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高速公路细颗粒物和一氧化碳浓度预测模型:回归模型与神经网络模型的应用

Model for forecasting expressway fine particulate matter and carbon monoxide concentration: application of regression and neural network models.

作者信息

Thomas Salimol, Jacko Robert B

机构信息

School of Civil Engineering, Purdue University, West Lafayette, IN 47906, USA.

出版信息

J Air Waste Manag Assoc. 2007 Apr;57(4):480-8. doi: 10.3155/1047-3289.57.4.480.

Abstract

The Borman Expressway is a heavily traveled 16-mi segment of the Interstate 80/94 freeway through Northwestern Indiana. The Lake and Porter counties through which this expressway passes are designated as particulate matter < 2.5 microm (PM2.5) and ozone 8-hr standard nonattainment areas. The Purdue University air quality group has been collecting PM2.5, carbon monoxide (CO), wind speed, wind direction, pressure, and temperature data since September 1999. In this work, regression and neural network models were developed for forecasting hourly PM2.5 and CO concentrations. Time series of PM2.5 and CO concentrations, traffic data, and meteorological parameters were used for developing the neural network and regression models. The models were compared using a number of statistical quality indicators. Both models had reasonable accuracy in predicting hourly PM2.5 concentration with coefficient of determination -0.80, root mean square error (RMSE) <4 microg/m3, and index of agreement (IA) > 0.90. For CO prediction, both models showed moderate forecasting performance with a coefficient of determination -0.55, RMSE < 0.50 ppm, and IA -0.85. These models are computationally less cumbersome and require less number of predictors as compared with the deterministic models. The availability of real time PM2.5 and CO forecasts will help highway managers to identify air pollution episodic events beforehand and to determine mitigation strategies.

摘要

博尔曼高速公路是贯穿印第安纳州西北部的80/94号州际高速公路中一段交通繁忙的16英里路段。这条高速公路穿过的莱克县和波特县被指定为细颗粒物<2.5微米(PM2.5)和臭氧8小时标准未达标区域。自1999年9月以来,普渡大学空气质量小组一直在收集PM2.5、一氧化碳(CO)、风速、风向、气压和温度数据。在这项工作中,开发了回归模型和神经网络模型来预测每小时的PM2.5和CO浓度。利用PM2.5和CO浓度的时间序列、交通数据和气象参数来开发神经网络模型和回归模型。使用多个统计质量指标对这些模型进行了比较。两个模型在预测每小时PM2.5浓度方面都具有合理的准确性,决定系数为-0.80,均方根误差(RMSE)<4微克/立方米,一致性指数(IA)>0.90。对于CO预测,两个模型都显示出中等的预测性能,决定系数为-0.55,RMSE<0.50 ppm,IA为-0.85。与确定性模型相比,这些模型计算起来不那么繁琐,所需的预测变量数量也更少。实时PM2.5和CO预测的可用性将有助于高速公路管理人员提前识别空气污染突发事件并确定缓解策略。

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