利用声学层析成像和 3-D-RPS 算法加强水温遥感

Yixin Gao, Xinyi Xie, Danni Wei, Haocai Huang
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引用次数: 0

摘要

水温和水流动态遥感对水环境管理至关重要。海岸声断层扫描(CAT)是一种用于水下环境遥感的创新方法,它利用多条声道的双向传播时间来重建水下温度场。然而,传输实验容易受到台站漂移和行程时间提取不准确造成的数据噪声的影响。本研究提出了一种三维 Rousseeuw 相空间(3-D-RPS)阈值算法,用于去除 2020 年 9 月 16 日利用三套 CAT 系统从黄崖水库获取的旅行时间数据中的异常值。此外,这项工作还包括根据声道传播进行网格划分、计算声道长度和每个网格内的参考传输时间、构建稀疏矩阵、反演二维温度场及其相关反演误差。通过与温度深度(TD)传感器获得的数据进行比较,证实了所提方法的准确性和适用性。结果证明了这种方法的精确性和适用性。通过有效缓解站点漂移和提取精度问题的影响,该方法提供了可靠的温度场估算。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing remote sensing of water temperature using acoustic tomography and 3-D-RPS algorithm
Remote sensing of water temperature and flow dynamics is of paramount importance for water environment management. Coastal acoustic tomography (CAT), an innovative method for remote sensing in underwater environments, utilizes the dual-way travel time of multiple sound paths to reconstruct the underwater temperature field. However, the transmission experiments are susceptible to data noise caused by station drift and inaccuracies in travel time extraction. In this study, a three-dimensional Rousseeuw Phase-Space (3-D-RPS) thresholding algorithm is proposed to remove outliers in the travel time data obtained from Huangcai Reservoir using three CAT systems on September 16, 2020. Additionally, this work includes grid partitioning based on sound path propagation, calculation of sound path lengths, and reference transmission time within each grid, construction of a sparse matrix, and inversion of the two-dimensional temperature field and its associated inversion error. The accuracy and applicability of the proposed method are confirmed through a comparison with data obtained from temperature–depth (TD) sensors. The results demonstrate the precision and suitability of this approach. By effectively mitigating the impact of station drift and extraction accuracy issues, this method provides a reliable temperature field estimation.
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