伽马和特威迪复合响应的广义线性模型在楠榜省降雨预测中的比较

Ma’rufah Hayati, R. Permatasari
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引用次数: 0

摘要

降雨量对楠榜省的农业生产起着举足轻重的影响。降雨预测的精确性对提高该地区的农业产量具有重要意义。建立降雨模型的一种有效方法是统计降尺度(SD),它采用统计模型来研究大尺度(全球)气候数据与小尺度(地方)数据之间的相关性。统计降尺度解决了全球尺度数据(如大气环流模型)的局限性,因为全球尺度数据缺乏分辨率,无法直接预报降雨等局部气候条件。降雨可大致分为连续和离散两部分。连续成分描述降雨强度,离散成分描述降雨发生情况。这两种成分对于准确预测降雨量都不可或缺。混合 Tweedie 分布结合了伽马分布和泊松分布,能够很好地处理降雨的连续和离散成分。在 SD 建模中,GCM 通常会遇到多重共线性问题,这可以通过主成分分析来缓解。本研究试图比较两种回归模型:具有伽马响应的广义线性模型和 Tweedie 复合响应。研究采用了楠榜省三个不同地区的降雨量数据,分别代表高地、中地和低地。研究结果表明,在高地和低地,Tweedie 复合响应的预测均方根误差(RMSEP)比 gamma 小。相反,在中等地形中,伽马-地形模型的预测均方根误差值要小于特威迪复合模型。因此,Tweedie 复合模式的分布比伽马-GLM 模式更适合使用,特别是在高地和低洼地区。
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Comparison of Generalized Linear Model between Gamma and Tweedie Compound Response for Rainfall Prediction in Lampung Province
Rainfall plays a pivotal role in influencing agricultural production in Lampung province. The precision of rainfall predictions holds significant importance for enhancing agricultural yields in the region. One effective approach for modeling rainfall is Statistical Downscaling (SD), which employs statistical models to examine the correlation between large-scale (global) climatological data and small-scale (local) data. SD addresses the limitation of global scale data, such as the General Circulation Model (GCM), which lacks the resolution to directly forecast localized climate conditions like rainfall. Rainfall can be broadly categorized into continuous and discrete components. The continuous component delineates the intensity of rainfall, while the discrete component describes the occurrence of rain. Both components are integral to accurate rainfall predictions. The mixed Tweedie distribution, combining Gamma and Poisson distributions, is proficient in handling both continuous and discrete components of rainfall. GCMs commonly encounter multicollinearity issues in SD modeling, which can be mitigated through Principal Component Analysis. This study seeks to compare two regression models: the generalized linear model with a gamma response and the Tweedie compound response. Rainfall data from three distinct regions in Lampung province, representing high, medium, and lowlands, is utilized. The research findings indicate that, for high and lowlands, the Tweedie compound exhibits a smaller Root Mean Square Error of Prediction (RMSEP) compared to gamma. Conversely, in medium lands, gamma-GLM demonstrates a smaller RMSEP value than the Tweedie compound. Thus, the distribution of the Tweedie compound is better suited for use than Gamma-GLM, especially for high and lowland areas.
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