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Selective ensemble-mean technique for tropical cyclone track forecast by using ensemble prediction systems

机译:利用集合预报系统进行热带气旋径迹预报的选择性集合均值技术

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This article proposes a selective ensemble-mean technique for tropical cyclone (TC) track forecast based on the errors of ensemble prediction system (EPS) members at short lead times (SLTs, 12 h in this study). The means (SEAV) and weighted means (SEWE) of selected EPS members are applied to EPS products from the European Centre for Medium-range Weather Forecasts (ECMWF), Japan Meteorological Agency (JMA), National Centers for Environmental Prediction (NCEP), and China Meteorological Administration for 35 TCs in the western North Pacific in 2010 and 2011. Verification results show that SEAV behaves better than SEWE, with a skill of 5% to 30% over relevant ensemble means of EPS within 72 h. The SEAV method is the most effective for the JMA EPS, with a skill of 10% even at 96 h. SEAV predictions are compared with the high-resolution deterministic model predictions of ECMWF and several official forecasts, with special consideration given to the time delay associated with numerical model products in operation. The SEAV for the ECMWF EPS can overcome the high-resolution ECMWF deterministic model at 24 h. Case analyses and sensitivity tests on the error thresholds of member selection and SLTs are also presented in this article.
机译:本文基于集合预报系统(EPS)成员在短提前期(SLTs,本研究中为12小时)的误差,提出了一种用于热带气旋(TC)轨道预报的选择性集合均值技术。选定EPS成员的平均值(SEAV)和加权平均值(SEWE)应用于来自欧洲中型天气预报中心(ECMWF),日本气象厅(JMA),国家环境预测中心(NCEP)的EPS产品以及中国气象局在2010年和2011年对北太平洋西部的35个TC进行的验证。验证结果表明,SEAV的表现要优于SEWE,其72小时内的EPS比相关集合手段高出5%至30%。 SEAV方法对于JMA EPS最为有效,即使在96 h时仍可达到10%的技能。将SEAV预测与ECMWF的高分辨率确定性模型预测以及一些官方预测进行了比较,并特别考虑了与运行中的数值模型产品相关的时间延迟。用于ECMWF EPS的SEAV可以在24小时内克服高分辨率ECMWF确定性模型。本文还介绍了对成员选择和SLT错误阈值的案例分析和敏感性测试。

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