Digital Twin Factory
Publications
Improving the material handling industry workforce through digital representations of human-based operations
This article presents the opportunities and challenges of digital twin applications for manual material handling systems.
Read More about Improving the material handling industry workforce through digital representations of human-based operations
A motion capture system framework for the study of human manufacturing repetitive motions
This seminal paper proposes a framework to obtain and analyze real-time data concerning the dynamic and natural motion of individuals in manufacturing-like processes that involve human labor. The framework consists of a tracking system, a system of sensors, a processor that collects time-series data, data processing, and an alert system.
Read More about A motion capture system framework for the study of human manufacturing repetitive motions
A digital twin framework of a material handling operator in industry 4.0 environments
This paper presents a framework of a manual material handling operator in order to enhance worker performance by using a digital twin approach. The framework is composed of three modules: (1) Data Collection Module, (2) Digital Twin Application Module, (3) Operator Analysis/Feedback Module.
Read More about A digital twin framework of a material handling operator in industry 4.0 environments
Machine learning techniques for motion analysis of fatigue from manual material handling operations using 3D motion capture data
This paper evaluates machine learning techniques, based on Recurrent Neural Networks (RNN), to evaluate the fatigue factor caused by repetitive motions.
Read More about Machine learning techniques for motion analysis of fatigue from manual material handling operations using 3D motion capture data