IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

Analysis of Smart Meter Data With Machine Learning for Implications Targeted Towards Residents

Analysis of Smart Meter Data With Machine Learning for Implications Targeted Towards Residents
View Sample PDF
Author(s): Ali Emrouznejad (Surrey Business Shcool, UK), Vishal Panchmatia (Aston University, UK), Roya Gholami (University of Illinois System, France), Carolee Rigsbee (University of Illinois, Springfield, USA)and Hasan B. Kartal (University of Illinois, Springfield, USA)
Copyright: 2023
Volume: 4
Issue: 1
Pages: 22
Source title: International Journal of Urban Planning and Smart Cities (IJUPSC)
Editor(s)-in-Chief: Francesco Rotondo (Polytechnic University of Marche, Italy)and Nicola Martinelli (Polytechnic University of Bari, Italy)
DOI: 10.4018/IJUPSC.318337

Purchase

View Analysis of Smart Meter Data With Machine Learning for Implications Targeted Towards Residents on the publisher's website for pricing and purchasing information.

Abstract

Previous studies examining the electricity consumption behavior using traditional research methods, before the smart-meter era, mostly worked on fewer variables, and the practical implications of the findings were predominantly tailored towards suppliers and businesses rather than residents. This study first provides an overview of prior research findings on electric energy use patterns and their predictors in the pre and post smart-meter era, honing in on machine learning techniques for the latter. It then addresses identified gaps in the literature by: 1) analyzing a highly detailed dataset containing a variety of variables on the physical, demographic, and socioeconomic characteristics of households using unsupervised machine learning algorithms, including feature selection and cluster analysis; and 2) examining the environmental attitude of high consumption and low consumption clusters to generate practical implications for residents.

Related Content

Sohawm Sengupta, Anant Ayyagari, Rithika Archinapalli, Ming Zhang, Lesley Clack. © 2024. 12 pages.
. © 2024.
. © 2024.
Niaz Ahmad. © 2023. 17 pages.
Hsin-Ching Wu, Aroon P. Manoharan. © 2023. 22 pages.
Ali Emrouznejad, Vishal Panchmatia, Roya Gholami, Carolee Rigsbee, Hasan B. Kartal. © 2023. 22 pages.
Mohammad Nur Ullah, Sadia Anjum Hossain, Raiyana Tazin, Bikram Biswas. © 2023. 20 pages.
Body Bottom