otherJan 14, 2026Closed access

Integrating IoT, Sensors, and Machine Learning for Enhancing Crop Yield and Irrigation Efficiency Systems

University of Mumbai

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Abstract

Ensuring world food security depends on agricultural output; hence, problems such as water constraints, climatic unpredictability, and ineffective irrigation techniques compromise ideal crop production. This work proposes an integrated framework using sophisticated sensor systems, Internet of Things (IoT) technology, and machine learning models to improve irrigation efficiency and agricultural output. IoT-enabled sensors in the proposed system track important environmental factors like soil moisture, temperature, and humidity in real-time. These sensors’ data is analyzed using machine learning techniques to forecast crop water needs, therefore guaranteeing exact and flexible irrigation management. Integration…

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Topics & keywords

Keywords
  • Precision agriculture
  • Irrigation
  • Crop yield
  • Agriculture
  • Water-use efficiency
  • Water conservation
  • Food security
  • Water resources
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