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A Dynamic Dust Emission Allocation Method and Holiday Profiles Applied to Emission Processing for Improving Air Quality Model Performance

机译:动态粉尘排放分配方法和假日分布图应用于排放处理,以改善空气质量模型的性能

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An accurate depiction of temporal and spatial variations in emissions is critical in simulating air quality with atmospheric chemical transport models. Most emission processing systems typically use prescribed profiles to allocate anthropogenic emissions based on the assumptions that the temporal variance is periodical and spatial variance is time-independent. However, these assumptions are not applicable to emission sources heavily influenced by meteorology and holiday activity. In this study, we improved the temporal and spatial allocation of anthropogenic emissions by, first of all, developing a dynamic allocation method for fugitive dust that uses the negative correlation between dust emissions and precipitation, based on hourly rainfall data generated by the Weather Research and Forecasting model. Second, we employed holiday-specific profiles that were established using continuous emission monitoring system and traffic flow monitoring data to allocate power plant and on-road mobile emissions during the Spring Festival period, when human activity differs considerably from that of non-holiday periods. The new dynamic allocation method and holiday-specific profiles were applied to emissions in the Pearl River Delta region as a demonstration. Validated using a chemical transport model, this method obviously improved the model performance for periods with rainfall, with the normalized mean bias (NMB) decreasing by 6.27% for PM_(10) (particulate matter with a diameter of ≤ 10 μm) and 4.33% for PM_(2.5) (particulate matter with a diameter of ≤ 2.5 μm). The holiday simulations revealed that the holiday-specific profiles mitigated overestimations of NO_(2), SO_(2), and PM_(10) for the Spring Festival period, with the NMBs decreasing by 37.95%, 18.56%, and 20.83%, respectively. Hence, refining the allocation of emissions improved model simulation and air quality forecasting.
机译:准确描述排放中的时间和空间变化对于使用大气化学物质传输模型模拟空气质量至关重要。大多数排放处理系统通常基于时间方差是周期性且空间方差与时间无关的假设,使用规定的配置文件来分配人为排放。但是,这些假设不适用于受气象和假日活动严重影响的排放源。在这项研究中,我们首先通过基于“天气研究”和“气候研究”生成的每小时降雨数据,开发了一种利用粉尘排放量与降水量之间负相关关系的逃逸粉尘动态分配方法,从而改善了人为排放量的时间和空间分配。预测模型。其次,我们采用了特定假期的配置文件,这些配置文件是使用连续排放监控系统和交通流量监控数据建立的,用于在春节期间(人类活动与非节假日期间有很大差异)分配发电厂和道路上的移动排放物。作为示例,将新的动态分配方法和特定假期配置文件应用于珠江三角洲地区的排放。使用化学传输模型进行验证,该方法明显改善了降雨期间的模型性能,其中PM_(10)(直径≤10μm的颗粒物)和4.33%的归一化平均偏差(NMB)降低了6.27%。用于PM_(2.5)(直径≤2.5μm的颗粒物)。假期模拟显示,假期特定配置文件减轻了春节期间NO_(2),SO_(2)和PM_(10)的高估,NMB分别减少了37.95%,18.56%和20.83%。 。因此,完善排放分配可以改善模型仿真和空气质量预测。

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