Time-Series Foundation Models for Forecasting Soil Moisture Levels in Smart Agriculture
Boje Deforce, Bart Baesens, Estefan\'ia Serral Asensio

TL;DR
This paper applies a novel time-series foundation model, TimeGPT, to forecast soil moisture levels in smart agriculture, demonstrating competitive accuracy with minimal data and highlighting its potential for sustainable farming practices.
Contribution
Introduces TimeGPT, a state-of-the-art foundation model for time-series forecasting in agriculture, capable of accurate soil moisture prediction with limited data and minimal input variables.
Findings
TimeGPT achieves competitive accuracy using only historical soil data.
The model performs well in zero-shot and fine-tuned settings.
Foundation models can effectively forecast soil moisture, reducing data requirements.
Abstract
The recent surge in foundation models for natural language processing and computer vision has fueled innovation across various domains. Inspired by this progress, we explore the potential of foundation models for time-series forecasting in smart agriculture, a field often plagued by limited data availability. Specifically, this work presents a novel application of , a state-of-the-art (SOTA) time-series foundation model, to predict soil water potential (), a key indicator of field water status that is typically used for irrigation advice. Traditionally, this task relies on a wide array of input variables. We explore 's ability to forecast in: () a zero-shot setting, () a fine-tuned setting relying solely on historic measurements, and () a fine-tuned setting where we also add…
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Taxonomy
TopicsSmart Agriculture and AI
