空气污染环境监测预测的深度学习模型与优化算法

IF 1 4区 环境科学与生态学 Q4 ENVIRONMENTAL SCIENCES Global Nest Journal Pub Date : 2023-09-24 DOI:10.30955/gnj.004759
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引用次数: 0

摘要

空气污染监测正变得越来越重要,重点是对人类健康的影响。由于二氧化氮(NO2)和二氧化硫(SO2)是主要的污染物,许多预测其潜在危害的模型已经建立起来。尽管如此,做出精确的预测几乎是不可能的。对空气污染的预测使研究人员能够了解污染如何影响人类健康。空气质量恶化会导致肺癌和哮喘等呼吸系统疾病。污染对环境退化的影响也可以预测,并且可以在臭氧层中检测到减少。本研究还关注并推动智慧城市环境的发展,通过获取影响空气的有影响力的污染物,从而减少特定污染物的来源。采用人工神经网络(ANN)模型进行污染预测,并采用椋鸟杂音优化(SMO)过程对人工神经网络结构进行优化,以实现较低的预测误差。此外,在本研究工作中,我们使用了实时数据集,我们使用了Winsen ZPHS01B传感器模块来收集数据,并将数据存储在云平台中。将合成的数据用于训练和测试后,经过这个过程我们将对结果进行评估。评估所建议模型的性能。此外,使用两种可选的输入参数对perfect进行了测试:type as,其中包含变量(NO2和SO2)的各种滞后值,type as,仅包含yield变量的滞后值。收集到的结果表明,当考虑不同的网络输入变量时,预测模型比现有的联合预测基准模型更精确。</p>
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A deep learning model and optimization algorithm to forecasting Environment Monitoring of the Air pollution

Air pollution monitoring is becoming increasingly important, with an emphasis on the effects on human health. Because nitrogen dioxide (NO2) and sulphur dioxide (SO2) are the principal pollutants, many models for forecasting their potential harm have been created. Nonetheless, making precise predictions is nearly impossible. The prediction of air pollution enables researchers to understand how pollution affects human health. Deteriorating air quality can lead to respiratory diseases such as lung cancer and asthma. The effect of pollution on environmental degradation can also be predicted and reductions can be detected in the ozone layer. This study also focuses on and promotes the development of smart city environments by obtaining influential pollutants that affect the air, thereby reducing the source of specific pollutants An Artificial Neural Network (ANN) model is used as a forecast the pollution and the starling murmuration optimization (SMO) procedure is used to optimise the Artificial Neural Network strictures to achieve a lower forecasting error. Furthermore, in this research work, we used real time dataset as we have used Winsen ZPHS01B sensor module to collect the data, which is stored in cloud platform. After the composed data is used to train and test, after this process we will evaluate the results. To assess the performance of the suggested model. Furthermore, the perfect has been tested using two alternative kinds of input parameters: type as, which contains various lagged values of variables (NO2 and SO2), and type as, which only includes lagged values of the yield variables. The collected findings suggest that the projected model is more precise than existing joint forecasting benchmark models when different network input variables are considered.

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来源期刊
Global Nest Journal
Global Nest Journal 环境科学-环境科学
CiteScore
1.50
自引率
9.10%
发文量
100
审稿时长
>12 weeks
期刊介绍: Global Network of Environmental Science and Technology Journal (Global NEST Journal) is a scientific source of information for professionals in a wide range of environmental disciplines. The Journal is published both in print and online. Global NEST Journal constitutes an international effort of scientists, technologists, engineers and other interested groups involved in all scientific and technological aspects of the environment, as well, as in application techniques aiming at the development of sustainable solutions. Its main target is to support and assist the dissemination of information regarding the most contemporary methods for improving quality of life through the development and application of technologies and policies friendly to the environment
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