Physics Informed Self Supervised Learning For Fault Diagnostics and Prognostics in the Context of Sparse and Noisy Data

Weikun Deng, K. Nguyen, K. Medjaher
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Abstract

Sparse & noisy monitoring data leads to numerous challenges in prognostic and health management (PHM). Big data volume but poor quality with scarce healthy states information limits the performance of training machine learning (ML) and physics-based failure modeling. To address these challenges, this thesis aims to develop a new hybrid PHM framework with the ability to autonomously discover and exploit incomplete implicit physics knowledge in sparse & noisy monitoring data, providing a solution for deep physics knowledge-ML fusion by physics-informed machine learning algorithms. In addition, the developed hybrid framework also applies the self-supervised learning paradigm to significantly improve the learning performance under uncertain, sparse, and noisy data with lower requirements for specialist area knowledge. The performance of the developed algorithms will be investigated on the sparse and noise data generated by simulation data sets, public benchmark data sets, and the PHM platform to demonstrate its applicability.
物理通知自监督学习在稀疏和噪声数据环境下的故障诊断和预测
稀疏和噪声监测数据给预后和健康管理(PHM)带来了许多挑战。数据量大但质量差且缺乏健康状态信息限制了训练机器学习(ML)和基于物理的故障建模的性能。为了应对这些挑战,本文旨在开发一种新的混合PHM框架,该框架能够自主发现和利用稀疏和噪声监测数据中的不完整隐式物理知识,通过物理信息机器学习算法为深度物理知识- ml融合提供解决方案。此外,所开发的混合框架还应用了自监督学习范式,显著提高了对专业领域知识要求较低的不确定、稀疏和噪声数据下的学习性能。将在仿真数据集、公共基准数据集和PHM平台产生的稀疏和噪声数据上研究所开发算法的性能,以证明其适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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