Integration of LSTM networks with gradient boosting machines (GBM) for assessing heating and cooling load requirements in building energy efficiency

Author:

Batra Reenu1,Arora Shakti2,Sharma Mayank Mohan3,Rana Sonu4,Raheja Kanishka5,Saber Abeer6,Shah Mohd Asif7ORCID

Affiliation:

1. Department of Computer Science and Engineering, Global Institute of Technology and Management, Gurgaon, India

2. Department of Computer Science and Engineering, Panipat Institute of Engineering and Technology, Panipat, India

3. Software Quality Engineering, Zillow Inc., San Francisco, CA, USA

4. Department of Electronics and Communication Engineering, Global Institute of Technology and Management, Farrukhnagar Gurgaon, India

5. Department of Computer Science and Engineering, Manav Rachna International Institute of Research and Studies, Faridabad, India

6. Department of Information Technology, Faculty of Computers and Artificial Intelligence, Damietta University, New Damietta, Egypt

7. Department of Economics, Kardan University, Kabul, Afghanistan

Abstract

Due to rising demand for energy-efficient buildings, advanced predictive models are needed to evaluate heating and cooling load requirements. This research presents a unified strategy that blends LSTM networks and GBM to improve building energy load estimates’ precision and reliability. Data on energy usage, weather conditions, occupancy trends, and building features is collected and prepared to start the process. GBM model attributes are created using sequential relationships and initial load projections using LSTM networks. Combining LSTM with GBM takes advantage of each model's strengths: LSTM's sequential data processing and GBM's complex nonlinear connection capture. Performance measures like RMSE and MAE are used to evaluate the hybrid model's validity. Compared to individual models, the integrated LSTM-GBM method improves prediction accuracy. This higher predictive capacity allows real-time energy management systems, improving building operations and reducing energy use. Implementing this integrated model in Building Management Systems (BMS) shows its practicality in achieving sustainable building energy efficiency.

Publisher

SAGE Publications

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