Yonghong Yin
Bureau of Meteorology
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Publication
Featured researches published by Yonghong Yin.
Monthly Weather Review | 2011
Yonghong Yin; Oscar Alves; Peter R. Oke
Abstract A new ensemble ocean data assimilation system, developed for the Predictive Ocean Atmosphere Model for Australia (POAMA), is described. The new system is called PEODAS, the POAMA Ensemble Ocean Data Assimilation System. PEODAS is an approximate form of an ensemble Kalman filter system. For a given assimilation cycle, a central forecast is integrated, along with a small ensemble of forecasts that are forced with perturbed surface fluxes. The small ensemble is augmented with multiple small ensembles from previous assimilation cycles, yielding a larger ensemble that consists of perturbed forecasts from the last month. This larger ensemble is used to represent the system’s time-dependent background error covariance. At each assimilation cycle, a central analysis is computed utilizing the ensemble-based covariance. Each of the perturbed ensemble members are nudged toward the central analysis to control the ensemble spread and mean. The ensemble-based covariances generated by PEODAS potentially yield d...
Monthly Weather Review | 2013
Debra Hudson; Andrew G. Marshall; Yonghong Yin; Oscar Alves; Harry H. Hendon
AbstractThe Australian Bureau of Meteorology has recently enhanced its capability to make coupled model forecasts of intraseasonal climate variations. The Predictive Ocean Atmosphere Model for Australia (POAMA, version 2) seasonal prediction forecast system in operations prior to March 2013, designated P2-S, was not designed for intraseasonal forecasting and has deficiencies in this regard. Most notably, the forecasts were only initialized on the 1st and 15th of each month, and the growth of the ensemble spread in the first 30 days of the forecasts was too slow to be useful on intraseasonal time scales. These deficiencies have been addressed in a system upgrade by initializing more often and through enhancements to the ensemble generation. The new ensemble generation scheme is based on a coupled-breeding approach and produces an ensemble of perturbed atmosphere and ocean states for initializing the forecasts. This scheme impacts favorably on the forecast skill of Australian rainfall and temperature compar...
Journal of Climate | 2012
Yan Xue; Magdalena A. Balmaseda; Timothy P. Boyer; Nicolas Ferry; Simon A. Good; Ichiro Ishikawa; Arun Kumar; Michele M. Rienecker; Anthony Rosati; Yonghong Yin
AbstractOcean heat content (HC) is one of the key indicators of climate variability and also provides ocean memory critical for seasonal and decadal predictions. The availability of multiple operational ocean analyses (ORAs) now routinely produced around the world is an opportunity for estimation of uncertainties in HC analysis and development of ensemble-based operational HC climate indices. In this context, the spread across the ORAs is used to quantify uncertainties in HC analysis and the ensemble mean of ORAs to identify, and to monitor, climate signals. Toward this goal, this study analyzed 10 ORAs, two objective analyses based on in situ data only, and eight model analyses based on ocean data assimilation systems. The mean, annual cycle, interannual variability, and long-term trend of HC in the upper 300 m (HC300) from 1980 to 2009 are compared.The spread across HC300 analyses generally decreased with time and reached a minimum in the early 2000s when the Argo data became available. There was a good...
Monthly Weather Review | 2013
Mei Zhao; Harry H. Hendon; Oscar Alves; Yonghong Yin; David L. T. Anderson
AbstractThe authors assess the sensitivity of the simulated mean state and coupled variability to systematic initial state salinity errors in seasonal forecasts using the Australian Bureau of Meteorology Predictive Ocean Atmosphere Model for Australia (POAMA) coupled model. This analysis is based on two sets of hindcasts that were initialized from old and new ocean initial conditions, respectively. The new ocean initial conditions are provided by an ensemble multivariate analysis system that assimilates subsurface temperatures and salinity and is a clear improvement over the previous system, which was based on univariate optimal interpolation, using static error covariances and assimilating only temperature without updating salinity.Large systematic errors in the salinity field around the thermocline region of the tropical western and central Pacific produced by the old assimilation scheme are shown to have strong impacts on the predicted mean state and variability in the tropical Pacific for the entire 9...
