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Road Short-Term Travel Time Prediction Method Based on Flow Spatial Distribution and the Relations

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  • Mingjun Deng
  • Shiru Qu

Abstract

There are many short-term road travel time forecasting studies based on time series, but indeed, road travel time not only relies on the historical travel time series, but also depends on the road and its adjacent sections history flow. However, few studies have considered that. This paper is based on the correlation of flow spatial distribution and the road travel time series, applying nearest neighbor and nonparametric regression method to build a forecasting model. In aspect of spatial nearest neighbor search, three different space distances are defined. In addition, two forecasting functions are introduced: one combines the forecasting value by mean weight and the other uses the reciprocal of nearest neighbors distance as combined weight. Three different distances are applied in nearest neighbor search, which apply to the two forecasting functions. For travel time series, the nearest neighbor and nonparametric regression are applied too. Then minimizing forecast error variance is utilized as an objective to establish the combination model. The empirical results show that the combination model can improve the forecast performance obviously. Besides, the experimental results of the evaluation for the computational complexity show that the proposed method can satisfy the real-time requirement.

Suggested Citation

  • Mingjun Deng & Shiru Qu, 2016. "Road Short-Term Travel Time Prediction Method Based on Flow Spatial Distribution and the Relations," Mathematical Problems in Engineering, Hindawi, vol. 2016, pages 1-14, November.
  • Handle: RePEc:hin:jnlmpe:7626875
    DOI: 10.1155/2016/7626875
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