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Spatiotemporal monthly rainfall forecasts for south-eastern and eastern Australia using climatic indices

机译:利用气候指数预测澳大利亚东南部和东部的时空月降雨量

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摘要

Knowledge about future rainfall is important for agriculture management and planning in arid and semi-arid regions. Australia has complex variations in rainfall patterns in time and space, arising from the combination of the geographic structure and the dual effects of Indian and Pacific Ocean. This study aims to develop a forecasting model of spatiotemporal monthly rainfall totals using lagged climate indices and historical rainfall data from 1950-2011 for south-eastern and eastern Australia. Data were obtained from the Australian Bureau of Meteorology (BoM) from 136 high-quality weather stations. To reduce spatial complexity, climate regionalization was used to divide the stations in homogenous sub-regions based on similarity of rainfall patterns and intensity using principal component analysis (PCA) and K-means clustering. Subsequently, a fuzzy ranking algorithm (FRA) was applied to the lagged climatic predictors and monthly rainfall in each sub-region to identify the best predictors. Selected predictors by FRA were found to vary by sub-region. After these two stages of pre-processing, an artificial neural network (ANN) model was developed and optimized separately for each sub-region and the entire area. The results indicate that climate regionalization can improve a monthly spatiotemporal rainfall forecast model. The location and number of sub-regions were important for ranking predictors and modeling. This further suggests that the impact of climate variables on Australian rainfall is more variable in both time and space than indicated thus far.
机译:有关未来降雨的知识对于干旱和半干旱地区的农业管理和规划很重要。由于地理结构以及印度洋和太平洋的双重影响,澳大利亚的时空降雨格局具有复杂的变化。这项研究旨在利用滞后的气候指数和1950-2011年澳大利亚东南部和东部的历史降雨数据建立时空每月降雨总量的预测模型。数据是从澳大利亚气象局(BoM)的136个高质量气象站获得的。为了降低空间复杂性,使用气候区域化方法,使用主成分分析(PCA)和K-均值聚类,根据降雨模式和强度的相似性,将站划分为同一个子区域。随后,将模糊排序算法(FRA)应用于滞后的气候预测因子和每个子区域的月降雨量,以识别最佳预测因子。发现FRA选定的预测变量随子区域的不同而不同。经过这两个预处理阶段后,针对每个子区域和整个区域分别开发和优化了人工神经网络(ANN)模型。结果表明,气候分区可以改善月度时空降雨预报模型。子区域的位置和数量对于对预测变量和模型进行排名很重要。这进一步表明,气候变量对澳大利亚降雨的影响在时间和空间上都比迄今为止表明的多。

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  • 来源
    《Theoretical and applied climatology》 |2016年第4期|1045-1063|共19页
  • 作者单位

    Univ Sydney, Fac Agr & Environm, Dept Environm Sci, Sydney, NSW 2006, Australia;

    Univ Sydney, Fac Agr & Environm, Dept Environm Sci, Sydney, NSW 2006, Australia;

    Univ Sydney, Fac Agr & Environm, Dept Environm Sci, Sydney, NSW 2006, Australia;

    Univ Sydney, Fac Agr & Environm, Dept Environm Sci, Sydney, NSW 2006, Australia;

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