Early Detection of Water Stress by Plant Electrophysiology: Machine Learning for Irrigation Management

arXiv cs.LG / 5/1/2026

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Key Points

  • The study targets early detection of water stress in greenhouse tomato plants to improve precision agriculture and automated irrigation management before visible symptoms appear.
  • Researchers recorded plant electrophysiological time-series data under controlled water-stress conditions and built an online detection framework using statistical feature extraction, feature selection, machine learning/deep learning, and probability calibration.
  • A 30-minute look-back window was found to offer the best trade-off between speed and classification accuracy across different input horizons.
  • Using automated machine learning, the framework reached up to 92% classification accuracy and also generalized to transitions into stressed states that were not included in the training data.
  • The work proposes a decision-support tool and a foundation for biofeedback-driven irrigation control in (semi-)autonomous crop production systems.

Abstract

Purpose: Fast detection of plant stress is key to plant phenotyping, precision agriculture, and automated crop management. In particular, efficient irrigation management requires early identification of water stress to optimize resource use while maintaining crop performance. Direct physiological sensing offers the potential to detect stress responses before visible symptoms appear. Methods: In this study, we recorded electrophysiological signals from greenhouse-grown tomato plants subjected to water stress and developed a framework based on machine learning for online stress detection. The recorded time-series data were processed using a processing pipeline that includes statistical feature extraction and selection, automated machine learning or alternatively deep learning, and probability calibration. Results: Across multiple input time horizons, we found that a 30-minute look-back window strikes the best balance between rapid decision-making and classification performance. Using automated machine learning, the framework achieved classification accuracies of up to 92%, outperforming deep learning approaches. Sequential backward selection reduced the feature set while maintaining performance. Importantly, the framework detects transitions from healthy to stressed states in recordings that were not included in the training set. Conclusion: Overall, we provide a decision-support tool for farmers and establish a foundation for biofeedback-driven irrigation control to improve resource efficiency in (semi-)autonomous crop production systems.