Abstract One of the major challenges facing fault diagnosis tools is their exposure to noise. The presence of noise may cause false alarms or the inability to detect a progressive fault in the early stages of its occurrence. Continuing previous efforts to address such a problem, in this paper, a noise‐robust diagnosis system for an industrial gas turbine is presented. The proposed structure employs a set of deep residual compensation extreme learning machines (DRCELMs). In this model, an optimal number of compensating blocks are trained to recover some of the lost useful information in the face of noise. Training and testing data required to develop the fault diagnosis model are generated by a performance model of the studied gas turbine. T...
Due to the advantages of high convergence accuracy, fast training speed, and good generalization per...
ABSTRACT In the paper, Neural Network (NN) models for gas turbine diagnostics are studied and develo...
This paper presents a model-based procedure for the detection and isolation of faults in an indus...
In this paper a model-based procedure exploiting analytical redundancy for the detection and isol...
In this paper a model-based procedure exploiting analytical redundancy for the detection and isol...
The FDI step identifies the presence of a fault, its level, type, and possible location. Gas turbine...
In this study a model-based procedure exploiting analytical redundancy for the detection and isolat...
Abstract. In the present paper, Random Forests are used in a criti-cal and at the same time non triv...
Effective fault detection, estimation, and isolation are essential for the safety and reliability of...
In this study a model-based procedure exploiting analytical redundancy for the detection and isolat...
Gas path fault diagnosis involves the effective utilization of condition-based sensor signals along ...
The paper proposes a new methodology of machine fault detection for industrial gas turbine (IGT) sys...
In this study, a model-based procedure exploiting analytical redundancy for the detection and isola...
The rapid advancement of machine-learning techniques has played a significant role in the evolution ...
This study proposes a model-based robust fault detection and isolation (RFDI) method with hybrid str...
Due to the advantages of high convergence accuracy, fast training speed, and good generalization per...
ABSTRACT In the paper, Neural Network (NN) models for gas turbine diagnostics are studied and develo...
This paper presents a model-based procedure for the detection and isolation of faults in an indus...
In this paper a model-based procedure exploiting analytical redundancy for the detection and isol...
In this paper a model-based procedure exploiting analytical redundancy for the detection and isol...
The FDI step identifies the presence of a fault, its level, type, and possible location. Gas turbine...
In this study a model-based procedure exploiting analytical redundancy for the detection and isolat...
Abstract. In the present paper, Random Forests are used in a criti-cal and at the same time non triv...
Effective fault detection, estimation, and isolation are essential for the safety and reliability of...
In this study a model-based procedure exploiting analytical redundancy for the detection and isolat...
Gas path fault diagnosis involves the effective utilization of condition-based sensor signals along ...
The paper proposes a new methodology of machine fault detection for industrial gas turbine (IGT) sys...
In this study, a model-based procedure exploiting analytical redundancy for the detection and isola...
The rapid advancement of machine-learning techniques has played a significant role in the evolution ...
This study proposes a model-based robust fault detection and isolation (RFDI) method with hybrid str...
Due to the advantages of high convergence accuracy, fast training speed, and good generalization per...
ABSTRACT In the paper, Neural Network (NN) models for gas turbine diagnostics are studied and develo...
This paper presents a model-based procedure for the detection and isolation of faults in an indus...