使用确定性、地理空间和机器学习技术确定印度东北部的年降雨量

IF 1.5 4区 环境科学与生态学 Q4 WATER RESOURCES
Water Policy Pub Date : 2023-11-11 DOI:10.2166/wp.2023.078
Shivam Agarwal, Disha Mukherjee, Nilotpal Debbarma
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引用次数: 0

摘要

利用逆距离加权(IDW)方法的确定性插值技术、普通克里格(OK)地理空间插值技术和广义加性模型(GAM)的机器学习预测技术对印度东北部阿萨姆邦、梅加拉亚邦、那加兰邦、曼尼普尔邦、米佐拉姆邦和特里普拉邦6个邦的极端年降雨量进行了分析。GAM仅用于预测,因此结果随后由OK进行插值以创建雨量图。本研究考虑的数据集是由171点卫星降雨组成的训练数据集和由33点地面雨量计数据组成的测试数据集,用于验证前者。还对训练+测试的组合数据集进行了插值和映射,以比较每种技术的视觉准确性。可以看出,OK是一种比IDW更优越、更现实的插值技术,因为它考虑了每个站点的高度以及经纬度,而IDW只在x-y平面上插值,不依赖于高度。当使用OK映射通过GAM的训练数据集的预测时,它显示出几乎平行的轮廓,这对于像下雨这样的自然现象是不希望的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Determination of annual rainfall in north-east India using deterministic, geospatial, and machine learning techniques
Abstract Analysis of extreme annual rainfall in the six north-east Indian states of Assam, Meghalaya, Nagaland, Manipur, Mizoram, and Tripura using the deterministic interpolation technique of inverse distance weighting (IDW) method, the geospatial interpolation technique of Ordinary Kriging (OK) and the machine learning prediction technique of generalised additive model (GAM). GAM is used only for prediction and hence the results are then subsequently interpolated by OK to create the rainfall maps. The datasets considered for this study are a training dataset of 171 points which consisted of satellite rainfall and a testing dataset with ground rain gauge data of 33 points which was used for validation of the former. A combined dataset of training + testing was also interpolated and mapped to compare for visual accuracy of each technique. It was seen that OK was a superior and a much more realistic interpolation technique than IDW, since it took the altitude of each site into consideration along with latitude and longitude, unlike IDW, which only interpolated over the x–y plane and didn't rely on altitude. When the predictions of the training dataset through GAM was mapped using OK, it showed almost parallel contours, which is undesirable for natural phenomenon like rain.
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来源期刊
Water Policy
Water Policy 环境科学-水资源
CiteScore
3.10
自引率
12.50%
发文量
81
审稿时长
6-12 weeks
期刊介绍: Water Policy will publish reviews, research papers and progress reports in, among others, the following areas: financial, diplomatic, organizational, legal, administrative and research; organized by country, region or river basin. Water Policy also publishes reviews of books and grey literature.
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