The Industrial Internet of Things has revolutionized the way industries operate by providing real-time data from various sensors and devices. However, the vast amount of data generated in IIoT networks poses a significant challenge in identifying anomalies and potential security threats. In this research article, we explore the use of data mining and machine learning techniques for efficient anomaly detection in IIoT networks. We present a comprehensive analysis of various methodologies and tools that can be employed to enhance the security and reliability of industrial systems. Our findings suggest that a combination of feature engineering, supervised learning, and unsupervised learning techniques can lead to highly effective and efficient anomaly detection systems.
HTML PDFShare this article
Journal of Computer Science & Systems Biology received 2279 citations as per Google Scholar report