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Recursive neural network model for analysis and forecast of PM10 and PM2.5

机译:用于预测和预测PM10和PM2.5的递归神经网络模型

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摘要

Atmospheric particulate matter (PM) is one of the pollutant that may have a significant impact on human health. Data collected during three years in an urban area of the Adriatic coast are analysed using three models: a multiple linear regression model, a neural network model with and without recursive architecture. Measured meteorological parameters and PM10 concentration are used as input to forecast the daily averaged concentration of PM10 from one to three days ahead. All simulations show that the neural network with recursive architecture has better performances compared to both the multiple linear regression model and the neural network model without the recursive architecture. Results of PM forecasts are compared with the air quality limits for health protection to test the performance as operational tool. The inclusion of carbon monoxide (CO) concentration as further input parameter in the model, has been evaluated in terms of forecast improvements. Finally, all models are used to forecast the PM2.5 concentration, using as input the meteorological data, the PM10 and CO concentration, to simulate the situation when PM2.5 is not observed. The comparison between observed and forecasted PM2.5 shows that the neural network is able to forecast the PM2.5 concentrations even if PM2.5 is not included among the input parameters.
机译:大气颗粒物(PM)是可能对人体健康产生重大影响的污染物之一。使用三种模型分析在亚得里亚海海岸市区三年中收集的数据:多重线性回归模型,具有和不具有递归架构的神经网络模型。将测得的气象参数和PM10浓度用作输入,以预测未来1-3天PM10的每日平均浓度。所有仿真均表明,与多元线性回归模型和不具有递归架构的神经网络模型相比,具有递归架构的神经网络具有更好的性能。将PM预测的结果与保护健康的空气质量限值进行比较,以测试其作为操作工具的性能。一氧化碳(CO)浓度作为模型的进一步输入参数已根据预测改进进行了评估。最后,使用所有模型来预测PM2.5浓度,使用气象数据PM10和CO浓度作为输入来模拟未观察到PM2.5的情况。 PM2.5观测值与预测值之间的比较表明,即使输入参数中不包括PM2.5,神经网络也能够预测PM2.5浓度。

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