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Monthly precipitation assessments in association with atmospheric circulation indices by using tree-based models

机译:通过使用基于树的模型与大气流通指标结合的每月降水量评估

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摘要

The Urmia Lake basin is one of the most important basins in Iran, facing many problems due to poor water management and rainfall reduction. Under current circumstances, it becomes critical to have an advanced understanding of rainfall patterns in the basin, setting the motivation of this study. In this research, the mean monthly meteorological data of six synoptic stations of Urmia Lake basin were used (including relative humidity, temperature, minimum-maximum temperature and pressure) and large-scale atmospheric circulation indices (Southern Oscillation Index, North Atlantic Oscillation, Western Mediterranean Oscillation, Mediterranean Oscillation-Gibraltar/Israel and Mediterranean Oscillation-Algiers/Cairo) and sea surface temperatures of the Mediterranean, Black, Caspian, Red seas and Persian Gulf in the period 1988-2016. Various combinations of these variables used as input to the M5 tree and random forest models were selected by Relief algorithm for each month in three scenarios including atmospheric circulation indices, meteorological variables and combination of both. After the implementation of two models with three different scenarios, the evaluation criteria including correlation coefficient (R), mean absolute error and root-mean-square error were calculated and the Taylor diagram for each model was plotted. Our results showed that the M5 tree model performed superior in January, February, March, April, June, September, November and December, while the random forest model did in the remaining months. In addition, the indications of this study showed that the combination of atmospheric circulation indices and meteorological variables used as input to the models mostly constituted improved results.
机译:Urmia Lake Bourin是伊朗最重要的盆地之一,由于水管理不佳和降雨降雨,面临着许多问题。根据目前的情况,对盆地的降雨模式进行高度了解,确定这项研究的动机至关重要。在这项研究中,使用了荨麻湖盆地六个天气站的平均月气象数据(包括相对湿度,温度,最高温度和压力)和大规模的大气循环指数(南方振荡指数,北大西洋振荡,西部地中海振荡,地中海振荡 - 直布罗陀/以色列和地中海振荡 - 阿尔及尔/开罗地中海,黑色,海参,红海和波斯湾海景,在1988 - 2016年期间。这些变量的各种组合用作M5树和随机林模型的输入,每个月都是在三种场景中的累积算法选择,包括大气循环指数,气象变量和两者的组合。在实现具有三种不同场景的两个模型之后,计算包括相关系数(R),平均绝对误差和根均方误差的评估标准,并绘制了每个模型的泰勒图。我们的研究结果表明,M5树模型在1月,2月,3月,4月,6月,9月,9月,11月和12月进行了较强的,而随机森林模式在其余几个月内。此外,本研究的适应症表明,用作模型的输入的大气循环指数和气象变量的组合主要是构成了改进的结果。

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