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Application of dynamic linear regression to improve the skill of ensemble-based deterministic ozone forecasts

机译:应用动态线性回归提高基于集合的确定性臭氧预报技术

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Forecasts from seven air quality models and surface ozone data collected over the eastern USA and southern Canada during July and August 2004 provide a unique opportunity to assess benefits of ensemble-based ozone forecasting and devise methods to improve ozone forecasts. In this investigation, past forecasts from the ensemble of models and hourly surface ozone measurements at over 350 sites are used to issue deterministic 24-h forecasts using a method based on dynamic linear regression. Forecasts of hourly ozone concentrations as well as maximum daily 8-h and 1-h averaged concentrations are considered. It is shown that the forecasts issued with the application of this method have reduced bias and root mean square error and better overall performance scores than any of the ensemble members and the ensemble average. Performance of the method is similar to another method based on linear regression described previously by Pagowski et al., but unlike the latter, the current method does not require measurements from multiple monitors since it operates on individual time series. Improvement in the forecasts can be easily implemented and requires minimal computational cost. (c) 2006 Elsevier Ltd. All rights reserved.
机译:2004年7月至8月期间,从美国东部和加拿大南部收集的七个空气质量模型和地表臭氧数据得出的预报提供了一个独特的机会,可以评估基于整体的臭氧预报的效益,并设计出改进臭氧预报的方法。在这项调查中,使用基于动态线性回归的方法,通过模型合计的过去预测和每小时超过350个站点的每小时地面臭氧测量值来发布确定的24小时预测。考虑每小时的臭氧浓度以及每天的最大8小时和1小时平均浓度的预测。结果表明,与任何合奏成员和合奏平均值相比,使用该方法发布的预测结果减少了偏差和均方根误差,并且总体性能得分更高。该方法的性能类似于Pagowski等人先前描述的基于线性回归的另一种方法,但是与后者不同,由于该方法在单个时间序列上运行,因此当前方法不需要来自多个监视器的测量。可以轻松实现对预测的改进,并且需要最少的计算成本。 (c)2006 Elsevier Ltd.保留所有权利。

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