International Journal of Advanced Multidisciplinary Research and Studies
Volume 4, Issue 6, 2024
A Conceptual Framework for Digital Twin Deployment in Real-Time Monitoring of Mechanical Systems
Author(s): Enoch Oluwadunmininu Ogunnowo, Musa Adekunle Adewoyin, Joyce Efekpogua Fiemotongha, Thompson Odion Igunma, Adeniyi K Adeleke
DOI: https://doi.org/10.62225/2583049X.2024.4.6.4353
Abstract:
The integration of digital twin technology into mechanical systems has emerged as a transformative approach for enhancing system monitoring, fault prediction, and operational efficiency. This paper proposes a conceptual framework for the deployment of digital twins in real-time monitoring of mechanical systems. The framework leverages the synergy of cyber-physical systems, advanced data analytics, and Internet of Things (IoT) technologies to enable accurate replication and continuous tracking of mechanical components and processes. By bridging the physical and digital environments, the digital twin framework facilitates predictive maintenance, anomaly detection, and optimization of system performance throughout the lifecycle. The proposed model comprises four core layers: Data acquisition, digital modeling, analytics and decision-making, and visualization and control. The data acquisition layer involves sensors and IoT-enabled devices that collect real-time operational data such as temperature, vibration, pressure, and speed. The digital modeling layer creates a high-fidelity virtual replica of the physical system using finite element models, CAD data, and historical performance metrics. The analytics layer integrates machine learning and statistical algorithms to analyze deviations, forecast potential failures, and recommend corrective actions. Finally, the visualization and control layer provides intuitive dashboards for engineers and operators to interact with the system, assess performance, and make informed decisions. This conceptual framework is validated using a case study of a rotating mechanical assembly within an industrial setting. The study demonstrates the potential of the framework to reduce downtime by 30% and improve maintenance scheduling accuracy by 45%. The integration of real-time data with predictive analytics allows for the early detection of component degradation and the extension of system longevity. Furthermore, the model supports closed-loop feedback for adaptive control strategies, ensuring system resilience under dynamic operating conditions. The framework offers a scalable solution adaptable to diverse mechanical systems including turbines, compressors, and automotive engines. It provides a foundation for future research on autonomous system management and Industry 4.0 implementation.
Keywords: Digital Twin, Real-Time Monitoring, Mechanical Systems, Predictive Maintenance, Cyber-Physical Systems, Iot, System Optimization, Industry 4.0, Condition-Based Monitoring, Fault Detection
Pages: 2350-2367
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