Besides the failures that cause accidents, there are the ones responsible for preventing the car’s motion capacity. These failures cause inconveniences to the passengers and expose them to the dangers of the road. Although modern vehicles are equipped with a failure detection system, it does not provide an online approach to the drivers. Third-party devices and skilled labor are necessary to manage the data for failure characterization. One of the most common failures in engines is called misfire, and it happens when the spark is weak or inexistent, compromising the whole set. In this work, two algorithms are compared, based on Wavelet Multiresolution Analysis (WMA) and another using an approach performing signal analysis based on Chaos usi...
none1noThe diagnosis of misfire events (or missing combustions) is enforced by On-Board Diagnostics ...
The ability to give a prognosis for failure of a system is an invaluable tool. In this work, four wa...
In this paper, a new advance in the application of Artificial Neural Networks (ANNs) to the automate...
The classic monitoring methods for detecting faults in automotive vehicles based on on-board diagnos...
Engine vibration signals are easy to be interfered by other noise, causing feature signals that repr...
none3The analysis of the crankshaft speed fluctuation is one of the most investigated and used techn...
We address the problem of detecting whether an engine is misfiring by using machine learning techniq...
According to data from RENAVAM, Brazil currently has a fleet of more than 42 million vehicles. In 20...
Misfire is another type of abnormal combustion. When engine misfires, cylinder (or cylinders) is not...
Two different approaches have been used to diagnose faults in machinery such as internal combustion...
Preprogrammed monitoring of engine failure due to spark plug misfire can be traced using a method ca...
© 2015 by ASME. Control and detection of misfire are an essential part of on-board diagnosis (OBD) o...
A model-based misfire detection algorithm is proposed. The algorithm is able to detect misfires and ...
This paper evaluates the use of random forest (RF) as a tool for misfire detection using statistical...
This paper proposes a technique for the online detection of incipient engine misfire based on multip...
none1noThe diagnosis of misfire events (or missing combustions) is enforced by On-Board Diagnostics ...
The ability to give a prognosis for failure of a system is an invaluable tool. In this work, four wa...
In this paper, a new advance in the application of Artificial Neural Networks (ANNs) to the automate...
The classic monitoring methods for detecting faults in automotive vehicles based on on-board diagnos...
Engine vibration signals are easy to be interfered by other noise, causing feature signals that repr...
none3The analysis of the crankshaft speed fluctuation is one of the most investigated and used techn...
We address the problem of detecting whether an engine is misfiring by using machine learning techniq...
According to data from RENAVAM, Brazil currently has a fleet of more than 42 million vehicles. In 20...
Misfire is another type of abnormal combustion. When engine misfires, cylinder (or cylinders) is not...
Two different approaches have been used to diagnose faults in machinery such as internal combustion...
Preprogrammed monitoring of engine failure due to spark plug misfire can be traced using a method ca...
© 2015 by ASME. Control and detection of misfire are an essential part of on-board diagnosis (OBD) o...
A model-based misfire detection algorithm is proposed. The algorithm is able to detect misfires and ...
This paper evaluates the use of random forest (RF) as a tool for misfire detection using statistical...
This paper proposes a technique for the online detection of incipient engine misfire based on multip...
none1noThe diagnosis of misfire events (or missing combustions) is enforced by On-Board Diagnostics ...
The ability to give a prognosis for failure of a system is an invaluable tool. In this work, four wa...
In this paper, a new advance in the application of Artificial Neural Networks (ANNs) to the automate...