Arterial Travel Time Prediction with State-Space Neural Networks under Time-variant Turn Movements

سال انتشار: 1388
نوع سند: مقاله کنفرانسی
زبان: انگلیسی
مشاهده: 1,536

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شناسه ملی سند علمی:

ICCE08_1042

تاریخ نمایه سازی: 28 آبان 1387

چکیده مقاله:

Short term travel time prediction on urban arterials is an important component of Advanced Traveler Information Systems (ATIS) and Advanced Traffic Management Systems (ATMS). It can also be a key input to evacuation and emergency responses. This study presents robust travel time prediction models that work efficiently for time-variant turn movement shares in both congested and non-congested conditions that urban arterials typically experience throughout the day and/or during special events. The state-space notion of traffic processes was found useful and State-Space Neural Network models are proposed. Models were developed for travel time prediction on links, arterials, and routes (multiple links on different arterials). Mean absolute percentage errors of modeled travel times on arterilas for through, left, and right movements ranged between 12.3% and 34.6% for testing data sets. For routes, the MAPE ranged between 8.5 and 10%.

نویسندگان

Ghassan Abu-Lebdeh

Department of Civil Engineering, American University of Sharjah

Timothy J. Likens

Well + Associates, Novi, Michigan, USA

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  • Vlahogianni, E.I., Golias, J.C., and Karlaftis, M.G. 2004. Short-Term Traffic ...
  • quot; International Congress on Civil Engineering, May 11-13, 2009, Shiraz ...
  • May 11-13, 2009, Shiraz University, Shiraz, Iran ...
  • Zwet, E., and Rice, J. 2004. A Simple and Effective ...
  • Wu, C. H., Ho, J.M., and Lee, D.T. 2004. Travel-Time ...
  • Chien, S. I., and Kuchipudi, C. M. 2003. Dynamic Travel ...
  • Mark, C. D., and Sadek, A.W. 2004. Learning Systems for ...
  • van Lint, J.W.C. 2004. Reliable Travel Time Prediction for Freeways. ...
  • van Lint, J.W.C., Hoogendoorn _ S.P., and Van Zuylen, H.J. ...
  • Sisiopiku, V.P., and Rouphail, N.M. 1994. Toward the Use of ...
  • Stathopoulos, A., and Karlaftis, M.G. 2003. A Multivariate State Space ...
  • Lin, W.H., Kulkarni, A., and Mirchandani _ P. 2004. Short-Term ...
  • 1. Liu, H., van Zuylen, H., van Lint, H., Salomons, ...
  • Singh, A.K. 2006. Travel Time Estimation and Short-Term Prediction _ ...
  • Singh, A.J. & Abu-Lebdeh, G.(2007). State Space Neural Networks for ...
  • Haykin, S. Neural Networks: A Co mprehensive Foundation. 1999. Prentice-Hall, ...
  • quot; International Congress on Civil Engineering, May 11-13, 2009, Shiraz ...
  • نمایش کامل مراجع