时空农业气象变量建模的多变量方法

IF 1.5 3区 环境科学与生态学 Q4 ENVIRONMENTAL SCIENCES
Environmetrics Pub Date : 2025-02-04 DOI:10.1002/env.2891
Sandra De Iaco, Claudia Cappello, Monica Palma, Klaus Nordhausen
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引用次数: 0

摘要

农业气象研究面临的主要问题之一涉及测量和模拟不同环境变量随时间的演变;这通常需要一个密集的监控网络。时空地统计学有潜力提供估算时空多重协方差函数的技术和工具,并定义能够可靠预测的适当的多变量相关函数。提出了一种基于经验协方差矩阵联合对角化的时空多元地统计建模方法。考虑减少不相关变量的数量(低于观测到的变量的数量)并单独模拟这些不相关成分的时空演变的可能性,代表了多变量建模的实质性简化。对蒸散发、最小和最大湿度、最高温度和降水等5个相关农业气象变量的矩阵协方差函数进行拟合,建立了具有相应潜在分量参数模型的时空线性共区划模型(ST-LCM)。通过对时空分量的对称性、可分性、不可分性等特征的评价,重点分析了如何识别时空分量并选择相应的模型。这项多变量研究的预测结果将对农业,特别是应对干旱紧急情况感兴趣。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A Multivariate Approach for Modeling Spatio-Temporal Agrometeorological Variables

A Multivariate Approach for Modeling Spatio-Temporal Agrometeorological Variables

One of the main issues facing agrometeorological studies involves measuring and modeling the evolution of different environmental variables over time; this often requires a dense monitoring network. Spatio-temporal geostatistics has the potential to provide techniques and tools to estimate the spatio-temporal multiple covariance function and define an appropriate multivariate correlation function capable of reliable predictions. This paper presents a spatio-temporal multivariate geostatistical modeling approach based on the joint diagonalization of the empirical covariance matrix evaluated at different spatio-temporal lags. The possibility to consider a reduced number of uncorrelated variables (lower than the number of observed variables) and separately model the spatio-temporal evolution of these uncorrelated components represents a substantial simplification for multivariate modeling. A space–time linear coregionalization model (ST-LCM) with appropriate parametric models for the latent components was fitted to the matrix-valued covariance function estimated for five relevant agrometeorological variables, including evapotranspiration, minimum and maximum humidity, maximum temperature, and precipitation. The analyses highlight how to identify space–time components and choose the corresponding model by evaluating some characteristics of these components, such as symmetry, separability, and type of non-separability. The predictive results of this multivariate study will be of interest for agriculture, in particular for addressing drought emergencies.

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来源期刊
Environmetrics
Environmetrics 环境科学-环境科学
CiteScore
2.90
自引率
17.60%
发文量
67
审稿时长
18-36 weeks
期刊介绍: Environmetrics, the official journal of The International Environmetrics Society (TIES), an Association of the International Statistical Institute, is devoted to the dissemination of high-quality quantitative research in the environmental sciences. The journal welcomes pertinent and innovative submissions from quantitative disciplines developing new statistical and mathematical techniques, methods, and theories that solve modern environmental problems. Articles must proffer substantive, new statistical or mathematical advances to answer important scientific questions in the environmental sciences, or must develop novel or enhanced statistical methodology with clear applications to environmental science. New methods should be illustrated with recent environmental data.
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