Publication: Applying mathematical modeling to predict road traffic noise in Phuket Province, Thailand
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Issued Date
2019-01-01
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ISSN
21862982
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2-s2.0-85067619206
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Mahidol University
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SCOPUS
Bibliographic Citation
International Journal of GEOMATE. Vol.17, No.62 (2019), 133-139
Suggested Citation
Withida Patthanaissaranukool, Kulnapa Bunnakrid, Tanasri Sihabut Applying mathematical modeling to predict road traffic noise in Phuket Province, Thailand. International Journal of GEOMATE. Vol.17, No.62 (2019), 133-139. doi:10.21660/2019.62.00305 Retrieved from: https://repository.li.mahidol.ac.th/handle/123456789/49896
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Title
Applying mathematical modeling to predict road traffic noise in Phuket Province, Thailand
Abstract
© Int. J. of GEOMATE. Road traffic is the most significant source of noise in an urban city and is considered not only an environmental nuisance but also a threat to public health. Therefore, this study aimed to determine road traffic noise levels in Phuket Province, including Muang Phuket, Thalang, and Kathu District; and to compare them with predicted noise levels using NMTHAI 1.2. Traffic noise level, traffic volume and speed of vehicles were measured on main roads including Yaowarat, Ratsada, Montri, Patipat, Ban Muangmai, Ban Kain, Ban Lipon, Baramee and Vichitsongkram Road. The results showed that traffic noise in Muang Phuket, Thalang and Kathu Districts were 70.0-70.9, 72.9-74.7 and 74.6-74.8 dBA, respectively. The result revealed that traffic noise levels obtained from the model were higher than measured noise at an average of 4.8±2.3 dBA. A high correlation was observed between predicted and measured traffic noise levels (R2 = 0.655, P < 0.01). Speed of vehicles and traffic volume were key variables affecting traffic noise level with a correlation coefficient of 0.752 and 0.702 at 99% confidence level, respectively. The model performed reasonably well under different traffic noise conditions and could predict traffic noise of other cities in Thailand.