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2024 | OriginalPaper | Chapter

Prediction of Noise Pollution of Delhi City Using Machine Learning: A Case Study

Authors : Rajashri Khanai, Rajkumar Raikar, Mrutyunjay Uppinmath

Published in: Civil Engineering for Multi-Hazard Risk Reduction

Publisher: Springer Nature Singapore

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Abstract

This paper discusses the prediction of noise pollution during Deepawali festival of Delhi City using machine learning (ML) algorithms. The spatial noise pollution data of four locations of Delhi, namely Lajpat Nagar, Mayur Vihar-II, Kamla Nagar, and Pitam Pura were collected from the Central Pollution Control Board (CPCB). Seven regression models were used on the Python platform. Algorithms were run using Google Colab. As the data obtained were very little, additional two random data were generated and used in the analysis. It was found that among all models, Quantile Regression is a superior one in the prediction of noise level in the present study as compared to other ML models. It is observed that coefficient of determination with Quantile Regression is 0.792 for original data, 0.803 for 150 random data, and 0.801 for 300 random data. However, at other locations, the suitability of a particular regression model can be determined and recommended.

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Literature
1.
go back to reference Ahirwar AV, Bajpai S (2015) Assessment of noise pollution during Deepawali festival in Raipur city of Chhattisgarh, India. In: International conference on chemical, environmental and biological sciences (CEBS-2015), 18–19 Mar, Dubai Ahirwar AV, Bajpai S (2015) Assessment of noise pollution during Deepawali festival in Raipur city of Chhattisgarh, India. In: International conference on chemical, environmental and biological sciences (CEBS-2015), 18–19 Mar, Dubai
2.
go back to reference Dhanwate SV (2017) Study of noise level at Ravivar Karanja in Central Part of Nashik City during normal days and Diwali festival days. Int J Res Anal Rev 4(1):774–780 Dhanwate SV (2017) Study of noise level at Ravivar Karanja in Central Part of Nashik City during normal days and Diwali festival days. Int J Res Anal Rev 4(1):774–780
3.
go back to reference Chauhan GS, Wani S, Sharma V (2020) Comparative analysis of noise pollution during Deepawali festival in Chittorgarh City of Rajasthan. Compliance Eng J 11(3):294–300 Chauhan GS, Wani S, Sharma V (2020) Comparative analysis of noise pollution during Deepawali festival in Chittorgarh City of Rajasthan. Compliance Eng J 11(3):294–300
4.
go back to reference Yadav M, Patel RK, Yadav A, Sharma G, Pandey G (2021) Assessment of noise pollution at various locations of Gorakhpur. Int J Eng Sci Technol 13(1):131–137CrossRef Yadav M, Patel RK, Yadav A, Sharma G, Pandey G (2021) Assessment of noise pollution at various locations of Gorakhpur. Int J Eng Sci Technol 13(1):131–137CrossRef
5.
go back to reference Naqa I, Murphy MJ (2015) Machine learning in radiation oncology: theory and application. Springer International Publishing, Switzerland, pp 3–11 Naqa I, Murphy MJ (2015) Machine learning in radiation oncology: theory and application. Springer International Publishing, Switzerland, pp 3–11
6.
go back to reference Rebala G, Ravi A, Churiwala S (2019) An introduction to machine learning. Springer Nature, Switzerland, p 263 Rebala G, Ravi A, Churiwala S (2019) An introduction to machine learning. Springer Nature, Switzerland, p 263
7.
go back to reference Hu K, Rahaman A, Bhrugubanda H, Sivaraman V (2017) HazeEst: machine learning based metropolitan air pollution estimation from fixed and mobile sensors. IEEE Sens J 17(11):3517–3525CrossRef Hu K, Rahaman A, Bhrugubanda H, Sivaraman V (2017) HazeEst: machine learning based metropolitan air pollution estimation from fixed and mobile sensors. IEEE Sens J 17(11):3517–3525CrossRef
8.
go back to reference Guan Z, Sinnott RO (2018) Prediction of air pollution through machine learning approaches on the cloud. In: IEEE/ACM 5th international conference on big data computing applications and technologies (BDCAT), pp 51–60 Guan Z, Sinnott RO (2018) Prediction of air pollution through machine learning approaches on the cloud. In: IEEE/ACM 5th international conference on big data computing applications and technologies (BDCAT), pp 51–60
9.
go back to reference Khaiwal R et al (2016) Assessment of noise pollution in and around a sensitive zone in North India and its non-auditory impacts. Sci Total Environ 566:981–987 Khaiwal R et al (2016) Assessment of noise pollution in and around a sensitive zone in North India and its non-auditory impacts. Sci Total Environ 566:981–987
10.
go back to reference Garg N, Maji S (2016) A retrospective view of noise pollution control policy in India: status, proposed revisions and control measures. Curr Sci 29–38 Garg N, Maji S (2016) A retrospective view of noise pollution control policy in India: status, proposed revisions and control measures. Curr Sci 29–38
11.
go back to reference Sun W, Sun J (2017) Daily PM2.5 concentration prediction based on principal component analysis and LSSVM optimized by cuckoo search algorithm. J Environ Manag 188:144–152CrossRef Sun W, Sun J (2017) Daily PM2.5 concentration prediction based on principal component analysis and LSSVM optimized by cuckoo search algorithm. J Environ Manag 188:144–152CrossRef
12.
go back to reference Goswami S, Swain BK (2017) Environmental noise in India: a review. Curr Pollut Rep 3:220–229 Goswami S, Swain BK (2017) Environmental noise in India: a review. Curr Pollut Rep 3:220–229
13.
go back to reference Garg N et al (2016) A pilot study on the establishment of national ambient noise monitoring network across the major cities of India. Appl Acoust 103:20–29CrossRef Garg N et al (2016) A pilot study on the establishment of national ambient noise monitoring network across the major cities of India. Appl Acoust 103:20–29CrossRef
14.
go back to reference Sinnott RO, Guan Z (2018) Prediction of air pollution through machine learning approaches on the cloud. In: 2018 IEEE/ACM 5th international conference on big data computing applications and technologies (BDCAT). IEEE Sinnott RO, Guan Z (2018) Prediction of air pollution through machine learning approaches on the cloud. In: 2018 IEEE/ACM 5th international conference on big data computing applications and technologies (BDCAT). IEEE
Metadata
Title
Prediction of Noise Pollution of Delhi City Using Machine Learning: A Case Study
Authors
Rajashri Khanai
Rajkumar Raikar
Mrutyunjay Uppinmath
Copyright Year
2024
Publisher
Springer Nature Singapore
DOI
https://doi.org/10.1007/978-981-99-9610-0_3