A Comparative Study of Rule-Based and Data-Driven Approaches in Industrial Monitoring
A research paper compares rule-based and data-driven approaches in industrial monitoring systems, finding that rule-based systems offer interpretability and reliability while data-driven ML approaches provide superior anomaly detection and adaptability. The study proposes hybrid systems combining both methodologies as the optimal path forward for Industry 4.0 environments.