Gear condition monitoring can prevent unexpected
downtimes or sudden failure of machinery. Since gear damage
usually results from tooth contact, data for reliable fault
detection should be acquired as close as possible to this
engagement to reduce other components' disturbances (such
as vibrations). One typical gear damage mechanism is pitting.
Although the detection of gear pitting using acceleration data
is already covered in research, methods with integrated sen-
sors and electronics into the gear (in-situ) are still in their
infancy. Most fault detection approaches still rely on external
high-performance measurement systems unsuitable for in-situ
integration. Thus, this paper proposes an algorithm pipeline
for detecting gear pitting using acceleration data suitable for
low-power embedded devices, such as Microcontrollers (MCUs).
Downsampling provides the minimum required acceleration
data sample rate necessary for detection. It is the basis for
future work on suitable sensor and hardware selection. Finally,
implementing the algorithm pipeline on a PC and a low-power
ARM-Cortex M0+ MCU shows its applicability.
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Gear condition monitoring can prevent unexpected
downtimes or sudden failure of machinery. Since gear damage
usually results from tooth contact, data for reliable fault
detection should be acquired as close as possible to this
engagement to reduce other components' disturbances (such
as vibrations). One typical gear damage mechanism is pitting.
Although the detection of gear pitting using acceleration data
is already covered in research, methods with integrated sen-
sors and electronics into the...
»