Digital twin (DT) is emerging as a key technology for smart manufacturing. The high fidelity DT model of the physical assets can produce system performance data that is close to reality, which provides remarkable opportunities for machine fault diagnosis when the measured fault condition data are insufficient. This paper presents an intelligent fault diagnosis framework for machinery based on DT and deep transfer learning. First, the DT model of the machine is built by establishing the simulation model and with further updating through continuously measured data from the physical asset. Second, all important machine conditions can be simulated from the built DT. Third, a new-type deep structure based on novel sparse de-noising auto-encoder ...
This study has designed and implemented a deep transfer learning (DTL) model-based framework that ta...
Fault diagnosis in high-speed machining centers (HSM) is critical in manufacturing systems, since ea...
The future of smart manufacturing relies on predictive maintenance systems that intelligently minimi...
This book offers a compilation for experts, scholars, and researchers to present the most recent adv...
The demand of artificial intelligent adoption for condition-based maintenance strategy is astonishin...
Aiming at the problem of fault diagnosis when there are only a few labeled samples in the large amou...
International audienceDeep learning methods have promoted the vibration-based machinery fault diagno...
Primary detection and removal of mechanical fault is vital for the recovery of mechanical and electr...
In recent years, intelligent fault diagnosis technology with the deep learning algorithm has been wi...
Robust and reliable drivetrain is important for preventing electromechanical (e.g., wind turbine) do...
Induction motors operate in difficult environments in the industry. Monitoring the performance of mo...
To realize high-precision and high-efficiency machine fault diagnosis, a novel deep learning framewo...
As failures in rotating machines can have serious implications, the timely detection and diagnosis o...
Current studies on intelligent bearing fault diagnosis based on transfer learning have been fruitful...
Intelligent fault diagnosis is of great significance to guarantee the safe operation of mechanical e...
This study has designed and implemented a deep transfer learning (DTL) model-based framework that ta...
Fault diagnosis in high-speed machining centers (HSM) is critical in manufacturing systems, since ea...
The future of smart manufacturing relies on predictive maintenance systems that intelligently minimi...
This book offers a compilation for experts, scholars, and researchers to present the most recent adv...
The demand of artificial intelligent adoption for condition-based maintenance strategy is astonishin...
Aiming at the problem of fault diagnosis when there are only a few labeled samples in the large amou...
International audienceDeep learning methods have promoted the vibration-based machinery fault diagno...
Primary detection and removal of mechanical fault is vital for the recovery of mechanical and electr...
In recent years, intelligent fault diagnosis technology with the deep learning algorithm has been wi...
Robust and reliable drivetrain is important for preventing electromechanical (e.g., wind turbine) do...
Induction motors operate in difficult environments in the industry. Monitoring the performance of mo...
To realize high-precision and high-efficiency machine fault diagnosis, a novel deep learning framewo...
As failures in rotating machines can have serious implications, the timely detection and diagnosis o...
Current studies on intelligent bearing fault diagnosis based on transfer learning have been fruitful...
Intelligent fault diagnosis is of great significance to guarantee the safe operation of mechanical e...
This study has designed and implemented a deep transfer learning (DTL) model-based framework that ta...
Fault diagnosis in high-speed machining centers (HSM) is critical in manufacturing systems, since ea...
The future of smart manufacturing relies on predictive maintenance systems that intelligently minimi...