A Possible Artificial Intelligence Ecosystem Avatar: the Moorea case
(IDEA)
- URL: http://arxiv.org/abs/2102.02384v1
- Date: Thu, 4 Feb 2021 02:53:55 GMT
- Title: A Possible Artificial Intelligence Ecosystem Avatar: the Moorea case
(IDEA)
- Authors: Jean-Pierre Barriot, Neil Davies, Beno\^it Stoll, S\'ebastien Chabrier
and Alban Gabillon
- Abstract summary: We focus in this paper on a large scale data assimilation and prediction backbone based on Deep Stacking Networks (DSN)
We describe several kinds of raw data that can train and constrain such an ecosystem avatar model, as well as second level data such as ecological or physical indexes / indicators.
- Score: 0.6562256987706128
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: High-throughput data collection techniques and largescale (cloud) computing
are transforming our understanding of ecosystems at all scales by allowing the
integration of multimodal data such as physics, chemistry, biology, ecology,
fishing, economics and other social sciences in a common computational
framework. We focus in this paper on a large scale data assimilation and
prediction backbone based on Deep Stacking Networks (DSN) in the frame of the
IDEA (Island Digital Ecosystem Avatars) project (Moorea Island), based on the
subdivision of the island in watersheds and lagoon units. We also describe
several kinds of raw data that can train and constrain such an ecosystem avatar
model, as well as second level data such as ecological or physical indexes /
indicators.
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