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Assessment of Short Term Rainfall and Stream Flows in South Australia

机译:南澳大利亚的短期降雨和溪流流量评估

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The aim of this study is to assess the relationship between rainfall and stream flow at Broughton River in Mooroola, Torrance River in Mount Pleasant, and Wakefield River near Rhyine, in South Australia, from 1990 to 2010. Initially, we present a short term relationship between rainfall and stream flow, in terms of correlations, lagged correlations, and estimated variability between wavelet coefficients at each level. A deterministic regression based response model is used to detect linear, quadratic and polynomial trends, while allowing for seasonality effects. Antecedent rainfall data were considered to predict stream flow. The best fitting model was selected based on maximum adjusted R2 values ( R a d j 2 ), minimum sigma square (σ2), and a minimum Akaike Information Criterion (AIC). The best performance in the response model is lag rainfall, which indicates at least one day and up to 7 days (past) difference in rainfall, including offset cross products of lag rainfall. With the inclusion of antecedent stream flow as an input with one day time lag, the result shows a significant improvement of the R a d j 2 values from 0.18, 0.26 and 0.14 to 0.35, 0.42 and 0.21 at Broughton River, Torrance River and Wakefield River, respectively. A benchmark comparison was made with an Artificial Neural Network analysis. The optimization strategy involved adopting a minimum mean absolute error (MAE).
机译:这项研究的目的是评估1990年至2010年之间Mooroola的Broughton河,Mount Pleasant的Torrance河和南澳大利亚Rhyine附近的Wakefield河的降雨与流量之间的关系。最初,我们提出一个短期关系在相关性,滞后相关性以及每个级别的小波系数之间的估计变异性方面,降雨和溪流之间的关系。基于确定性回归的响应模型用于检测线性,二次和多项式趋势,同时考虑季节性影响。前期降雨数据被认为可以预测河流流量。根据最大调整后的R 2 值(R adj 2),最小sigma平方(σ 2 )和最小的Akaike信息准则(AIC)选择最佳拟合模型。响应模型中的最佳性能是滞后降雨,它表示至少一天和最多7天(过去)的降雨差异,包括滞后降雨的抵消叉积。加上前一天的滞后流量作为输入,结果表明,布劳顿河,托伦斯河和韦克菲尔德河的R adj 2值从0.18、0.26和0.14显着提高到0.35、0.42和0.21,分别。使用人工神经网络分析进行基准比较。优化策略包括采用最小平均绝对误差(MAE)。

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