Exploratory Data Analytics of Air Pollutant Data for Air Quality Management Application

Oluwatomisin Ajayi
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Abstract

Purpose: With escalating concerns over the detrimental impacts of air pollution on public health and the environment, this study embarks on a comprehensive exploration of air quality dynamics, focusing on Ogun state metropolis of Nigeria. The primary objective is to contribute to the burgeoning field of air quality management by harnessing the power of data analytics, exploratory data analysis, and advanced python programming libraries. The study seeks to address critical questions regarding the current state of air quality, major sources of pollution, government interventions, and individual contributions to better air quality. Methodology: The research employs Exploratory Data Analysis to unveil intrinsic patterns and trends within historical air quality datasets extracted from IoT devices located across Ogun state. This initial phase aims to discern key statistical parameters, including mean concentrations, variations, and correlations among various pollutants. Subsequently, the study employs Topic Modeling to extract latent themes and sentiments from qualitative data, specifically focusing on public opinions gathered through digital surveys. Resulting topics provide insights into public perceptions regarding air quality, pollution sources, and the efficacy of governmental interventions. Findings: Experimental result is revealing of the diversity of the dataset. The EDA returned a mean Particulate Matter concentration of approximately 12.65 µg/m³, while the mean Nitric Oxide concentration is approximately 13.56 µg/m³. Notable correlations include a strong positive correlation between PM2.5 and PM10 (0.69), indicating a substantial association between fine and coarse particulate matter. Additionally, there is a noteworthy positive correlation between NO and Nox (0.97), suggesting a high degree of correlation between nitric oxide and nitrogen oxide levels. However, negative correlations are observed, such as the substantial negative correlation between RH (relative humidity) and PM2.5 (-0.46), implying an inverse relationship between humidity and fine particulate matter levels. The study develops an innovative air quality management application. Unique Contribution to Theory, Practice and Policy: The application aims to empower both the public and policymakers with actionable insights, fostering informed decision-making and collaborative efforts towards improving air quality. It is highly recommended that industry experts should continue to imbibe ethical standards in data acquisition and deployment practices. 
空气质量管理应用中的空气污染物数据探索性数据分析
目的:随着人们对空气污染对公众健康和环境的有害影响的关注不断升级,本研究以尼日利亚奥贡州大都市为重点,对空气质量动态进行了全面探索。主要目的是利用数据分析、探索性数据分析和高级 python 编程库的力量,为新兴的空气质量管理领域做出贡献。本研究旨在解决空气质量现状、主要污染源、政府干预措施以及个人对改善空气质量的贡献等关键问题。研究方法:研究采用了探索性数据分析方法,以揭示从奥贡州各地物联网设备中提取的历史空气质量数据集的内在模式和趋势。初始阶段的目标是找出关键的统计参数,包括各种污染物的平均浓度、变化和相关性。随后,该研究采用主题建模技术从定性数据中提取潜在主题和情感,特别关注通过数字调查收集的公众意见。由此产生的主题可帮助我们深入了解公众对空气质量、污染源和政府干预措施效果的看法。研究结果实验结果揭示了数据集的多样性。EDA 返回的颗粒物平均浓度约为 12.65 µg/m³,而一氧化氮平均浓度约为 13.56 µg/m³。值得注意的相关性包括 PM2.5 和 PM10 之间的强正相关性(0.69),这表明细颗粒物和粗颗粒物之间有很大的关联。此外,氮氧化物和氮氧化物之间存在值得注意的正相关性(0.97),表明一氧化氮和氮氧化物水平之间存在高度相关性。不过,也观察到一些负相关关系,如相对湿度(RH)与 PM2.5 之间存在显著的负相关关系(-0.46),这意味着湿度与细颗粒物水平之间存在反向关系。该研究开发了一种创新的空气质量管理应用。对理论、实践和政策的独特贡献:该应用旨在为公众和政策制定者提供可操作的见解,促进知情决策和改善空气质量的合作努力。强烈建议行业专家在数据采集和部署实践中继续遵守道德标准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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