Litcius/Paper detail

Gaussian Mixture Model Based Classification Revisited: Application to the Bearing Fault Classification

Branislav Panić, Jernej Klemenc, Marko Nagode

2020Strojniški vestnik – Journal of Mechanical Engineering37 citationsDOIOpen Access PDF

Abstract

Condition monitoring and fault detection are nowadays popular topic. Different loads, enviroments etc. affect the components and systems differently and can induce the fault and faulty behaviour. Most of the approaches for the fault detection rely on the use of the good classification method. Gaussian mixture model based classification are stable and versatile methods which can be applied to a wide range of classification tasks. The main task is the estimation of the parameters in the Gaussian mixture model. Those can be estimated with various techniques. Therefore, the Gaussian mixture model based classification have different variants which can vary in performance. To test the performance of the Gaussian mixture model based classification variants and general usefulness of the Gaussian mixture model based classification for the fault detection, we have opted to use the bearing fault classification problem. Additionally, comparisons with other widely used non-parametric classification methods are made, such as support vector machines and neural networks. The performance of each classification method is evaluated by multiple repeated k-fold cross validation. From the results obtained, Gaussian mixture model based classification methods are shown to be competitive and efficient methods and usable in the field of fault detection and condition monitoring.

Topics & Concepts

Mixture modelGaussianComputer sciencePattern recognition (psychology)Fault detection and isolationSupport vector machineFault (geology)Artificial intelligenceParametric statisticsUSableArtificial neural networkStatistical classificationMachine learningData miningMathematicsStatisticsActuatorGeologySeismologyQuantum mechanicsWorld Wide WebPhysicsFault Detection and Control SystemsMachine Fault Diagnosis TechniquesAnomaly Detection Techniques and Applications