Nature-inspired metaheuristic ensemble model for forecasting energy consumption in residential buildings

As the global economy expands, both residential and commercial buildings consume an increasing proportion of the total energy that is used by buildings. Energy simulation and forecasting are important in setting energy policy and making decisions in pursuit of sustainable development. This work deve...

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Veröffentlicht in:Energy (Oxford) 2020-01, Vol.191, p.116552, Article 116552
Hauptverfasser: Tran, Duc-Hoc, Luong, Duc-Long, Chou, Jui-Sheng
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Luong, Duc-Long
Chou, Jui-Sheng
description As the global economy expands, both residential and commercial buildings consume an increasing proportion of the total energy that is used by buildings. Energy simulation and forecasting are important in setting energy policy and making decisions in pursuit of sustainable development. This work develops a new ensemble model, called the Evolutionary Neural Machine Inference Model (ENMIM), for estimating energy consumption in residential buildings based on actual data. The ensemble model combines two single supervised learning machines - least squares support vector regression (LSSVR), and the radial basis function neural network (RBFNN) –and incorporates symbiotic organism search (SOS) to find automatically its optimal tuning parameters. A set of real data, which were obtained from residential buildings in Ho Chi Minh City, Viet Nam, as well as experimental data from the literature were used to evaluate the performance of the developed model. Comparison results reveal that the ENMIM surpasses other benchmark models with respect to predictive accuracy. This work proves that the developed ensemble model is a promising alternative for the planning of energy management. Furthermore, the fact that the ENMIM has greater predictive accuracy than other artificial intelligence techniques suggests that the developed self-tuning ensemble model can be used in various disciplines. •ENMIM for forecasting energy consumption in residential buildings is developed.•Analytical results indicate that the ENMIM is the best model among various AI models.•This work develops an effective tool for supporting users in planning energy management.
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subjects Alternative energy sources
Artificial intelligence
Buildings
Commercial buildings
Computer simulation
Economic forecasting
Energy consumption
Energy management
Energy policy
Ensemble model
Evolutionary optimization
Forecasting
Global economy
Heuristic methods
Housing
Machine learning
Mathematical models
Model accuracy
Neural networks
Radial basis function
Residential areas
Residential buildings
Residential energy
Self tuning
Support vector machines
Sustainable development
title Nature-inspired metaheuristic ensemble model for forecasting energy consumption in residential buildings
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