首页> 外文期刊>Science of the total environment >Remote estimation of aquatic light environments using machine learning: A new management tool for submerged aquatic vegetation
【24h】

Remote estimation of aquatic light environments using machine learning: A new management tool for submerged aquatic vegetation

机译:使用机器学习的水生光环境的远程估算:淹没水生植被的新管理工具

获取原文
获取原文并翻译 | 示例
       

摘要

Submerged aquatic vegetation (SAV; e.g. seagrasses, macroalgae), forms key habitats in shallow coastal systems that provide a plethora of ecosystem services, including coastal protection, climate mitigation and supporting fisheries production. Light limitation is a critical factor influencing the growth and survival of SAV, thus it is important to understand how much light SAV needs, and receives, to effectively assess the risk that light limitation poses. Light monitoring is commonly used to inform environmental decision making to minimise loss of SAV habitat, but the temporal and spatial extent of monitoring is often limited by cost and logistical difficulties. An ability to remotely estimate light across different locations can therefore improve the conservation and management of SAV habitats. Here we combine an extensive monitoring program with publicly available data and machine learning to develop a model that estimates the light reaching submerged seagrasses in a shallow subtropical em-bayment in southern Queensland, Australia. Our model accurately predicts the intensity of photosynthetically active radiation (PAR) reaching the canopy of SAV from entirely remotely available data. The best performing model predicted light intensity with >99% at the management relevant daily, and 14-day rolling average time resolutions. This model enables monitoring of light available to SAV without an ongoing need for in-water instruments, minimising cost and risk to personnel, and improving assessment speed. The technique can be applied to SAV management plans in shallow waters throughout the world, where suitable remote public data is available.
机译:淹没的水生植被(SAV;例如,海草,宏观格子),在浅沿海系统中形成关键栖息地,提供了一种普遍存在的生态系统服务,包括沿海保护,气候缓解和支持渔业生产。光限制是影响SAV生长和生存的关键因素,因此重要的是要明白节拍需求量和收到多少,以有效地评估光限制姿势的风险。光线监测通常用于告知环境决策,以尽量减少救生栖息地的损失,但监测的时间和空间程度通常受到成本和后勤困难的限制。因此,在不同地点估计光线的能力可以改善救护栖息地的保护和管理。在这里,我们将一个广泛的监控程序与公开的数据和机器学习结合起来,开发一个模型,估计澳大利亚南部南部浅亚热带的赫姆斯湖泊中的光线。我们的模型准确地预测了光合作用辐射的强度(PAR)从完全远程可用数据到达SAV的Cop。最佳性能模型预测光强度,在管理日常管理中具有> 99%,以及14天的滚动平均时间分辨率。该型号可以监控可用于SAV的光,而无需持续需要水内仪器,最大限度地降低人员的成本和风险,提高评估速度。该技术可以应用于全球浅水区的Sav管理计划,其中适合的远程公共数据可用。

著录项

  • 来源
    《Science of the total environment》 |2021年第15期|146886.1-146886.9|共9页
  • 作者单位

    Coastal and Marine Research Centre Australian Rivers Institute School of Environment & Science Griffith University Gold Coast Queensland 4222 Australia;

    Centre for Tropical Water and Aquatic Ecosystem Research James Cook University Cairns Queensland 4870 Australia;

    Coastal and Marine Research Centre Australian Rivers Institute School of Environment & Science Griffith University Gold Coast Queensland 4222 Australia;

    Centre for Tropical Water and Aquatic Ecosystem Research James Cook University Cairns Queensland 4870 Australia College of Science and Engineering James Cook University Cairns QLD 4870 Australia;

    Gold Coast Waterways Authority Australia;

    Coastal and Marine Research Centre Australian Rivers Institute School of Environment & Science Griffith University Gold Coast Queensland 4222 Australia;

    Coastal and Marine Research Centre Australian Rivers Institute School of Environment & Science Griffith University Gold Coast Queensland 4222 Australia;

    Coastal and Marine Research Centre Australian Rivers Institute School of Environment & Science Griffith University Gold Coast Queensland 4222 Australia;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Seagrass; Light requirements; Irradiance; Impact management; Thresholds; Dredging; Zostera; SAV;

    机译:海草;光要求;辐照;影响管理;门槛;疏浚;Zostera;夺取;

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号