Conference Agenda
Overview and details of the sessions and sub-session of this conference. Please select a date or session to show only sub-sessions at that day or location. Please select a single sub-session for detailed view (with abstracts and downloads if available).
Please note that all times are shown in CEST. The current conference time is: 16th June 2023, 05:22:26pm CEST
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Session Overview |
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2.1.3: COASTAL ZONES & OCEANS (cont.)
ID. 58900 Monitoring China Seas by RA Finishes at 12:20 CEST, 18:20 CST | ||||||||
Presentations | ||||||||
10:20am - 10:50am
ID: 146 / 2.1.3: 1 Oral Presentation Ocean and Coastal Zones: 58900 - Marine Dynamic Environment Monitoring in the China Seas and Western Pacific Ocean Seas By Satellite Altimeters Research on Ocean Wave Satellite Remote Sensing Products Based on Altimeters, CFOSAT SWIM and Sentinel-1 SAR Data 1The First Institute of Oceangraphy, MNR, Qingdao, China; 2Technical University of Denmark, Lyngby, Denmark; 3National Satellite Ocean Application Service, MNR, Beijing, China; 4School of Resources and Civil Engineering, Northeastern University, Shenyang, China Ocean wave is one of the important objects of ocean observation by satellite microwave remote sensing. Since the successful launch of TOPEX/Poseidon in 1992, the satellite altimeters had provided the abundant global ocean wave height observations. But the altimeters can only observe the ocean wave height of the points under the satellite along track. Synthetic Aperture Radar (SAR) can obtain ocean wave spectrum data with a certain swath observation, but SAR ocean wave data have the issue of wave wavelength truncation. China-France Oceanography Satellite (CFOSAT) was launched on 20th Oct. 2018, and the equipped SWIM on CFOSAT provided a new means for global ocean remote sensing observation. In this study, CFOSAT SWIM ocean wave observation data are evaluated by buoy and altimeter data firstly. The nadir and non-nadir ocean wave data of SWIM are compared to buoys and altimeter data. Then the study on ocean wave data fusion based on multi-source satellite remote sensing is carried out, and the global ocean wave remote sensing data from 2016 to 2020 are generated by using HY-2 series, sentinel-3 series, jason-3 altimeter, Sentinel-1 SAR and CFOSAT SWIM ocean wave data. In addition, the components of ocean waves are identified according to the wave age by combining the sea surface wind data, and the swell remote sensing fusion is carried out to generate global ocean swell products with the period more than one year. Finally, the preliminary analysis of ocean wave characteristics is carried out with the global ocean wave products produced in this study.
10:50am - 11:20am
ID: 200 / 2.1.3: 2 Oral Presentation Ocean and Coastal Zones: 59373 - Investigation of internal Waves in Asian Seas Using European and Chinese Satellite Data A SAR Internal Wave Amplitude Inversion Algorithm Based on Euler Numerical Simulation 1Ocean University of China, Qingdao, China; 2University Hamburg, Hamburg, Germany A SAR internal wave amplitude inversion algorithm based on Euler numerical simulation is proposed. The traditional satellite SAR internal wave amplitude inversion algorithm is based on the analytic relationship between the half width and the amplitude of the internal solitary wave revealed by the KdV equation or its variants. Those methods often underestimate the internal wave amplitude. There are at least two reasons for this problem: 1) KdV and its variants are insufficient to accurately describe the nonlinear behavior of large-amplitude internal waves; 2) The half-width of internal waves on the sea surface observed by SAR are different from that on the water layer where the maximum vertical displacement is located. The proposed new method iteratively conducts the numerical simulation of internal waves with different amplitudes. The best amplitude is obtained when the simulated half-width of the internal waves apprearing on the sea surface is most close to the half-width observed by SAR. However, there are two possible amplitudes for one half-width. The inversion algorithm has to choose one of the two amplitudes. Such selection is done by comparing the simulated SAR NRCS modulation corresponding to the two amplitudes with the observed SAR NRCS modulation. Case studies in multiple sea areas around the world show that the amplitude accuracy obtained by the new SAR internal wave amplitude inversion algorithm is significantly better than the KdV algorithm. In addition, in order to accelerate the convergence of the model at large amplitudes, the Miyata equation was used to calculate the initial flow field.
11:20am - 11:50am
ID: 269 / 2.1.3: 3 Oral Presentation Ocean and Coastal Zones: 59310 - Monitoring of Marine Environment Disasters Using CFOSAT, HY Series and Multiple Satellites Data Monitoring Of Marine Environment Disasters Using CFOSAT, HY Series And Sentinel Series Satellite Data 1National Satellite Ocean Application Service, China, People's Republic of; 2Key Laboratory of Space Ocean Remote Sensing and Application, MNR; 3CNRS/LATMOS, Guyancourt, France; 4CNRS/Laboratory of Oceanology and Geosciences, Wimereux, France HY-1C and HY-1D are the two ocean color satellites in China which play the important role in routine work of global marine environment monitoring launched separately in 2018 and 2020. The overall objective of HY-1 serial satellite is to monitor global ocean color and SST (Sea Surface Temperature), as well as the coastal zones’ environment. The China France Oceanography Satellite (CFOSAT) and Haiyang-2B (HY-2B) satellites were successively launched in China in 2018. As missions for measuring the dynamic marine environment, both satellites can measure the nadir significant wave height (SWH). Sentinel-2A/B satellites were launched in 2015 and 2017 separately. In this project, all these satellites data have been used to monitor marine disaster and environmental changes. Based on the various methods and different data types, satellite remote sensing monitoring research have been conducted in several typical marine disasters and dynamic environment changes. The results show the advantages both in new algorithms and multiple satellite data applications. The main developments in the mid-term of the project are as follows:
11:50am - 12:20pm
ID: 185 / 2.1.3: 4 Oral Presentation Ocean and Coastal Zones: 59329 - Research and Application of Deep Learning For Improvement and Assimilation of Significant Wave Height and Directional Wave Spectra From Multi-Missions On the Assimilation of Wide Swath SWH and Directional Wave Observations : A Synergy between HY2B-2C, CFOSAT and Sentinel-1 Missions 1Meteo France, France; 2NMEFC; 3LATMOS/IPSL Better prediction of sea state integrated parameters has a key role in the estimate of momentum and heat fluxes exchanges between ocean and atmosphere. By using deep learning technique we are now able to retrieve Significant Wave Height on the wide swath of scatterometer, as proposed by Wang et al. (2021). The objective of this work is to assess the impact of assimilating wide swath SWH and directional wave spectra from CFOSAT and Seninel-1 on the wave forecasting. We also investigated the impact of improved wave forcing on the ocean mixed layer in a coupled experiment of wave model and ocean model. During the DRAGON-5 project we have processed two years of wide swath SWH from HY-2B-2C and CFOSAT mission. Wave model runs have been performed with data assimilation and control run for this long period. The validation of the results have been implemented with independent wave data from altimeters and also from buoys networks. The results show the capacity of using wide swath SWH and directional wave spectra to track and well capture the initial conditions of swell generated in severe storms. We also highlight the complementary of using SWIM and SAR wave spactra for different wavelength scales. This significantly improves the wind-wave growth in critical ocean regions such as the Southern ocean. Furtehr comments and conclusions will be given during the oral presentation.
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