Adaptive network-based fuzzy inference for momentary failure rate modeling

Electric power utilities develop asset management (AM) strategies, based upon their reliability studies, which provide brighter images of the utility company's performance. Failure rate models are highly instrumental in transforming from simple reliability analyses into effective AM strategies.

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