Intelligent monitoring and diagnosis systems: A survey

Monitoring of a physical/mechanical system's performance provides an application for knowledge-based systems that is rich in diversity, open for creative designs, and important as a testing ground for applicability of artificial intelligence methodologies. Although the field is relatively new, abundance of knowledge-based systems attest to its importance. We survey a number of more recent monitoring system. In doing so, we attempt to extract a number of important parameters distinguishing the various systems, and to classify these systems in a number of dimensions offered by these parameters. This article is not an exhaustive survey of the field but attempts to provide a representative sample of recent applied monitoring and diagnostic systems.

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