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Overview of the neural network based technique for monitoring of road condition via reconstructed road profiles

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dc.contributor.author Ngwangwa, HM
dc.contributor.author Heyns, PS
dc.contributor.author Labuschagne, FJJ
dc.contributor.author Kululanga, GK
dc.date.accessioned 2008-08-27T08:18:58Z
dc.date.available 2008-08-27T08:18:58Z
dc.date.issued 2008-07
dc.identifier.citation Ngwangwa, HM et al. 2008. Overview of the neural network based technique for monitoring of road condition via reconstructed road profiles. Partnership for research and progress in Transportation. 27th Southern African Transport Conference (SATC), Pretoria, South Africa, July 7-11, 2008, pp 312-329 en
dc.identifier.isbn 978-1-920017-34-7
dc.identifier.uri http://hdl.handle.net/10204/2438
dc.description Paper presented at the 27th Annual Southern African Transport Conference 7 - 11 July 2008 "Partnership for research and progress in transportation", CSIR International Convention Centre, Pretoria, South Africa en
dc.description.abstract A healthy road transport systems is essential for any country's social and economic development. It is generally observed that if road deterioration is allowed to increase, the economy will need significantly larger expenditures in subsequent years to keep the road maintenance backlog constant. This paper is part of a larger study whose main purpose is to investigate the dynamic behaviour of vehicles on the roads and how the observed behaviour can be effectively combined with other factors measured on the road and driver to assess the integrity of road and vehicle infrastructure. In this paper, vehicle vibration data are applied to an artificial neural network to reconstruct the corresponding road surface profiles. The results show that the technique is capable of reconstructing road profiles within an error margin of 45 percent while with careful control of principal error sources, the technique may achieve 20 percent error margin. This is considered to be reasonable enough for application to condition monitoring of unpaved roads servicing heavy vehicles en
dc.language.iso en en
dc.publisher Southern African Transport Conference (SATC) en
dc.subject Artificial neural network en
dc.subject Road condition monitoring en
dc.subject Road profile reconstruction en
dc.subject Vehicle dynamic modelling en
dc.subject Vehicle vibration en
dc.subject SATC en
dc.title Overview of the neural network based technique for monitoring of road condition via reconstructed road profiles en
dc.type Conference Presentation en
dc.identifier.apacitation Ngwangwa, H., Heyns, P., Labuschagne, F., & Kululanga, G. (2008). Overview of the neural network based technique for monitoring of road condition via reconstructed road profiles. Southern African Transport Conference (SATC). http://hdl.handle.net/10204/2438 en_ZA
dc.identifier.chicagocitation Ngwangwa, HM, PS Heyns, FJJ Labuschagne, and GK Kululanga. "Overview of the neural network based technique for monitoring of road condition via reconstructed road profiles." (2008): http://hdl.handle.net/10204/2438 en_ZA
dc.identifier.vancouvercitation Ngwangwa H, Heyns P, Labuschagne F, Kululanga G, Overview of the neural network based technique for monitoring of road condition via reconstructed road profiles; Southern African Transport Conference (SATC); 2008. http://hdl.handle.net/10204/2438 . en_ZA
dc.identifier.ris TY - Conference Presentation AU - Ngwangwa, HM AU - Heyns, PS AU - Labuschagne, FJJ AU - Kululanga, GK AB - A healthy road transport systems is essential for any country's social and economic development. It is generally observed that if road deterioration is allowed to increase, the economy will need significantly larger expenditures in subsequent years to keep the road maintenance backlog constant. This paper is part of a larger study whose main purpose is to investigate the dynamic behaviour of vehicles on the roads and how the observed behaviour can be effectively combined with other factors measured on the road and driver to assess the integrity of road and vehicle infrastructure. In this paper, vehicle vibration data are applied to an artificial neural network to reconstruct the corresponding road surface profiles. The results show that the technique is capable of reconstructing road profiles within an error margin of 45 percent while with careful control of principal error sources, the technique may achieve 20 percent error margin. This is considered to be reasonable enough for application to condition monitoring of unpaved roads servicing heavy vehicles DA - 2008-07 DB - ResearchSpace DP - CSIR KW - Artificial neural network KW - Road condition monitoring KW - Road profile reconstruction KW - Vehicle dynamic modelling KW - Vehicle vibration KW - SATC LK - https://researchspace.csir.co.za PY - 2008 SM - 978-1-920017-34-7 T1 - Overview of the neural network based technique for monitoring of road condition via reconstructed road profiles TI - Overview of the neural network based technique for monitoring of road condition via reconstructed road profiles UR - http://hdl.handle.net/10204/2438 ER - en_ZA


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