Application of the weighted k-nearest neighbor algorithm for short-term load forecasting

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Abstract

In this paper, the historical power load data from the National Electricity Market (Australia) is used to analyze the characteristics and regulations of electricity (the average value of every eight hours). Then, considering the inverse of Euclidean distance as the weight, this paper proposes a novel short-term load forecasting model based on the weighted k-nearest neighbor algorithm to receive higher satisfied accuracy. In addition, the forecasting errors are compared with the back-propagation neural network model and the autoregressive moving average model. The comparison results demonstrate that the proposed forecasting model could reflect variation trend and has good fitting ability in short-term load forecasting.

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APA

Fan, G. F., Guo, Y. H., Zheng, J. M., & Hong, W. C. (2019). Application of the weighted k-nearest neighbor algorithm for short-term load forecasting. Energies, 12(5). https://doi.org/10.3390/en12050916

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