Prognosis of remaining bearing life using neural networks

Author:

Shao Y1,Nezu K1

Affiliation:

1. Gunma University Department of Mechanical System Engineering, Faculty of Engineering Japan

Abstract

A new concept referred to as progression-based prediction of remaining life (PPRL) is proposed in the present paper in order to solve the problem of accurately predicting the remaining bearing life. The basic concept behind PPRL is to apply different prediction methods to different bearing running stages. A new prediction procedure which predicts precisely the remaining bearing life is developed on the basis of variables characterizing the state of a deterioration mechanism which are determined from on-line measurements and the application of PPRL via a compound model of neural computation. The procedure consists of on-line modelling of the bearing running state via neural networks and logic rules and not only can solve the boundary problem of remaining life but also can automatically adapt to changes in environmental factors. In addition, multi-step prediction is possible. The proposed technique enhances the traditional prediction methods of remaining bearing life.

Publisher

SAGE Publications

Subject

Mechanical Engineering,Control and Systems Engineering

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