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首页> 外文期刊>Journal of the Air & Waste Management Association >Temporal and spatial statistical analysis of ambient air quality of Assam (India)
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Temporal and spatial statistical analysis of ambient air quality of Assam (India)

机译:ASSAM(印度)环境空气质量的时间和空间统计分析

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Present paper represents the spatio-temporal variation of air quality and performances of geosta-tistical tools for the identification of pollutants zone in various districts of Assam (India). Geographic Information System (GIS) and geostatistical analysis were utilized to estimate the spatio-temporal variations (2015-2017) of gaseous and particulate air pollutants. Data of 23 fixed monitoring stations were collected from the Central Pollution Control Board (CPCB). It was observed that SO_2 and NO_x concentrations are the major pollutants to the deterioration of air quality in Assam State. Exploratory data analysis was considered for the determination of spatial and temporal patterns of air pollutants. Air Quality index (AQI) was calculated based on the air pollutants and particulate matter. Radial Basis Function (RBF) interpolation techniques were used to analyze the spatial and temporal variation of air quality in Assam. Cross-validation is applied to evaluate the accuracy of interpolation methods in terms of Root Mean Square Error (RMSE), Mean Absolute Percentage Error (MAPE), Nash-Sutcliffe Equation (NSE) and Accuracy Factor (ACFT). In 2015, the high value of AQI portrayed in the central and northeast of the state. In 2016, the central and entire east of the study area was recorded the highest value of AQI. In 2017, it was observed that mostly the central part of the state recorded the high value of AQI. The spatio-temporal variation trend of air pollutants provides sound scientific basis for its management and control. This information of air pollution congregation would be valuable for urban planners and decision architects to efficiently administer air quality for health and environmental purposes. Implications: Guwahati is one of the most polluted cities in India provided a novel evidence to find out the impact of air pollution. Present study has been suffered from several limitations, like (ⅰ) the daily or weekly concentration of air pollutants was not gained due to limited monitoring technique, (2) dearth of regular information of PM2.5 collection, which were not regularly connected. Present study is used to estimate the spatio-temporal variations (2015-2017) of gaseous and particulate air pollutants using GIS and spatial statistical approach. Probably, this is the first study to report the spatial and temporal variation of air quality distribution in Assam. Results showed there is a negative impact on the ambient air quality status of Assam. These industries and mining areas contribute significantly to the air pollution in this deltaic region. This district-wise information of air pollution congregation would be valuable for urban planners and decision architects to efficiently administer air quality for health and environmental purposes. The dissimilarity in geographical dissemination of the pollutant concentration has been more helpful in seasonal inevitability. Consequently, a continuous set of data and more parameters can be included to attain more reliable results.
机译:本文代表了在阿萨姆(印度)各地区鉴定污染物区的地球质量和地球化学工具的时空变化。地理信息系统(GIS)和地统计分析用于估计气态和颗粒空气污染物的时空变化(2015-2017)。从中央污染管制委员会(CPCB)收集23个固定监测站的数据。观察到SO_2和NO_X浓度是ASSAM状态下空气质量恶化的主要污染物。考虑了探索性数据分析来确定空气污染物的空间和时间模式。基于空气污染物和颗粒物质计算空气质量指数(AQI)。径向基函数(RBF)插值技术用于分析ASSAM中空气质量的空间和时间变化。应用交叉验证以评估单位均方误差(RMSE),平均绝对百分比误差(MAPE),NASH-SUTCLIFFE等式(NSE)和精度系数(ACFT)的插值方法的准确性。 2015年,AQI的高价值在州的中央和东北体现出来。 2016年,研究区的中东和整个东部被记录为AQI的最高价值。 2017年,观察到,大多数国家的中心部分记录了AQI的高价值。空气污染物的时空变化趋势为其管理和控制提供了健全的科学依据。这种空气污染会众的信息对于城市规划者和决策建筑师来说是有价值的,以有效地管理健康和环境目的的空气质量。含义:Guwahati是印度最污染的城市之一提供了一种新的证据来找出空气污染的影响。目前的研究已经遭受了几个限制,如(Ⅰ)由于监测技术有限,(2)PM2.5收集的常规信息的日常信息,每天或每周空气污染物的浓度未获得,这是不经常联系的。目前的研究用于估计使用GIS和空间统计方法来估计气态和微粒空气污染物的时空变化(2015-2017)。可能,这是第一次报告ASSAM中空气质量分布的空间和时间变化的研究。结果表明,对阿西姆的环境空气质量状况存在负面影响。这些行业和采矿区对该时代地区的空气污染有显着贡献。这种空气污染众的典型信息对于城市规划者和决策建筑师来说是有价值的,以有效地管理健康和环境目的的空气质量。污染物浓度的地理传播中的异常态度在季节性不可避免的情况下更有用。因此,可以包括连续数据和更多参数以获得更可靠的结果。

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