11:45 AM - 12:00 PM
[MGI24-10] Deterministic and ensemble forecasts of Kuroshio south of Japan
Keywords:Ocean data assimilation, Ensemble Kalman filter, Deterministic forecast, Ensemble forecast, Kuroshio, Predictability
We have developed a new local ensemble transform Kalman filter (LETKF)-based regional ocean data assimilation system (Ohishi et al. 2022a, b) and released ensemble ocean analysis datasets called the LETKF-based Ocean Research Analysis (LORA) for the western North Pacific and Maritime Continent regions (Ohishi et al. 2023). The LORA datasets are shown to have sufficient accuracy for geoscience research, especially in the mid-latitude regions (Ohishi et al. 2023), and therefore, we can perform both deterministic and ensemble forecasts initialized by the LORA. This study aims to compare the predictability of the Kuroshio path south of Japan between deterministic and ensemble forecasts.
We performed 6-month deterministic and ensemble forecasts initialized every month on the first day from January 2016–December 2018 (total 36 cases) using the initial conditions of the analysis ensemble mean and 128 analysis ensembles from the LORA dataset, respectively. The results show that the predictability ranges of the Kuroshio path are about 100–110 and 130–140 days in the deterministic and ensemble forecasts, respectively, indicating a significantly longer predictability range of the ensemble forecasts than the deterministic forecasts.