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Neural network-based quickprop control algorithm for grid connected solar PV-DSTATCOM system

机译:光伏并网光伏发电系统的神经网络快速控制算法

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摘要

For the optimal operation of grid interfaced solar photovoltaic (PV) system, a neural network-based Quickprop control algorithm is presented in this study. The solar PV array supplies maximum power by utilising an incremental conductance-based maximum power point tracking technique to the grid and the load. When the solar power is not present, during cloudy days or at night, the distribution static compensator (DSTATCOM) operation is performed by harmonics mitigation and reactive power compensation of the loads connected at the point of intersection. The proposed system improves power quality when solar PV power is present, along with active power transfer from solar PV array to grid/load. Thus, a smooth transition is provided between these modes with neural network-based Quickprop control algorithm. Moreover, the neural network-based control technique offers enhanced accuracy due to the combinational neural structure in the estimation process. A laboratory prototype is developed for validation and experimental results corroborate reliable operation for modes of operation as DSTATCOM and grid interfaced PV system at varying load and solar insolation condition.
机译:为了使太阳能光伏并网系统的最优运行,提出了一种基于神经网络的Quickprop控制算法。太阳能光伏阵列通过利用基于增量电导的最大功率点跟踪技术为电网和负载提供最大功率。当不存在太阳能时,在阴天或夜晚,配电谐波补偿器(DSTATCOM)操作是通过谐波缓解和对相交点连接的负载的无功功率补偿来执行的。当存在太阳能光伏电源时,所提出的系统可以改善电能质量,同时还可以将有功功率从太阳能光伏阵列传输到电网/负载。因此,通过基于神经网络的Quickprop控制算法,可以在这些模式之间提供平滑过渡。此外,由于神经网络的控制技术在估计过程中具有组合的神经结构,因此提供了更高的准确性。开发了用于验证的实验室原型,实验结果证实了DSTATCOM和并网光伏系统在变化的负载和日照条件下的运行模式的可靠运行。

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