Predicting System Degradation with a Guided Neural Network Approach

Author:

Habibollahi Najaf Abadi Hamidreza1,Modarres Mohammad1ORCID

Affiliation:

1. Center for Risk and Reliability, Department of Mechanical Engineering, University of Maryland, College Park, MD 20742, USA

Abstract

Evaluating the physical degradation behavior and estimating the lifetime of engineering systems and structures is crucial to ensure their safe and reliable operation. However, measuring lifetime through actual operating conditions can be a difficult and slow process. While valuable and quick in measuring lifetimes, accelerated life testing is often oversimplified and does not provide accurate simulations of the exact operating environment. This paper proposes a data-driven framework for time-efficient modeling of field degradation using sensor measurements from short-term actual operating conditions degradation tests. The framework consists of two neural networks: a physics discovery neural network and a predictive neural network. The former models the underlying physics of degradation, while the latter makes probabilistic predictions for degradation intensity. The physics discovery neural network guides the predictive neural network for better life estimations. The proposed framework addresses two main challenges associated with applying neural networks for lifetime estimation: incorporating the underlying physics of degradation and requirements for extensive training data. This paper demonstrates the effectiveness of the proposed approach through a case study of atmospheric corrosion of steel test samples in a marine environment. The results show the proposed framework’s effectiveness, where the mean absolute error of the predictions is lower by up to 76% compared to a standard neural network. By employing the proposed data-driven framework for lifetime prediction, systems safety and reliability can be evaluated efficiently, and maintenance activities can be optimized.

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference40 articles.

1. A review on prognostics and health management (PHM) methods of lithium-ion batteries;Meng;Renew. Sustain. Energy Rev.,2019

2. A comprehensive review of artificial intelligence-based approaches for rolling element bearing PHM: Shallow and deep learning;Hamadache;JMST Adv.,2019

3. Tool condition monitoring using spectral subtraction algorithm and artificial intelligence methods in milling process;Aghazadeh;Int. J. Adv. Manuf. Technol.,2018

4. A review on deep learning applications in prognostics and health management;Zhang;IEEE Access,2019

5. Deep learning for prognostics and health management: State of the art, challenges, and opportunities;Rezaeianjouybari;Measurement,2020

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