Ranking of energy consumption objects using the principal components method

A. Perekrest, V. Ogar, О. Vovna, M. Kushch-Zhyrko
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Abstract

Ensuring comfortable conditions in civil buildings requires the implementation of tasks of monitoring and forecasting the cost of energy resources, as well as energy-efficient management of heating engineering systems and its equipment. The implementation of appropriate automation and monitoring solutions allows the accumulation of a significant amount of data. To increase the informativeness of the analysis of energy efficiency in the operation of civil buildings a model of their information ranking was developed using correlation analysis and the principal component analysis. Based on the interdisciplinary methodology of data analysis (CRISP-DM), the basic indicators were determined for the accepted initial conditions on electricity and heat consumption of the university buildings and the matrix of correlation coefficients of their interrelation was estimated. Certain data (external volume and area of the building and average temperature values for this region according to the norm) are obtained from the technical documentation of buildings and available from open sources, others (amount of consumed heat and electricity, indoor temperature) are determined during operation and characterize the efficiency of energy resources in the building. At the initial stage, a correlation analysis of the relationship between the main parameters that characterize buildings and their consumption of energy resources. The principal component analysis was used to reduce the dimensionality of the feature set of data and to identify homogeneous groups of energy consumption objects. The obtained four components explain about 90% of the variance of the initial data and characterize the efficiency of energy use in terms of temperature, volume and coefficient of heating degree days of the heating season. The obtained results are recommended for implementation in modern systems of energy monitoring and municipal energy management as applied models for diagnosing abnormal situations and sound management decisions. Keywords – buildings; energy consumption; principal components; machine learning; data segmentation.
利用主成分法对能耗对象进行排序
保证民用建筑的舒适条件,需要实施能源成本的监测和预测任务,以及供暖工程系统及其设备的节能管理。实现适当的自动化和监控解决方案可以积累大量的数据。为了提高民用建筑运行能效分析的信息量,运用相关分析和主成分分析方法,建立了民用建筑运行能效信息排序模型。基于交叉学科的数据分析方法(CRISP-DM),确定了可接受的大学建筑用电和热消耗初始条件的基本指标,并估算了其相互关系的相关系数矩阵。某些数据(建筑物的外部体积和面积以及根据规范该区域的平均温度值)是从建筑物的技术文件中获得的,并且可以从公开来源获得,其他数据(消耗的热量和电量,室内温度)是在运行期间确定的,并表征建筑物能源的效率。在初始阶段,对表征建筑物的主要参数与其能源消耗之间的关系进行相关性分析。采用主成分分析方法对数据特征集进行降维,识别同质的能耗对象群。所得的四个分量解释了初始数据约90%的方差,并根据采暖季节的温度、体积和采暖度日系数表征了能源使用效率。所得结果建议在现代能源监测和城市能源管理系统中实施,作为诊断异常情况和合理管理决策的应用模型。关键词:建筑;能源消耗;主成分;机器学习;数据分割。
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