AUGMENTED RELIABILITY MODELS FOR DESIGN AND MANUFACTURING

A method for generating an augmented reliability performance model for a product includes obtaining a reliability performance model for the product, developing a reliability prediction machine learning model for predicting reliability performance of the product based on data obtained from manufactur...

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Hauptverfasser: Alagappan, Ashok, Sebban, Dan, Hillman, Craig, Teplinsky, Shaul
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creator Alagappan, Ashok
Sebban, Dan
Hillman, Craig
Teplinsky, Shaul
description A method for generating an augmented reliability performance model for a product includes obtaining a reliability performance model for the product, developing a reliability prediction machine learning model for predicting reliability performance of the product based on data obtained from manufacturing and testing of the product, and obtaining, from development of the machine learning model, feature names for the machine learning model and their predictive power values. The feature names may correspond to features from the data obtained from manufacturing and testing of the product. The method may further include extracting a set of feature names corresponding to features having highest predictive power values from the feature names, and generating the augmented reliability performance model for the product by modifying the reliability performance model to incorporate model parameters derived from the set of feature names.
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subjects CALCULATING
COMPUTER SYSTEMS BASED ON SPECIFIC COMPUTATIONAL MODELS
COMPUTING
COUNTING
ELECTRIC DIGITAL DATA PROCESSING
PHYSICS
title AUGMENTED RELIABILITY MODELS FOR DESIGN AND MANUFACTURING
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