Development of fault detection system in irrigation pumping systems using machine learning methods with consideration of energy and water consumption

Authors

  • Gulnar Zholdangarova L. N. Gumilev Eurasian National University, Astana, Kazakhstan
  • Waldemar Wójcik Lublin University of Technology

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.

Additional Files

Published

2025-07-09

Issue

Section

Biomedical Engineering