Abstract:
Pumping systems play an important role in
agriculture because they provide the necessary level of irrigation
needed to increase crop yields. Pump malfunctions result in
equipment downtime, reduced efficiency of agricultural
production and significant financial losses. Thus, the
development of an early fault detection and diagnosis system
leveraging sensor analytic, filtering techniques, and machine
learning (ML) technologies constitutes a critical applied research
challenge. The aim of this research is to develop and validate
early fault detection and classification methods for pumping
systems using advanced machine learning algorithms and sensor
data analysis.