Accurate Prediction of Hourly Energy Consumption in a Residential Building Based on the Occupancy Rate Using Machine Learning Approaches

In this paper, a novel deep neural network-based energy prediction algorithm for accurately forecasting the day-ahead hourly energy consumption profile of a residential building considering occupancy rate is proposed. Accurate estimation of residential load profiles helps energy providers and utility companies develop an optimal generation schedule to address the demand. Initially, a comprehensive multi-criteria analysis of different machine learning approaches used in energy consumption predictions was carried out. Later, a predictive micro-grid model was formulated to synthetically generate the stochastic load profiles considering occupancy rate as the critical input. Finally, the synthetically generated data were used to train the proposed eight-layer deep neural network-based model and evaluated using root mean square error and coefficient of determination as metrics. Observations from the results indicated that the proposed energy prediction algorithm yielded a coefficient of determination of 97.5% and a significantly low root mean square error of 111 Watts, thereby outperforming the other baseline approaches, such as extreme gradient boost, multiple linear regression, and simple/shallow artificial neural network.

[1]  Oriol Gomis-Bellmunt,et al.  Trends in Microgrid Control , 2014, IEEE Transactions on Smart Grid.

[2]  Ming Sun,et al.  Research on the type of load of accessing to microgrid based on reliability , 2015 .

[3]  Hong-Seok Park,et al.  AI Based Injection Molding Process for Consistent Product Quality , 2019 .

[4]  Ran Li,et al.  Deep Learning for Household Load Forecasting—A Novel Pooling Deep RNN , 2018, IEEE Transactions on Smart Grid.

[5]  Mehdi Seyedmahmoudian,et al.  A relaxed constrained decentralised demand side management system of a community-based residential microgrid with realistic appliance models , 2020 .

[6]  E. Barbier Nature and technology of geothermal energy: A review , 1997 .

[7]  Kelvin K. W. Yau,et al.  Predicting electricity energy consumption: A comparison of regression analysis, decision tree and neural networks , 2007 .

[8]  Soteris A. Kalogirou,et al.  Artificial neural networks for the prediction of the energy consumption of a passive solar building , 2000 .

[9]  F ROSENBLATT,et al.  The perceptron: a probabilistic model for information storage and organization in the brain. , 1958, Psychological review.

[10]  Mohammad Reza Khosravani,et al.  Application of case-based reasoning in a fault detection system on production of drippers , 2019, Appl. Soft Comput..

[11]  Sung Wook Baik,et al.  A Novel CNN-GRU-Based Hybrid Approach for Short-Term Residential Load Forecasting , 2020, IEEE Access.

[12]  Daryoush Habibi,et al.  Power flow control in grid-connected microgrid operation using Particle Swarm Optimization under variable load conditions , 2013 .

[13]  Q. Jiang,et al.  Energy Management of Microgrid in Grid-Connected and Stand-Alone Modes , 2013, IEEE Transactions on Power Systems.

[14]  Rubin Taleski,et al.  Controllable load operation in microgrids using control scheme based on gossip algorithm , 2018 .

[15]  M. A. Rafe Biswas,et al.  Regression analysis for prediction of residential energy consumption , 2015 .