Building energy consumption forecasting algorithm based on piecewise linear fusion and exponential spectrum analysis
by Dahui Li; Jianzhao Cui; Yunfei Bai; Chenqiang Zhan
International Journal of Information and Communication Technology (IJICT), Vol. 15, No. 4, 2019

Abstract: In order to solve the problem of large error in traditional statistical prediction methods, a large data prediction method based on pie chart is proposed. Linear fusion and exponential spectrum analysis methods are proposed. The method establishes the target model of building energy consumption prediction and carries out nonlinear exponential sequence analysis. Game analysis of building energy consumption, segmentation linear fusion method is used to decompose the characteristics of building energy consumption map, and statistical analysis is carried out. According to the evolution of feature decomposition and learning trends, the analysis and accurate prediction of building energy consumption big data is realised. The simulation results show that the method reduces energy consumption, is conducive to building energy-saving emission reduction and green building, and provides a new idea for building energy conservation. Provide scientific support for the development of building energy conservation and environmental protection.

Online publication date: Tue, 22-Oct-2019

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