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The utilization of tree-ring data to predict hydrologic properties of semi-arid watersheds near Tucson, Arizona.

机译:利用树木年轮数据预测亚利桑那州图森附近的半干旱流域的水文特性。

摘要

Four Douglas-fir chronologies were collected from the surrounding mountains of the Tucson Basin. These chronologies were checked first for their statistical characteristics such as standard deviation, mean sensitivity, and autocorrelation. Then, response functions were executed to discern the relationships of trees to the monthly average temperature and monthly total precipitation. The trees growing at the lower elevation of Santa Rita Mountains were found to best explain the variance of Tucson climate. Principal component analysis was used in this study as it has the advantage of transforming the data into uncorrelated variables. Tree-ring indices were first analyzed by this procedure and the outputs subjected to a stepwise multiple regression analysis with the runoff records of Sabino Creek Watershed, Rincon Creek Watershed, and Rillito Creek Watershed. The reconstructed runoff data were accomplished for a period of 313 years. The runoff variance explained by these tree-ring models were 35% for Sabino Creek, 64% for Rincon Creek, and 34% for Rillito Creek. In general the prediction of runoff data using tree-ring indices is considered adequate for the Tucson Basin.
机译:从图森盆地周围的山脉中收集了四种道格拉斯冷杉年代。首先检查这些年表的统计特征,例如标准差,平均灵敏度和自相关。然后,执行响应函数以识别树木与月平均温度和月总降水量的关系。发现在圣塔丽塔山低海拔生长的树木可以最好地解释图森气候的变化。本研究中使用了主成分分析,因为它具有将数据转换为不相关变量的优势。首先通过此程序分析树木年轮指数,并对输出进行逐步多元回归分析,并使用Sabino Creek流域,Rincon Creek流域和Rillito Creek流域的径流记录。重建的径流数据完成了313年。这些年轮模型解释的径流方差分别为:萨比诺溪(Sabino Creek)35%,林孔溪(Rincon Creek)64%,里利托溪(Rillito Creek)34%。通常,对于图森盆地,使用树环指数的径流数据预测被认为是足够的。

著录项

  • 作者

    Yu John Kuo-an1944-;

  • 作者单位
  • 年度 1974
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
  • 中图分类

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