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基于动力学模态分解的200 hPa急流模态特征分析
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作者 高梅 曹小群 +3 位作者 刘柏年 韩梓航 侯士成 阳国贵 《大气科学学报》 CSCD 北大核心 2020年第5期824-833,共10页
提出基于动力学模态分解(Dynamic Mode Decomposition,DMD)的大气运动数据分析方法,目的是改进对大气运动特征的认识。首先,采用DMD方法对200 hPa急流运动流场进行模态分析,从中得到了急流天气系统运动变化过程中的主要模态和对应频率... 提出基于动力学模态分解(Dynamic Mode Decomposition,DMD)的大气运动数据分析方法,目的是改进对大气运动特征的认识。首先,采用DMD方法对200 hPa急流运动流场进行模态分析,从中得到了急流天气系统运动变化过程中的主要模态和对应频率以及模态随时间衰减/增长等信息。这些模态是对流场演化特征的低维描述,反映了蕴含在流场中的动力学特征,可用于实现高维复杂流场的低维近似表示。其次,建立了200 hPa急流运动流场演化的动力学降阶模型,能够重构和预测急流运动流场的动态发展过程。结果表明:通过对前6阶主要模态所包含的流场信息进行对比分析,DMD方法成功捕捉到了200 hPa急流运动流场不同尺度的流动结构,直观地显示了不同频率流场之间的差别,表明了DMD方法在对复杂大气动力学系统进行模态分解时的优势。通过不同时刻,模态叠加的重构流场与真实流场的直观比较,表明DMD方法只由前面6阶模态就能基本包含原始流场的流动信息,从而实现流场的准确重构。 展开更多
关键词 高空急流 动力学模态分解 降阶模型 稳定性分析 多尺度分析
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Application of a novel constrained wavelet threshold denoising method in ensemble-based background-error variance 被引量:2
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作者 HUANG QunBo liu bainian +6 位作者 ZHANG WeiMin ZHU MengBin SUN JingZhe CAO XiaoQun XING Xiang LENG HongZe ZHAO YanLai 《Science China(Technological Sciences)》 SCIE EI CAS CSCD 2018年第6期809-818,共10页
A more efficient noise filtering technique is needed in ensemble data assimilation, to improve traditional spectral filtering methods that cannot reflect the local characteristics of spatial scales. In this paper, we ... A more efficient noise filtering technique is needed in ensemble data assimilation, to improve traditional spectral filtering methods that cannot reflect the local characteristics of spatial scales. In this paper, we present the design of a novel constrained wavelet threshold denoising method(CWTDNM) by introducing an improved threshold value and a new constraining parameter.The proposed method aims to filter noise swamped over different scales. We prepared an ideal experiment object based on the two-dimensional barotropic vorticity equation. A suitable wavelet basis function(i.e., Db11) and the optimal number of decomposition levels(i.e., five) were first selected. The results show that, given the wavelet coefficients are constrained by the parameter, the CWTDNM can produce better filtering results with the smallest root mean square error(RMSE) compared to similar methods. In addition, the filtering accuracy of 10 ensemble sample variances using the CWTDNM is equivalent to that estimated directly from 80 ensemble samples, but with the runtime reduced to approximately one-seventh. Furthermore, a large peak signal-to-noise ratio, which implies a low RMSE, suggests that the proposed method suitably preserves most of the information after denoising. 展开更多
关键词 降噪方法 阈值 过滤技术 过滤方法 涡度方程 直接估计 体数据 均方差
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