Zhenhua HUO, Wansuo DUAN, Feifan ZHOU. 2019: Ensemble Forecasts of Tropical Cyclone Track with Orthogonal Conditional Nonlinear Optimal Perturbations. Adv. Atmos. Sci, 36(2): 231-247., https://doi.org/10.1007/s00376-018-8001-1
Citation: Zhenhua HUO, Wansuo DUAN, Feifan ZHOU. 2019: Ensemble Forecasts of Tropical Cyclone Track with Orthogonal Conditional Nonlinear Optimal Perturbations. Adv. Atmos. Sci, 36(2): 231-247., https://doi.org/10.1007/s00376-018-8001-1

Ensemble Forecasts of Tropical Cyclone Track with Orthogonal Conditional Nonlinear Optimal Perturbations

  • This paper preliminarily investigates the application of the orthogonal conditional nonlinear optimal perturbations (CNOPs)-based ensemble forecast technique in MM5 (Fifth-generation Pennsylvania State University-National Center for Atmospheric Research Mesoscale Model). The results show that the ensemble forecast members generated by the orthogonal CNOPs present large spreads but tend to be located on the two sides of real tropical cyclone (TC) tracks and have good agreements between ensemble spreads and ensemble-mean forecast errors for TC tracks. Subsequently, these members reflect more reasonable forecast uncertainties and enhance the orthogonal CNOPs-based ensemble-mean forecasts to obtain higher skill for TC tracks than the orthogonal SVs (singular vectors)-, BVs (bred vectors)- and RPs (random perturbations)-based ones. The results indicate that orthogonal CNOPs of smaller magnitudes should be adopted to construct the initial ensemble perturbations for short lead-time forecasts, but those of larger magnitudes should be used for longer lead-time forecasts due to the effects of nonlinearities. The performance of the orthogonal CNOPs-based ensemble-mean forecasts is case-dependent, which encourages evaluating statistically the forecast skill with more TC cases. Finally, the results show that the ensemble forecasts with only initial perturbations in this work do not increase the forecast skill of TC intensity, which may be related with both the coarse model horizontal resolution and the model error.
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