Climate Dynamics | 2014
Mei Zhao; Harry H. Hendon; Oscar Alves; Yonghong Yin
Abstract We assess the impact of improved ocean initial conditions for predicting El Niño-Southern Oscillation (ENSO) and Indian Ocean dipole (IOD) using the Bureau of Meteorology’s Predictive Ocean Atmosphere Model for Australia (POAMA) coupled seasonal prediction model for the period 1982–2006. The new ocean initial conditions are provided by an ensemble-based analysis system that assimilates subsurface temperatures and salinity and which is a clear improvement over the previous optimal interpolation system which used static error covariances and was univariate (temperature only). Hindcasts using the new ocean initial conditions have better skill at predicting sea surface temperature (SST) variations associated with ENSO than do the hindcasts initialized with the old ocean analyses. The improvement derives from better prediction of subsurface temperatures and the largest improvements come during ENSO–IOD neutral years. We show that improved prediction of the Niño3.4 SST index derives from improved initial depiction of the thermocline and halocline in the equatorial Pacific but as lead time increases the improved depiction of the initial salinity field in the western Pacific become more important. Improved ocean initial conditions do not translate into improved skill for predicting the IOD but we do see an improvement in the prediction of subsurface temperatures in the Indian Ocean (IO). This result reflects that the coupling between subsurface and surface temperature variations is weaker in the IO than in the Pacific, but coupled model errors may also be limiting predictive skill in the IO.
Journal of Climate | 2016
Mei Zhao; Harry H. Hendon; Yonghong Yin; Oscar Alves
AbstractInterannual variations of upper-ocean salinity in the tropical Pacific and relationships with ENSO are investigated using the Bureau of Meteorology (Australia) POAMA Ensemble Ocean Data Assimilation System (PEODAS) reanalyses. Empirical orthogonal function (EOF) analysis reveals the systematic evolution of salinity and temperature during ENSO. EOF1 and EOF2 of both temperature and salinity capture the mature phase of El Nino and the discharge and recharge phase, respectively. Typical El Nino and La Nina evolution captured by the leading pair of EOFs depicts eastward or westward migration of the eastern edge of the warm/fresh pool in the western Pacific. Increased or decreased freshness in the western Pacific mixed layer occurs in the recharge/discharge phase. EOF3 captures extreme El Nino, when the strong positive temperature anomaly extends to the South American coast and the fresh pool detaches from the western Pacific and shifts into the central Pacific. Large loadings on EOF3 occurred only dur...
Climate Dynamics | 2017
Maria Valdivieso; Keith Haines; Magdalena A. Balmaseda; You-Soon Chang; Marie Drevillon; Nicolas Ferry; Yosuke Fujii; Armin Köhl; Andrea Storto; Takahiro Toyoda; Xiaochun Wang; J. Waters; Yan Xue; Yonghong Yin; Bernard Barnier; Fabrice Hernandez; Arun Kumar; Tong Lee; Simona Masina; K. Andrew Peterson
Climate Dynamics | 2017
Andrea Storto; Simona Masina; Magdalena A. Balmaseda; S. Guinehut; Yan Xue; Tanguy Szekely; Ichiro Fukumori; Gael Forget; You-Soon Chang; Simon A. Good; Armin Köhl; Guillaume Vernieres; Nicolas Ferry; K. Andrew Peterson; David W. Behringer; Masayoshi Ishii; Shuhei Masuda; Yosuke Fujii; Takahiro Toyoda; Yonghong Yin; Maria Valdivieso; Bernard Barnier; Timothy P. Boyer; Tony E. Lee; Jérome Gourrion; Ou Wang; Patrick Heimback; Anthony Rosati; Robin Kovach; Fabrice Hernandez
Climate Dynamics | 2017
Takahiro Toyoda; Yosuke Fujii; Tsurane Kuragano; Masafumi Kamachi; Yoichi Ishikawa; Shuhei Masuda; Kanako Sato; Toshiyuki Awaji; Fabrice Hernandez; Nicolas Ferry; S. Guinehut; Matthew Martin; K. Andrew Peterson; Simon A. Good; Maria Valdivieso; Keith Haines; Andrea Storto; Simona Masina; Armin Köhl; Hao Zuo; Magdalena A. Balmaseda; Yonghong Yin; Li Shi; Oscar Alves; Gregory C. Smith; You-Soon Chang; Guillaume Vernieres; Xiaochun Wang; Gael Forget; Patrick Heimbach
Climate Dynamics | 2017
Eun-Pa Lim; Harry H. Hendon; Mei Zhao; Yonghong Yin