Rapid Bathymetry Mapping Based on Shallow Water Cloud Computing in Small Bay Waters: Pilot Project in Pacitan-Indonesia

Q3 Economics, Econometrics and Finance
N. Khakhim, Agung Kurniawan, P. Wicaksono, Ahmad Hasrul
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Abstract

Mapping coastal areas generally requires large data constellations in time series and requires analysis using complex mathematical and modeling approaches. In shallow-water bathymetric mapping, remote sensing plays an important role in supporting conventional bathymetric mapping, especially in areas that are difficult to access. This method called Satellite Derived Bathymetry (SDB). The cloud computing approach is a solution for mapping shallow water bathymetry rapid and effectively. This study using Google Earth Engine (GEE) to compute remote sensing data for produce near-shore bathymetry. The method of Li et al. (2021) performs bathymetric extraction without using depth samples but uses chlorophyll-A as input for depth extraction parameter calculations. This study examines a small bay in the waters of Pacitan, Anakan Bay, and the waters of Kemujan Island in the Karimunjawa Islands. Within this study area, significant differences in resulting depth are very limited, ranging from 0 to -17.8. The developed model, based on the algorithm proposed by Li et al. (2021), is estimated to be able to provide accurate predictions of up to around 90% in the waters studied, with a root mean error rate (RMSE) of 1.1 meters.
基于浅水云计算的小海湾水域快速水深测绘:印尼帕西坦试点项目
沿岸地区的测绘一般需要大量的时间序列数据群,并需要用复杂的数学和建模方法 进行分析。在浅水测深制图中,遥感在支持传统测深制图方面发挥着重要作用,特别是在难以进入的地区。这种方法称为卫星衍生测深法(SDB)。云计算方法是快速有效绘制浅水测深图的一种解决方案。本研究使用谷歌地球引擎(GEE)计算遥感数据,以生成近岸水深测量数据。Li 等人(2021 年)的方法是在不使用深度样本的情况下进行水深提取,但使用叶绿素-A 作为深度提取参数计算的输入。本研究考察了卡里蒙查瓦岛帕奇坦海域的一个小海湾、阿纳坎湾和凯穆扬岛海域。在该研究区域内,结果深度的显著差异非常有限,从 0 到 -17.8。根据 Li 等人(2021 年)提出的算法开发的模型,估计能够在所研究的水域提供高达约 90% 的准确预测,均方根误差率 (RMSE) 为 1.1 米。
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来源期刊
Journal of Environmental Management and Tourism
Journal of Environmental Management and Tourism Economics, Econometrics and Finance-Economics and Econometrics
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期刊介绍: Journal of Environmental Management and Tourism is an interdisciplinary research journal, aimed to publish articles and original research papers that should contribute to the development of both experimental and theoretical nature in the field of Environmental Management and Tourism Sciences. Journal will publish original research and seeks to cover a wide range of topics regarding environmental management and engineering, environmental management and health, environmental chemistry, environmental protection technologies (water, air, soil), pollution reduction at source and waste minimization, energy and environment, modeling, simulation and optimization for environmental protection; environmental biotechnology, environmental education and sustainable development, environmental strategies and policies, etc. This topic may include the fields indicated above, but are not limited to these. Authors are encouraged to submit high quality, original works that discuss the latest developments in environmental management research and application with the certain scope to share experiences and research findings and to stimulate more ideas and useful insights regarding current best-practices and future directions in Environmental Management.
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