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Leveraging Time-Series Foundation Models in Smart Agriculture for Soil Moisture Forecasting

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 TimeGPT\texttt{TimeGPT}, a state-of-the-art (SOTA) time-series foundation model, to predict soil water potential (ψsoil\psi_\mathrm{soil}), 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 ψsoil\psi_\mathrm{soil}'s ability to forecast ψsoil\psi_\mathrm{soil} in: (ii) a zero-shot setting, (iiii) a fine-tuned setting relying solely on historic ψsoil\psi_\mathrm{soil} measurements, and (iiiiii) a fine-tuned setting where we also add exogenous variables to the model. We compare TimeGPT\texttt{TimeGPT}'s performance to established SOTA baseline models for forecasting ψsoil\psi_\mathrm{soil}. Our results demonstrate that TimeGPT\texttt{TimeGPT} achieves competitive forecasting accuracy using only historical ψsoil\psi_\mathrm{soil} data, highlighting its remarkable potential for agricultural applications. This research paves the way for foundation time-series models for sustainable development in agriculture by enabling forecasting tasks that were traditionally reliant on extensive data collection and domain expertise.

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