Abstract

Digital twin (DT) is a key technology for realizing the interconnection and intelligent operation of the physical world and the world of information and provides a new paradigm for fault diagnosis. Traditional machine learning algorithms require a balanced dataset. Training and testing sets must have the same distribution. Training a good generalization model is difficult in an actual production line operation process. Fault diagnosis technology based on the digital twin uses its ultrarealistic, multisystem, and high-precision characteristics to simulate fault data that are difficult to obtain in an actual production line to train a reliable fault diagnosis model. In this article, we first propose an improved random forest (IRF) algorithm, which reselects decision trees with high accuracy and large differences through hierarchical clustering and gives them weights. Digital twin technology is used to simulate a large number of balanced datasets to train the model, and the trained model can be transferred to a physical production line through transfer learning for fault diagnosis. Finally, the feasibility of our proposed algorithm is verified through a case study of an automobile rear axle assembly line, for which the accuracy of the proposed algorithm reaches 97.8%. The traditional machine learning plus digital twin fault diagnosis method proposed in this paper involves some generalization, and thus has practical value when extended to other fields.

Highlights

  • Intelligent manufacturing is the engine driving the development of future industry.With the rapid development of communication technology and information technology [1], based on cloud computing, big data, and the Internet of Things [2], a new round of industrial transformation represented by intelligent manufacturing has begun globally

  • In order to solve the problem of an unbalanced training dataset and the lack of a high volume of fault data in practical applications, we propose using digital twin to simulate a large amount of balanced data, and transferring it to the physical production line

  • [28] used as racy as an indicator to evaluate the performance eachthen tree,selected selected decision an indicator to evaluate the performance of eachoftree, good good decision trees trees a large number of trees according the value of high accuracy

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Summary

Introduction

Intelligent manufacturing is the engine driving the development of future industry. With the rapid development of communication technology and information technology [1], based on cloud computing, big data, and the Internet of Things [2], a new round of industrial transformation represented by intelligent manufacturing has begun globally. Digital twin technology no longer refers to three-dimensional static models, but refers to the use of physical models, sensor updates, operating history, and other data to map physical entities to virtual space, so as to reflect the whole life cycle process of the corresponding physical entities and provide a reference for system analysis and decision-making [3]. The physical production line will be optimized based on the results of the virtual production line (such as the fault diagnosis results in this paper)

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