Dong Hyun Kim, H. Yoo, Young Jun Bang, Seung Oh Lee
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Because the target range of the coast is wide, the calculation speed of numerical simulation is slow, and a considerable amount of time is required for inundation prediction. It is practically difficult to predict a disaster such as torrential rain in a short period of time. Therefore, in this paper, by using the SIND model, a scientific interpolation model proposed by Kim et al. (2018), the ability to predict the inundation of coastal cities was reviewed and the method of using the model was presented. The SIND model is a short-term prediction model of urban inundation for a desired scenario within the range by using a pre-established inundation forecast map, and can be used for short-term inundation prediction such as torrential rain. To examine the applicability, the accuracy of the flood hazard map derived from the SIND model for coastal cities was analyzed. As a result, it was confirmed that the shape similarity suggested by Kim et al. 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引用次数: 0
摘要
由于气候异常,洪涝灾害正在增加。特别是在沿海城市,需要同时考虑风暴潮、海啸等海洋灾害造成的淹没和城市化造成的淹没。为了应对沿海城市的灾害,必须先行进行洪水预测。在韩国,灾害的强度根据发生的频率进行了分类,并制作了相应的洪水灾害地图。地图一般是通过数值模拟得出的,而数值模拟是基于场景的,因此存在很多不确定性,在没有建立场景的情况下很难预测灾难。由于海岸的目标范围较宽,数值模拟的计算速度较慢,洪水预测需要相当长的时间。在短时间内预测像暴雨这样的灾难实际上是困难的。因此,本文利用Kim et al.(2018)提出的科学插值模型SIND模型,对沿海城市洪水的预测能力进行了综述,并介绍了该模型的使用方法。SIND模型是利用预先建立的洪水预报图,在一定范围内对期望情景的城市洪水进行短期预测的模型,可用于暴雨等短期洪水预测。为验证该模型的适用性,对SIND模型绘制的沿海城市洪涝灾害图进行了精度分析。因此,确认Kim et al.(2019)提出的形状相似度约为0.7或更高,并在形状相似度方面判断为合适。如果用于模型验证的形状相似技术得到改进,以适应城市洪水特征,预计SIND模型的使用将会增加。
Application of SIND model for the Prediction of Flooding in Coastal Cities
Flooding damage is increasing due to abnormal climates. In particular, in the case of coastal cities, it is necessary to simultaneously consider inundation caused by marine disasters such as storm surge and tsunami as well as inundation due to urbanization. In order to respond to disasters in coastal cities, flood prediction must be preceded. In Korea, the intensity of disasters has been classified by frequency, and flood hazard maps have been produced accordingly. The map is generally derived through numerical simulation, which is based on a scenario, so there is a lot of uncertainty, and it is difficult to predict a disaster for which a scenario has not been established. Because the target range of the coast is wide, the calculation speed of numerical simulation is slow, and a considerable amount of time is required for inundation prediction. It is practically difficult to predict a disaster such as torrential rain in a short period of time. Therefore, in this paper, by using the SIND model, a scientific interpolation model proposed by Kim et al. (2018), the ability to predict the inundation of coastal cities was reviewed and the method of using the model was presented. The SIND model is a short-term prediction model of urban inundation for a desired scenario within the range by using a pre-established inundation forecast map, and can be used for short-term inundation prediction such as torrential rain. To examine the applicability, the accuracy of the flood hazard map derived from the SIND model for coastal cities was analyzed. As a result, it was confirmed that the shape similarity suggested by Kim et al. (2019) was about 0.7 or higher, and it was judged to be appropriate in terms of shape similarity. If the shape similarity technique used for model validation is improved to suit the urban flooding characteristics, the use of the SIND model is expected to increase.