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Forecasting building energy consumption: Adaptive long-short term memory neural networks driven by genetic algorithm
Affiliation:1. School of Management, Harbin Institute of Technology, Harbin 150001, China;2. School of Architecture, Harbin Institute of Technology, Shenzhen, Shenzhen, Guangdong 518055, China;3. School of Transportation Science and Engineering, Harbin Institute of Technology, Harbin, China;1. Department of Construction Management and Real Estate, Shenzhen University, Shenzhen, China;2. Department of Building Environment and Energy Engineering, Huazhong University of Science and Technology, Wuhan, China;1. School of Civil Engineering, Guangzhou University, Guangzhou, 510006, China;2. Hong Kong University of Science and Technology, Clear Water Bay, Hong Kong;3. Guangzhou Institute of Building Science Co., LTD, Guangzhou, 510440, China;4. College of Architecture and Civil Engineering, Beijing University of Technology, Beijing, 100124, China
Abstract:The real-world building can be regarded as a comprehensive energy engineering system; its actual energy consumption depends on complex affecting factors, including various weather data and time signature. Accurate energy consumption forecasting and effective energy system management play an essential part in improving building energy efficiency. The multi-source weather profile and energy consumption data could enable integrating data-driven models and evolutionary algorithms to achieve higher forecasting accuracy and robustness. The proposed building energy consumption forecasting system consists of three layers: data acquisition and storage layer, data pre-processing layer and data analytics layer. The core part of the data analytics layer is a hybrid genetic algorithm (GA) and long-short term memory (LSTM) neural network model for accurate and robust energy prediction. LSTM neural network is adopted to capture the interrelationship between energy consumption data and time. GA is adopted to select the optimal architecture for LSTM neural networks to improve its forecasting accuracy and robustness. The hyper-parameters for determining LSTM architecture include the number of LSTM layers, number of neurons in each LSTM layer, dropping rate of each LSTM layer and network learning rate. Meanwhile, the effects of historical weather profile and time horizon of past information are also investigated. Two real-life educational buildings are adopted to test the performance of the proposed building energy consumption forecasting system. Experiments reveal that the proposed adaptive LSTM neural network performs better than the existing feedforward neural network and LSTM-based prediction models in accuracy and robustness. It also outperforms those LSTM networks whose hyper-parameters are determined by grid search, Bayesian optimisation and PSO. Such accurate energy consumption prediction can play an essential role in various areas, including daily building energy management, decision making of facility managers, building information model designs, net-zero energy operation, climate change mitigation and circular economy.
Keywords:Long-short term memory  Genetic algorithm  Building energy consumption  Energy forecast  Energy management system  Adaptive
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