Article ID Journal Published Year Pages File Type
1056411 Journal of Environmental Management 2012 12 Pages PDF
Abstract

The number of deteriorated multi-family housing complexes in South Korea continues to rise, and consequently their electricity consumption is also increasing. This needs to be addressed as part of the nation’s efforts to reduce energy consumption. The objective of this research was to develop a decision support model for determining the need to improve multi-family housing complexes. In this research, 1664 cases located in Seoul were selected for model development. The research team collected the characteristics and electricity energy consumption data of these projects in 2009–2010. The following were carried out in this research: (i) using the Decision Tree, multi-family housing complexes were clustered based on their electricity energy consumption; (ii) using Case-Based Reasoning, similar cases were retrieved from the same cluster; and (iii) using a combination of Multiple Regression Analysis, Artificial Neural Network, and Genetic Algorithm, the prediction performance of the developed model was improved. The results of this research can be used as follows: (i) as basic research data for continuously managing several energy consumption data of multi-family housing complexes; (ii) as advanced research data for predicting energy consumption based on the project characteristics; (iii) as practical research data for selecting the most optimal multi-family housing complex with the most potential in terms of energy savings; and (iv) as consistent and objective criteria for incentives and penalties.

► The decision support model can reduce the CO2 emission of apartment complexes. ► The model can select the optimum complex for efficient energy saving measures. ► Cluster-based CBR model using GA improved the prediction accuracy at 93.51%. ► With the model, a decision-maker can reduce the rate of CO2 emission by up to 8.20%.

Related Topics
Physical Sciences and Engineering Energy Renewable Energy, Sustainability and the Environment
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