A Domain-Specific Language for Fault Diagnosis in Electrical Submersible Pumps

Electrical submersible pumps are devices frequently used in off-shore oil exploration. Vibration signals analysis and expert systems technology are used for detecting faults on these motor pumps. Fault diagnosis classifiers may need to be updated or expanded. This paper proposes a domain specific language for enabling non-programmer engineers to create and adjust rule-based fault diagnosis classifiers of electrical submersible pumps.

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