Journal of Jilin University(Engineering and Technology Edition) ›› 2024, Vol. 54 ›› Issue (1): 124-135.doi: 10.13229/j.cnki.jdxbgxb.20220207

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Evolutionary game mechanism of mandatory lane changing for exiting for intelligent connected bus

Xiao-jing DU(),Rong-han YAO()   

  1. School of Transportation and Logistics,Dalian University of Technology,Dalian 116024,China
  • Received:2022-03-04 Online:2024-01-30 Published:2024-03-28
  • Contact: Rong-han YAO E-mail:duxiaojing@mail.dlut.edu.cn;cyanyrh@dlut.edu.cn

Abstract:

To relieve the conflicts between the intelligent connected bus and the social vehicle in the mandatory lane changing for bus exiting, the evolutionary game mechanisms for their behavioral decision-makings are analyzed. Two scenarios where the social vehicles are human-driven and intelligent connected are considered. The utility functions in different strategy profiles of the evolutionary game are formulated from the perspectives of safety utility, time utility and energy-saving utility. On this basis, the replicator dynamics equations for the two scenarios are constructed. According to the determinant and trace of Jacobi matrix in the dynamic game system, the equilibrium points and their stability in different situations are analyzed deeply. The sensitivity of evolutionary results to the difference between the cooperative and non-cooperative strategies is explored. The results reveal that: the possible evolutionary directions in the dynamic game system involve “intelligent connected buses changing lanes, and social vehicles giving way”, “intelligent connected buses not changing lanes, and social vehicles not giving way”, and “intelligent connected buses not changing lanes, and social vehicles giving way”. From the perspective of overall optimization, adjusting the relevant variables of the safety and time utility of social vehicles can ensure the safety and efficiency of more vehicles in the process of mandatory lane changing of intelligent connected bus. The energy-saving utility promotes the strategy profile of changing lanes and giving way, and inhibits the strategy profile of not changing lanes and not giving way.

Key words: traffic engineering, intelligent connected bus, mandatory lane changing, evolutionary game, behavioral decision-making

CLC Number: 

  • U121

Fig.1

Game scenarios when intelligent connected busand social vehicle does not occur in mandatorylane changing for exiting of the bus"

Fig.2

Game scenarios for mandatory lane changing for exiting of intelligent connected bus"

Table 1

Utility matrix of the game in Scenario 1"

策略让路不让路
换道uBT-11+uVS-11+uBS-12-uVS-12-
不换道uBS-21++uBT-21-uVS-21++uVT-21-uBS-22+uVT-22+

Table 2

Utility matrix of the game in Scenario 2"

策略让路不让路
换道uBT-11+uVS-11++uVE-11+uBS-12-uVS-12-
不换道uBS-21++uBT-21-uVS-21++uVT-21-+uVE-21+uBS-22+uVT-22+

Table 3

Determinant and trace of Jacobi matrix corresponding to every equilibrium point"

均衡点行列式
(0,0)-ΔB2?ΔS2-ΔB2+ΔS2
(0,1)ΔB1?ΔS2-ΔB1-ΔS2
(1,0)ΔB2?ΔS1ΔB2+ΔS1
(1,1)-ΔB1?ΔS1ΔB1-ΔS1
ΔS2/ΔS2-ΔS1,ΔB2/ΔB2-ΔB1ΔB1?ΔB2?ΔS1?ΔS2(ΔB1-ΔB2)?(ΔS1-ΔS2)0

Table 4

Analysis of stable states of equilibrium points"

均衡点情形1情形2情形3情形4
(0,0)鞍点稳定点鞍点稳定点
(0,1)稳定点鞍点鞍点不稳定点
(1,0)不稳定点不稳定点不稳定点不稳定点
(1,1)鞍点鞍点稳定点稳定点
ΔS2/ΔS2-ΔS1,ΔB2/ΔB2-ΔB1---纳什均衡点

Table 5

Statistical results of different kinds of utilities"

效用物理量平均值最大值最小值归一化值
安全效用/(m·s-2uBS-12--1.52-0.01-3.08-0.49
uBS-2j+1.443.360.020.42
uVS-i1+0.611.910.010.32
uVS-12--0.82-0.01-3.53-0.23
时间效用/suBT-11+664.751190.00234.500.45
uBT-21--778.10-448.90-1504.80-0.31
uVT-21--4.07-2.30-9.70-0.24
uVT-22+3.427.101.500.34
节能收益/[kg·(100 km)-1uVE-i1+7.4493.004.700.03

Fig.3

Evolutionary paths under different initial values of p and q"

Fig.4

Evolutionary paths of p and q under the initial state of (0.8,0.3)"

Fig.5

Evolutionary convergence of the proportion of the strategy under different ΔB1"

Fig.6

Evolutionary convergence of the proportion of strategy under different ΔB2"

Fig.7

Evolutionary convergence of the proportion of strategy under different ΔS1"

Fig.8

Evolutionary convergence of proportion of strategy under different ΔS2"

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