The objective of this work is to predict the reliability of automotive components and systems from experimental failure data using Artificial Neural Networks. To construct the necessary neural models, the NEural Simulation Tool (NEST), developed by Polytechnic of Milan, has been employed. An operative procedure based on the developed ANN models has been been implemented to predict the trend of the unreliability index R-100(t), the number of faults in 100 vehicles at time t (number of months from production time), starting from information on the number of vehicles produced and sold and the predicted number of faults up to the previous time t-1. The procedure has been applied on data from the Fiat Car Group, leading to satisfactory results.

Predicting Reliability via Neural Networks

MARSEGUERRA, MARZIO;ZIO, ENRICO
2003-01-01

Abstract

The objective of this work is to predict the reliability of automotive components and systems from experimental failure data using Artificial Neural Networks. To construct the necessary neural models, the NEural Simulation Tool (NEST), developed by Polytechnic of Milan, has been employed. An operative procedure based on the developed ANN models has been been implemented to predict the trend of the unreliability index R-100(t), the number of faults in 100 vehicles at time t (number of months from production time), starting from information on the number of vehicles produced and sold and the predicted number of faults up to the previous time t-1. The procedure has been applied on data from the Fiat Car Group, leading to satisfactory results.
2003
Annual Reliability and Maintainability Symposium, RAMS 2003
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11311/243512
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