Intelligent Control and Automation

Volume 7, Issue 3 (August 2016)

ISSN Print: 2153-0653   ISSN Online: 2153-0661

Google-based Impact Factor: 0.70  Citations  

A Self-Learning Diagnosis Algorithm Based on Data Clustering

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DOI: 10.4236/ica.2016.73009    2,050 Downloads   3,041 Views  Citations
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ABSTRACT

The article describes an approach to building a self-learning diagnostic algorithm. The self-learning algorithm creates models of the object under consideration. The models are formed periodically through a certain time period. The model includes a set of functions that can describe whole object, or a part of the object, or a specified functionality of the object. Thus, information about fault location can be obtained. During operation of the object the algorithm collects data received from sensors. Then the algorithm creates samples related to steady state operation. Clustering of those samples is used for the functions definition. Values of the functions in the centers of clusters are stored in the computer’s memory. To illustrate the considered approach, its application to the diagnosis of turbomachines is described.

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Tretyakov, D. (2016) A Self-Learning Diagnosis Algorithm Based on Data Clustering. Intelligent Control and Automation, 7, 84-92. doi: 10.4236/ica.2016.73009.

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