Heo Jeong-Sook, Kim Dong-Sool
Department of Environmental Science and Engineering, School of Environmental and Applied Chemistry, Kyung-Hee University, Yongin-City, Kyunggi-do 449-701 South Korea.
Sci Total Environ. 2004 Jun 5;325(1-3):221-37. doi: 10.1016/j.scitotenv.2003.11.009.
This study describes the method of forecasting daily maximum ozone concentrations at four monitoring sites in Seoul, Korea. The forecasting tools developed are fuzzy expert and neural network systems. The hourly data for air pollutants and meteorological variables, obtained both at the surface and at the high elevation (500 hPa) stations of Seoul City for the period of 1989-1999, were analyzed. Two types of forecast models are developed. The first model, Part I, uses a fuzzy expert system and forecasts the possibility of high ozone levels (equal to or above 80 ppb) occurring on the next day. The second model, Part II, uses a neural network system to forecast the daily maximum concentration of ozone on the following day. The forecasting system includes a correction function so that the existing model can be updated whenever a new ozone episode appears. The accuracy of the forecasting system has been improved continuously through verification and augmentation.
本研究描述了韩国首尔四个监测站点每日最大臭氧浓度的预测方法。所开发的预测工具为模糊专家系统和神经网络系统。对1989 - 1999年期间在首尔市地面站和高海拔(500百帕)站获取的空气污染物和气象变量的每小时数据进行了分析。开发了两种类型的预测模型。第一种模型,即第一部分,使用模糊专家系统预测次日出现高臭氧水平(等于或高于80 ppb)的可能性。第二种模型,即第二部分,使用神经网络系统预测次日臭氧的每日最大浓度。该预测系统包括一个校正函数,以便每当出现新的臭氧事件时可以更新现有模型。通过验证和扩充,预测系统的准确性不断提高。