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Machine Learning Approaches for the Estimation of Particulate Matter (PM2.5) Concentration Levels: A Case Study in the Hyderabad City, India

机译:颗粒物质估算的机器学习方法(PM2.5)浓度水平:印度海德拉巴市的案例研究

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Particulate matter concentration is one among several variables monitored at regular intervals to calculate air quality indices (AQI) which are intended to help understand the acute and chronic effects of air quality on human health. The tine particulate (PM2.5) samplers installed at pollution monitoring stations continuously monitor the concentration of pollutant in air over time. The specific time-averaged concentration is then estimated from the continuous records. Missing data records in the PM2.5 time series is quite normal, which is attributed by faulty equipment, routine maintenance schedules, or replacement of equipment. When one or more point observations in a time series are missing, it is very essential to estimate or predict the missing values. This study presents the application of machine learning techniques such as support vector regression (SVR), group method of data handling (GMDH) network, and evolutionary adaptive neuro fuzzy inference system to estimate the 24-h average PM2.5 concentration levels at a particular station using PM2.5 concentration levels observed at neighborhood stations as inputs. The performance of these models are evaluated in terms of widely used statistical metrics such as centered root mean square difference (CRMSD), normalized Nash-Sutcliffe efficiency (NNSE), and correlation coefficient (R). The findings of the study reveal that the GMDH model provided reasonably accurate estimates of daily PM2.5 levels.
机译:颗粒物质浓度是以定期监测的几个变量中的一个,以计算旨在帮助了解空气质量对人体健康的急性和慢性效应的空气质量指标。在污染监测站安装的尖颗粒(PM2.5)采样器连续监测空气中污染物的浓度随时间。然后从连续记录估计特定的时间平均浓度。 PM2.5时间序列中缺少数据记录非常正常,其归因于有故障的设备,日常维护时间表或设备更换。当缺少时间序列中的一个或多个点观察时,估计或预测缺失值是非常重要的。本研究提出了机器学习技术的应用,例如支持向量回归(SVR),数据处理(GMDH)网络的组方法,以及进化的自适应神经模糊推理系统,以估计特定的24-H平均PM2.5浓度水平站在邻域站观察到的PM2.5浓度水平作为输入。根据广泛使用的统计指标(如居中的根均值(CRMSD),标准化的NASH-SUTCLIFFE效率(NNSE)和相关系数(R),评估这些模型的性能。该研究的调查结果表明,GMDH模型提供了合理准确的每日PM2.5级别的估计。

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