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Filling Gaps in Micro-meteorological Data
Year:
2020
Authors :
Rozenstein, Offer
;
.
Tanny, Josef
;
.
Volume :
Co-Authors:

Antoine Richard,
Lior Fine,
Offer Rozenstein,
Josef Tanny,
Matthieu Geist,
Cedric Pradalier

Facilitators :
From page:
0
To page:
0
(
Total pages:
1
)
Abstract:

Filling large data-gaps in Micro-Meteorological data has mostly been done using interpolation techniques based on a marginal distribution sampling. Those methods work well but need a large horizon of the previous events to achieve good results since they do not model the system but only rely on previously encountered iterations. In this paper, we propose to use multi-head deep attention networks to fill gaps in Micro-Meteorological Data. This methodology couples large-scale information extraction with modeling capabilities that cannot be achieved by interpolation-like techniques. Unlike Bidirectional RNNs, our architecture is not recurrent, it is simple to tune and our data efficiency is higher. We apply our architecture to real-life data and clearly show its applicability in agriculture, furthermore, we show that it could be used to solve related problems such as filling gaps in cyclic-multivariate-time-series. 

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Related Files :
Micro-Meteorological Data
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DOI :
Article number:
0
Affiliations:
Database:
Scopus
Publication Type:
Conference paper
;
.
Language:
English
Editors' remarks:
ID:
54432
Last updated date:
02/03/2022 17:27
Creation date:
07/04/2021 00:47
Scientific Publication
Filling Gaps in Micro-meteorological Data

Antoine Richard,
Lior Fine,
Offer Rozenstein,
Josef Tanny,
Matthieu Geist,
Cedric Pradalier

Filling Gaps in Micro-meteorological Data

Filling large data-gaps in Micro-Meteorological data has mostly been done using interpolation techniques based on a marginal distribution sampling. Those methods work well but need a large horizon of the previous events to achieve good results since they do not model the system but only rely on previously encountered iterations. In this paper, we propose to use multi-head deep attention networks to fill gaps in Micro-Meteorological Data. This methodology couples large-scale information extraction with modeling capabilities that cannot be achieved by interpolation-like techniques. Unlike Bidirectional RNNs, our architecture is not recurrent, it is simple to tune and our data efficiency is higher. We apply our architecture to real-life data and clearly show its applicability in agriculture, furthermore, we show that it could be used to solve related problems such as filling gaps in cyclic-multivariate-time-series. 

Scientific Publication
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