基于因果导向深度学习模型的时空土壤湿度预测

IF 4.7 2区 地球科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Tingtao Wu;Lei Xu;Ziwei Pan;Ruinan Cai;Jin Dai;Shuang Yang;Xihao Zhang;Xi Zhang;Nengcheng Chen
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引用次数: 0

摘要

RZSM的时空预测是指利用预测模型对其未来的空间分布和时间变化进行预测的过程。准确的土壤湿度时空预测提供了对未来条件的洞察,支持应用决策,如作物产量优化,灌溉规划和干旱管理。然而,现有的模型在捕捉复杂的时空依赖关系和动态因果相互作用方面存在局限性。本文提出了一个将因果推理与深度学习相结合的时空预测框架,称为因果导向时空Swin变压器(causal ST-SwinT)。该模型引入动态因果权调整机制,自适应优化变量间的因果关系强度,采用层次化的多层次特征提取策略,有效捕捉复杂的时空依赖关系,提高预测精度和模型可解释性。在青藏高原ERA5和SMAP数据上对该方法进行了验证,并与多个模型进行了比较。实验结果表明,因果st - swt显著优于经典的卷积长短期记忆模型,在ERA5数据集上的平均绝对误差从0.0146降至0.0055 m3/m3,在SMAP数据集上的平均绝对误差从0.0088降至0.0046 m3/m3。鲁棒性分析表明,在各种环境条件下,因果st - swt保持较高的预测精度。消融实验进一步证实了因果注意模块在提高模型性能方面的关键作用。这些发现表明,将因果知识与深度学习模型相结合可以有效地增强复杂时空系统的建模能力,为更广泛的时空预测任务提供了一种新的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatiotemporal Soil Moisture Prediction Using a Causal-Guided Deep Learning Model
The spatiotemporal prediction of RZSM refers to the process of estimating its future spatial distribution and temporal variations using predictive models. The accurate spatiotemporal predictions of soil moisture provide insights into future conditions, supporting decision making in applications, such as crop yield optimization, irrigation planning, and drought management. However, existing models face limitations in capturing complex spatiotemporal dependencies and dynamic causal interactions. This article proposes a spatiotemporal prediction framework that integrates causal inference with deep learning, termed the causal-guided spatiotemporal Swin transformer (Causal ST-SwinT). The model introduces a dynamic causal weight adjustment mechanism to adaptively optimize the causal relationship intensity between variables and adopts a hierarchical multilevel feature extraction strategy to effectively capture complex spatiotemporal dependencies, thereby enhancing prediction accuracy and model interpretability. The proposed method is validated on the ERA5 and soil moisture active passive (SMAP) datasets over the Tibetan Plateau and compared with multiple models. Experimental results show that Causal ST-SwinT significantly outperforms the classical convolutional long short-term memory model, reducing mean absolute error from 0.0146 to 0.0055 m3/m3 on the ERA5 dataset and from 0.0088 to 0.0046 m3/m3 on the SMAP dataset. Robustness analysis reveals that Causal ST-SwinT maintains high prediction accuracy under various environmental conditions. Ablation experiments further confirm the critical role of the causal attention module in improving model performance. These findings demonstrate that integrating causal knowledge with deep learning models effectively enhances the modeling capabilities of complex spatiotemporal systems, providing a novel solution for broader spatiotemporal prediction tasks.
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来源期刊
CiteScore
9.30
自引率
10.90%
发文量
563
审稿时长
4.7 months
期刊介绍: The IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing addresses the growing field of applications in Earth observations and remote sensing, and also provides a venue for the rapidly expanding special issues that are being sponsored by the IEEE Geosciences and Remote Sensing Society. The journal draws upon the experience of the highly successful “IEEE Transactions on Geoscience and Remote Sensing” and provide a complementary medium for the wide range of topics in applied earth observations. The ‘Applications’ areas encompasses the societal benefit areas of the Global Earth Observations Systems of Systems (GEOSS) program. Through deliberations over two years, ministers from 50 countries agreed to identify nine areas where Earth observation could positively impact the quality of life and health of their respective countries. Some of these are areas not traditionally addressed in the IEEE context. These include biodiversity, health and climate. Yet it is the skill sets of IEEE members, in areas such as observations, communications, computers, signal processing, standards and ocean engineering, that form the technical underpinnings of GEOSS. Thus, the Journal attracts a broad range of interests that serves both present members in new ways and expands the IEEE visibility into new areas.
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