不完全数据下的抽样马尔可夫链短期交通流预测

Shiliang Sun, Guoqiang Yu, Changshui Zhang
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引用次数: 32

摘要

短期交通流预测是智能交通系统研究领域中的一个重要问题。在实际情况下,流量数据可能是不完整的,即部分缺失或不可用,很少有方法可以成功地实现预测。针对这种情况,提出了一种采样马尔可夫链方法。本文将交通流建模为高阶马尔可夫链;用高斯混合模型(GMM)来估计从一种状态到另一种状态的转移概率,该模型的参数用竞争期望最大值(CEM)算法估计。利用蒙特卡罗积分的思想,对马尔可夫链趋势预测中的不完全数据用足够的采样点来表示。实验结果表明,采样马尔可夫链方法适用于数据不完全情况下的短期交通流预测。
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Short-term traffic flow forecasting using Sampling Markov Chain method with incomplete data
Short-term traffic flow forecasting is an important problem in the research area of intelligent transportation system. In practical situations, flow data may be incomplete, that is, partially missing or unavailable, where few methods could implement forecasting successfully. A method called Sampling Markov Chain is proposed to deal with this circumstance. In this paper, the traffic flow is modeled as a high order Markov Chain; and the transition probability from one state to the other state is approximated by Gaussian Mixture Model (GMM) whose parameters are estimated with Competitive Expectation Maximum (CEM) algorithm. The incomplete data in forecasting the trend of Markov Chain is represented by enough points sampled using the idea of Monte Carlo integration. Experimental results show that the Sampling Markov Chain method is applicable and effective for short-term traffic flow forecasting in case of incomplete data.
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