Diagnosis and Prognosis of Bearing Failure in Rotating Machinery Using Acoustic Emission and Artificial Neural Network
スポンサーリンク
概要
- 論文の詳細を見る
Bearing failure is well-known as a common problem in industries. Therefore, timely diagnosis and prognosis (DAP) of bearing fault is very crucial in order to prevent sudden damages. This paper proposes the practical method of bearing fault DAP using acoustic emission (AE) technique assisted with artificial neural network (ANN). The bearings failure data is measured based on the AE in terms of decibel (dB) and Distress levels, which are used as input for ANN of a bearing fault DAP. For this purpose, an experimental rig is setup to collect data from target bearing by using Machine Health Checker (MHC) Memo assisted with MHC Analysis software. In this work, Elman network with training algorithm, Levenberg-Marquardt Back- propagation is used for ANN DAP. The obtained results indicates that the proposed methods are suitable to inform the remaining useful life time of a faulty bearing.
著者
-
MAHAMAD Abd
Department of Computer Science and Electrical Engineering of Kumamoto University
-
HIYAMA Takashi
Department of Computer Science and Electrical Engineering of Kumamoto University
-
GHAZALI Mohd
Faculty of Mechanical and Manufacturing Engineering, University of Tun Hussein Onn Malaysia
関連論文
- Economic and Reliability Evaluation of Wind-Diesel-Battery System for Isolated Island Considering CO_2 Emission
- Diagnosis and Prognosis of Bearing Failure in Rotating Machinery Using Acoustic Emission and Artificial Neural Network
- Diagnosis and Prognosis of Bearing Failure in Rotating Machinery Using Acoustic Emission and Artificial Neural Network
- RBFN Based Efficiency Optimization Method of Induction Motor Utilized in Electrically Driven Marine Propellers
- Development of ANN for Diagnosing Induction Motor Bearing Failure
- A Robust Control Approach for Primary Frequency Regulation through Variable Speed Wind Turbines
- Advanced and Intelligent Technologies for Reliable Operation of Power Systems and Electricity Markets
- Usefulness of F-18 FDG PET/CT in the assessment of disseminated Mycobacterium avium complex infection
- Comparison of ANN Models for Estimating Optimal Points of Crystalline Silicon Photovoltaic Modules
- Electric Double Layer Capacitor (EDLC) based Mismatching Losses Reduction under Fast-Shaded Conditions of PV Modules
- ANN based Real-Time Estimation of Power Generation of Different PV Module Types
- A Robust Solution for PI-based LFC Problem with Communication Delays (特集:平成17年〔電気学会〕電力・エネルギー部門大会)
- Robust Coordinated AVR-PSS Design Using H∞ Static Output Feedback Control (特集:平成18年〔電気学会〕電力・エネルギー部門大会)
- Electric Double Layer Capacitor (EDLC) based Mismatching Losses Reduction under Fast-Shaded Conditions of PV Modules
- Optimal Design of Wind-PV-Diesel-Battery System using Genetic Algorithm