Please use this identifier to cite or link to this item: https://hdl.handle.net/1959.11/42869
Title: Traffic Noise Modelling Using Land Use Regression Model Based on Machine Learning, Statistical Regression and GIS
Contributor(s): Adulaimi, Ahmed Abdulkareem Ahmed (author); Pradhan, Biswajeet (author); Chakraborty, Subrata  (author)orcid ; Alamri, Abdullah (author)
Publication Date: 2021-08-18
Open Access: Yes
DOI: 10.3390/en14165095
Handle Link: https://hdl.handle.net/1959.11/42869
Abstract: 

This study estimates the equivalent continuous sound pressure level (Leq) during peak daily periods ('rush hour') along the New Klang Valley Expressway (NKVE) in Shah Alam, Malaysia, using a land use regression (LUR) model based on machine learning, statistical regression, and geographical information systems (GIS). The research utilises two types of soft computing methods including machine learning (i.e., decision tree, random frost algorithms) and statistical regression (i.e., linear regression, support vector regression algorithms) to determine the best approach to create a prediction Leq map at the NKVE in Shah Alam, Malaysia. The selection of the best algorithm is accomplished by considering correlation, correlation coefficient, mean-absolute-error, mean-square-error, root-mean-square-error, and mean absolute percentage error. Traffic noise level was monitored using three sound level meters (TES 52A), and a traffic tally was done to analyse the traffic flow. Wind speed was gauged using a wind speed meter. The study relied on a variety of noise predictors including wind speed, digital elevation model, land use type (specifically, if it was residential, industrial, or natural reserve), residential density, road type (expressway, primary, and secondary) and traffic noise average (Leq). The above parameters were fed as inputs into the LUR model. Additional noise influencing factors such as traffic lights, intersections, road toll gates, gas stations, and public transportation infrastructures (bus stop and bus line) are also considered in this study. The models utilised parameters derived from LiDAR (Light Detection and Ranging) data, and various GIS (Geographical Information Systems) layers were extracted to produce the prediction maps. The results highlighted the superior performances by the machine learning (random forest) models compared to the statistical regression-based models.

Publication Type: Journal Article
Source of Publication: Energies, 14(16), p. 1-19
Publisher: MDPI AG
Place of Publication: Switzerland
ISSN: 1996-1073
Fields of Research (FoR) 2020: 460106 Spatial data and applications
460306 Image processing
461103 Deep learning
Socio-Economic Objective (SEO) 2020: 280115 Expanding knowledge in the information and computing sciences
Peer Reviewed: Yes
HERDC Category Description: C1 Refereed Article in a Scholarly Journal
Appears in Collections:Journal Article
School of Science and Technology

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