基于高分辨率卫星影像的阿米尔-阿巴德港沿海地区沉积动态变化分析

IF 3.8 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY Journal of Imaging Pub Date : 2025-03-18 DOI:10.3390/jimaging11030086
Ali Sam-Khaniani, Giacomo Viccione, Meisam Qorbani Fouladi, Rahman Hesabi-Fard
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引用次数: 0

摘要

泥沙输运和岸线变化引起的岸线形态动力学演化是反映海岸构造运行连续性的重要指标。为了减少与泥沙运输建模工具相关的计算成本,本文提出了一种基于图像分类支持向量机和训练神经网络相结合的新方法来推断海岸演变。目前的研究主要集中在阿米尔-阿巴德港的沿海地区,使用高分辨率卫星图像。分析了2004年至2023年研究区域的实际情况,目的是调查港口盆地的海岸面积、海岸线位置和沉积物外观的变化。测量结果表明,沉积物的累积量每年增加约49000平方米。部分岸岸泥沙负荷也被截留并沉积在港盆内,影响港口的正常运行。随后,利用卫星图像定量分析海岸线变化。一个神经网络被训练来预测水库被填满的剩余时间(不到十年),水库位于碎石丘防波堤西臂的后面。如果不采取措施防止沉积物积聚,海港公用设施将不再提供服务。
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Analysis of Dynamic Changes in Sedimentation in the Coastal Area of Amir-Abad Port Using High-Resolution Satellite Images.

Sediment transport and shoreline changes causing shoreline morphodynamic evolution are key indicators of a coastal structure's operational continuity. To reduce the computational costs associated with sediment transport modelling tools, a novel procedure based on the combination of a support vector machine for image classification and a trained neural network to extrapolate the shore evolution is presented here. The current study focuses on the coastal area over the Amir-Abad port, using high-resolution satellite images. The real conditions of the study domain between 2004 and 2023 are analysed, with the aim of investigating changes in the shore area, shoreline position, and sediment appearance in the harbour basin. The measurements show that sediment accumulation increases by approximately 49,000 m2/y. A portion of the longshore sediment load is also trapped and deposited in the harbour basin, disrupting the normal operation of the port. Afterwards, satellite images were used to quantitatively analyse shoreline changes. A neural network is trained to predict the remaining time until the reservoir is filled (less than a decade), which is behind the west arm of the rubble-mound breakwaters. Harbour utility services will no longer be offered if actions are not taken to prevent sediment accumulation.

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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
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