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Hourly Temperature Forecasting based on Euclidean Distance Algorithm with Solar Terms

机译:基于欧几里德距离算法的每小时温度预测

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In this paper, a simple and accurate algorithm is proposed for short-term temperature forecasting in power utilities and industrial applications. Solar terms that have been used in Asian countries for centuries are advantageous for the classification of annual historical data. In this paper, an hourly temperature forecasting algorithm based on the Euclidean distance algorithm with 24 solar terms is proposed. In the proposed method, the historical data are classified by the 24 solar terms. The Euclidean distance is used to determine the historical data with most similarity to the historical data in the database. The artificial neural network algorithm was used as a benchmark for comparison purposes. The results show that the proposed scheme has the advantages of simplicity, fast operation, and excellent forecasting performance.
机译:本文提出了一种简单准确的算法,用于电力公用事业和工业应用中的短期温度预测。在亚洲国家使用的太阳能术语几个世纪以来,对年度历史数据进行分类是有利的。本文提出了一种基于24太阳能术语的基于欧几里德距离算法的每小时温度预测算法。在该方法中,历史数据由24个太阳能术语分类。欧几里德距离用于确定与数据库中的历史数据最相似的历史数据。人工神经网络算法用作比较目的的基准。结果表明,该方案具有简单,运行快,预测性能优异。

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