Abstract

The energy consumption forecast is important for the decision-making of national economic and energy policies. But it is a complex and uncertainty system problem affected by the outer environment and various uncertainty factors. Herein, a novel clustering model based on set pair analysis (SPA) was introduced to analyze and predict energy consumption. The annual dynamic relative indicator (DRI) of historical energy consumption was adopted to conduct a cluster analysis with Fisher’s optimal partition method. Combined with indicator weights, group centroids of DRIs for influence factors were transferred into aggregating connection numbers in order to interpret uncertainty by identity-discrepancy-contrary (IDC) analysis. Moreover, a forecasting model based on similarity to group centroid was discussed to forecast energy consumption of a certain year on the basis of measured values of influence factors. Finally, a case study predicting China’s future energy consumption as well as comparison with the grey method was conducted to confirm the reliability and validity of the model. The results indicate that the method presented here is more feasible and easier to use and can interpret certainty and uncertainty of development speed of energy consumption and influence factors as a whole.

Highlights

  • Nowadays China is in the middle term of industrialization and urbanization and is the world’s second largest energy consumer

  • artificial neural networks (ANN) techniques can avoid this disadvantage, but it shows inability to present an explicit relationship between energy consumption and impact factors, and its application is limited by knowledge acquisition

  • To provide reliable data for the decision-making of macroeconomic policy, a rational forecast model for energy consumption is of significance since well-targeted policies and reasonable measures are indispensable for rational energy consumption forecast

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Summary

Introduction

Nowadays China is in the middle term of industrialization and urbanization and is the world’s second largest energy consumer. ANN techniques can avoid this disadvantage, but it shows inability to present an explicit relationship between energy consumption and impact factors, and its application is limited by knowledge acquisition Other effective approaches such as support vector regression (SVR), adaptive particle swarm optimization (PSO), and genetic algorithm (GA) were introduced to forecast electricity consumption [27,28,29]. A newly proposed method of set pair analysis (SPA) can deal with the uncertainty problem from three aspects of identity, discrepancy, and contrary features and depict comprehensively essential characteristics of things [33,34,35] This method provides a fresh idea for energy consumption forecast. The proposed model is used to forecast China’s energy consumption, and its feasibility and effectiveness are further discussed

Theory
Development of Cluster Forecasting Model Based on Set Pair Analysis
Expressions of Influence Factors in terms of Connection
Case Study
Conclusions
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