Traffic noise prediction model using GIS and ensemble machine learning: a case study at Universiti Teknologi Malaysia (UTM) Campus

被引:0
作者
Almansi, Khaled Yousef [1 ]
Ujang, Uznir [1 ]
Azri, Suhaibah [1 ]
Wickramathilaka, Nevil [1 ,2 ]
机构
[1] Faculty of Built Environment and Surveying, Universiti Teknologi Malaysia, Johor, Skudai
[2] General Sir John Kotelawala Defence University, Southern Campus, Edison Hill, Sewanagala, Nugegalayaya
关键词
GIS; Interpolation; Machine learning; Noise mapping; Noise pollution; Traffic noise;
D O I
10.1007/s11356-024-35243-0
中图分类号
学科分类号
摘要
This study represents a pioneering effort to integrate geographic information systems (GIS) and ensemble machine learning methods to predict noise levels on a university campus. Three ensemble models including random forest (RF), gradient boosting (GB), and extreme gradient boosting (XGB) were developed to predict traffic noise based on data collected over a 4-week period at the Universiti Teknologi Malaysia (UTM) campus. Noise measurements were obtained during peak morning hours (7:30 to 9:30 a.m.) on weekdays within the UTM campus in Johor. Additional predictor variables, including data from the digital elevation model (DEM) and land use, were incorporated to capture the complex nonlinear relationships influencing noise levels. The models were optimized through hyperparameter tuning, resulting in high precision, as evidenced by performance metrics such as the coefficient of determination (R2), mean absolute error (MAE), and mean squared error (MSE). The XGB model emerged as the most accurate, with R2 = 0.96, MAE = 0.9, and MSE = 0.3. Noise maps generated using the inverse distance weighting (IDW) interpolation technique highlighted the spatial distribution of noise levels, classified into five classes considering WHO standards. The findings identified distance from roads, the number of light vehicles, and proximity to green areas as the most significant predictors. However, challenges remain in accurately predicting noise levels associated with other predictors. The outcomes of the study indicate the superior performance of the XGB model compared to the GB and RF models. The study recommends several measures to manage and control noise pollution on the UTM campus, including raising awareness, regulating and enforcing vehicle speed limits, reevaluating land use, installing sound insulation systems, and planting trees and vegetation buffer zones around and within educational buildings. © The Author(s), under exclusive licence to Springer-Verlag GmbH Germany, part of Springer Nature 2024.
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页码:60905 / 60926
页数:21
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共 61 条
  • [51] Trizoglou P., Liu X., Lin Z., Fault detection by an ensemble framework of extreme gradient boosting (XGBoost) in the operation of offshore wind turbines, Renew Energy, 179, pp. 945-962, (2021)
  • [52] Wickramathilaka N., Ujang U., Azri S., Choon T.L., Calculation of road traffic noise, development of data, and spatial interpolations for traffic noise visualization in three-dimensional space, Geomat Environ Eng, 17, 5, pp. 61-85, (2023)
  • [53] Wickramathilaka N., Ujang U., Azri S., Performance assessment of spatial interpolations for traffic noise mapping on undulating and level terrain, Geodesy Cartogr, 50, 1, pp. 35-42, (2024)
  • [54] Wickramathilaka N., Ujang U., Azri S., Road traffic noise pollution mitigation strategies based on 3D tree modelling and visualisation, Lect Notes Netw Syst, 938, LNNS, pp. 261-270, (2024)
  • [55] Wickramathilaka N., Ujang U., Azri S., Choon T.L., Three-dimensional visualisation of traffic noise based on the Henk de-Klujijver model, Noise Mapp, 10, 1, (2023)
  • [56] Yang W., Zhao Y., Wang D., Wu H., Lin A., He L., Using principal components analysis and IDW interpolation to determine spatial and temporal changes of Surfacewater quality of Xin’Anjiang river in Huangshan, China, Int J Environ Res Public Health, 17, 8, (2020)
  • [57] Yin X., Fallah-Shorshani M., McConnell R., Fruin S., Franklin M., Predicting fine spatial scale traffic noise using mobile measurements and machine learning, Environ Sci Technol, 54, 20, pp. 12860-12869, (2020)
  • [58] Zafar M.I., Bharadwaj S., Dubey R., Tiwary S.K., Biswas S., Reducing data requirements for simple and effective noise mapping: a case study of noise mapping using computational methods and GIS for the Raebareli City intersection, Acoustics, 5, 4, pp. 1066-1098, (2023)
  • [59] Zannin P.H.T., Engel M.S., Fiedler P.E.K., Bunn F., Characterization of environmental noise based on noise measurements, noise mapping and interviews: a case study at a university campus in Brazil, Cities, 31, pp. 317-327, (2013)
  • [60] Zhang Y., Zhao H., Li Y., Long Y., Liang W., Predicting highly dynamic traffic noise using rotating mobile monitoring and machine learning method, Environ Res, 229, (2023)