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Artificial neural network based modified incremental conductance algorithm for maximum power point tracking in photovoltaic system under partial shading conditions

机译:基于人工神经网络的改进增量电导算法,用于部分遮荫条件下光伏系统最大功率点跟踪

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摘要

In solar PV (photovoltaic) system, tracking the module's MPP (maximum power point) is challenging due to varying climatic conditions. Moreover, the tracking algorithm becomes more complicated under the condition of partial shading due to the presence of multiple peaks in the power voltage characteristics. This paper presents a NN (neural network) based modified 1C (incremental conductance) algorithm for MPPT (maximum power point tracking) in PV system. The PV system along with the proposed MPPT algorithm was simulated using Matlab/Simulink simscape tool box. The simulated system was evaluated under uniform and non-uniform irradiation conditions and the results are presented. For comparison, P&O (perturb and observe) and Fuzzy based Modified Hill Climbing algorithms were used for MPP tracking, and the results show that the proposed approach is effective in tracking the MPP under partial shading conditions. To validate the simulated system hardware implementation of the proposed algorithm was carried out using FPGA (Field Programmable Gate Array).
机译:在太阳能PV(光伏)系统中,由于气候条件的变化,跟踪模块的MPP(最大功率点)具有挑战性。此外,由于电源电压特性中存在多个峰值,在部分阴影条件下,跟踪算法变得更加复杂。本文提出了一种基于NN(神经网络)的改进的1C(增量电导)算法,用于光伏系统中的MPPT(最大功率点跟踪)。使用Matlab / Simulink simscape工具箱模拟了光伏系统以及提出的MPPT算法。在均匀和非均匀照射条件下对模拟系统进行了评估,并给出了结果。为了进行比较,将P&O(扰动和观测)和基于模糊的改进Hill Climbing算法用于MPP跟踪,结果表明,该方法在部分阴影条件下可有效跟踪MPP。为了验证仿真系统的硬件实现,使用FPGA(现场可编程门阵列)对算法进行了实现。

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