Fdi Using Neural Networks - Application to Ship Benchmark Engine Gain
نویسندگان
چکیده
This paper concerns fault detection and isolation based on neural network modeling. A neural network is trained to recognize the input-output behavior of a nonlinear plant, and faults are detected if the output estimated by the network differs from the measured plant output by more than a specified threshold value. In the paper, a method for determining this threshold based on the neural network model is proposed, which can be used for a design strategy to handle residual sensitivity to input variations. The proposed method is used for successful fault detection and isolation of a diesel engine gain fault in a ship propulsion benchmark simulation.
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