Bayesian Weapon System Reliability Modeling with Cox-Weibull Neural Network

Michael Potter, Benny Cheng

We propose to integrate weapon system features (such as weapon system manufacturer, deployment time and location, storage time and location, etc.) into a parameterized Cox-Weibull reliability model via a neural network, like DeepSurv, to improve predictive maintenance. In parallel, we develop an alternative Bayesian model by parameterizing the Weibull parameters with a neural network and employing dropout methods such as Monte-Carlo (MC)-dropout for comparative purposes. Due to data collection procedures in weapon system testing we employ a novel interval-censored log-likelihood which incorporates Monte-Carlo Markov Chain (MCMC) sampling of the Weibull parameters during gradient descent optimization. We compare classification metrics such as receiver operator curve (ROC), area under the curve (AUC), and F scores and show that our model generally outperforms traditional powerful models such as XGBoost as well as the current standard conditional Weibull probability density estimation model.

Knowledge Graph

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