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Comparison of two approaches for generation of daily rainfall data

机译:两种生成每日降雨量数据的方法的比较

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There has been extensive research on the problem of stochastically generating daily rainfall sequences for use in water management applications. Srikanthan and McMahon [Australia Water Resources Council, Canberra, 1985] proposed a transition probability matrix (TPM) model that performs better for Australian rainfall than many alternative models, particularly where long records (say 100 years) are available. Boughton [Report 99/9, CRC for Catchment Hydrology, Monash University, Melbourne, 21pp, 1999] incorporated an empirical adjustment into the TPM model that allows the model to reproduce the observed variability in the annual rainfall. More recently, Harrold et al. [Water Resour Res 39(10, 12): 1300, 1343, 2003a,b] proposed nonparametric models for the generation of daily rainfall occurrences and rainfall amounts on wet days. By conditioning on short, medium and long-term characteristics, this approach is also able to preserve the variability in annual rainfall. In this study, the above two approaches were used to generate daily rainfall data for Sydney and Melbourne, and the results evaluated. Both approaches preserved most of the daily, monthly and annual characteristics that were compared, with the nonparametric approach providing marginally better performance at the cost of greater model complexity. The nonparametric approach was also able to preserve the variability and persistence in the annual number of wet days.
机译:关于随机生成每日降雨序列以用于水管理应用的问题已有广泛研究。 Srikanthan和McMahon [澳大利亚水利委员会,堪培拉,1985年]提出了一种过渡概率矩阵(TPM)模型,该模型对澳大利亚的降雨比许多替代模型更有效,特别是在有较长记录(例如100年)的地方。 Boughton [第99/9号报告,莫纳什大学流域水文学委员会,墨尔本,1999年第21页]将经验调整纳入了TPM模型,该模型使该模型能够再现观测到的年降水量变化。最近,Harrold等人。 [Water Resour Res 39(10,12):1300,1343,2003a,b]提出了非参数模型,用于产生日降雨发生和湿日降雨量。通过以短期,中期和长期特征为条件,这种方法还能够保留年降雨量的变化性。在这项研究中,以上两种方法用于生成悉尼和墨尔本的每日降雨数据,并对结果进行评估。两种方法都保留了已比较的大多数每日,每月和年度特征,而非参数方法则以更大的模型复杂性为代价提供了略微更好的性能。非参数方法还能够保持每年湿天数的可变性和持久性。

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