Indonesian Journal of Electrical Engineering and Computer Science
Vol 41, No 2: February 2026

Enhancing predictive maintenance capabilities by integrating artificial intelligence: systematic review

G. N, Thippeswamy (Unknown)
S, Neelambike (Unknown)
M. B, Sanjay Pande (Unknown)



Article Info

Publish Date
01 Feb 2026

Abstract

Organizations are under pressure to increase productivity and lower operating costs because facility operations and maintenance (O&M) account for a significant portion of a facility's life-cycle cost. By facilitating real-time monitoring and data-driven decision-making, artificial intelligence (AI) has become a promising catalyst for enhancing predictive maintenance. In order to investigate how AI can be combined with predictive maintenance to lower operational and maintenance overhead, this systematic review examines peer-reviewed studies that have been published in the last five years. Using an evidence-based review methodology and adaptive structuration theory (AST), the study synthesized results from 14 excellent publications. Unbiased maintenance planning, cost-effective resource utilization, and AI-enabled operational visibility emerged as three key themes. According to the review, AI-driven predictive maintenance greatly increases operational effectiveness and reduces costs; however, successful implementation necessitates better data governance and organizational preparedness.

Copyrights © 2026