| Literature DB >> 31534948 |
Gregory C Smith1, Richard Allard2, Marcel Babin3, Laurent Bertino4, Matthieu Chevallier5,6, Gary Corlett7, Julia Crout8, Fraser Davidson9, Bruno Delille10, Sarah T Gille11, David Hebert2, Patrick Hyder12, Janet Intrieri13, José Lagunas3, Gilles Larnicol14, Thomas Kaminski15, Belinda Kater16, Frank Kauker17,18, Claudie Marec3,19, Matthew Mazloff11, E Joseph Metzger2, Calvin Mordy20, Anne O'Carroll7, Steffen M Olsen21, Michael Phelps8, Pamela Posey8, Pierre Prandi14, Eric Rehm3, Phillip Reid22, Ignatius Rigor23, Stein Sandven4, Matthew Shupe13,24, Sebastiaan Swart25,26, Ole Martin Smedstad8, Amy Solomon27, Andrea Storto28, Pierre Thibaut14, John Toole29, Kevin Wood20, Jiping Xie4, Qinghua Yang30.
Abstract
There is a growing need for operational oceanographic predictions in both the Arctic and Antarctic polar regions. In the former, this is driven by a declining ice cover accompanied by an increase in maritime traffic and exploitation of marine resources. Oceanographic predictions in the Antarctic are also important, both to support Antarctic operations and also to help elucidate processes governing sea ice and ice shelf stability. However, a significant gap exists in the ocean observing system in polar regions, compared to most areas of the global ocean, hindering the reliability of ocean and sea ice forecasts. This gap can also be seen from the spread in ocean and sea ice reanalyses for polar regions which provide an estimate of their uncertainty. The reduced reliability of polar predictions may affect the quality of various applications including search and rescue, coupling with numerical weather and seasonal predictions, historical reconstructions (reanalysis), aquaculture and environmental management including environmental emergency response. Here, we outline the status of existing near-real time ocean observational efforts in polar regions, discuss gaps, and explore perspectives for the future. Specific recommendations include a renewed call for open access to data, especially real-time data, as a critical capability for improved sea ice and weather forecasting and other environmental prediction needs. Dedicated efforts are also needed to make use of additional observations made as part of the Year of Polar Prediction (YOPP; 2017-2019) to inform optimal observing system design. To provide a polar extension to the Argo network, it is recommended that a network of ice-borne sea ice and upper-ocean observing buoys be deployed and supported operationally in ice-covered areas together with autonomous profiling floats and gliders (potentially with ice detection capability) in seasonally ice covered seas. Finally, additional efforts to better measure and parameterize surface exchanges in polar regions are much needed to improve coupled environmental prediction.Entities:
Keywords: YOPP; air-sea-ice fluxes; forecasting; ocean data assimilation; ocean modeling; operational oceanography; polar observations; sea ice
Year: 2019 PMID: 31534948 PMCID: PMC6750219 DOI: 10.3389/fmars.2019.00429
Source DB: PubMed Journal: Front Mar Sci ISSN: 2296-7745
FIGURE 1 ∣(A) Schematic drawing of the WHOI Ice-Tethered Profiler (ITP) system; (B) Histogram of ITP underwater vehicle lifetimes (top) and (bottom) the periods (shown as black vertical bars) over which telemetry was received from each ITP underwater unit and from each corresponding surface buoy (black plus gray bars). The history of ITP systems deployed in the Southern Ocean and in lakes are excluded from this plot. (C) Schematic drawing of the bio-optical ITP sensor suite with CTD/O2, chlorophyll fluorescence, CDOM, optical backscatter and PAR (the latter suite housed under a retractable shutter), and (D) installation photograph of an ITP with a Modular Acoustic Velocity Sensor (ITP-V).
FIGURE 2 ∣Temperature and salinity profiles collected by ALAMO 9119-CTD from September 17 to December 8, 2017. The float began sampling near 167W, 70N and the last profile was near 165W, 72N. See: https://www.pmel.noaa.gov/arctic-heat/ for more information, including the float track.
