Electricity Consumption (kW) Forecast for a Building of Interest Based on a Time Series Nonlinear Regression Model

Olajide Oyebola Omogoroye

IBM Security, IBM Canada, 80 Bishop Dr, Fredericton, NB E3C 1B2, Canada.

Oluwaseun Oladeji Olaniyi *

University of the Cumberlands, 104 Maple Drive, Williamsburg, KY 40769, United States of America.

Olubukola Omolara Adebiyi

University of the Cumberlands, 104 Maple Drive, Williamsburg, KY 40769, United States of America.

Tunbosun Oyewale Oladoyinbo

University of Maryland Global Campus, 3501 University Blvd E, Adelphi, MD 20783, United States of America.

Folashade Gloria Olaniyi

University of the People, 595 E Colorado Blvd Suite 623, Pasadena, CA 91101, United States of America.

*Author to whom correspondence should be addressed.


Abstract

This paper investigates the relationship between a building's past energy consumption and the outdoor temperature and predicts the next day's energy consumption using a refined time series model. Maintaining optimal indoor temperatures relative to outdoor temperatures determines a building's HVAC demand and, thus, energy consumption. We want to determine how outdoor temperature and other factors determine this consumption. With increasing urbanization and energy demand, it is important to understand building energy consumption, especially in terms of its impact on the environment. Previous research has shown the link between electricity consumption and external environmental factors and highlighted energy optimization's importance in urban structures. As cities become large energy consumers, studies point to the need to understand energy use patterns on a regional and temporal scale.

For accurate energy forecasts, data becomes the linchpin. Time series—data points arranged in chronological intervals—are foundational in predictive modeling. Due to buildings' intricate electricity consumption patterns, traditional linear forecasting often falls short. Enter nonlinear regression models: These complex models are apt for mapping and predicting nonlinear data trends. Notwithstanding their advantages, they come with challenges, primarily the high-frequency data influx from smart meters and IoT devices. But their potential benefits - from cost savings to efficient energy management - are significant. In a world caught between urban expansion and ecological preservation, efficient energy management is crucial. Accurate energy forecasting, especially for buildings, combines technological advances, statistical acumen and environmental imperatives. Understanding building energy consumption using sophisticated nonlinear regression models is evolving from an academic goal to a global necessity.

Keywords: Building, energy, consumption, temperature, forecast, time series model, heating, ventilation, electricity, environmental implications, CO2 emissions


How to Cite

Omogoroye, Olajide Oyebola, Oluwaseun Oladeji Olaniyi, Olubukola Omolara Adebiyi, Tunbosun Oyewale Oladoyinbo, and Folashade Gloria Olaniyi. 2023. “Electricity Consumption (kW) Forecast for a Building of Interest Based on a Time Series Nonlinear Regression Model”. Asian Journal of Economics, Business and Accounting 23 (21):197-207. https://doi.org/10.9734/ajeba/2023/v23i211127.

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