A Short-Term Autoregressive Model for the Prediction of Daily Average NO2 Concentration in Nagercoil, Tamil Nadu, India

P. Muthukrishnan, R. K. Sharma
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Abstract

Nitrogen dioxide (NO2) is one of the pollutants that can cause potential damage to the ecosystem. NO2 emitted from vehicles forms the primary precursor for ground-level ozone. In this study, an analysis of the daily average of NO2 concentration with meteorology measured for two years 2021 and 2022 is being carried out. It is evident from the analysis that NO2 concentration followed an apparent diurnal pattern with a maximum value in the morning hours and a minimum during the afternoon hours. Summer months recorded the highest, and North East Monsoon (NEM) recorded the lowest values of NO2. A statistically significant positive correlation was found between NO2 and Temperature. An autoregressive model was formulated to forecast the daily average values of NO2 concentration. Unit root test was performed to check the stationarity of the data points, which is important in determining trends and seasonal changes. From the model procedure, the order that best fits the data was identified as AR (4), in which the process has the current value based on the previous three values. The Akaike Information Criterion (AIC) and Schwartz Criterion (SC), which are estimators of prediction error for AR (4), are low. The Jarque confirmed the normal distribution-Bera test, which again approves the satisfactoriness of the model.
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用于预测印度泰米尔纳德邦纳格尔科尔日平均二氧化氮浓度的短期自回归模型
二氧化氮(NO2)是可能对生态系统造成潜在破坏的污染物之一。车辆排放的二氧化氮是地面臭氧的主要前体物。本研究分析了 2021 年和 2022 年两年的二氧化氮日平均浓度和气象测量值。分析结果表明,二氧化氮浓度呈明显的昼夜变化规律,上午最高,下午最低。夏季的二氧化氮浓度最高,而东北季风季节的二氧化氮浓度最低。二氧化氮与气温之间存在统计学意义上的正相关。为预测二氧化氮的日平均浓度值,建立了一个自回归模型。进行了单位根检验,以检查数据点的静止性,这对确定趋势和季节变化非常重要。根据模型程序,确定了最适合数据的阶次为 AR (4),在此过程中,当前值基于前三个值。Akaike 信息准则(AIC)和 Schwartz 准则(SC)是 AR(4)预测误差的估计值,均较低。Jarque 检验证实了正态分布-Bera 检验,这再次证明了模型的满意度。
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来源期刊
Nature Environment and Pollution Technology
Nature Environment and Pollution Technology Environmental Science-Environmental Science (all)
CiteScore
1.20
自引率
0.00%
发文量
159
审稿时长
36 weeks
期刊介绍: The journal was established initially by the name of Journal of Environment and Pollution in 1994, whose name was later changed to Nature Environment and Pollution Technology in the year 2002. It has now become an open access online journal from the year 2017 with ISSN: 2395-3454 (Online). The journal was established especially to promote the cause for environment and to cater the need for rapid dissemination of the vast scientific and technological data generated in this field. It is a part of many reputed international indexing and abstracting agencies. The Journal has evoked a highly encouraging response among the researchers, scientists and technocrats. It has a reputed International Editorial Board and publishes peer reviewed papers. The Journal has also been approved by UGC (India). The journal publishes both original research and review papers. The ideology and scope of the Journal includes the following. -Monitoring, control and management of air, water, soil and noise pollution -Solid waste management -Industrial hygiene and occupational health -Biomedical aspects of pollution -Toxicological studies -Radioactive pollution and radiation effects -Wastewater treatment and recycling etc. -Environmental modelling -Biodiversity and conservation -Dynamics and behaviour of chemicals in environment -Natural resources, wildlife, forests and wetlands etc. -Environmental laws and legal aspects -Environmental economics -Any other topic related to environment
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