An ARTMAP neural network‐based machine condition monitoring system
Autor: | Hsu-Pin (Ben) Wang, Gerald M. Knapp, Roya Javadpour |
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Rok vydání: | 2000 |
Předmět: |
Engineering
Artificial neural network business.industry Time delay neural network Strategy and Management Real-time computing Machine condition monitoring Condition monitoring Fault (power engineering) Machine learning computer.software_genre Diagnostic system Industrial and Manufacturing Engineering Machine vibration Artificial intelligence Safety Risk Reliability and Quality business computer Mechanical equipment |
Zdroj: | Journal of Quality in Maintenance Engineering. 6:86-105 |
ISSN: | 1355-2511 |
Popis: | Presents a real‐time neural network‐based condition monitoring system for rotating mechanical equipment. At its core is an ARTMAP neural network, which continually monitors machine vibration data, as it becomes available, in an effort to pinpoint new information about the machine condition. As new faults are encountered, the network weights can be automatically and incrementally adapted to incorporate information necessary to identify the fault in the future. Describes the design, operation, and performance of the diagnostic system. The system was able to identify the presence of fault conditions with 100 percent accuracy on both lab and industrial data after minimal training; the accuracy of the fault classification (when trained to recognize multiple faults) was greater than 90 percent. |
Databáze: | OpenAIRE |
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