浅海环境机器人测量员

IF 3.2 4区 地球科学 Q1 OCEANOGRAPHY
S. Ackleson
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引用次数: 0

摘要

全球气候变暖的心理后果。海洋变暖、海平面上升以及沿海风暴频率和强度的增加,给沿海环境带来了历史上不那么频繁和不那么严重的压力。与此同时,预计到本世纪中叶,沿海100公里范围内的人口将增加近一倍,这将增加包括渔业和娱乐在内的各种海洋服务的压力。浅水环境是健康沿海生态系统的关键组成部分,因为它们为鱼类和甲壳类动物提供了觅食场所和苗圃,并起到缓冲沿海风暴对邻近陆地地区的影响的作用。但它们也容易迅速降解,因为应力分布在压缩的水体积内。为了应对这些挑战,政策制定者和自然资源管理者越来越依赖更准确和及时的环境数据。过去二十年来,机器人和传感器技术的发展已经产生了海洋观测系统,可以在时空尺度和环境条件下自主监测和调查水柱特性,这超出了涉及船舶和潜水员的传统人工操作的可能性(Chai et al., 2020)。最近,新的系统概念为浅水环境提供了更完整的环境描述,包括水质和海底的形状和组成。2017年,美国海军研究实验室(NRL)开始开发支持浅海环境遥感的机器人测量方法(Ackleson et al., 2017)。最初的方法是使用一种改良的,
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robotic Surveyors for Shallow Coastal Environments
mental consequences of a warming global climate. Ocean heating, rising sea level, and increasing coastal storm frequency and intensity are imposing stresses on coastal environments that historically were less frequent and less severe. At the same time, human population within 100 km of the coast is projected to nearly double by mid-century, increasing pressure on a variety of marine services including fisheries and recreation. Shallow water environments are key components of healthy coastal ecosystems as they provide feeding grounds and nurseries for fish and crustaceans and act to buffer the impacts of coastal storms on adjacent land areas. But they are also susceptible to rapid degradation because stresses are distributed within a compressed water volume. To address these challenges, policymakers and natural resource managers increasingly rely on more accurate and timely environmental data. The past two decades of robotic and sensor technology development have resulted in ocean observing systems that can monitor and survey water column properties autonomously at temporal and spatial scales and in environmental conditions that exceed what is possible with traditional human-based operations involving ships and divers (Chai et al., 2020). Most recently, new system concepts are providing more complete environmental descriptions of shallow water environments, including water quality and the shape and composition of the seafloor. In 2017, the US Naval Research Laboratory (NRL) began developing robotic surveying approaches that support remote sensing of shallow coastal environments (Ackleson et al., 2017). The initial approach was to use a modified,
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来源期刊
Oceanography
Oceanography 地学-海洋学
CiteScore
6.10
自引率
3.60%
发文量
39
审稿时长
6-12 weeks
期刊介绍: First published in July 1988, Oceanography is the official magazine of The Oceanography Society. It contains peer-reviewed articles that chronicle all aspects of ocean science and its applications. In addition, Oceanography solicits and publishes news and information, meeting reports, hands-on laboratory exercises, career profiles, book reviews, and shorter, editor-reviewed articles that address public policy and education and how they are affected by science and technology. We encourage submission of short papers to the Breaking Waves section that describe novel approaches to multidisciplinary problems in ocean science.
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