利用机器学习技术预测风速对大气污染水平的影响

IF 1 Q4 ENGINEERING, CHEMICAL Chemical Product and Process Modeling Pub Date : 2023-02-20 DOI:10.1515/cppm-2022-0052
Anuradha Pandey, Vipin Kumar, A. Rawat, Nekram Rawal
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引用次数: 0

摘要

摘要空气污染是最具挑战性的问题之一,对人类健康和环境构成严重威胁。大都市人口的不断涌入使情况进一步恶化。实验量化空气污染是一项极具挑战性的任务,因为它取决于许多参数,即风速、风速、相对湿度、温度等。控制空气污染需要投入巨额资金和人力。基于机器学习技术的计算机建模减少了这两个参数。在目前的工作中,空气污染水平对风速和温度的依赖性已经使用机器学习以ANN和LSTM模型的形式进行了研究。空气污染水平(PM2.5)的记录数据是从勒克瑙市位于CPCB中央学校的一个测量站收集的。该数据用于基于人工神经的网络和LSTM模型,以在没有实验测量的情况下,适当地预测平均风速和温度的已知值的空气污染水平。对于所开发的人工神经网络,LSTM模型比人工神经网络更能预测污染水平。
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Prediction of effect of wind speed on air pollution level using machine learning technique
Abstract Air pollution is one of the most challenging issues poses serious threat to human health and environment. The increasing influx of population in metropolitan cities has further worsened the situation. Quantifying the air pollution experimentally is quite a challenging task as it depends on many parameters viz., wind speed, wind temperature, relative humidity, temperature etc. It requires the investment of huge money and manpower for controlling air pollution. Machine learning technique-based computer modelling reduces both of the parameters. In the present work, the dependence of air pollution level on wind speed and temperature has been taken up using machine learning in the form of ANN and LSTM model. The recorded data of air pollution level (PM2.5) is collected from a measurement station of Lucknow city situated at Central School, CPCB. The data is used in an Artificial Neural based network and in an LSTM model to predict suitably the level of air pollution for a known value of average wind speed and temperature without experimental measurements. LSTM model is found to predict the pollution level better than ANN for the developed ANN networks.
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来源期刊
Chemical Product and Process Modeling
Chemical Product and Process Modeling ENGINEERING, CHEMICAL-
CiteScore
2.10
自引率
11.10%
发文量
27
期刊介绍: Chemical Product and Process Modeling (CPPM) is a quarterly journal that publishes theoretical and applied research on product and process design modeling, simulation and optimization. Thanks to its international editorial board, the journal assembles the best papers from around the world on to cover the gap between product and process. The journal brings together chemical and process engineering researchers, practitioners, and software developers in a new forum for the international modeling and simulation community. Topics: equation oriented and modular simulation optimization technology for process and materials design, new modeling techniques shortcut modeling and design approaches performance of commercial and in-house simulation and optimization tools challenges faced in industrial product and process simulation and optimization computational fluid dynamics environmental process, food and pharmaceutical modeling topics drawn from the substantial areas of overlap between modeling and mathematics applied to chemical products and processes.
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