Failure Diagnostic System for Air-Operated Control Valves Using Neural Network

A prototype failure diagnosis system has been developed using neural network technology for the actuators of air-operated valves. Because actual failure data were not easily available, the data of 30 failure patterns were experimentally obtained using more than 10 sensors. The time series data of se...

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Veröffentlicht in:JSME international journal. Ser. C, Dynamics, control, robotics, design and manufacturing Dynamics, control, robotics, design and manufacturing, 1995/12/15, Vol.38(4), pp.693-700
Hauptverfasser: Nogami, Takeki, Yokoi, Yoshihide, Kasai, Masao, Kawai, Katsunori, Takaura, Katsuhisa
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container_end_page 700
container_issue 4
container_start_page 693
container_title JSME international journal. Ser. C, Dynamics, control, robotics, design and manufacturing
container_volume 38
creator Nogami, Takeki
Yokoi, Yoshihide
Kasai, Masao
Kawai, Katsunori
Takaura, Katsuhisa
description A prototype failure diagnosis system has been developed using neural network technology for the actuators of air-operated valves. Because actual failure data were not easily available, the data of 30 failure patterns were experimentally obtained using more than 10 sensors. The time series data of sensor signals are Fourier transformed. The data of magnitude spectrum, phase difference and other quantities are used as the characteristic parameters in our failure diagnosis. From the data, appropriate information for use in failure diagnosis was extracted. Furthermore, similarities among failure characteristics were found by fuzzy clustering and statistical analysis. The new system that we developed consists of many sub-networks and one main network. Each sub-network is related to one specific sensor signal, and deals with the magnitude spectra from the sensor signal. The main network makes the final decision according to the outputs from the sub-networks and other data. In our system, the number of network connections can be reduced by approximately 40% without degradation of the recognition capability in comparison with the conventional system that uses only one neural network.
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subjects Actuator of Air-Operated Control Valve
Applied sciences
Control Device
Diagnostics
Energy
Energy. Thermal use of fuels
Exact sciences and technology
Fast Fourier Transform
Fuzzy Clustering
Industrial metrology. Testing
Information Processing and Signal Analysis
Installations for energy generation and conversion: thermal and electrical energy
Mechanical engineering. Machine design
Neural Network
Pipings, valves, fittings
Recognition
Sensor
Steel design
title Failure Diagnostic System for Air-Operated Control Valves Using Neural Network
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