海床
丰度(生态学)
声纳
水深测量
地质学
水下
遥控水下航行器
遥控车辆
丰度估计
深海
遥感
海洋学
环境科学
计算机科学
渔业
人工智能
机器人
生物
移动机器人
作者
Liang Jie Wong,Bharath Kalyan,Mandar Chitre,Hari Vishnu
标识
DOI:10.1109/joe.2020.2967108
摘要
Polymetallic nodules (PMN) are potato-sized concretions containing metals, such as manganese, copper, nickel, cobalt, and rare earth elements, and are a potential valuable resource of minerals. They occur in high abundance and are unevenly distributed across the Clarion Clipperton Fracture Zone. Existing PMN abundance estimation methods using box corers, and manual assessment through seabed photographs are labor and time intensive, and can only survey small sections of seabed at a time. Compared to an underwater camera, acoustic sensors are able to survey the PMN abundance across larger tracts of seabed at a time. In this article, we present a method for PMN abundance assessment using heterogeneous acoustic data, which is a combination of bathymetry information and sidescan sonar measurements of seabed backscatter. We achieve this using an artificial neural network model that classifies a given region into a low or high PMN density region using these features. Our model will enable faster estimation of PMN abundance for future deep seabed site surveys without the need for underwater cameras. To date, our proposed method yields an average accuracy of 85.36% on a testing data set, demonstrating our method's effectiveness in estimating PMN abundance.
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