect these operational curves. Therefore, the nonlinear characteristic of maximum power point to environment has caused to development of different maximum power point tracking techniques. In order to capture the maximum power point (MPP), a hybrid fuzzy-neural maximum power point tracking (MPPT) method is applied in the PV system. Obtained results represent the effectiveness and superiority of the proposed method, and the average tracking efficiency of the hybrid fuzzy-neural is incremented by approximately two percentage points in comparison to the conventional methods. It has the advantages of robustness, fast response and good performance. A detailed mathematical model and a control approach of a three-phase grid-connected intelligent hybrid system have been proposed using Matlab/Simulink. (C) 2016 ISA. Published by Elsevier Ltd. All rights reserved.
机译:如今,光伏(PV)发电作为可再生能源的发展越来越快。然而,光伏系统的缺点是其依赖于天气条件。因此,可以考虑使用电池储能(BES),以帮助PV发电系统稳定,可靠地输出负载,并改善并网模式下整个发电系统的动态性能。在本文中,提出了一种新的智能混合发电系统的拓扑结构,该系统具有直流耦合结构中的PV和BES。每个光伏电池在其工作曲线上都有一个称为最大功率点的特定点(即电流-电压或功率-电压曲线),在该点上可以产生最大功率。辐照度和温度变化会影响这些工作曲线。因此,最大功率点对环境的非线性特性导致了不同最大功率点跟踪技术的发展。为了捕获最大功率点(MPP),在光伏系统中采用了混合模糊神经最大功率点跟踪(MPPT)方法。获得的结果代表了该方法的有效性和优越性,与传统方法相比,混合模糊神经网络的平均跟踪效率提高了大约两个百分点。它具有鲁棒性,快速响应和良好性能的优点。使用Matlab / Simulink提出了三相并网智能混合系统的详细数学模型和控制方法。 (C)2016 ISA。由Elsevier Ltd.出版。保留所有权利。

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