Affiliation:
1. UNINOVA Instituto de Desenvolvimento de Novas Tecnologias
Abstract
Abstract
As manufacturing industry is moving towards the fourth industrial revolution, there is an increasing need for smart maintenance systems which could provide manufacturers a competitive advantage by predicting failures. Despite various efforts by researchers, there are still challenges for these systems to work reliably in industry such as lack of adaptability, resilience, reaction to disturbances and Future-proofing. Bio-inspired frameworks like Artificial immune systems provide an alternative approach in satisfying these challenges. But existing immune based frameworks focus only on adaptive immunity characteristics and ignore innate immunity which is important for quick detection and faster response. There is a need for a holistic view of the immune system in developing a adaptive \& resilient maintenance framework.This paper presents a holistic view of the human immune system with focus on the intelligence \& response mechanism of both innate \& adaptive immunity. Inspired by this holistic view and considering the emerging computer technologies - Internet of Things, Edge \& Cloud computing, Multi-Agent system, Ontology, Big Data, Digital Twin, Machine learning and Augmented Reality - we present a smart maintenance framework. The proposed framework is used for tool condition monitoring to demonstrate its implementation.
Publisher
Research Square Platform LLC
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