Risk Assessment Model of Automobile Defect Based on Weibull

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Abstract:

This paper analyzed the automobile defects and its risk characteristics; the Event Tree Analysis (ETA) method was introduced to determine the risk flow route of automobile defects. According to the scattered of automobile, a risk forecast method based on the Weibull distribution is established. Based on the thousand vehicle breakdown number for risk probability forecast, propose a risk assessment model of automobile defect. The results indicate that on gathering actual failure data from after-sales service, the Weibull distribution model has a favorable applicability for forecasting risk possibility.

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Periodical:

Advanced Materials Research (Volumes 383-390)

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7496-7502

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November 2011

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© 2012 Trans Tech Publications Ltd. All Rights Reserved

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