Analyzing Correlation Between Air and Noise Pollution with Influence on Air Quality Prediction

Arindam Ghosh, Prithviraj Pramanik, Kartick Das Banerjee, Ashutosh Roy, S. Nandi, Sujoy Saha
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引用次数: 10

Abstract

Air and noise pollution are two major factors that determine the quality of life of the people living in cities. The prime reasons for the rise of air and noise pollution are due to imbalanced urbanization, unregulated increase in traffic and inorganic industrialization. These have resulted in compromising the well-being of the citizens. In this context, the concept of smart cities has been developed. They inherently have the ability to sense and respond to the challenges which characterizes regular cities with the help of embedded intelligence. It has become important to monitor the environmental parameters for policy-making, planning and for making smart cities livable and sustainable. In a bid to make a smart city, in this work, we have studied the spatio-temporal relationship between air and noise pollution in four different locations and have also evaluated the effect of noise in predicting Air Quality(AQ). Data acquisition has been done using customized, self-developed CO_2; NO_2; PM2:5, humidity, temperature and intensity of noise. To determine the relationship between air and noise pollution, we have used Pearson correlation. Results show a strong association between the two types of pollution. For predicting the air quality, the impact of noise pollution as a feature has been investigated using three different machine learning models which are Decision Tree, Random Forest and K-Nearest Neighbors. When applicable, the results show that if noise pollution is used as a feature, we get a prediction accuracy of upto 95% which is an improvement of 5% on an average
空气与噪声污染的相关性分析及对空气质量预测的影响
空气和噪音污染是决定城市居民生活质量的两个主要因素。空气和噪音污染增加的主要原因是不平衡的城市化、不受管制的交通增长和无机工业化。这些都损害了公民的福祉。在这种背景下,智慧城市的概念应运而生。在嵌入式智能的帮助下,它们天生就有能力感知和应对常规城市所面临的挑战。监测环境参数对于决策、规划和使智慧城市宜居和可持续发展变得非常重要。为了建设一个智慧城市,在这项工作中,我们研究了四个不同地点的空气和噪音污染之间的时空关系,并评估了噪音在预测空气质量(AQ)中的作用。数据采集采用定制的、自主研发的CO_2;NO_2;PM2:5,湿度、温度和噪声强度。为了确定空气和噪音污染之间的关系,我们使用了皮尔逊相关。结果显示,这两种污染之间存在很强的关联。为了预测空气质量,噪声污染作为一个特征的影响已经使用三种不同的机器学习模型进行了研究,这三种模型是决策树、随机森林和k近邻。在适用的情况下,结果表明,如果将噪声污染作为一个特征,我们的预测精度高达95%,平均提高了5%
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