Detection of the degradation process of truck components
Increasing the availability of trucks through predictive maintenance
Over 20 components are detected in real time.
Preventive repairs can be carried out more quickly.
Solution
Creation of a failure prediction dataset based on high-resolution telematics data, fault memory records and repair information. An ensemble model combines the predictions of different prediction models to provide the most reliable failure prediction in this case. The solution is run on the Hadoop cluster in speed mode for parallelised computation with Spark.
Result
Failures of more than 20 components in the truck are detected and reported in real time. Based on this, the transport company can initiate measures for preventive repair.
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