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Logit-normal mixed model for Indian monsoon precipitation

机译:印度季风降水的对数-正态混合模型

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摘要

Describing the nature and variability of Indian monsoon precipitation is a topic of much debate in the current literature. We suggest the use of a generalized linear mixed model (GLMM), specifically, the logit-normal mixed model, to describe the underlying structure of this complex climatic event. Four GLMM algorithms are described and simulations are performed to vet these algorithms before applying them to the Indian precipitation data. The logit-normal model was applied to light, moderate, and extreme rainfall. Findings indicated that physical constructs were preserved by the models, and random effects were significant in many cases. We also found GLMM estimation methods were sensitive to tuning parameters and assumptions and therefore, recommend use of multiple methods in applications. This work provides a novel use of GLMM and promotes its addition to the gamut of tools for analysis in studying climate phenomena.
机译:描述印度季风降水的性质和变化是当前文献中很多争论的话题。我们建议使用广义线性混合模型(GLMM),特别是对数-正态混合模型来描述此复杂气候事件的基本结构。描述了四种GLMM算法,并进行了模拟以审查这些算法,然后将其应用于印度降水数据。对数正态模型适用于轻度,中度和极端降雨。结果表明,模型保留了物理构造,并且在许多情况下随机效应是显着的。我们还发现GLMM估计方法对调整参数和假设很敏感,因此建议在应用程序中使用多种方法。这项工作为GLMM提供了一种新颖的用法,并促进了GLMM在研究气候现象分析工具范围内的添加。

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