反气旋
中尺度气象学
地质学
涡流
气候学
山脊
正压流体
平均流量
大气科学
气象学
物理
湍流
古生物学
作者
Lingjing Xu,Dezhou Yang,Zhiwei He,Xingru Feng,Guandong Gao,Xuan Cui,Baoshu Yin
标识
DOI:10.1175/jpo-d-23-0077.1
摘要
Abstract The scale-to-scale kinetic energy (KE) cascade induced by the nonlinear interaction among topography, Kuroshio Current, and mesoscale eddies is systematically investigated in the coarse-graining framework based on simulated data from the well-validated Regional Ocean Model System. The KE transfer exhibits inhomogeneous spatial and temporal distributions and varies with length scale. During current-topography interaction, the KE transfers downscale across larger scales and reversely across smaller scales with an inherent separation scale of 150 km northeast of Taiwan, resulting in a significant positive net KE flux for mesoscale motions. The transfer around Suao Ridge is consistently downscaled with significant seasonal variation that is stronger in summer and weaker in winter. South of Suao Ridge, the transfer is one order of magnitude weaker and changes greatly with time. The cyclonic (anticyclonic) eddy weakens (enhances) KE transfer in most study area. In particular, the cyclonic eddy reverses the transfer direction around Suao Ridge. The anticyclonic eddy triggers a significant bidirectional transfer south of Suao Ridge. Analyses show that the special arc-shaped topographic feature and northwestward Kuroshio intrusion current are responsible for the nature of bidirectional KE transfer northeast of Taiwan. The direction of mean current relative to the topography gradient determines the Rossby number magnitude and the KE transfer direction. The large-scale circulation determines the transfer intensity by changing the horizontal shear and barotropic instabilities. The KE transfer caused by nonlinear dynamics contributes significantly to the total anticyclonic eddy-induced net KE flux changes. In particular, inverse KE cascade plays a key role in net KE flux changes in mesoscale motions east of Taiwan.
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