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A temperature-based approach to predicting lost data from highly seasonal pollutant data sets

机译:一种基于温度的方法,可以从高度季节性的污染物数据集中预测数据丢失

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摘要

A new technique to predict concentrations of benzo[a]pyrene (BaP) in ambient air during periods of lost data has been developed and tested. This new technique is based on the relationship between ambient temperature and BaP concentration observed at individual monitoring stations over many years. The technique has been tested on monthly data of BaP concentrations in PM_(10) at individual monitoring stations on the UK PAH Monitoring Network. The annual average concentration values produced with and without the use of predicted data have been compared to the actual annual averages in the absence of any data loss. The use of predicted data is a significant improvement when compared with the averages produced in the absence of any data prediction and outperforms previous prediction strategies associated with intra-year trends. Furthermore the technique is suitable for the prediction of long periods of missing data, which other prediction techniques have not been able to deal with satisfactorily.
机译:已经开发并测试了一种新技术,可以预测丢失数据期间环境空气中苯并[a] py的浓度。这项新技术基于多年来在各个监测站观察到的环境温度和BaP浓度之间的关系。该技术已在英国PAH监测网络上各个监测站的PM_(10)中BaP浓度的月度数据上进行了测试。在不丢失任何数据的情况下,将在使用和不使用预测数据的情况下产生的年平均浓度值与实际年平均值进行比较。与在没有任何数据预测的情况下产生的平均值相比,使用预测数据具有显着改善,并且优于以前与年内趋势相关的预测策略。此外,该技术适用于长时间丢失数据的预测,而其他预测技术则无法令人满意地处理这些数据。

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