Hybrid physics-based and data-driven models for smart manufacturing: Modelling, simulation, and explainability

被引:114
作者
Wang, Jinjiang [1 ]
Li, Yilin [1 ]
Gao, Robert X. [2 ]
Zhang, Fengli [1 ]
机构
[1] China Univ Petr, Sch Safety & Ocean Engn, Beijing 102249, Peoples R China
[2] Case Western Reserve Univ, Dept Mech & Aerosp Engn, Cleveland, OH 44106 USA
关键词
Smart manufacturing; Hybrid physics-based and data-driven; Data-driven models; Physical knowledge; CONVOLUTIONAL NEURAL-NETWORK; TIME STRUCTURAL ASSESSMENT; FAULT-DIAGNOSIS; PREDICTIVE MAINTENANCE; MACHINE; METHODOLOGY; REDUCTION; PARADIGM; BEARING;
D O I
10.1016/j.jmsy.2022.04.004
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
To overcome the limitations associated with purely physics-based and data-driven modeling methods, hybrid, physics-based data-driven models have been developed, with improved model transparency, interpretability, and analytic capabilities at reduced computational cost. This paper reviews the state-of-the-art of hybrid physicsbased data-driven models towards realizing a higher degree of autonomous and error-free operation in smart manufacturing. Recognizing the complementary strengths of pure physics-based and data-driven models, hybrid physics-based data-driven models are categorized as consisting of three types: (1) physics-informed machine learning, (2) machine learning-assisted simulation, and (3) explainable artificial intelligence. The principles and characteristics of these three types of hybrid physics-based data-driven models are summarized to address three aspects of smart manufacturing: product design, operation and maintenance, and intelligent decision making. Finally, the prospective directions and challenges of hybrid physics-based data-driven models are discussed from the perspective of data, scientific insights, interpretability of hyperparameters, and trading off between accuracy and explainability.
引用
收藏
页码:381 / 391
页数:11
相关论文
共 137 条
[81]   Driven by Data or Derived Through Physics? A Review of Hybrid Physics Guided Machine Learning Techniques With Cyber-Physical System (CPS) Focus [J].
Rai, Rahul ;
Sahu, Chandan K. .
IEEE ACCESS, 2020, 8 :71050-71073
[82]   Physics-informed neural networks: A deep learning framework for solving forward and inverse problems involving nonlinear partial differential equations [J].
Raissi, M. ;
Perdikaris, P. ;
Karniadakis, G. E. .
JOURNAL OF COMPUTATIONAL PHYSICS, 2019, 378 :686-707
[83]   Hidden fluid mechanics: Learning velocity and pressure fields from flow visualizations [J].
Raissi, Maziar ;
Yazdani, Alireza ;
Karniadakis, George Em .
SCIENCE, 2020, 367 (6481) :1026-+
[84]  
Raissi M, 2018, J MACH LEARN RES, V19
[85]   Process-Guided Deep Learning Predictions of Lake Water Temperature [J].
Read, Jordan S. ;
Jia, Xiaowei ;
Willard, Jared ;
Appling, Alison P. ;
Zwart, Jacob A. ;
Oliver, Samantha K. ;
Karpatne, Anuj ;
Hansen, Gretchen J. A. ;
Hanson, Paul C. ;
Watkins, William ;
Steinbach, Michael ;
Kumar, Vipin .
WATER RESOURCES RESEARCH, 2019, 55 (11) :9173-9190
[86]   "Why Should I Trust You?" Explaining the Predictions of Any Classifier [J].
Ribeiro, Marco Tulio ;
Singh, Sameer ;
Guestrin, Carlos .
KDD'16: PROCEEDINGS OF THE 22ND ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY AND DATA MINING, 2016, :1135-1144
[87]   Explaining classifications for individual instances [J].
Robnik-Sikonja, Marko ;
Kononenko, Igor .
IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 2008, 20 (05) :589-600
[88]   Explainable Machine Learning for Scientific Insights and Discoveries [J].
Roscher, Ribana ;
Bohn, Bastian ;
Duarte, Marco F. ;
Garcke, Jochen .
IEEE ACCESS, 2020, 8 :42200-42216
[89]   Physics-Based Convolutional Neural Network for Fault Diagnosis of Rolling Element Bearings [J].
Sadoughi, Mohammadkazem ;
Hu, Chao .
IEEE SENSORS JOURNAL, 2019, 19 (11) :4181-4192
[90]   An Improved Prediction of Indian Summer Monsoon Onset From State-of-the-Art Dynamic Model Using Physics-Guided Data-Driven Approach [J].
Sahana, A. S. ;
Ghosh, Subimal .
GEOPHYSICAL RESEARCH LETTERS, 2018, 45 (16) :8510-8518