Investigating the Impact of AI/ML for Monitoring and Optimizing Energy Usage in Smart Home

Authors

  • Anayo Chukwu Ikegwu Software Engineering Department, Veritas University, Abuja, Nigeria https://orcid.org/0000-0001-7838-6546
  • Onah Juliana Obianuju ICT Department, Veritas University Abuja, Nigeria
  • Ifeanyi Stanly Nwokoro Computer Science Department, Rhema University Nigeria https://orcid.org/0009-0000-7732-0107
  • Mary Ofuru Kama Software Engineering Department, Veritas University, Abuja, Nigeria https://orcid.org/0009-0009-0979-2220
  • Deborah Uzoamaka Ebem Computer Engineering Department, Veritas University, Abuja, Nigeria

DOI:

https://doi.org/10.37256/aie.6120256065

Keywords:

energy optimization, smart homes, deep learning, artificial intelligence, machine learning

Abstract

Integrating artificial intelligence (AI) and machine learning (ML) into smart home systems has significantly advanced and improved residential energy efficiency, addressing growing concerns around energy conservation and sustainability. Choosing appropriate AI/ML techniques to optimize energy consumption in the dynamic and contemporary smart home environment remains a complex challenge. This study investigates a range of AI/ML algorithms such as regression models, deep learning, clustering, and decision trees to enhance energy management in smart homes. The study highlights the core processes of smart home energy optimization, including data acquisition, feature extraction, and model evaluation, as well as the specific roles of each AI/ML technique in optimizing energy usage. The study also discusses the strengths and weaknesses of the AI/ML techniques used for smart homes. It further explores the application areas and emerging challenges such as data security risks, high implementation costs, and gaps in existing technology that impact the scalability of AI/ML solutions in smart home contexts. The findings reveal that AI/ML techniques can effectively transform energy management in smart homes, enabling real-time optimization and adaptive decision-making to minimize energy consumption and reduce costs. Additionally, the study highlights future research directions.

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Published

2025-01-17

How to Cite

1.
Ikegwu AC, Obianuju OJ, Nwokoro IS, Kama MO, Ebem DU. Investigating the Impact of AI/ML for Monitoring and Optimizing Energy Usage in Smart Home. Artificial Intelligence Evolution [Internet]. 2025 Jan. 17 [cited 2025 Jan. 21];6(1):30-43. Available from: https://ojs.wiserpub.com/index.php/AIE/article/view/6065