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A composite k-nearest neighbor model for day-ahead load forecasting with limited temperature forecasts

机译:用于有限温度预测的一天载荷预测的复合k最近邻模型

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Load forecasting is an important task in power system operations. Considering the strong correlation between electricity load demand and weather condition, the temperature has always been an input for short-term load forecasting. For day-ahead load forecasting, the whole next-day's temperature forecast (say, hourly or half-hourly forecast) is however sometimes difficult to obtain or suffering from uncertain forecasting errors. This paper proposes a k-nearest neighbor (kNN)-based model for predicting the next-day's load with only limited temperature forecasts, namely minimum and maximum temperature of a day, as the forecasting input. The proposed model consists of three individual kNN models which have different neighboring rules. The three are combined together by tuned weighting factors for a final forecasting output. The proposed model is tested on the Australian National Electricity Market (NEM) data, showing reasonably high accuracy. It can be used as an alternative tool for day-ahead load forecasting when only limited temperature information is available.
机译:负载预测是电力系统操作中的重要任务。考虑到电力负荷需求与天气状况之间的强烈相关性,温度始终是短期负荷预测的输入。然而,对于一天的负载预测,整个第二天的温度预测(例如,每小时或半小时)有时难以获得或遭受不确定的预测错误。本文提出了基于K-Collect邻(KNN)的基础模型,用于预测第二天的负载,只有有限的温度预测,即每天最高和最高温度,作为预测输入。所提出的模型由三个具有不同邻居规则的单独KNN模型组成。这三个通过调谐加权因子组合在一起,以获得最终预测输出。拟议的模型在澳大利亚国家电力市场(NEM)数据上进行了测试,表现出相当高的准确性。它可以用作当天载荷预测的替代工具,当时只有有限的温度信息。

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