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SoilX: Calibration-Free Comprehensive Soil Sensing Through Contrastive Cross-Component Learning

Published: November 7, 2025 | arXiv ID: 2511.05482v1

By: Kang Yang , Yuanlin Yang , Yuning Chen and more

Potential Business Impact:

Measures soil nutrients without needing to be reset.

Business Areas:
Hydroponics Agriculture and Farming

Precision agriculture demands continuous and accurate monitoring of soil moisture (M) and key macronutrients, including nitrogen (N), phosphorus (P), and potassium (K), to optimize yields and conserve resources. Wireless soil sensing has been explored to measure these four components; however, current solutions require recalibration (i.e., retraining the data processing model) to handle variations in soil texture, characterized by aluminosilicates (Al) and organic carbon (C), limiting their practicality. To address this, we introduce SoilX, a calibration-free soil sensing system that jointly measures six key components: {M, N, P, K, C, Al}. By explicitly modeling C and Al, SoilX eliminates texture- and carbon-dependent recalibration. SoilX incorporates Contrastive Cross-Component Learning (3CL), with two customized terms: the Orthogonality Regularizer and the Separation Loss, to effectively disentangle cross-component interference. Additionally, we design a novel tetrahedral antenna array with an antenna-switching mechanism, which can robustly measure soil dielectric permittivity independent of device placement. Extensive experiments demonstrate that SoilX reduces estimation errors by 23.8% to 31.5% over baselines and generalizes well to unseen fields.

Country of Origin
🇺🇸 United States

Repos / Data Links

Page Count
16 pages

Category
Computer Science:
Machine Learning (CS)