2021
DOI: 10.1155/2021/5665386
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Ocean Observation Data Prediction for Argo Data Quality Control Using Deep Bidirectional LSTM Network

Abstract: With the rapid development of maritime technologies, a huge amount of ocean data has been acquired through the state-of-the-art ocean equipment to get better understanding and development of ocean. The prediction and correction of oceanic observation data play a fundamental and important role in the oceanic relevant applications, including both civilian and military fields. On the basis of Argo data, aiming at predicting and correcting the oceanic observation data, we propose an ocean temperature and salinity … Show more

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Cited by 12 publications
(8 citation statements)
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“…Multiple studies recently presented deep learning methods for reconstructing hydrographic profiles from satellites. Proof-of-concept papers established the important capabilities of self-organizing maps (SOM; e.g., Charantonis et al, 2015;Gueye et al, 2014) and feed-forward or long short-term memory (LSTM) neural networks for hydrographic profile predictions (e.g., Lu, 2019;Jiang et al, 2021;Contractor and Roughan, 2021;Buongiorno Nardelli, 2020;Su et al, 2021;Sammartino et al, 2020). NNs can also efficiently reconstruct Argo interpolated fields (Gou et al, 2020;Meng et al, 2021).…”
Section: Introductionmentioning
confidence: 99%
“…Multiple studies recently presented deep learning methods for reconstructing hydrographic profiles from satellites. Proof-of-concept papers established the important capabilities of self-organizing maps (SOM; e.g., Charantonis et al, 2015;Gueye et al, 2014) and feed-forward or long short-term memory (LSTM) neural networks for hydrographic profile predictions (e.g., Lu, 2019;Jiang et al, 2021;Contractor and Roughan, 2021;Buongiorno Nardelli, 2020;Su et al, 2021;Sammartino et al, 2020). NNs can also efficiently reconstruct Argo interpolated fields (Gou et al, 2020;Meng et al, 2021).…”
Section: Introductionmentioning
confidence: 99%
“…CNN can well learn the spatial pattern and relationships of the input data, and can achieve high accuracy in the spatial distribution [28,29]. The subsurface thermohaline structure can be well predicted based on LSTM and its variants, and the accuracy is higher than methods such as random forests (RFs) [30], recurrent neural network (RNN) [31], support vector regression (SVR), and multilayer perceptron regressor (MLPR) [32]. LSTM is not only suitable for the inversion of ocean subsurface temperature but also has a good application in predicting other ocean internal parameters [33], such as the time series reconstruction of global ocean heat content for the upper 2000 m [34].…”
Section: Introductionmentioning
confidence: 99%
“…Proof of concept papers established the important capabilities of feedforward or long short-term memory (LSTM) neural networks for hydrographic profiles predictions (e.g. Lu, 2019;Jiang et al, 2021;Contractor and Roughan, 2021;Buongiorno Nardelli, 2020;Su et al, 2021;Sammartino et al, 2020). NNs can also efficiently reconstruct Argo interpolated fields (Gou et al, 2020;Meng et al, 2021).…”
Section: Introductionmentioning
confidence: 99%