4.5 Article

Forecasting peak energy demand for smart buildings

Journal

JOURNAL OF SUPERCOMPUTING
Volume 77, Issue 6, Pages 6356-6380

Publisher

SPRINGER
DOI: 10.1007/s11227-020-03540-3

Keywords

Energy forecasting; Time series; ARIMA; Peak demand; ANN; Smart buildings

Funding

  1. Deanship of Scientific Research at Princess Nourah bint Abdualrahman University

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Predicting energy consumption in buildings is crucial for digital transformation and energy savings, utilizing IoT devices for monitoring and control. Statistical, time series, and machine learning techniques are proposed to achieve energy efficiency in predicting electricity consumption for different building types.
Predicting energy consumption in buildings plays an important part in the process of digital transformation of the built environment, and for understanding the potential for energy savings. This also contributes to reducing the impact of climate change, where buildings need to increase their adaptability and resilience while reducing energy consumption and maintain user comfort. The use of Internet of Things devices for monitoring and control of energy consumption in buildings can take into account user preferences, event monitoring and building optimization. Detecting peak energy demand from historical building data can enable users to manage their energy use more efficiently, while also enabling real-time response strategies (including control and actuation) to known or future scenarios. Several statistical, time series, and machine learning techniques are proposed in this work to predict electricity consumption for five different building types, by using peak demand forecasting to achieve energy efficiency. We have used several indigenous and exogenous variables with a view to test different energy forecasting scenarios. The suggested techniques are evaluated for creating predictive models, including linear Regression, dynamic regression, ARIMA time series, exponential smoothing time series, artificial neural network, and deep neural network. We conduct the analysis on an energy consumption dataset of five buildings from 2014 until 2019. Our results show that for a day ahead prediction, the ARIMA model outperforms the other approaches with an accuracy of 98.91% when executed over a 168 h (1 week) of uninterrupted data for five government buildings.

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