| dc.description.abstract | Soil moisture monitoring is essential for efficient irrigation management in precision
agriculture, yet sensor calibration remains a major bottleneck, often requiring
labor-intensive manual adjustments. Inaccurate soil moisture readings due to sensor
drift or manufacturing variability compromise irrigation efficiency and crop health.
To address this, this thesis explores automated calibration strategies that combine
machine learning and data assimilation techniques to enhance the reliability of soil
moisture measurements.
A first contribution is the development of a deep learning-based self-calibration
algorithm that predicts the soil moisture sensor reading at field capacity using
short sequences of uncalibrated sensor outputs. This model, built upon a hybrid
CNN-DNN architecture, learns from synthetic data generated through HYDRUS-1D
simulations across diverse soil textures and realistic hydrological conditions. By
embedding soil-specific thresholds such as saturation and field capacity into the
learning process, the approach eliminates the need for manual tuning and mitigates
sensor drift, offering scalable calibration in real-world scenarios.
In parallel, a data assimilation-based framework using the Iterative Ensemble
Smoother and Particle Filter has been proposed. This method dynamically
updates sensor parameters by integrating real-time field data with physically-based
simulations. It enforces physical constraints on key variables, ensuring that
updated parameters remain within soil-specific bounds. The approach demonstrates
high adaptability to different environmental conditions and sensor error patterns,
significantly reducing bias and improving irrigation performance.
Both methods were experimentally validated under controlled and field conditions
using an IoT-enabled infrastructure and high-precision reference instruments.
The results confirmed the practical applicability, accuracy, and complementary
strengths of the proposed approaches, establishing a solid foundation for scalable,
autonomous soil moisture sensor calibration in smart irrigation systems. | es |