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Cause and predictability for the severe haze pollution in downtown Beijing in November-December 2015

机译:2015年11月至12月北京市中心雾霾严重污染的原因和可预测性

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摘要

Based on the hourly PM_(2.5) concentrations, meteorological variable records and ERA-Interim reanalysis data, a series of diagnostic analyses were conducted to explore the possible meteorological causes for the severe haze pollution that occurred in Beijing in November-December 2015. Using the online-coupled WRF-Chem model and GFS data, the predictability of hourly and daily PM_(2.5) concentrations was evaluated. The results showed that, in the context of pollutant emission, the severe haze pollution in downtown Beijing in November-December 2015 was primarily attributed to anomalous local meteorological conditions, which were caused and strengthened by anomalous large-scale atmospheric circulations. The abnormal changes in the upper troposphere appeared to trigger the anomalies in the middle-lower troposphere and the local conditions. The numerical simulations can capture the spatial distribution patterns of the PM_(2.5) concentrations for predictions of 1 to 10 days in advance. The PM_(2.5) concentration trends in downtown Beijing were generally consistent with the predictions on both daily and hourly time-scales, although the predictability deσeased gradually as the lead times prolonged. The predictability of the daily mean PM_(2.5) concentration was slightly higher than that of the hourly concentration. The statistical indices suggested that the predictions of daily and hourly mean PM_(2.5) concentrations were generally skillful and reliable for maximum lead times of 8 and 5 days, respectively.
机译:根据每小时的PM_(2.5)浓度,气象变量记录和ERA-Interim再分析数据,进行了一系列诊断分析,以探讨2015年11月至12月在北京发生的严重霾污染的可能气象原因。在线耦合的WRF-Chem模型和GFS数据,评估了每小时和每天PM_(2.5)浓度的可预测性。结果表明,在污染物排放的背景下,2015年11月至12月北京市中心的严重霾霾污染主要归因于当地异常的气象条件,这是由大规模大气环流异常引起并加剧的。对流层上部的异常变化似乎触发了对流层中下部和局部条件的异常。数值模拟可以捕获PM_(2.5)浓度的空间分布模式,以便提前1到10天进行预测。尽管随着交付时间的延长,可预测性逐渐降低,但北京市区的PM_(2.5)浓度趋势总体上与每日和每小时时间尺度上的预测一致。日平均PM_(2.5)浓度的可预测性略高于小时浓度。统计指标表明,每日和每小时平均PM_(2.5)浓度的预测通常熟练且可靠,最大交货时间分别为8天和5天。

著录项

  • 来源
    《The Science of the Total Environment》 |2017年第15期|627-638|共12页
  • 作者单位

    Environmental Meteorology Forecast Center ofBeijing-Tianjin-Hebei, Chinese Meteorological Administration, Beijing 100089, China ,Institute of Urban Meteorology, Chinese Meteorological Administration, Beijing 100089, China;

    State Key laboratory of Earth Surface Processes and Resource Ecobgy, Beijing Normal University, Beijing 100875, China;

    State Key laboratory of Earth Surface Processes and Resource Ecobgy, Beijing Normal University, Beijing 100875, China;

    Korea Polar Research Institute, Incheon 406-840, Republic of Korea;

    Institute of Urban Meteorology, Chinese Meteorological Administration, Beijing 100089, China;

    Institute of Urban Meteorology, Chinese Meteorological Administration, Beijing 100089, China;

    Environmental Meteorology Forecast Center ofBeijing-Tianjin-Hebei, Chinese Meteorological Administration, Beijing 100089, China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Severe haze pollution; PM_(2.5); Meteorological condition; Atmospheric circulation; WRF-Chem;

    机译:雾霾严重污染;PM_(2.5);气象条件;大气环流;WRF化学;

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