首页> 外文会议>International Conference on Pattern Recognition Workshops >A Machine Learning Approach to Chlorophyll a Time Series Analysis in the Mediterranean Sea
【24h】

A Machine Learning Approach to Chlorophyll a Time Series Analysis in the Mediterranean Sea

机译:叶绿素的机器学习方法在地中海中的时间序列分析

获取原文

摘要

Understanding the dynamics of natural system is a crucial task in ecology especially when climate change is taken into account. In this context, assessing the evolution of marine ecosystems is pivotal since they cover a large portion of the biosphere. For these reasons, we decided to develop an approach aimed at evaluating temporal and spatial dynamics of remotely-sensed chlorophyll a concentration. The concentrations of this pigment are linked with phytoplankton biomass and production, which in turn play a central role in marine environment. Machine learning techniques proved to be valuable tools in dealing with satellite data since they need neither assumptions on data distribution nor explicit mathematical formulations. Accordingly, we exploited the Self Organizing Map (SOM) algorithm firstly to reconstruct missing data from satellite time series of chlorophyll a and secondly to classify them. The missing data reconstruction task was performed using a large SOM and allowed to enhance the available information filling the gaps caused by cloud coverage. The second part of the procedure involved a much smaller SOM used as a classification tool. This dimensionality reduction enabled the analysis and visualization of over 37 000 chlorophyll a time series. The proposed approach provided insights into both temporal and spatial chlorophyll a dynamics in the Mediterranean Basin.
机译:了解自然系统的动态是生态学中的一个至关重要的任务,特别是当考虑气候变化时。在这种情况下,评估海洋生态系统的演变是关键的,因为它们覆盖了大部分生物圈。出于这些原因,我们决定制定一种旨在评估常规感测叶绿素浓度的时间和空间动力学的方法。这种颜料的浓度与浮游植物生物量和生产联系,这反过来又在海洋环境中发挥着核心作用。被证明是处理卫星数据的有价值的工具,因为它们既不是数据分布也不需要的假设,也不需要明确的数学制作。因此,我们首先利用了自组织地图(SOM)算法,以重建来自卫星时间序列的叶绿素A的缺失数据,并其次将它们分类。使用大SOM执行缺少的数据重建任务,并允许增强填充由云覆盖率引起的间隙的可用信息。该过程的第二部分涉及一个更小的SOM用作分类工具。这种维数减少使得分析和可视化超过37000叶绿素A时间序列。所提出的方法为地中海盆地中的时间和空间叶绿素进行了见解。

著录项

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