Abstract

Weather information is an important factor in short-term load forecasting (STLF). However, for a long time, more importance has always been attached to forecasting models instead of other processes such as the introduction of weather factors or feature selection for STLF. The main aim of this paper is to develop a novel methodology based on Fisher information for meteorological variables introduction and variable selection in STLF. Fisher information computation for one-dimensional and multidimensional weather variables is first described, and then the introduction of meteorological factors and variables selection for STLF models are discussed in detail. On this basis, different forecasting models with the proposed methodology are established. The proposed methodology is implemented on real data obtained from Electric Power Utility of Zhenjiang, Jiangsu Province, in southeast China. The results show the advantages of the proposed methodology in comparison with other traditional ones regarding prediction accuracy, and it has very good practical significance. Therefore, it can be used as a unified method for introducing weather variables into STLF models, and selecting their features.

Highlights

  • Introduction and Features Selection for ShortTerm Load ForecastingShuping Cai 1,2, Lin Liu 1, * * ID, Huachen Sun 1 and Jing Yan 1College of Electrical Information and Engineering, Jiangsu University, Zhenjiang 212013, China; Key Laboratory of Facility Agriculture Measurement and Control Technology and Equipment of MachineryIndustry, Jiangsu University, Zhenjiang 212013, ChinaReceived: 21 January 2018; Accepted: 7 March 2018; Published: 9 March 2018 AbstractWeather information is an important factor in short-term load forecasting (STLF)

  • The principal contributions in this paper are to propose a robust methodology as a practical means of both introducing weather factors into STLF models and selecting its input variables, and comparing it with traditional methods

  • Weather information is an important factor in load forecasting models

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Summary

Introduction

Fisher information computation for one-dimensional and multidimensional weather variables is first described, and the introduction of meteorological factors and variables selection for STLF models are discussed in detail On this basis, different forecasting models with the proposed methodology are established. Short-term load forecasting (STLF) plays an important role on ensuring power system security and economic operation [1], and its prediction accuracy is influenced by many interdependent factors. Of all these factors, meteorological factors are the dominant exogenous factors that affects STLF [2,3,4]. It would be of immense value to develop methods introducing meteorological variables into the forecasting models to improve prediction accuracy and boost prediction speed

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