An approach for classification of health risks based on air quality levels

Ranjana W. Gore, D. Deshpande
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引用次数: 51

Abstract

There is a need to exploit the available data collected on environment for the development of smart cities in order to improve the air quality which in turn can improve the quality of life for a city. Air pollution is becoming a serious concern to the society as the air pollutants are very hazardous in nature. Pollutants affect the health and causes respiratory and cardiac problems. If air pollutants cross the limits it might be life threatening. Software or tool can be developed whose results can be applied for predicting air pollution levels, predicting air pollution related health concerns, monitoring controlling air pollution and this is challenging one. This paper focuses on analysis of air based on the available data of various air pollutants such as NO2, SO2, CO and O3. The dataset is downloaded from Kaggle website which contains air pollutant's with corresponding AQI values. This paper implements Naive Bayes and Decision tree J48 algorithm for predicting the health concern. The categories based on Air Quality Index(AQI) are good, moderate, (unhealthy for sensitive groups) unhealthy_s, unhealthy, very_unhealthy. The result shown that decision tree algorithm gives 91.9978 % accuracy which is more than that of Naïve Bayes algorithm viz. 86.663%.
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基于空气质量水平对健康风险进行分类的方法
有必要利用收集到的环境数据来发展智能城市,以改善空气质量,从而提高城市的生活质量。空气污染是一个严重的社会问题,因为空气污染物是非常危险的性质。污染物影响健康,引起呼吸和心脏问题。如果空气污染物超标,可能会危及生命。可以开发软件或工具,其结果可用于预测空气污染水平,预测与空气污染有关的健康问题,监测控制空气污染,这是具有挑战性的一个。本文主要根据NO2, SO2, CO和O3等各种空气污染物的可用数据对空气进行分析。数据集从Kaggle网站下载,其中包含相应AQI值的空气污染物。本文实现了朴素贝叶斯和决策树J48算法对健康问题的预测。根据空气质量指数(AQI)分为良好、中等、(敏感人群不健康)不健康、不健康、非常不健康。结果表明,决策树算法的准确率为91.9978%,高于Naïve贝叶斯算法的准确率86.663%。
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