COMPARISON OF PREDICTIVE MODELS IN DATA MINING AND IMPACTS OF AIR POLLUTION IN METROPOLITAN CITIES

Rahul Sharma, Renu Jaiswal, Ankit Chakrawarti
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引用次数: 1

Abstract

In the past decades, as a result of the enormous environmental load, the air quality in the city has worsened in India. The remarkable increase in vehicle population and industries has led to the concentration of air pollutants in major metropolitan cities. The behavior of the air pollutants has a severs mash on human health and environment. To safeguard human health, the health risks posed by the increasing rate of air pollution on a wide scale must be projected and predicted. Monitoring and forecasting the vast amounts of data generated from numerous monitoring stations across the city has been a topic of debate. This led to the scientist to look for several predicting data mining techniques and big data analytics to monitor and predict the urban air quality. Data mining combines statistical, machine learning, and graphical approaches to extract information into a format that can be used in a variety of real-world applications. This study applies data mining to uncover the hidden knowledge of air pollution distribution in the voluminous data retrieved from monitoring stations National Air Monitoring Program (NAMP) station , National Ambient Air Quality (NAAQ) standards, Central Pollution Control Board. This article covers several ways to predicting urban air quality using data mining techniques such as linear regression, back propagation, and big data analytics such as Map reduction and Geostatistical algorithms
大城市空气污染数据挖掘预测模型的比较与影响
在过去的几十年里,由于巨大的环境负荷,印度城市的空气质量恶化了。机动车数量和工业的显著增加导致了大城市空气污染物的集中。大气污染物的行为对人类健康和环境有着严重的影响。为了保障人类健康,必须对日益严重的大范围空气污染所带来的健康风险进行预测和预测。监控和预测来自整个城市众多监测站产生的大量数据一直是一个争论的话题。这促使科学家寻找几种预测数据挖掘技术和大数据分析来监测和预测城市空气质量。数据挖掘结合了统计、机器学习和图形方法,将信息提取为可用于各种实际应用程序的格式。本研究运用数据挖掘技术,从国家空气监测计划(NAMP)监测站、国家环境空气质量(NAAQ)标准、中央污染控制委员会等监测站获取的大量数据中,揭示空气污染分布的隐性知识。本文介绍了几种使用数据挖掘技术预测城市空气质量的方法,如线性回归、反向传播和大数据分析,如地图还原和地理统计算法
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