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Short-term PV power forecasting using empirical mode decomposition in integration with back-propagation neural network

机译:使用经验模式分解与背传播神经网络集成的短期PV功率预测

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Solar panel photovoltaic (PV), grid-connected and off-grid connected systems are promptly increasing in India, to enrich the solar power generation. Solar power generation is one of the furthermost encouraging sources of renewable energy sources. Accurate PV-power forecasting is an essential requirement for electricity companies and grid operators to increase the commitment of units, profits, planning of energy transmissions, scheduling maintenance and planning of supply and demand in the electricity grid. The perfect prediction of PV energy is an important task because it is dependent on solar radiation, which is uncontrollable and weather dependent. In this paper, an innovative PV power forecasting method has been developed by integrating empirical mode decomposition (EMD) and back-propagation neural network (BPNN). EMD is used to decompose PV time series into five intrinsic mode functions (IMF's) and a residue. Then, each IMF and residue is used to train the back-propagation neural network (BPNN). The proposed EMD-BPNN method is estimated on PV power dataset collected from 100 kW roof-top grid-connected solar plant. The proposed EMD-BPNN method is progressing better than some recently reported methods for predicting PV power in terms of computational accuracy and complexity.
机译:太阳能电池板光伏(PV),网格连接和离网连接系统在印度迅速增加,丰富太阳能发电。太阳能发电是增强可再生能源的令人鼓舞的来源之一。精确的PV-Power预测是电力公司和电网运​​营商增加单位,利润,能源传输规划,调度和规划电网中供需规划的重要要求。 PV Energy的完美预测是一个重要的任务,因为它取决于太阳辐射,这是无法控制和依赖的。本文通过集成了经验模式分解(EMD)和背传播神经网络(BPNN),开发了一种创新的PV功率预测方法。 EMD用于将PV时间序列分解为五个内在模式功能(IMF)和残留物。然后,每个IMF和渣油用于训练后传播神经网络(BPNN)。所提出的EMD-BPNN方法估计从100kW屋顶电网连接太阳能电厂收集的PV功率数据集。所提出的EMD-BPNN方法比最近报告的方法更好地进展,以便在计算准确性和复杂性方面预测光伏电量。

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