埃及十月城市空气质量预测的卷积神经网络深度学习模型

IF 3.1 Q2 CONSTRUCTION & BUILDING TECHNOLOGY
N. Elshaboury, Eslam Mohammed Abdelkader, A. Al-Sakkaf
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引用次数: 0

摘要

目的现代人类社会的不断进步对空气质量产生了负面影响。日常运输、工业和住宅运营会在我们的环境中制造危险的污染物。解决空气污染问题对人类健康和生态系统至关重要,尤其是在埃及等发展中国家。污染物水平过高与多种循环系统、呼吸系统和神经系统疾病有关。为此,本文的目的是基于时间序列分析预测埃及的空气污染浓度。设计/方法/方法利用深度学习模型分析埃及10月6日城市的空气质量时间序列。在这方面,卷积神经网络(CNN)、长短期记忆网络和多层感知器神经网络模型用于预测二氧化硫(SO2)和颗粒物的总体浓度10 直径为µm(PM10)。这些模型是通过使用埃及环境事务局在2014年12月至2020年7月期间提供的月度数据进行培训和验证的。使用确定系数、均方根误差和平均绝对误差等性能指标来评估模型的结果。发现CNN模型在预测未来3、6、9和12个月的污染物浓度方面表现出最佳性能。最后,使用2014年12月至2021年7月的数据,CNN模型用于预测未来12个月的污染物浓度。2022年7月,SO2和PM10的总浓度预计将分别达到10和127 µg/m3。开发的模式可以帮助决策者、从业者和地方当局规划和实施各种干预措施,以减轻其对人口和环境的负面影响。独创性/价值这项研究介绍了一种有效的时间序列模型的开发,该模型可以预测埃及未来颗粒物和气体空气污染物的浓度。这项研究首次应用深度学习模型预测埃及的空气质量。这项研究考察了使用标准性能指标预测二氧化硫和特定物质浓度的机器学习方法和深度学习技术的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Convolutional neural network-based deep learning model for air quality prediction in October city of Egypt
Purpose Modern human society has continuous advancements that have a negative impact on the quality of the air. Daily transportation, industrial and residential operations churn up dangerous contaminants in our surroundings. Addressing air pollution issues is critical for human health and ecosystems, particularly in developing countries such as Egypt. Excessive levels of pollutants have been linked to a variety of circulatory, respiratory and nervous illnesses. To this end, the purpose of this research paper is to forecast air pollution concentrations in Egypt based on time series analysis. Design/methodology/approach Deep learning models are leveraged to analyze air quality time series in the 6th of October City, Egypt. In this regard, convolutional neural network (CNN), long short-term memory network and multilayer perceptron neural network models are used to forecast the overall concentrations of sulfur dioxide (SO2) and particulate matter 10 µm in diameter (PM10). The models are trained and validated by using monthly data available from the Egyptian Environmental Affairs Agency between December 2014 and July 2020. The performance measures such as determination coefficient, root mean square error and mean absolute error are used to evaluate the outcomes of models. Findings The CNN model exhibits the best performance in terms of forecasting pollutant concentrations 3, 6, 9 and 12 months ahead. Finally, using data from December 2014 to July 2021, the CNN model is used to anticipate the pollutant concentrations 12 months ahead. In July 2022, the overall concentrations of SO2 and PM10 are expected to reach 10 and 127 µg/m3, respectively. The developed model could aid decision-makers, practitioners and local authorities in planning and implementing various interventions to mitigate their negative influences on the population and environment. Originality/value This research introduces the development of an efficient time-series model that can project the future concentrations of particulate and gaseous air pollutants in Egypt. This research study offers the first time application of deep learning models to forecast the air quality in Egypt. This research study examines the performance of machine learning approaches and deep learning techniques to forecast sulfur dioxide and particular matter concentrations using standard performance metrics.
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来源期刊
Construction Innovation-England
Construction Innovation-England CONSTRUCTION & BUILDING TECHNOLOGY-
CiteScore
7.10
自引率
12.10%
发文量
71
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