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首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >Ozone ensemble forecasts: 2. A Kalman filter predictor bias correction
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Ozone ensemble forecasts: 2. A Kalman filter predictor bias correction

机译:臭氧合奏预测:2。预测偏差纠正

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The Kalman filter (KF) is a recursive algorithm to estimate a signal from noisy measurements. In this study it is tested in predictor mode, to postprocess ozone forecasts to remove systematic errors. The recent past forecasts and observations are used by the KF to estimate the future bias. This bias correction is calculated separately for, and applied to, 12 different air quality (AQ) forecasts for the period 11–15 August 2004, over five monitoring stations in the Lower Fraser Valley, British Columbia, Canada, a population center in a complex coastal mountain setting. The 12 AQ forecasts are obtained by driving an AQ Model (CMAQ) with two mesoscale meteorological models (each run at two resolutions) and for three emission scenarios (Delle Monache et al., 2006). From the 12 KF AQ forecasts an ensemble mean is calculated (EK). This ensemble mean is also KF bias corrected, resulting in a high-quality estimate (KEK) of the short-term (1- to 2-day) ozone forecast. The Kalman filter predictor bias-corrected ensemble forecasts have better forecast skill than the raw forecasts for the locations and days used here. The corrected forecasts are improved for correlation, gross error, root mean square error, and unpaired peak prediction accuracy. KEK is the best and EK is the second best forecast overall when compared with the other 12 forecasts. The reason for the success of EK and KEK is that both the systematic and unsystematic errors are reduced, the first by Kalman filtering and the second by ensemble averaging.
机译:卡尔曼滤波器(KF)是一个递归算法估计一个信号从噪声测量。本研究在预测模式,测试后处理臭氧预测去除系统错误。观察KF所使用的估计未来的偏见。分别为,应用于12种不同的空气质量(AQ)预测期11 - 15号2004年8月,超过五个监测站降低弗雷泽山谷,不列颠哥伦比亚,加拿大人口中心在一个复杂的沿海山设置。驾驶AQ (CMAQ)和两个中尺度模式气象模型(每次运行在两个决议)和三个发射场景(Delle Monache et al ., 2006)。预测一个意思是计算(EK)。这意味着合奏也KF偏差纠正,导致一个高质量的估计(KEK)为期两天的短期(1 -)臭氧预测。卡尔曼滤波器预测bias-corrected合奏比原始的预测有更好的预测能力这里使用的地点和天预期。修正后的预测有所改善相关性、毛重误差、均方根误差,和未配对峰值预测精度。最好和艾克是第二个最好的预测相比与其他12个预测。EK KEK是成功的原因系统性和非系统性错误减少,第一个通过卡尔曼滤波和其次通过系综平均。

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