Diagnosis functions are commonly used within modern vehicles. These functions are
applied to subsystems as the engine, exhaust system or electric system. An important
component regarding safety as well as driving characteristics i
s the damper. However,
damper defect diagnosis is not performed in production cars. Al
so in literature, there
are only very few approaches that address damper diagnosis during driving. This paper
shows an approach to diagnosing damper defects with machine lea
rning. A support
vector machine (SVM) architecture is used to classify measureme
nt data with different
settings of the damper functionality. Therefore, test drives we
re conducted with a vehi-
cle, equipped with semi-active dampers and measurement data of
longitudinal and lat-
eral accelerations as well as wheel speed signals was gathered.
Several signal features
are calculated to characterize the measurement data of each sensor. The most meaning-
ful features are explained in this paper. Feature reduction is
required to maximize the
classification result. This is done by three different methods
and the performance of
each technique is studied. Finally, a linear SVM classifier is
trained that allows the
detection as well as the isolation of the vehicle’s damper stat
es.
«
Diagnosis functions are commonly used within modern vehicles. These functions are
applied to subsystems as the engine, exhaust system or electric system. An important
component regarding safety as well as driving characteristics i
s the damper. However,
damper defect diagnosis is not performed in production cars. Al
so in literature, there
are only very few approaches that address damper diagnosis during driving. This paper
shows an approach to diagnosing damper defects with machine...
»