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Nonlinear time series forecast model for grid-connected photovoltaic station

机译:并网光伏电站的非线性时间序列预测模型

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Based on nonlinear characteristics of photovoltaic cells, a PV power generation forecast system is presented in this paper. A control model of grid-connected PV plant based on nonlinear neural network is proposed as well, which can effectively improve the dynamic adjustment ability of photovoltaic power station, realize the function multiplexing, improve the power quality, reduce the system loss, and save the equipment investment. Based on the nonlinearity characteristics of photovoltaic cell and grid scheduling, we develop photovoltaic cell output prediction model, photovoltaic plant output prediction model, and power control model based on the nonlinear neural network, simulate and verifies these models.
机译:基于光伏电池的非线性特性,提出了一种光伏发电量预测系统。提出了一种基于非线性神经网络的并网光伏电站控制模型,可以有效提高光伏电站的动态调节能力,实现功能复用,提高电能质量,减少系统损耗,节约能源。设备投资。基于光伏电池的非线性特性和网格调度,我们基于非线性神经网络开发了光伏电池输出预测模型,光伏电站输出预测模型和功率控制模型,并对这些模型进行了仿真和验证。

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