3D kriging interpolation for traffic noise visualization: Designing noise observation points and valuation of spatial interpolation accuracy.
Identifying the risk of traffic noise is vital in minimizing traffic noise pollution in urban areas. As noise travels in every direction, 3D visualization of traffic noise is essential, which involves visualising traffic noise along the facades of buildings. A standard traffic noise model is necessa...
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Online Access: | http://eprints.utm.my/108382/1/Wickramathilaka2023_3D%20KrigingInterpolationForTrafficNoiseVisualization.pdf http://eprints.utm.my/108382/ http://dx.doi.org/10.1088/1755-1315/1274/1/012001 |
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my.utm.1083822024-11-01T02:40:46Z http://eprints.utm.my/108382/ 3D kriging interpolation for traffic noise visualization: Designing noise observation points and valuation of spatial interpolation accuracy. Wickramathilaka, N. Ujang, U. TH434-437 Quantity surveying Identifying the risk of traffic noise is vital in minimizing traffic noise pollution in urban areas. As noise travels in every direction, 3D visualization of traffic noise is essential, which involves visualising traffic noise along the facades of buildings. A standard traffic noise model is necessary to calculate traffic noise levels, as several factors affect traffic noise. Moreover, designing noise observation points in 3D and spatial interpolation play significant roles in 3D noise visualisation. Therefore, this study demonstrates the results by elaborating on the spatial interpolation and designing noise observation points. A noise observation point consists of four parameters in 3D space. Generally, Inverse Distance Weighted (IDW), Triangular Irregular Network (TIN), and Kriging do not support the interpolation of four parameters in 3D. However, 3D Kriging in Empirical Bayesian Kriging provides significant opportunities to interpolate noise levels in 3D. However, the elements of the function of spatial interpolations are vital for accuracy. The 3D Kriging uses different variograms according to semivariance. This variogram directly impacts the weighting factor of 3D Kriging. Therefore, this study develops a comparison to identify the impact of different variograms on the accuracy of 3D Kriging interpolation on traffic noise. 2023 Conference or Workshop Item PeerReviewed application/pdf en http://eprints.utm.my/108382/1/Wickramathilaka2023_3D%20KrigingInterpolationForTrafficNoiseVisualization.pdf Wickramathilaka, N. and Ujang, U. (2023) 3D kriging interpolation for traffic noise visualization: Designing noise observation points and valuation of spatial interpolation accuracy. In: International Graduate Conference of Built Environment and Surveying 2023, GBES 2023, 17 September 2023 - 18 September 2023, Johor Bahru, Johor, Malaysia - Hybrid. http://dx.doi.org/10.1088/1755-1315/1274/1/012001 |
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TH434-437 Quantity surveying Wickramathilaka, N. Ujang, U. 3D kriging interpolation for traffic noise visualization: Designing noise observation points and valuation of spatial interpolation accuracy. |
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Identifying the risk of traffic noise is vital in minimizing traffic noise pollution in urban areas. As noise travels in every direction, 3D visualization of traffic noise is essential, which involves visualising traffic noise along the facades of buildings. A standard traffic noise model is necessary to calculate traffic noise levels, as several factors affect traffic noise. Moreover, designing noise observation points in 3D and spatial interpolation play significant roles in 3D noise visualisation. Therefore, this study demonstrates the results by elaborating on the spatial interpolation and designing noise observation points. A noise observation point consists of four parameters in 3D space. Generally, Inverse Distance Weighted (IDW), Triangular Irregular Network (TIN), and Kriging do not support the interpolation of four parameters in 3D. However, 3D Kriging in Empirical Bayesian Kriging provides significant opportunities to interpolate noise levels in 3D. However, the elements of the function of spatial interpolations are vital for accuracy. The 3D Kriging uses different variograms according to semivariance. This variogram directly impacts the weighting factor of 3D Kriging. Therefore, this study develops a comparison to identify the impact of different variograms on the accuracy of 3D Kriging interpolation on traffic noise. |
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Conference or Workshop Item |
author |
Wickramathilaka, N. Ujang, U. |
author_facet |
Wickramathilaka, N. Ujang, U. |
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Wickramathilaka, N. |
title |
3D kriging interpolation for traffic noise visualization: Designing noise observation points and valuation of spatial interpolation accuracy. |
title_short |
3D kriging interpolation for traffic noise visualization: Designing noise observation points and valuation of spatial interpolation accuracy. |
title_full |
3D kriging interpolation for traffic noise visualization: Designing noise observation points and valuation of spatial interpolation accuracy. |
title_fullStr |
3D kriging interpolation for traffic noise visualization: Designing noise observation points and valuation of spatial interpolation accuracy. |
title_full_unstemmed |
3D kriging interpolation for traffic noise visualization: Designing noise observation points and valuation of spatial interpolation accuracy. |
title_sort |
3d kriging interpolation for traffic noise visualization: designing noise observation points and valuation of spatial interpolation accuracy. |
publishDate |
2023 |
url |
http://eprints.utm.my/108382/1/Wickramathilaka2023_3D%20KrigingInterpolationForTrafficNoiseVisualization.pdf http://eprints.utm.my/108382/ http://dx.doi.org/10.1088/1755-1315/1274/1/012001 |
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