Multi-task neural networks for multi-step soil moisture forecasting in vineyards using Internet-of-Things sensors

IF 5.7 Q1 AGRICULTURAL ENGINEERING Smart agricultural technology Pub Date : 2025-01-08 DOI:10.1016/j.atech.2025.100769
Ada Baldi , Laura Carnevali , Giovanni Collodi , Marco Lippi , Antonio Manes
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Abstract

Promoting an efficient management of water resources is one of the most crucial challenges in smart farming for the coming years. In this context, developing accurate soil moisture forecasting methods is fundamental in order to optimize irrigation and avoid waste. In this paper, we present a deep learning approach based on the multi-task paradigm, which is exploited to jointly forecast soil moisture at multiple time steps in the future, using a multivariate time-series as input features. Experiments are conducted on a real data set collected via data fusion techniques from Internet-of-Things (IoT) sensors located in a vineyard in Montalcino (Tuscany), showing the advantages of joint multi-step forecasting for prediction horizons that range from 24 to 48 hours ahead.
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利用物联网传感器的多任务神经网络进行葡萄园多步骤土壤湿度预报
促进水资源的有效管理是未来几年智能农业最关键的挑战之一。在这种情况下,开发准确的土壤水分预测方法是优化灌溉和避免浪费的基础。在本文中,我们提出了一种基于多任务范式的深度学习方法,该方法利用多元时间序列作为输入特征,在未来多个时间步长联合预测土壤湿度。实验通过位于蒙塔奇诺(托斯卡纳)葡萄园的物联网(IoT)传感器的数据融合技术收集的真实数据集进行,显示了联合多步骤预测的优势,预测范围为提前24至48小时。
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