FIGURE 3 ∣Measurements from an Argo float deployed on the Labrador Shelf. (A) Show the location of transmissions from the float over the period 01-August-2017 to 01-June-2018. (C) Show a Synthetic Aperture Radar image from RADARSAT-2 for 28-Jan-2018 with a blue star indicating the location of the Argo float. (B,D) Present analyses (orange) and 5-day forecasts (blue) from the Global Ice Ocean Prediction System for temperature and salinity respectively. Also shown are values from the World Ocean Atlas 2013 climatology (green). The presence of sea ice is indicated by the dashed red line, with values near the bottom indicating no ice and values near the top of the panel indicating the likely presence of ice as detected by GIOPS ice analyses.
FIGURE 4 ∣A daily profile cycle of BGC-Argo floats deployed during the 2016 Green Edge scientific mission in Baffin Bay. The main goal is the understanding of the dynamics of the phytoplankton spring bloom and determine its role in the Arctic. During the spring-period the risk of colliding with sea-ice when emerging is a threat to the security of the floats. Moreover, during wintertime, geo-localization and the use satellite networks for data transmission and commands reception is not yet possible (Credit: J. Sansoulet, Takuvik).
FIGURE 5 ∣Map of drifting buoys reporting on the WMO/IOC GTS in August 2018. Source: http://OSMC.NOAA.GOV.
FIGURE 6 ∣Map of drifting buoys reporting in the Arctic on August 3, 2018. Source: http://IABP.apl.uw.edu.
FIGURE 7 ∣Standard deviation (SD) of sea level pressure measurements from various atmospheric reanalyses. The SD is low in areas where there are buoy observations (A). The spread increases to cover the whole Arctic when the observations from the buoys are removed from the reanalyses (B) (Inoue et al., 2009).
FIGURE 8 ∣Collocation of one Sentinel-1 SAR image (background) and Sentinel-3 altimeter waveforms (Unfocused processing; color) over a lead in the Arctic Ocean.
FIGURE 9 ∣Ice edge error for individual regions (km). Each region contains three numbers. First number is ice edge error without assimilation. Second bold number is error with assimilation. Third number is percent improvement with assimilation. In the Arctic the overall reduction in ice edge error with observational data assimilation is 31 km (56%); in the Antarctic the overall reduction is 28 km (37%).
FIGURE 10 ∣Sensitivity of sea ice forecasting skill to ocean mixing around Antarctica. Weekly 7 days sea ice forecasts from the Global Ice-Ocean Prediction System (GIOPS) running operationally at the Canadian Centre for Meteorological and Environmental Prediction are evaluated against analyses over the year 2011. The evaluation of forecast skill is restricted to points where the analysis has changed by more than 10% over the forecast period (7 days). Warmer colors indicate larger root-mean squared error (maximum of 0.3 for dark red) with zero error shown as dark blue. Panels (a) and (b) show the forecast skill for experiments without and with additional ocean mixing respectively. Adapted from Smith et al. (2013).
FIGURE 11 ∣Time series of TOPAZ4 data assimilation diagnostics across the 24-year reanalysis for all temperature profiles in the depths 300–800 m in the whole Arctic. The blue line is the bias, the green line is the related standard deviation (Root Mean Square), the red line is the ensemble spread, and the gray line the number of temperature observations, increasing during the IPY. The other vertical lines and the bottom bars indicate changes of the other observation data sources and modifications of the data assimilation system.
FIGURE 12 ∣Box and whisker plots of CAFS forecast temperature errors in the full atmosphere-ocean column at 6 h, 1 day, and 5 days lead times compared to radiosondes (red) and CTDs (blue) from the R/V Sikuliaq during the ONR SeaState campaign October 1 – November 5 2015. Note, the vertical scale is model levels.
FIGURE 13 ∣Evaluation of CryoSat-2 sea ice thickness product alone (top), in combination with 15 cm accuracy snow depth product (middle), and in combination with 2 cm accuracy snow depth product (bottom). Prior (gray, no observations) and posterior (orange, sea ice thickness and snow depth products) uncertainties in sea ice volume (SIV) and snow volume (SNV) predictions for three regions along the Northeast Passage in km3.