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Analysis and evaluation of two short-term load forecasting techniques

机译:两种短期负荷预测技术的分析和评估

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Short-term load forecasting (STLF) is very important for an efficient operation of the power system because the exact and stable load forecasting brings good results to the power system. This manuscript presents the application of two new models in STLF i.e. Cross multi-models and second decision mechanism and Residential load forecasting in smart grid using deep neural network models. In the cross multi-model and second decision mechanism method, the horizontal and longitudinal load characteristics are useful for the construction of the model with the calculation of the total load. The dataset for this model is considered from Maine in New England, Singapore, and New South Wales of Australia. While, In the residential load forecasting method, the Spatio-temporal correlation technique is used for the construction of the iterative ResBlock and deep neural network which helps to give the characteristics of residential load with the use of a publicly available Redd dataset. The performances of the proposed models are calculated by the Root Mean Square Error, Mean Absolute Error, and Mean Absolute Percentage Error. From the simulation results, it is concluded that the performance of cross multi-model and second decision mechanism is good as compare to the residential load forecasting.
机译:短期负荷预测(STLF)对于电力系统的高效运行非常重要,因为准确稳定的负荷预测为电力系统带来了良好的结果。本文介绍了两种新模型在STLF中的应用,即交叉多模型和第二决策机制,以及基于深度神经网络模型的智能电网住宅负荷预测。在交叉多模型和二次决策机制方法中,水平和纵向荷载特性对于计算总荷载的模型构建非常有用。该模型的数据集来自新英格兰的缅因州、新加坡和澳大利亚新南威尔士州。同时,在住宅负荷预测方法中,时空相关技术用于构建迭代 ResBlock 和深度神经网络,该神经网络有助于使用公开可用的 Redd 数据集给出住宅负荷的特征。所提模型的性能由均方根误差、平均绝对误差和平均绝对百分比误差计算得出。仿真结果表明,与住宅负荷预测相比,跨多模式和二次决策机制的性能较好。

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