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The ESA FELYX High Resolution Diagnostic Data Set System Design and Implementation

ISPRS - International Archives of the Photogrammetry, Remote Sensing and Spatial Information Science...(2013)

Plymouth Marine Lab

Cited 5|Views16
Abstract
Felyx is currently under development and is the latest evolution of a generalised High Resolution Diagnostic Data Set system funded by ESA. It draws on previous prototype developments and experience in the GHRSST, Medspiration, GlobColour and GlobWave projects. In this paper, we outline the design and implementation of the system, and illustrate using the Ocean Colour demonstration activities. Felyx is fundamentally a tool to facilitate the analysis of EO data: it is being developed by IFREMER, PML and Pelamis. It will be free software written in python and javascript. The aim is to provide Earth Observation data producers and users with an opensource, flexible and reusable tool to allow the quality and performance of data streams from satellite, in situ and model sources to be easily monitored and studied. New to this project, is the ability to establish and incorporate multi-sensor match-up database capabilities. The systems will be deployable anywhere and even include interaction mechanisms between the deployed instances. The primary concept of Felyx is to work as an extraction tool. It allows for the extraction of subsets of source data over predefined target areas(which can be static or moving). These data subsets, and associated metrics, can then be accessed by users or client applications either as raw files or through automatic alerts. These data can then be used to generate periodic reports or be used for statistical analysis and visualisation through a flexible web interface. Felyx can be used for subsetting, the generation of statistics, the generation of reports or warnings/alerts, and in-depth analyses, to name a few. There are many potential applications but important uses foreseen are: * monitoring and assessing the quality of Earth observations (e.g. satellite products and time series) through statistical analysis and/or comparison with other data sources * assessing and inter-comparing geophysical inversion algorithms * observing a given phenomenon, collecting and cumulating various parameters over a defined area * crossing different sources of data for synergy applications The services provided by felyx will be generic, deployable at users own premises, and flexible allowing the integration and development of any kind of parameters. Users will be able to operate their own felyx instance at any location, on datasets and parameters of their own interest, and the various instances will be able to interact with each other, creating a web of felyx systems enabling aggregation and cross comparison of miniProds and metrics from multiple sources. Initially two instances will be operated simultaneously during a 6 months demonstration phase, at IFREMER – on sea surface temperature and ocean waves datasets – and PML – on ocean colour.
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Multitemporal data analysis,multisensor,insitu data,tracking,trend analysis
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要点】:本文介绍了Felyx系统,一种新型的开源高分辨率诊断数据集工具,旨在提高地球观测数据的质量和性能监控,并首次引入多传感器匹配数据库功能。

方法】:Felyx系统使用Python和JavaScript开发,提供数据子集提取、统计生成、报告和警告/警报生成以及深入分析等功能,通过灵活的Web界面实现数据可视化。

实验】:在演示阶段,Felyx系统在IFREMER和PML分别应用于海表温度和海洋波浪数据集以及海洋颜色数据集,实现了数据子集的提取、统计分析和报告生成。