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首页> 外文期刊>Transactions of The Institution of Chemical Engineers. Process Safety and Environmental Protection, Part B >IER Photochemical Smog Evaluation and Forecasting of Short-Term Ozone Pollution Levels with Artificial Neural Networks
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IER Photochemical Smog Evaluation and Forecasting of Short-Term Ozone Pollution Levels with Artificial Neural Networks

机译:IER光化学烟雾的人工神经网络评估和臭氧短期污染水平预测

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摘要

The experimental work of this paper has been conducted over a period of one year, starting in January 1997, for measurement of air pollutants and meteorological parameters in the urban atmosphere of the Khaldiya residential area in Kuwait. The measurements were carried out simultaneously every 5 minutes by using the Kuwait University mobile air pollution monitoring laboratory (Chemical Engineering Department). The main emphasis of the paper has been placed on the problem of ozone for those days that are characterized by events of photochemical smog. The first objective of this paper deals specifically with the use of the Integrated Empirical Rate (IER) photochemical kinetic mechanism that has been developed at the Commonwealth Scientific and Industrial Research Organization (CSIRO) of Australia as a screening tool for photochemical smog assessment. The IER has been used to determine whether the local photochemistry of ozone events is light- limited (VOC-limited) or NOx-limited. Such information is necessary in developing an effective emission control plan and enables the decision as to whether NOx or NMHC emission needs to be controlled. On the other hand, the available models to predict the concentrations of ozone are complex and require a number of input data that are not easily acquired by environmental protection agencies or local industries. Thus, the second objective concerns the short-term forecasting of ozone concentration based on a neural network method.
机译:从1997年1月开始,本文进行了为期一年的实验工作,以测量科威特Khaldiya居住区城市大气中的空气污染物和气象参数。使用科威特大学移动空气污染监测实验室(化学工程系),每5分钟同时进行一次测量。本文的主要重点放在那些以光化学烟雾事件为特征的臭氧问题上。本文的第一个目标专门涉及由澳大利亚联邦科学和工业研究组织(CSIRO)开发的综合经验率(IER)光化学动力学机制,作为光化学烟雾评估的筛选工具。 IER已用于确定臭氧事件的局部光化学是受光限制(VOC限制)还是受NOx限制。在制定有效的排放控制计划时,此类信息是必不可少的,并且可以决定是否需要控制NOx或NMHC排放。另一方面,可用的预测臭氧浓度的模型很复杂,并且需要环境保护机构或当地企业不容易获得的大量输入数据。因此,第二个目标涉及基于神经网络方法的臭氧浓度的短期预测。

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