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Short-term Forecasting for Integrated Load and Renewable Energy in Micro-grid Power Supply

机译:微电网电源的综合负荷和可再生能源的短期预测

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For planning and operation activities, accurate forecasting of demand is very important in sustaining the load demand in the electrical power system. Recently there has been increased use of renewable energy and unlike other sources of electricity like diesel generators, estimation of power production from renewable sources is uncertain. Therefore, reliable techniques for forecasting renewable energy and load demand are of paramount importance. Several forecasting techniques have been researched on in the past and are classified into; physical, statistical and AI techniques The proposed research involves forecasting integrated load and renewable energy (solar and wind) using Artificial Neural Network(ANN) and Enhanced Particle Swamp Optimization (EPSO) techniques. The output of this research is the predicted netload. The analysis of the results depicts ANN_EPSO as a reliable method for forecasting renewable energy and Load demand.
机译:对于计划和运营活动,准确预测需求对于维持电力系统中的负载需求非常重要。最近,可再生能源的使用有所增加,与柴油发电机等其他电力来源不同,可再生能源发电量的估算尚不确定。因此,预测可再生能源和负荷需求的可靠技术至关重要。过去已经研究了几种预测技术,并将其分类为:物理,统计和AI技术拟议的研究包括使用人工神经网络(ANN)和增强型粒子沼泽优化(EPSO)技术预测负荷和可再生能源的综合(太阳能和风能)。这项研究的输出是预测的净负载。结果分析表明,ANN_EPSO是预测可再生能源和负荷需求的可靠方法。

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