Javascript must be enabled to continue!
Intelligent remaining useful life prediction of equipment based on digital twin
View through CrossRef
Abstract
In the cutting-edge field of smart manufacturing, accurately predicting the remaining useful life (RUL) of intelligent devices plays a crucial role in enhancing production efficiency and ensuring equipment safety. Digital Twin (DT) represents an emergent technology in equipment health management, where high-fidelity digital twin models facilitate the reflection of device operational states, and dynamically updated data aids in the precise prediction of RUL. This paper introduces a DT-based framework for the intelligent prediction of equipment RUL, utilizing a high-fidelity digital twin system to comprehensively capture the operational data of devices, enabling extensive and multi-level monitoring of device operational states. Building upon this foundation, a RUL prediction model (MSCPS) incorporating Multi-Scale Convolution (MSC) and ProSparse Self-Attention is proposed, significantly enhancing the extraction of key features and thereby improving RUL prediction accuracy. Furthermore, through the implementation of a transfer learning strategy supported by the digital twin system, this study successfully addresses the challenge of data scarcity in the target domain, achieving high-accuracy RUL prediction under conditions of limited data. Extensive experiments conducted on two full-lifecycle bearing datasets validate the effectiveness of the proposed method, with results demonstrating its superiority in RUL prediction compared to existing data-driven technologies. This research not only provides a new perspective for equipment health monitoring and management but also lays a solid foundation for the advancement of health diagnosis and prediction technologies in intelligent systems, indicating new directions for future research.
Title: Intelligent remaining useful life prediction of equipment based on digital twin
Description:
Abstract
In the cutting-edge field of smart manufacturing, accurately predicting the remaining useful life (RUL) of intelligent devices plays a crucial role in enhancing production efficiency and ensuring equipment safety.
Digital Twin (DT) represents an emergent technology in equipment health management, where high-fidelity digital twin models facilitate the reflection of device operational states, and dynamically updated data aids in the precise prediction of RUL.
This paper introduces a DT-based framework for the intelligent prediction of equipment RUL, utilizing a high-fidelity digital twin system to comprehensively capture the operational data of devices, enabling extensive and multi-level monitoring of device operational states.
Building upon this foundation, a RUL prediction model (MSCPS) incorporating Multi-Scale Convolution (MSC) and ProSparse Self-Attention is proposed, significantly enhancing the extraction of key features and thereby improving RUL prediction accuracy.
Furthermore, through the implementation of a transfer learning strategy supported by the digital twin system, this study successfully addresses the challenge of data scarcity in the target domain, achieving high-accuracy RUL prediction under conditions of limited data.
Extensive experiments conducted on two full-lifecycle bearing datasets validate the effectiveness of the proposed method, with results demonstrating its superiority in RUL prediction compared to existing data-driven technologies.
This research not only provides a new perspective for equipment health monitoring and management but also lays a solid foundation for the advancement of health diagnosis and prediction technologies in intelligent systems, indicating new directions for future research.
Related Results
A multivocal literature review of digital twins, architectures, and elements in civil engineering
A multivocal literature review of digital twins, architectures, and elements in civil engineering
Recent structural health monitoring (SHM) strategies in civil engineering increasingly leverage digital twins, which digitally represent the structures being monitored as well as t...
A DTMEs-Based Digital Twin System Construction Method For Smart Factory
A DTMEs-Based Digital Twin System Construction Method For Smart Factory
Abstract
Many enterprises have built their own digital twin factory model for physical factory planning, simulation optimization and real-time monitoring. However, the digi...
Twin cogenesis
Twin cogenesis
Abstract
We investigate a cogenesis mechanism within the twin Higgs setup that can naturally explain the nature of dark matter, the cosmic coincidence puzzle, little...
Exploration of intelligent monitoring technology for the operation status of large port loading and unloading machinery equipment
Exploration of intelligent monitoring technology for the operation status of large port loading and unloading machinery equipment
This article takes the large-scale loading and unloading machinery equipment and intelligent monitoring technology in ports as the research This article takes the large-scale loadi...
Degradation and life prediction of mechanical equipment based on multivariate stochastic process
Degradation and life prediction of mechanical equipment based on multivariate stochastic process
IntroductionAccurately predicting the remaining mechanical equipment is of great significance for ensuring the safe operation of the equipment and improving economic efficiency.Met...
Achievement of a 136-day delayed-interval delivery of a second twin with minimum intervention
Achievement of a 136-day delayed-interval delivery of a second twin with minimum intervention
The rate of multiple pregnancies in the past three decades has increased dramatically. Twin pregnancies have a higher risk of pregnancy loss owing to premature birth. Although the ...
Edge Computing Enhanced Digital Twins for Smart Manufacturing
Edge Computing Enhanced Digital Twins for Smart Manufacturing
Abstract
Digital Twin is one of the key enabling technologies for smart manufacturing in the context of Industry 4.0. The combination with advanced data analytics an...
Building Digital Twin Data Model based on Public Data
Building Digital Twin Data Model based on Public Data
This study aims to propose a method for constructing basic digital twin data in South Korea by adhering to international standards and utilizing publicly available data. Specifical...

