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Spatio-temporal modeling for real-time ozone forecasting

机译:时空建模用于实时臭氧预报

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摘要

The accurate assessment of exposure to ambient ozone concentrations is important for informing the public and pollution monitoring agencies about ozone levels that may lead to adverse health effects. High-resolution air quality information can offer significant health benefits by leading to improved environmental decisions. A practical challenge facing the U.S. Environmental Protection Agency (USEPA) is to provide real-time forecasting of current 8-hour average ozone exposure over the entire conterminous United States. Such real-time forecasting is now provided as spatial forecast maps of current 8-hour average ozone defined as the average of the previous four hours, current hour, and predictions for the next three hours. Current 8-hour average patterns are updated hourly throughout the day on the EPA-AIRNow web site.The contribution here is to show how we can substantially improve upon current real-time forecasting systems. To enable such forecasting, we introduce a downscaler fusion model based on first differences of real-time monitoring data and numerical model output. The model has a flexible coefficient structure and uses an efficient computational strategy to fit model parameters. Our hybrid computational strategy blends continuous background updated model fitting with real-time predictions. Model validation analyses show that we are achieving very accurate and precise ozone forecasts.
机译:准确评估暴露于环境臭氧浓度中的暴露,对于向公众和污染监测机构告知可能导致不良健康影响的臭氧水平至关重要。高分辨率的空气质量信息可通过改善环境决策来提供重大的健康益处。美国环境保护局(USEPA)面临的一项实际挑战是提供整个美国范围内当前8小时平均臭氧暴露量的实时预测。现在,将这种实时预测作为当前8小时平均臭氧的空间预测图来提供,该平均臭氧定义为前四个小时,当前小时的平均值以及接下来三个小时的预测值。当前每天8小时的平均模式每天在EPA-AIRNow网站上每天更新一次,其作用是表明我们如何在当前的实时预测系统上进行实质性的改进。为了实现这种预测,我们基于实时监控数据和数值模型输出的第一个差异引入了下标器融合模型。该模型具有灵活的系数结构,并使用有效的计算策略来拟合模型参数。我们的混合计算策略将连续的背景更新模型拟合与实时预测融合在一起。模型验证分析表明,我们正在实现非常准确准确的臭氧预测。

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