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A two-stage short-term traffic flow prediction method based on AVL and AKNN techniques
  • ISSN号:1003-3033
  • 期刊名称:《中国安全科学学报》
  • 时间:0
  • 分类:TP311.12[自动化与计算机技术—计算机软件与理论;自动化与计算机技术—计算机科学与技术] U491.112[交通运输工程—交通运输规划与管理;交通运输工程—道路与铁道工程]
  • 作者机构:[1]Key Laboratory for Urban Transportation Complex Systems Theory and Technology of Ministry of Education (Beijing Jiaotong University), Beijing 100044, China, [2]Centre for Infrastructure Systems, Nanyang Technological University, Singapore 639798, Singapore
  • 相关基金:Project(2012CB725403)supported by the National Basic Research Program of China; Projects(71210001,51338008)supported by the National Natural Science Foundation of China; Project supported by World Capital Cities Smooth Traffic Collaborative Innovation Center and Singapore National Research Foundation Under Its Campus for Research Excellence and Technology Enterprise(CREATE)Programme
中文摘要:

Short-term traffic flow prediction is one of the essential issues in intelligent transportation systems(ITS). A new two-stage traffic flow prediction method named AKNN-AVL method is presented, which combines an advanced k-nearest neighbor(AKNN)method and balanced binary tree(AVL) data structure to improve the prediction accuracy. The AKNN method uses pattern recognition two times in the searching process, which considers the previous sequences of traffic flow to forecast the future traffic state. Clustering method and balanced binary tree technique are introduced to build case database to reduce the searching time. To illustrate the effects of these developments, the accuracies performance of AKNN-AVL method, k-nearest neighbor(KNN) method and the auto-regressive and moving average(ARMA) method are compared. These methods are calibrated and evaluated by the real-time data from a freeway traffic detector near North 3rd Ring Road in Beijing under both normal and incident traffic conditions.The comparisons show that the AKNN-AVL method with the optimal neighbor and pattern size outperforms both KNN method and ARMA method under both normal and incident traffic conditions. In addition, the combinations of clustering method and balanced binary tree technique to the prediction method can increase the searching speed and respond rapidly to case database fluctuations.

英文摘要:

Short-term traffic flow prediction is one of the essential issues in intelligent transportation systems(ITS). A new two-stage traffic flow prediction method named AKNN-AVL method is presented, which combines an advanced k-nearest neighbor(AKNN)method and balanced binary tree(AVL) data structure to improve the prediction accuracy. The AKNN method uses pattern recognition two times in the searching process, which considers the previous sequences of traffic flow to forecast the future traffic state. Clustering method and balanced binary tree technique are introduced to build case database to reduce the searching time. To illustrate the effects of these developments, the accuracies performance of AKNN-AVL method, k-nearest neighbor(KNN) method and the auto-regressive and moving average(ARMA) method are compared. These methods are calibrated and evaluated by the real-time data from a freeway traffic detector near North 3rd Ring Road in Beijing under both normal and incident traffic conditions.The comparisons show that the AKNN-AVL method with the optimal neighbor and pattern size outperforms both KNN method and ARMA method under both normal and incident traffic conditions. In addition, the combinations of clustering method and balanced binary tree technique to the prediction method can increase the searching speed and respond rapidly to case database fluctuations.

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期刊信息
  • 《中国安全科学学报》
  • 北大核心期刊(2011版)
  • 主管单位:中国科学技术协会
  • 主办单位:中国职业安全健康协会
  • 主编:徐德蜀
  • 地址:北京市东城区和平里九区甲4号安信大厦A306室
  • 邮编:100013
  • 邮箱:csstlp@263.net
  • 电话:010-64464782
  • 国际标准刊号:ISSN:1003-3033
  • 国内统一刊号:ISSN:11-2865/X
  • 邮发代号:
  • 获奖情况:
  • 中国科技论文统计用刊,第一届中国科协期刊优秀学术论文奖
  • 国内外数据库收录:
  • 美国化学文摘(网络版),波兰哥白尼索引,美国剑桥科学文摘,中国中国科技核心期刊,中国北大核心期刊(2008版),中国北大核心期刊(2011版),中国北大核心期刊(2014版)
  • 被引量:31001