吉林大学学报(工学版) ›› 2026, Vol. 56 ›› Issue (1): 199-208.doi: 10.13229/j.cnki.jdxbgxb.20240712

• 交通运输工程·土木工程 • 上一篇    下一篇

基于渗流理论的港城交通网络特征分析

孙峣1,2(),白东轩1,姚宝珍1(),白子建2   

  1. 1.大连理工大学 机械工程学院,辽宁 大连 116024
    2.天津市政工程设计研究总院有限公司,天津 300051
  • 收稿日期:2024-06-26 出版日期:2026-01-01 发布日期:2026-02-03
  • 通讯作者: 姚宝珍 E-mail:sunyao@mail.dlut.edu.cn;yaobaozhen@dlut.edu.cn
  • 作者简介:孙峣(1993-),男,高级工程师,博士研究生.研究方向:智能交通.E-mail: sunyao@mail.dlut.edu.cn
  • 基金资助:
    国家自然科学基金项目(52472320);国家自然科学基金项目(52372313);天津市科技支撑计划项目(20YFZCSN01110);天津市人社局“131”创新团队项目

Characteristics analysis of port and city transportation network based on percolation theory

Yao SUN1,2(),Dong-xuan BAI1,Bao-zhen YAO1(),Zi-jian BAI2   

  1. 1.School of Mechanical Engineering,Dalian University of Technology,Dalian 116024,China
    2.Tianjin Municipal Engineering Design & Research Institute Co. ,Ltd. ,Tianjin 300051,China
  • Received:2024-06-26 Online:2026-01-01 Published:2026-02-03
  • Contact: Bao-zhen YAO E-mail:sunyao@mail.dlut.edu.cn;yaobaozhen@dlut.edu.cn

摘要:

为了识别港城交通网络瓶颈路段、厘清城区与港区的物理边界,基于渗流理论对港城交通网络特征进行分析。首先,首次将土壤渗透模型Van-Genuchten应用于交通领域研究,建立适用于港城交通网络的路段渗流概率模型。其次,基于实际港城交通网络和渗透模型参数,分析网络的瓶颈路段和周期特征,将路网划分为城区、港区和融合区3个特征区域。最后,建立基于分区网络特性的港城交通网络优化策略。实验结果显示:相比于整体的路网瓶颈路段识别优化策略,分区优化策略在将瓶颈路段通行能力提升5%~30%的过程中,平均临界阈值始终高于整体优化策略;此外,分区优化策略在通行能力仅提升5%时,改善效果便十分明显,而整体优化策略在通行能力提升15%时,改善效果才逐渐显现。本文对缓解港城区域交通网络拥堵问题,以及分区域制定交通改善方案提供了理论指导。

关键词: 交通运输规划与管理, 渗流理论, 港城交通网络, 瓶颈识别, 分区优化策略

Abstract:

To pinpoint bottleneck sections in the port-city transportation network and delineate the physical boundaries between urban zones and port zones, this paper analyzes the characteristics of the port-city transportation network based on percolation theory. Firstly, the Van-Genuchten soil permeability model was applied to transportation research for the first time, formulating a road section seepage probability model tailored for port-city transportation networks. Secondly, based on actual port-city transportation network data and penetration model parameters, the bottleneck roads and periodic characteristics of the network were analyzed, which categorized the road network into three characteristic regions: urban, port, and fusion areas. Finally, an optimization strategy for the port-city transportation network based on the characteristics of zonal network is established. Results revealed that the partition optimization strategy consistently surpassed the overall optimization strategy, achieving a higher average critical threshold when enhancing bottleneck capacity by 5%-30%. Notably, the partition strategy demonstrated remarkable improvements even with a 5% capacity boost, whereas the overall strategy's benefits became evident only at a 15% increase. This paper offers theoretical guidance for alleviating traffic congestion in port-city regions and shaping effective regional traffic enhancement plans.

Key words: transportation planning and management, percolation theory, port and city transportation network, bottleneck identification, regional optimization strategy

中图分类号: 

  • U491.1

图1

渗流过程示意图"

图2

天津港城道路交通网络"

表1

各车型折算系数"

车型折算系数
小型客车1
小型货车1
中型货车1.5
大型客车1.5
大型货车3
集卡4
其他2

表2

不同道路属性下多车道饱和交通量 (pcu/h)"

道路属性单车道双车道三车道四车道
高/快速路1 3182 4913 5194 375
主干道1 1202 1162 9903 718
次干道7701 4552 0552 556
支路5049521 3451 673

图3

路网上行方向的渗流概率分布"

图4

不同渗流侵占概率下的渗流团簇分布"

图5

不同渗流侵占概率下的渗流团簇尺寸"

图6

研究路网瓶颈路段识别"

图7

路网上下行方向的渗流概率分布对比"

图8

区域网络交通出行特征结果分析"

表3

工作日和休息日分区域典型临界阈值"

临界阈值Pc城区工作日城区休息日港区工作日港区休息日融合区工作日融合区休息日

最大临界阈值

时间段

0.82

03:30 am

0.80

04:00 am

0.74

03:30 am

0.69

02:00 am

0.71

03:00 am

0.72

03:30 am

最小临界阈值

时间段

0.37

08:00 am

0.58

15:30 pm

0.36

19:00 pm

0.33

7:30 am

0.29

17:30 pm

0.35

19:30 pm

最大、最小临界阈值差值0.450.220.380.360.420.37
平均临界阈值0.620.670.580.570.500.55

图9

分区域和整体的路网瓶颈路段识别结果"

表4

不同通行能力提升下的路网平均临界阈值变化"

通行能力提升比例/%策略一(分区域)策略二(整体)
00.570.57
50.610.58
100.630.59
150.650.63
200.660.64
250.660.65
300.660.65
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