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首页> 外文期刊>International journal of applied decision sciences >Short-term traffic flow forecasting using the autoregressive integrated moving average model in Metro Cebu (Philippines)
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Short-term traffic flow forecasting using the autoregressive integrated moving average model in Metro Cebu (Philippines)

机译:使用截止地铁宿务(菲律宾)的自回归综合移动普通模型进行短期交通流预测

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摘要

Traffic congestion is a major problem faced by many cities across the globe. The drawbacks of such problem are much more severe in developing countries due to the weak enforcement of policies, and lack of infrastructures to handle congestion, among others. In this paper, an autoregressive integrated moving average (ARIMA) model is developed to analyse the traffic flow dynamics of the Philippines, which is a relatively under-explored area in the current literature. Results show that the model attains good predictive performance. Several scholarly implications are drawn out from such results. Above all, the results provide theoretical lenses with which traffic conditions in developing countries can be examined. Moreover, such results aid in streamlining strategies and initiatives for managing traffic challenges in developing countries.
机译:交通拥堵是全球许多城市面临的主要问题。 由于政策的执法薄弱,以及缺乏处理拥堵的基础设施等,这种问题在发展中国家的缺点将更加严峻。 在本文中,开发了一种自回归综合移动平均(ARIMA)模型来分析菲律宾的交通流量动态,这是当前文献中的一个相对较低的地区。 结果表明,该模型达到了良好的预测性能。 几种学术界来自这些结果。 最重要的是,结果提供了可以检查发展中国家交通条件的理论镜片。 此外,这种结果有助于在发展中国家管理交通挑战的精简战略和倡议。

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