In this paper, a new fault diagnosis method using an adaptive neural network for automotive engines is developed. A redial basis function (RBF) network is used as a fault classifier with its widths and weights on-line adapted to cope with model uncertainty and time varying dynamics caused by mechanical wear of engine parts, environment change, etc. Five different sensors are investigated for an automotive engine including throttle angle, manifold pressure, manifold temperature, crankshaft speed and engine torque. The engine data is acquired from a one-litre Volkswagen petrol engine test bed under different operating states, and then simulated multiplicative faults are superimposed. The real data experiments confirm that sensor faults as sma...
The application of a new method for fault diagnosis in an automotive diesel engine is presented. Two...
[[abstract]]An expert system for fault diagnosis in internal combustion engines using adaptive order...
Sensor failures are a major cause of concern in engine-performance monitoring as they can result in ...
Fault detection and isolation (FDI) has become one of the most important aspects of automobile desig...
Abstract: Robustness assessment is important for every newly developed method. This paper presents r...
[[abstract]]This paper proposed an engine fault diagnosis system based on intake manifold pressure s...
Early fault diagnosis for automobile engines is very important to ensure reliable operation of the e...
In this paper, a new advance in the application of Artificial Neural Networks (ANNs) to the automate...
This paper describes the hybrid solution, based on artificial neural networks (ANNs), and the produc...
Simulation was used as a viable way of generating data to train Artificial Neural Networks (ANN) to ...
Vibration analysis is an accepted method in condition monitoring of machines, since it can provide u...
The objective of this work is to develop simple algorithms for fault detection in diesel engines emb...
Artificial Neural Networks (ANNs) have the potential to solve the problem of automated diagnostics o...
Abstract: This paper presents a signal analysis technique for internal combustion (IC) engine fault ...
[[abstract]]This paper describes an internal combustion engine fault diagnosis system using the mani...
The application of a new method for fault diagnosis in an automotive diesel engine is presented. Two...
[[abstract]]An expert system for fault diagnosis in internal combustion engines using adaptive order...
Sensor failures are a major cause of concern in engine-performance monitoring as they can result in ...
Fault detection and isolation (FDI) has become one of the most important aspects of automobile desig...
Abstract: Robustness assessment is important for every newly developed method. This paper presents r...
[[abstract]]This paper proposed an engine fault diagnosis system based on intake manifold pressure s...
Early fault diagnosis for automobile engines is very important to ensure reliable operation of the e...
In this paper, a new advance in the application of Artificial Neural Networks (ANNs) to the automate...
This paper describes the hybrid solution, based on artificial neural networks (ANNs), and the produc...
Simulation was used as a viable way of generating data to train Artificial Neural Networks (ANN) to ...
Vibration analysis is an accepted method in condition monitoring of machines, since it can provide u...
The objective of this work is to develop simple algorithms for fault detection in diesel engines emb...
Artificial Neural Networks (ANNs) have the potential to solve the problem of automated diagnostics o...
Abstract: This paper presents a signal analysis technique for internal combustion (IC) engine fault ...
[[abstract]]This paper describes an internal combustion engine fault diagnosis system using the mani...
The application of a new method for fault diagnosis in an automotive diesel engine is presented. Two...
[[abstract]]An expert system for fault diagnosis in internal combustion engines using adaptive order...
Sensor failures are a major cause of concern in engine-performance monitoring as they can result in ...