Litcius/Paper detail

A digital twin data management and process traceability method for the complex product assembly process

Xun Cheng, Feihong Huang, Qiming Yang, Linqiong Qiu

2025Journal of the Brazilian Society of Mechanical Sciences and Engineering8 citationsDOIOpen Access PDF

Abstract

Abstract To achieve continuous improvement in production, it is essential to develop robust data management and process traceability for the assembly process. However, most existing studies on assembly processes struggle to implement refined data management and process traceability during the execution stage, particularly for complex products. To address this challenge, this paper proposes a workflow-based and multi-level data-driven digital twin system for the assembly process. First, a workflow-based data acquisition method is employed to facilitate systematic data collection. Subsequently, an OPC UA (Open Platform Communication Unified Architecture) information model is developed to enable dynamic data management, establishing a seamless connection between the physical and virtual assembly lines. Finally, deep learning techniques are incorporated to estimate the remaining assembly lead time, guided by multi-level data. Experimental validation is conducted in a real-world assembly workshop, and the results demonstrate that the proposed approach effectively manages hierarchical assembly processes and accurately predicts assembly progress.

Topics & Concepts

TraceabilityProcess (computing)Process managementProduct (mathematics)Manufacturing engineeringComputer scienceProcess engineeringSystems engineeringEngineeringSoftware engineeringOperating systemGeometryMathematicsManufacturing Process and OptimizationDigital Transformation in IndustryFlexible and Reconfigurable Manufacturing Systems