When an abnormal situation occurs in a nuclear power plant (NPP), operators must properly diagnose the event among hundreds of possible abnormal events. To do so, they monitor changes in plant parameters and confirm the correct abnormal operating procedure when the parameters match the entry conditions described in that procedure. In this process, operators are burdened with a lot of information. The purpose of this study is to optimize the number of main parameters to be monitored for abnormal state diagnosis in NPPs by clarifying the classification process with a deep learning model. To increase the transparency of the trained convolutional neural network model in the diagnosis of 10 different NPP states, we applied three explanation tech...
A dynamic neural network aggregation (DNNA) model was proposed for transient detection, classificati...
Presented at IJCNN 2018, this presentation contains the description of a novel deep learning approac...
The safe operation of nuclear power plants is highly dependent on the ability of quickly and accurat...
When an abnormal event occurs in a system in a nuclear power plant (NPP), it can cause severe safety...
Diagnosing abnormal events in nuclear power plants (NPPs) is a challenging issue given the hundreds ...
Nuclear power plants have abnormal operating procedures to prepare abnormal events occurring. An ope...
When abnormal events occur in a nuclear power plant, operators must conduct appropriate abnormal ope...
Nuclear power plants are diagnosed by operators according to the alarms and plant parameters that ca...
In this work, a novel deep learning approach to unfold nuclear power reactor signals is proposed. It...
In this work, a novel deep learning approach to unfold nuclear power reactor signals is proposed. It...
•The introduction of a deep learning methodology for the classification of different perturbation ty...
The work presented in this dissertation explores the design and development of a large scale nuclear...
The work presented in this dissertation explores the design and development of a large scale nuclear...
A Nuclear Power Plant (NPP) is a complex dynamic system-of-systems with highly nonlinear behaviors. ...
As artificial intelligence technology has progressed, numerous businesses have used intelligent diag...
A dynamic neural network aggregation (DNNA) model was proposed for transient detection, classificati...
Presented at IJCNN 2018, this presentation contains the description of a novel deep learning approac...
The safe operation of nuclear power plants is highly dependent on the ability of quickly and accurat...
When an abnormal event occurs in a system in a nuclear power plant (NPP), it can cause severe safety...
Diagnosing abnormal events in nuclear power plants (NPPs) is a challenging issue given the hundreds ...
Nuclear power plants have abnormal operating procedures to prepare abnormal events occurring. An ope...
When abnormal events occur in a nuclear power plant, operators must conduct appropriate abnormal ope...
Nuclear power plants are diagnosed by operators according to the alarms and plant parameters that ca...
In this work, a novel deep learning approach to unfold nuclear power reactor signals is proposed. It...
In this work, a novel deep learning approach to unfold nuclear power reactor signals is proposed. It...
•The introduction of a deep learning methodology for the classification of different perturbation ty...
The work presented in this dissertation explores the design and development of a large scale nuclear...
The work presented in this dissertation explores the design and development of a large scale nuclear...
A Nuclear Power Plant (NPP) is a complex dynamic system-of-systems with highly nonlinear behaviors. ...
As artificial intelligence technology has progressed, numerous businesses have used intelligent diag...
A dynamic neural network aggregation (DNNA) model was proposed for transient detection, classificati...
Presented at IJCNN 2018, this presentation contains the description of a novel deep learning approac...
The safe operation of nuclear power plants is highly dependent on the ability of quickly and accurat...