能見度集合預(yù)報及后處理技術(shù)應(yīng)用
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國家重點研發(fā)計劃課題典型災(zāi)害天氣公里級滾動預(yù)報關(guān)鍵技術(shù)研究與示范應(yīng)用(2021YFC3000905)、中國氣象局創(chuàng)新發(fā)展專項(CXFZ2021Z012)資助


Application of Visibility Ensemble Forecast and Post-processing Techniques
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    摘要:

    基于污染物情況、環(huán)流系統(tǒng)和時空分布特征分析,利用神經(jīng)網(wǎng)絡(luò)對歷史數(shù)據(jù)進行建模,生成了能見度集合預(yù)報產(chǎn)品。在2022年冬季的TS評分檢驗中,預(yù)報產(chǎn)品優(yōu)于歐洲中期數(shù)值預(yù)報中心模式(ECMWF)的能見度預(yù)報產(chǎn)品。利用概率匹配、最優(yōu)百分位和神經(jīng)網(wǎng)絡(luò)三種后處理方法生成后處理產(chǎn)品,這些產(chǎn)品的TS評分優(yōu)于集合預(yù)報產(chǎn)品。預(yù)報輸入的ECMWF模式2 m濕度與實況的偏差是誤差的主要來源。利用集成方法對三種后處理產(chǎn)品進行集成,其TS評分結(jié)果在低能見度區(qū)間總體接近或略優(yōu)于原始產(chǎn)品。生成的能見度集合預(yù)報后處理最優(yōu)集成預(yù)報產(chǎn)品成功提高了對中期延伸期能見度天氣的預(yù)測準確性。

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    This study aims to improve the forecast capability of mid-to-long term visibility by analysing the impact of pollution levels, circulation systems, and spatiotemporal distribution characteristics on low visibility weather. A neural network approach is utilised to model over 2500 stations nationwide, incorporating multi-year meteorological observations, pollution data, and reanalysis data. The selection of model structure and parameterisation schemes takes into account performance evaluations based on empirical formulas and varying parameter values across different datasets. Cross-validation is employed to split the neural network datasets into training and validation sets during the parameter training phase. Different parameterisation schemes are applied to train the models on the training set, and their performance is assessed on the validation set. By comparing the models’ performance under different parameterisation schemes, an optimal balance between fitting accuracy and generalisation capability is achieved. Using the previously established forecasting models, a visibility ensemble forecast product is created based on 15-day PM2.5 CAMx-NCEP model, observed data, and ECMWF ensemble forecast. The ensemble forecast product includes control forecast values, ensemble means, and 50th percentile values. In the winter of 2022, the TS score evaluation test in all forecast durations, including medium-to-long term, shows that the ensemble forecast’s control forecast values and ensemble means outperform the 50th percentile forecast values and ECMWF’s visibility products in the visibility ranges of 1 km, 1-3 km, and 3-5 km. For the visibility ranges of 5-10 km and greater than 10 km, the TS scores of the control forecast values, ensemble means, 50th percentile forecast values, and ECMWF’s visibility products are relatively close. Based on the visibility ensemble forecast product, three post-processing methods (probability matching, optimal percentiles, and neural networks) are developed to improve forecast TS scores compared to the ensemble forecast product. The average TS scores for visibility below 1 km are 0.126, 0.126, and 0.130 for the optimal percentiles, probability matching, and neural network methods, respectively. For visibility in the range of 1-3 km, the average TS scores are 0.168, 0.168, and 0.170, respectively. These post-processing methods provide an improvement of around 10% and 7% for visibility below 1 km and in the 1-3 km range, respectively, compared to the ensemble forecast. Analysis of the forecast model reveals errors primarily originating from discrepancies between the ECMWF model’s input factors and observed values, such as 2 m humidity and wind fields. Each post-processing method exhibits advantages in different forecast lead times and visibility ranges, which are integrated using statistical methods for optimal ensemble forecasting. The TS score evaluation of the visibility post-processing optimal ensemble shows overall similarity or slight superiority compared to individual methods in the low visibility range. The minimum ensemble method slightly outperforms mean and weighted ensemble products in TS scores between 0-3 km but performs worse above 3 km. To emphasise the forecast focus on low visibility, the minimum ensemble method is selected to generate the optimal ensemble forecast product, enhancing the forecast service capability for low visibility weather during the extended period.

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謝超,馬學款,王繼康,饒曉琴,張碧輝.能見度集合預(yù)報及后處理技術(shù)應(yīng)用[J].氣象科技,2024,52(3):356~366

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  • 收稿日期:2023-04-11
  • 定稿日期:2024-01-19
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  • 在線發(fā)布日期: 2024-06-25
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