Val, Onyinye Obioha and Olaniyi, Oluwaseun Oladeji and Selesi-Aina, Oluwatosin and Gbadebo, Michael Olayinka and Kolade, Titilayo Modupe (2024) Machine Learning-enabled Smart Sensors for Real-time Industrial Monitoring: Revolutionizing Predictive Analytics and Decision-making in Diverse Sector. Asian Journal of Research in Computer Science, 17 (11). pp. 92-113. ISSN 2581-8260
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Abstract
This study investigates the integration of machine learning (ML) algorithms with smart sensor technologies across manufacturing, energy, and healthcare sectors, focusing on their impact on real-time industrial monitoring, predictive maintenance, and operational efficiency. By utilizing data from the UCI Machine Learning Repository and Kaggle, this research measures the effectiveness of ML-enabled sensors in reducing machine downtime and enhancing fault detection. Time series analysis and regression modeling reveal that sensor integration leads to a significant 5.5% improvement in machine uptime, raising average uptime from 91.5% to 97%, thus validating the role of predictive maintenance. Cost-benefit analysis further highlights that the energy sector achieves the highest financial returns, with a 33.3% ROI and a positive Net Present Value (NPV) over five years, demonstrating substantial cost savings relative to initial investment. Findings underscore the importance of sensor infrastructure compatibility, emphasizing the need for adaptable frameworks such as edge computing and digital twin technology to ensure efficient integration with legacy systems. Recommendations include industry-wide adoption strategies that leverage these technologies to optimize predictive maintenance and maximize sector-specific financial returns.
Item Type: | Article |
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Subjects: | Archive Paper Guardians > Computer Science |
Depositing User: | Unnamed user with email support@archive.paperguardians.com |
Date Deposited: | 28 Nov 2024 08:05 |
Last Modified: | 28 Nov 2024 08:05 |
URI: | http://archives.articleproms.com/id/eprint/2987 |