Real-time adaptive classification system for intelligent sensing in manufacturing environment A feasibility study

Granular Computing(2012)

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摘要
The deployment of a sensor node to manage a group of sensors and collate their readings for system health monitoring is gaining popularity within the manufacturing industry. Such a sensor node is able to perform real-time configurations of the individual sensors that are assigned to it. Sensors are capable of acquiring data at different sampling frequencies based on the sensing requirements. The different sampling rates not only affect the power consumption, sensor lifespan, and the resultant network bandwidth usage due to the data transfer incurred. These settings also have an immediate impact on the accuracy of the diagnostics/prognostics models that are employed for system health monitoring. In this paper we propose an adaptive classification system architecture for system health monitoring that is well suited to accommodate and to take advantage of the variable sampling rate of sensors. In this paper, we demonstrate how our proposed system is able to work and control a sensor network with adaptive sampling frequencies. This will in turn yield a more effective health monitoring system with reduced power consumption thereby extending the sensors' lifespan and reducing the resultant network traffic and data logging requirements.
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关键词
system health monitoring,adaptive classification system architecture,variable sampling rate,sensor network,resultant network traffic,production engineering computing,intelligent sensors,classifiers,realtime adaptive classification system,manufacturing industries,data driven diagnostics and prognostics,effective health monitoring system,adaptive classifiers,sensor data classification,feasibility study,manufacturing industry,proposed system,real-time adaptive classification system,sensor lifespan,different sampling,health monitoring system,wireless sensor networks,diagnostics-prognostics models,sampling methods,sensor node,intelligent sensing,adaptive sampling frequencies,adaptive sampling frequency,resultant network bandwidth usage,real-time systems,different sampling rate,data logging requirements,individual sensor,data transfer,power consumption reduction,real time systems
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