Due to the lack of a reasonable mechanism explanation for the data model used in the process of quality-related fault diagnosis, the diagnosis model has insufficient ability to identify faults, resulting in the phenomenon of failure detection or false positive. Therefore, this paper adopted the method of mechanism and data model fusion to solve the problem of insufficient interpretation of the influence of existing diagnosis methods on rolling process variables. Firstly, the KPLS achieves strip quality-related fault detection for nonlinear processes. In order to find out the abnormal variables, a nonlinear contribution plot was introduced to calculate the contribution value of each variable to the monitoring index. Secondly, based on the bo...
This paper proposes a novel method to improve the variational mode decomposition (VMD) method and to...
To gain a thorough understanding of the fault mechanisms in SLS machines, we decompose SLS profile ...
Aiming at the problem that the Local mean decomposition(LMD) method is difficult to draw early weak ...
This paper proposes a framework for quality-based fault detection and diagnosis for nonlinear batch ...
Abstract: The metal processing system usually consists of various components such like motors, work ...
This article presents a statistical prediction model-based intelligent decision support tool for cen...
A lightweight rolled steel strip surface defect detection model, YOLOv5s-GCE, is proposed to improve...
Steel hot rolling process is a complex manufacturing process. The recent development of sensing tech...
An extremely important part of the finishing line is the pickling process, in which oxides formed du...
Abstract. An extremely important part of the finishing line is the pickling process, in which oxides...
Aiming to solve the problem of accurate diagnosis of the size and location of rolling bearing faults...
Strip snap, also known as strip breakage or belt tearing, is an undesirable quality incident which r...
The development and implementation of better control strategies to improve the overall performance o...
This paper proposes a new method to realize the quantitative trend diagnosis of bearings based on Pr...
When rolling bearings fail, it is usually difficult to determine the degree of damage. To address th...
This paper proposes a novel method to improve the variational mode decomposition (VMD) method and to...
To gain a thorough understanding of the fault mechanisms in SLS machines, we decompose SLS profile ...
Aiming at the problem that the Local mean decomposition(LMD) method is difficult to draw early weak ...
This paper proposes a framework for quality-based fault detection and diagnosis for nonlinear batch ...
Abstract: The metal processing system usually consists of various components such like motors, work ...
This article presents a statistical prediction model-based intelligent decision support tool for cen...
A lightweight rolled steel strip surface defect detection model, YOLOv5s-GCE, is proposed to improve...
Steel hot rolling process is a complex manufacturing process. The recent development of sensing tech...
An extremely important part of the finishing line is the pickling process, in which oxides formed du...
Abstract. An extremely important part of the finishing line is the pickling process, in which oxides...
Aiming to solve the problem of accurate diagnosis of the size and location of rolling bearing faults...
Strip snap, also known as strip breakage or belt tearing, is an undesirable quality incident which r...
The development and implementation of better control strategies to improve the overall performance o...
This paper proposes a new method to realize the quantitative trend diagnosis of bearings based on Pr...
When rolling bearings fail, it is usually difficult to determine the degree of damage. To address th...
This paper proposes a novel method to improve the variational mode decomposition (VMD) method and to...
To gain a thorough understanding of the fault mechanisms in SLS machines, we decompose SLS profile ...
Aiming at the problem that the Local mean decomposition(LMD) method is difficult to draw early weak ...