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教育背景: 1.1998-2002年:毕业于西安建筑科技大学(本科); 2.2002-2005年:毕业于西安建筑科技大学(硕士); 3.2011-2017年:毕业于西安建筑科技大学(博士); 工作经历: 1.2005至2018.10:担任西安建筑科技大学信息与控制工程学院专业教师; 2.2018至今:担任西安建筑科技大学建筑设备科学与工程学院专业教师、副院长; 社会兼职: 陕西省自动化学会智能建筑与楼宇自动化专业委员会副秘书长
冯增喜
Associate Professor
Paper Publications
An office building energy consumption forecasting model with dynamically combined residual error correction based on the optimal model
Release time:2025-12-20 Hits:
Affiliation of Author(s):
建筑设备科学与工程学院
Journal:
Energy Reports
Key Words:
Building energy forecasting Combination forecasting Residual error correction Support vector regression Optimal combination model
Abstract:
Accurate forecasting of energy consumption in office buildings is of great importance for optimal management of energy consumption and reduction of building energy consumption. A variety of combination forecasting models (FMs) have become the current research hotspots in the field of building energy consumption forecasting. For the problems of large systematic errors and poor generalization ability of existing combination FMs, this paper proposes a dynamic combination residual forecasting model (FM) with the optimal combination approach. Firstly, support vector regression (SVR) is selected as the basic FM, and the SVR residual errors are forecasted by the dynamic combination FM based on the weights, and the SVR forecast value is finally corrected. Further, the basis for the selection of the single FM in the combination model and the optimal number of combination terms are given by mathematical proof in this paper. A case study in Xi’an shows that the dynamic combined residual errors correction FM with the optimal number of terms proposed in this paper can reduce the mean absolute error (MAE) of the basic model from 1918.59 kW to 349.37 kW, the mean absolute percentage error (MAPE) from 15.80% to 2.96%, and the root mean square error (RMSE) from 2278.74 to 471.44.
First Author:
fengzengxi
Indexed by:
Journal paper
Volume:
8: 12442-12455
ISSN No.:
2352-4847
Translation or Not:
no
Date of Publication:
2022-11-01

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