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.
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