タイトル | Intelligent Systems: Terrestrial Observation and Prediction Using Remote Sensing Data |
本文(外部サイト) | http://hdl.handle.net/2060/20050240926 |
著者(英) | Coughlan, Joseph C. |
著者所属(英) | NASA Ames Research Center |
発行日 | 2005-05-05 |
言語 | eng |
内容記述 | NASA has made science and technology investments to better utilize its large space-borne remote sensing data holdings of the Earth. With the launch of Terra, NASA created a data-rich environment where the challenge is to fully utilize the data collected from EOS however, despite unprecedented amounts of observed data, there is a need for increasing the frequency, resolution, and diversity of observations. Current terrestrial models that use remote sensing data were constructed in a relatively data and compute limited era and do not take full advantage of on-line learning methods and assimilation techniques that can exploit these data. NASA has invested in visualization, data mining and knowledge discovery methods which have facilitated data exploitation, but these methods are insufficient for improving Earth science models that have extensive background knowledge nor do these methods refine understanding of complex processes. Investing in interdisciplinary teams that include computational scientists can lead to new models and systems for online operation and analysis of data that can autonomously improve in prediction skill over time. |
NASA分類 | Earth Resources and Remote Sensing |
権利 | No Copyright |
URI | https://repository.exst.jaxa.jp/dspace/handle/a-is/219155 |
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