Short-term estimations of PM10 concentration in the Middle Black Sea region based on grey prediction models

IF 1.5 4区 环境科学与生态学 Q4 ENVIRONMENTAL SCIENCES Clean-soil Air Water Pub Date : 2023-10-05 DOI:10.1002/clen.202200400
Hülya Aykaç Özen, Hamdi Öbekcan
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Abstract

The Middle Black Sea region has experienced severe air pollution, with a significant increase in particulate matter (PM) concentration due to a growth in population, financial activity, and an expansion of transportation in recent years. Therefore, the prediction of PM concentration has become a topic of great significance to reduce air pollution and assess the effects on public health. In this study, the grey prediction model (GM (1,1)), the discrete grey model (DGM (1,1)), and the grey Verhulst model (GVM (1,1)) were used to estimate the PM10 concentration of the cities Amasya, Çorum, Ordu, and Samsun in the Middle Black Sea region, for the period from 2022 to 2026. The accuracy of the GM (1,1), DGM (1,1), and GVM (1,1) models in fitting data was calculated using the mean absolute percentage error (MAPE) value. Since three types of prediction models of MAPEs were less than 20%, they were considered a good value for prediction performance. Furthermore, the results showed that the PM10 concentrations of Amasya, Çorum, and Ordu showed a downward trend over the next 5 years. However, the GVM (1,1) model showed an upward trend in the yearly average PM10 concentration in Samsun. In conclusion, these models could be considered a reliable approach in early warning systems for emissions reduction and as a long-term policy for managing air quality in the Middle Black Sea region.

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基于灰色预测模型的黑海中部地区PM10浓度短期估计
黑海中部地区经历了严重的空气污染,由于近年来人口、金融活动和交通的扩张,颗粒物(PM)浓度显著增加。因此,预测PM浓度已成为减少空气污染和评估其对公众健康影响的重要课题。在本研究中,使用灰色预测模型(GM(1,1))、离散灰色模型(DGM(1,2))和灰色Verhulst模型(GVM(1))估计了黑海中部地区Amasya、Çorum、Ordu和Samsun市2022年至2026年期间的PM10浓度。使用平均绝对百分比误差(MAPE)值计算GM(1,1)、DGM(1,1)和GVM(1,1)模型在拟合数据中的准确性。由于三种类型的MAPE预测模型都小于20%,因此它们被认为是预测性能的良好值。此外,结果显示,Amasya、Çorum和Ordu的PM10浓度在未来5年呈下降趋势。然而,GVM(1,1)模型显示出Samsun的PM10年平均浓度呈上升趋势。总之,这些模型可以被视为减少排放的预警系统中的一种可靠方法,也是管理黑海中部地区空气质量的一项长期政策。
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来源期刊
Clean-soil Air Water
Clean-soil Air Water 环境科学-海洋与淡水生物学
CiteScore
2.80
自引率
5.90%
发文量
88
审稿时长
3.6 months
期刊介绍: CLEAN covers all aspects of Sustainability and Environmental Safety. The journal focuses on organ/human--environment interactions giving interdisciplinary insights on a broad range of topics including air pollution, waste management, the water cycle, and environmental conservation. With a 2019 Journal Impact Factor of 1.603 (Journal Citation Reports (Clarivate Analytics, 2020), the journal publishes an attractive mixture of peer-reviewed scientific reviews, research papers, and short communications. Papers dealing with environmental sustainability issues from such fields as agriculture, biological sciences, energy, food sciences, geography, geology, meteorology, nutrition, soil and water sciences, etc., are welcome.
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