基于时空张量的多任务学习和单次学习的精准施肥

Yu Zhang;Kang Liu;Xulong Wang;Rujing Wang;Po Yang
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摘要

在农业系统中,精确施肥对于平衡土壤养分、节约肥料、减少排放和提高作物产量至关重要。由于大多数农场缺乏复杂的传感器和网络技术,获得全面和多样化的农业数据是有问题的,而且现有的农业数据通常是非结构化的,难以挖掘。因此,农业数据的缺乏是利用机器学习方法进行精确施肥的一个重大障碍。在这项研究中,我们调查了来自英国九个真实冬小麦农场的新收集的真实农业数据集,其中包括各种各样的农业变量,包括气候、土壤养分和农业数据。为了处理农业数据的时空特征和解决农业数据的稀缺性问题,我们提出了一种融合多任务学习和一次学习的机器学习方法。利用原始数据构建的多维张量,结合与现有真实农场环境信息对比提取的施肥时间格局,准确预测基肥和追肥的数量和时间。具体而言,将农业数据转换为三维张量,利用张量分解技术从原始数据中提取一组可理解的时空潜在因素。然后利用潜在因素作为多任务关系构建时空张量预测模型。该方法利用马氏距离(Mahalanobis distance)来评估目标农场与现实世界现有农场之间环境信息的相似性,作为是否将现有农场施肥时间模式转移到目标农场的决定因素。利用真实农业数据集进行了综合实验,将所提出的方法与标准回归模型进行比较。实验结果表明,该方法具有较高的预测精度和稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Precision Fertilization via Spatio-temporal Tensor Multi-task Learning and One-Shot Learning
Precision fertilization is essential in agricultural systems for balancing soil nutrients, conserving fertilizer, decreasing emissions, and increasing crop yields. Access to comprehensive and diverse agricultural data is problematic due to the lack of sophisticated sensor and network technologies on the majority of farms, and available agricultural data are generally unstructured and difficult to mine. The absence of agricultural data is, consequently, a significant impediment to the utilization of machine learning approaches for precision fertilization. In this research, we investigate newly gathered genuine agricultural dataset from nine real winter wheat farms in the United Kingdom, which encompass an extensive variety of agricultural variables, including climate, soil nutrients, and farming data. To deal with the spatio-temporal characteristics of agricultural dataset and to address the problem of scarcity in agricultural data, we propose a novel machine learning approach integrating multi-task learning and one-shot learning, which utilizes a multi-dimensional tensor constructed from original data combined with fertilization temporal patterns extracted by contrasting with environmental information from existing real farms to accurately predict the quantity and timing of base and top dressing fertilization. Specifically, agricultural data are converted into a 3-D tensor and tensor decomposition technique is utilized to derive a set of comprehensible spatio-temporal latent factors from the original data. The latent factors are subsequently utilized to construct the spatio-temporal tensor prediction model as multi-task relationships. The proposed one-shot learning approach utilizes the Mahalanobis distance to evaluate the similarity of environmental information between the target farm and existing real-world farms as a determinant of whether to transfer the fertilization temporal pattern of existing farm to the target farm. Comprehensive experiments are conducted to compare the proposed approach with standard regression models utilizing the real-world agricultural dataset. The experimental results demonstrate that our proposed approach presents superior accuracy and stability for fertilization prediction.
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