eprintid: 20463 rev_number: 3 eprint_status: archive userid: 1 dir: disk0/00/02/04/63 datestamp: 2026-01-29 06:28:11 lastmod: 2026-01-29 06:28:11 status_changed: 2026-01-29 06:28:11 type: article metadata_visibility: show creators_name: Desmira, creators_name: Bakar, Norazhar Abu creators_name: Hamid, Mustofa Abi creators_name: Hakiki, Muhammad creators_name: Ismail, Affero creators_name: Fadli, Radinal title: Enhancing artificial neural network performance for energy efficiency in laboratories through principal component analysis ispublished: pub note: Cited by: 2; All Open Access, Gold Open Access abstract: This study investigates energy efficiency challenges during laboratory activities. Inefficient energy use in the practicum phase remains a critical issue, prompting the exploration of innovative forecasting models. This research employs artificial neural network (ANN) models integrated with principal component analysis (PCA) to predict energy consumption and optimize usage. The findings reveal that PCA components, including eigenvalues, eigenvectors, and matrix covariance values, significantly influence the ANN model's performance in forecasting energy production. The ANN training achieved a high correlation coefficient (R=1) with a mean squared error (MSE) of 0.045931 after 200,000 epochs, demonstrating the model's robustness. While testing results showed a moderate correlation (R=0.46169), the models demonstrated potential for refinement and scalability. This integration of ANN and PCA models provides a reliable framework for accurately forecasting energy usage, offering an effective strategy to enhance energy efficiency in laboratory settings. By optimizing energy consumption, this approach has the potential to reduce operational costs and environmental impact. The strong performance metrics highlight the practical utility of these models in educational contexts, contributing to sustainable energy management and better resource allocation. Furthermore, the reduction in energy-related environmental impacts underscores the broader applicability of these models for fostering sustainable development in similar contexts. © 2025, Intelektual Pustaka Media Utama. All rights reserved. date: 2025 publisher: Intelektual Pustaka Media Utama official_url: https://www.scopus.com/inward/record.uri?eid=2-s2.0-105009955687&doi=10.11591%2fijaas.v14.i2.pp310-321&partnerID=40&md5=21fea303bbfa7952bde914efa99899c6 id_number: 10.11591/ijaas.v14.i2.pp310-321 full_text_status: none publication: International Journal of Advances in Applied Sciences volume: 14 number: 2 pagerange: 310 – 321 refereed: TRUE issn: 22528814 citation: Desmira and Bakar, Norazhar Abu and Hamid, Mustofa Abi and Hakiki, Muhammad and Ismail, Affero and Fadli, Radinal (2025) Enhancing artificial neural network performance for energy efficiency in laboratories through principal component analysis. International Journal of Advances in Applied Sciences, 14 (2). 310 – 321. ISSN 22528814