AI-Powered Predictive Maintenance for Industrial IoT Systems
S. Deepan, Mrunalini Buradkar, Pemmaraju Akhila, K. Suresh Kumar, M. K. Sharma, M. Kalyan Chakravarthi
Abstract
In the time of Assiduity4.0, the merging of Artificial Intelligence(AI) with the Internet of Effects (IoT) has revolutionized artificial conservation tactics. This research addresses AI-powered prophetic conservation for Industrial IoT (IIoT) systems, stressing its eventuality to boost functional performance and reduce time-out. By utilizing machine literacy algorithms and real-time data analytics, artificial intelligence can directly predict outfit failures before they occur, which enables interventions to be carried out promptly and at a cost-effective level. The lifetime of the ministry is increased by this approach, which also optimizes conservation schedules and the distribution of resources. Throughout the paper, the armature of AI-driven prophetic conservation systems, crucial challenges in perpetration, and case studies showcasing successful deployments across an array of colors are discussed. The findings highlight how artificial intelligence and the development of the Internet of Things community can transform conventional conservation practices, thereby driving significant advancements in trustworthiness and productivity.