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  • CN 62-1070/P
  • ISSN 1000-694X
  • 双月刊 创刊于1981年
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天气与气候

基于极限学习机的干旱区潜在蒸发量模拟

  • 王婷婷 ,
  • 冯起 ,
  • 温小虎 ,
  • 郭小燕
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  • 1. 中国科学院西北生态环境资源研究院 内陆河流域生态水文重点实验室, 甘肃 兰州 730000;
    2. 兰州交通大学 经济管理学院, 甘肃 兰州 730070;
    3. 中国科学院大学, 北京 100049
王婷婷(1980-),女,甘肃古浪人,博士研究生,研究方向为生态经济学。E-mail:wtingting1028@163.com

收稿日期: 2017-06-15

  修回日期: 2017-09-20

  网络出版日期: 2017-11-20

基金资助

国家重点研发计划项目(2017YFC0404305);中国科学院前沿科学重点研究项目(QYZDJ-SSW-DQC031);国家自然科学基金项目(41601029)

Numerical Simulation of Evaporation of Arid Region Based on Extreme Learning Machine

  • Wang Tingting ,
  • Feng Qi ,
  • Wen Xiaohu ,
  • Guo Xiaoyan
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  • 1. Key Laboratory of Ecohydrology of Inland River Basin, Northwest Institute of Eco-Environment and Resources, Chinese Academy of Sciences, Lanzhou 730000, China;
    2. School of Economics & Management, Lanzhou Jiaotong University, Lanzhou 730000, China;
    3. University of Chinese Academy of Sciences, Beijing 100049, China

Received date: 2017-06-15

  Revised date: 2017-09-20

  Online published: 2017-11-20

摘要

准确地模拟干旱区潜在蒸发量,对区域水资源的合理开发利用与生态环境保护具有十分重要的意义。以极限学习机(ELM)模型为基础,以古浪河流域的乌鞘岭、古浪两个典型气象观测站点为对象,将气象因子的不同组合作为输入参数,构建了适合当地的潜在蒸发量模型。利用构建的模型对乌鞘岭、古浪气象观测站点的月潜在蒸发量进行了模拟,将模拟结果与支持向量机(SVM)模型模拟结果进行了对比,发现ELM模型在干旱区月潜在蒸发量模拟中有更好的适用性,可为干旱地区潜在蒸发量的估算提供新方法和思路,是资料有限条件下潜在蒸发估算的有效方法。

本文引用格式

王婷婷 , 冯起 , 温小虎 , 郭小燕 . 基于极限学习机的干旱区潜在蒸发量模拟[J]. 中国沙漠, 2017 , 37(6) : 1219 -1226 . DOI: 10.7522/j.issn.1000-694X.2017.00097

Abstract

The simulated accurately evaporation at the arid regions was essential to rationally develop and utilize water resources and the ecosystem protection. The meteorological data at Wushaoling and Gulang weather stations in Shiyang River Basin were used in this study. Based on the extreme learning machine (ELM) model, the varying combination of meteorological factors were inputted to the model. An evaporation model also was established to simulate monthly evaporation at the two weather stations, and the results were compared with support vector machine (SVM) model to evaluate the simulation ability of ELM model. Our study demonstrated that the ELM model had better applicability in simulating monthly evaporation at arid regions. It can provide a new method and idea for calculating evaporation, and it is a desirable and effective method to calculate evaporation at the arid regions with insufficient data.

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