基于深度学习驱动的原子轨道搜索算法的空气污染监测方法

IF 1 4区 环境科学与生态学 Q4 ENVIRONMENTAL SCIENCES Global Nest Journal Pub Date : 2023-11-10 DOI:10.30955/gnj.005373
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引用次数: 0

摘要

空气污染是导致健康问题和天气变化的主要原因,而天气变化是人类最危险的问题之一。这是21世纪最重要的环境问题,已经引起了全球的关注。汽车过剩、工业生产污染、交通燃料消耗和能源生产加剧了这些挑战。因此,大气污染预报的发展至关重要。空气污染监测是对某一地点的空气质量进行分析和测量,以确定几种污染物和污染物存在的水平的过程。监测空气污染对于了解其来源、对环境和人类健康的影响以及执行减轻其影响的方法至关重要。空气污染预测方法采用深度学习方法。因此,本研究开发了一种基于深度学习驱动的空气污染监测(AOSADL-APM)方法的原子轨道搜索算法。AOSADL-APM技术的目的是预测和分类空气污染物的存在。在AOSADL-APM技术中,采用最小-最大归一化方法对数据进行预处理。对于空气污染预测和分类,AOSADL-APM技术采用深度长短期记忆(DLSTM)方法。为了提高AOSADL-APM技术的性能,提出了基于AOSADL-APM的超参数调优方法。使用基准数据集对AOSADL-APM技术的仿真结果进行了测试。广泛的结果分析了AOSADL-APM算法与现有方法相比的更大解决方案。</p>
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Air Pollution Monitoring Approach using Atomic Orbital Search Algorithm with Deep Learning Driven

Air pollution is a major reason for health-related issues and weather changes, one of humanity's most dangerous problems. It is the most crucial environmental issue in the 21st century and has attracted global attention. These challenges are exacerbated by an overabundance of automobiles, industrial output pollution, transportation fuel consumption, and energy generation. Therefore, air pollution prediction was developed vital. Air pollution monitoring is the procedure of analyzing and measuring the air quality in a certain place to develop the levels of several pollutants and contaminants present. Monitoring air pollution is vital to understand its sources, and effects on the environment and human health, and for executing methods for mitigating its effects. Deep learning (DL) approaches are employed for air pollution predicting methods. Therefore, this study develops an Atomic Orbital Search Algorithm with a Deep Learning-Driven Air Pollution Monitoring (AOSADL-APM) approach. The purpose of the AOSADL-APM technique is to predict and classify the presence of air pollutants. In the presented AOSADL-APM technique, the min-max normalization approach is applied for data pre-processing. For air pollution prediction and classification, the AOSADL-APM technique applies deep long short-term memory (DLSTM) methodology. To enhance the performance of the AOSADL-APM technique, the AOSA-based hyperparameter tuning has been developed. The simulation results of the AOSADL-APM technique were tested using the benchmark dataset. The widespread outcome analyzed the greater solution of the AOSADL-APM algorithm compared to existing approaches.

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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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