The independent component analysis with the linear regression – predicting the energy costs of the public sector buildings in Croatia

IF 0.5 Q4 ECONOMICS
Marinela Mokriš
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引用次数: 1

Abstract

In the European Union, the public sector buildings are considered significant energy consumers and are, thus, the subject of several directives that aim to ensure the renovation of existing and the construction of new buildings as nearly zero-energy buildings. Therefore, as part of the decision making, it is necessary to properly plan the renovation or construction. This research provides models for predicting the energy costs of the public sector buildings, which are dependent upon its characteristics (i. e., constructional, occupational, energy, etc.). For this purpose, a real data set of Croatian public buildings was used, which included 150 variables and 1724 observations. Since the data set consisted of a large number of variables, the motivation for the dimensionality reduction was addressed first. Then, the independent component analysis, the principal component analysis, and the factor analysis were performed as the dimensionality reduction methods for variable extraction. The results of these analyses were used as inputs for modelling the energy costs of the public sector buildings. The obtained models were compared to the model built on original variables. The obtained models show the application potential in decision making for building renovation and construction in the public sector of Croatia, whereas the best performance of prediction in terms of RMSE and SMAPE was achieved by the model that integrated the independent component analysis with the linear regression.
独立成分分析与线性回归-预测克罗地亚公共部门建筑的能源成本
在欧洲联盟,公共部门的建筑被视为重要的能源消耗者,因此,公共部门建筑是几项指令的主题,这些指令旨在确保翻新现有建筑和建造新建筑,使其成为几乎零能源的建筑。因此,作为决策的一部分,有必要对翻新或施工进行适当的规划。这项研究为预测公共部门建筑的能源成本提供了模型,这些成本取决于其特征(即建筑、职业、能源等)。为此,使用了克罗地亚公共建筑的真实数据集,其中包括150个变量和1724个观测值。由于数据集由大量变量组成,因此首先解决了降维的动机。然后,采用独立成分分析、主成分分析和因子分析作为变量提取的降维方法。这些分析的结果被用作公共部门建筑能源成本建模的输入。将获得的模型与建立在原始变量上的模型进行比较。所获得的模型显示了在克罗地亚公共部门建筑翻新和施工决策中的应用潜力,而RMSE和SMAPE的最佳预测性能是通过将独立分量分析与线性回归相结合的模型实现的。
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来源期刊
CiteScore
1.40
自引率
0.00%
发文量
5
审稿时长
22 weeks
期刊介绍: Croatian Operational Research Review (CRORR) is the journal which publishes original scientific papers from the area of operational research. The purpose is to publish papers from various aspects of operational research (OR) with the aim of presenting scientific ideas that will contribute both to theoretical development and practical application of OR. The scope of the journal covers the following subject areas: linear and non-linear programming, integer programing, combinatorial and discrete optimization, multi-objective programming, stohastic models and optimization, scheduling, macroeconomics, economic theory, game theory, statistics and econometrics, marketing and data analysis, information and decision support systems, banking, finance, insurance, environment, energy, health, neural networks and fuzzy systems, control theory, simulation, practical OR and applications. The audience includes both researchers and practitioners from the area of operations research, applied mathematics, statistics, econometrics, intelligent methods, simulation, and other areas included in the above list of topics. The journal has an international board of editors, consisting of more than 30 editors – university professors from Croatia, Slovenia, USA, Italy, Germany, Austria and other coutries.
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