Drought evaluation using unstructured data: a case study for Boryeong area

Jinhong Jung
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引用次数: 1

Abstract

Drought is caused by a combination of various hydrological or meteorological factor, so it is difficult to accurately assess drought event, but various drought indices have been developed to interpret them quantitatively. However, the drought indexes currently being used are calculated from the lack of a single variable, which is a problem that does not accurately determine the drought event caused by complex causes. Shortage of a single variable may not be a drought, but it is judged to be a drought. On the other hand, research on developing indices using unstructured data, which is widely used in big data analysis, is being carried out in other fields and proven to be superior. Therefore, in this study, we intend to calculate the drought index by combining unstructured data (news data) with weather and hydrologic information (rainfall and dam inflow) that are being used for the existing drought index, and to evaluate the utilization of drought interpretation through verification of the calculated drought index. The Clayton Copula function was used to calculate the joint drought index, and the parameter estimation was used by the calibration method. The analysis showed that the drought index, which combines unstructured data, properly expresses the drought period compared to the existing drought index (SPI, SDI). In addition, ROC scores were calculated higher than existing drought indices, making them more useful in drought interpretation. The joint drought index calculated in this study is considered highly useful in that it complements the analytical limits of the existing single variable drought index and provides excellent utilization of the drought index using unstructured data.
使用非结构化数据进行干旱评价:保宁地区的案例研究
干旱是多种水文或气象因素共同作用的结果,因此很难对干旱事件进行准确的评估,但人们开发了各种干旱指数来定量解释干旱事件。然而,目前使用的干旱指数是在缺乏单一变量的情况下计算出来的,这是一个不能准确确定复杂原因引起的干旱事件的问题。单个变量的短缺可能不是干旱,但它被判断为干旱。另一方面,利用大数据分析中广泛使用的非结构化数据开发指数的研究正在其他领域开展,并被证明具有优势。因此,在本研究中,我们打算将非结构化数据(新闻数据)与用于现有干旱指数的天气和水文信息(降雨和大坝入库)相结合来计算干旱指数,并通过计算的干旱指数的验证来评估干旱解释的利用。采用Clayton Copula函数计算联合干旱指数,采用定标法进行参数估计。分析表明,与现有的干旱指数(SPI、SDI)相比,结合非结构化数据的干旱指数能更好地表达干旱期。此外,ROC评分的计算值高于现有的干旱指数,使其在干旱解释中更有用。本研究计算的联合干旱指数补充了现有单变量干旱指数的分析局限性,并提供了对干旱指数使用非结构化数据的良好利用,具有很高的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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