Real-Time Air Quality Index Detection through Regression-Based Convolutional Neural Network Model on Captured Images

IF 1.5 Q4 ENGINEERING, ENVIRONMENTAL
Pritisha Sarkar, Duranta Durbaar Vishal Saha, Mousumi Saha
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引用次数: 0

Abstract

Our research addresses the imperative need for an efficient air quality monitoring and forecasting system to mitigate the significant health risks of air pollution. Departing from conventional binary data collection methods, we employ image-based techniques to overcome inherent limitations. A pioneering aspect of our work involves the development of a novel model capable of predicting six air pollutants (PM2.5, PM10, O3, CO, SO2, NO2) along with Air Quality Index for Bengaluru, Delhi, and Tamil Nadu, achieving a commendable mean absolute error of 0.1432 on the test set. The efficacy of our approach is validated through a meticulously curated dataset comprising approximately 5455 images. We emphasize the significance of normalization by presenting outputs before and after, shedding light on the impact of parameters with varying ranges and strategies employed to mitigate such discrepancies. A detailed analysis of our model's best and worst outputs provides valuable insights into its strengths and limitations. To enhance user accessibility, we introduce an innovative image-based, real-time, user-friendly dashboard that allows users to conveniently assess a location's air pollution levels by uploading an image. This holistic approach offers a promising avenue for accurate air quality prediction and real-time monitoring.

通过基于回归的卷积神经网络模型在捕获图像上实时检测空气质量指数
我们的研究解决了对高效空气质量监测和预报系统的迫切需求,以减轻空气污染对健康的重大危害。与传统的二元数据收集方法不同,我们采用基于图像的技术来克服固有的局限性。我们工作的一个开创性方面是开发了一个新型模型,该模型能够预测六种空气污染物(PM2.5、PM10、O3、CO、SO2、NO2)以及班加罗尔、德里和泰米尔纳德邦的空气质量指数,在测试集上实现了值得称赞的平均绝对误差 0.1432。我们通过精心策划的数据集(包括约 5455 幅图像)验证了我们方法的有效性。我们通过展示前后的输出结果来强调归一化的重要性,从而揭示了不同范围参数的影响以及为减少这些差异而采用的策略。我们对模型的最佳和最差输出结果进行了详细分析,为了解其优势和局限性提供了宝贵的见解。为了提高用户的可访问性,我们引入了一个基于图像、实时、用户友好的创新仪表板,允许用户通过上传图像方便地评估一个地点的空气污染水平。这种综合方法为准确的空气质量预测和实时监测提供了一条大有可为的途径。
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来源期刊
Environmental Quality Management
Environmental Quality Management Environmental Science-Management, Monitoring, Policy and Law
CiteScore
2.20
自引率
0.00%
发文量
94
期刊介绍: Four times a year, this practical journal shows you how to improve environmental performance and exceed voluntary standards such as ISO 14000. In each issue, you"ll find in-depth articles and the most current case studies of successful environmental quality improvement efforts -- and guidance on how you can apply these goals to your organization. Written by leading industry experts and practitioners, Environmental Quality Management brings you innovative practices in Performance Measurement...Life-Cycle Assessments...Safety Management... Environmental Auditing...ISO 14000 Standards and Certification..."Green Accounting"...Environmental Communication...Sustainable Development Issues...Environmental Benchmarking...Global Environmental Law and Regulation.
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