Journal of Jilin University(Engineering and Technology Edition) ›› 2023, Vol. 53 ›› Issue (1): 132-140.doi: 10.13229/j.cnki.jdxbgxb20210517

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Decision⁃making behavior of pedestrians in cold competition area under the intervention of mobile information

Wen-bo HUANG1(),Yan-yan CHEN1(),Shu-shan CHAI2   

  1. 1.College of Metropolitan Transportation,Beijing University of Technology,Beijing 100124,China
    2.Research Institute for Road Safety of MPS,Beijing 100062,China
  • Received:2021-06-08 Online:2023-01-01 Published:2023-07-23
  • Contact: Yan-yan CHEN E-mail:huangwenbo@emails.bjut.edu.cn;cdyan@bjut.edu.cn

Abstract:

In cold mega-competition events, in order to alleviate pedestrians suffering from severe weather such as low temperature, wind and snow while waiting for a long time in the bus station, and improve the quality of travel service in the area, a decision-making guidance and passenger flow control method was proposed based on mobile information intervention from the perspective of information service. Based on the results of questionnaire survey, the characteristics of waiting behavior in cold environment were analyzed, and a decision-making behavior model for pedestrians waiting for bus was established based on the Nested Logit model. With the model, the coupling influence of multiple factors on pedestrians' decision-making behavior was discussed and the sensitivity analysis of key variable was carried out. The management suggestions were put forward from the content and frequency of information release. The results show that, compared with the traditional stop sign information, mobile phone information intervention can help to improve the probability of temporary heating and improve the service experience of pedestrians. With the interference of mobile information, pedestrians' decision-making behavior is mainly affected by the layout of temporary heating places and the time from the start of competition. At this time, it is suggested that managers should focus on the information about temporary heating and competition when formulating the content of mobile information. When the frequency of information release is twice per hour, the probability of pedestrians receiving information guidance reaches the highest, which is about 36.6%, indicating that the control effect of information intervention reaches the best. The research can provide theoretical basis and data support for the intervention of passenger flow and the improvement of information service level in the competition area.

Key words: engineering of communication and transportation system, cold events, information intervention, discrete choice model, decision-making behavior

CLC Number: 

  • U491.4

Fig.1

Mechanism of decision-making behavior of pedestrians waiting for bus under the information intervention"

Fig.2

Bus station in the Finndia Ski Marathon"

Fig.3

Temporary heating place in the Finndia Ski Marathon"

Fig.4

Choice tree of pedestrians' waiting behavior in competition area"

Table 1

Statistics of basic attributes of pedestrians"

基本属性统计分析
性别男性女性
39%61%
年龄/岁<2020~4040~60≥60
13.4%58.4%15.7%12.5%
月收入/万元<0.50.5~11~1.5≥1.5
70.1%23.2%4.7%2.0%
教育程度高中及以下本专科硕士及以上
27.0%54.9%18.1%
职业机关及事业单位人员学生企业或技术人员自由职业及退休人员
22.7%35.7%23.3%18.3%
居住地区东北地区华北地区港澳台地区其他地区
80.5%8.7%2.3%8.5%

Fig.5

Distribution of interviewees' perception of cold"

Fig.6

Distribution of interviewees' maximum outdoor waiting time with different temperatures"

Table 2

Calibration results of NL model (level 1)"

变量受手机信息干预只受传统站牌信息干预
EstimateStd. Err.t?TestEstimateStd. Err.t?Test
固有哑元-3.1891.816-1.7561.8240.9391.943
距离比赛时间-1.0090.308-3.275-0.0300.003-9.557
景观环境-0.7200.446-1.615-0.3470.198-1.756
取暖地点布设1.1220.3473.2360.4290.1912.253
公交发车时间-0.4160.347-1.199-0.3250.197-1.650
比赛期待程度-0.4290.208-2.0600.1580.2480.634
寒冷感知0.0660.3790.176-0.5550.214-2.598
室外最大候车时间0.0060.0031.6820.0060.0023.201
信息发布频次1.1550.4612.5030.3250.1971.648
职业1-0.9870.569-1.734-0.1850.246-0.751
职业20.5620.7670.733-0.6270.325-1.928
气温-0.1330.115-1.157-0.1800.064-2.816
风速2.0201.2091.670-1.4600.633-2.306
L(0)-224.580-482.430
L(θ?)-173.185-394.070
-2[L(0)-L(θ?)]102.789176.720
ρ20.2290.183
ρˉ20.1310.148

Table 3

Calibration results of NL model (level 2)"

变量受手机信息干预只受传统站牌信息干预
EstimateStd. Err.t?Test
Constant 10.3430.8260.416
距离比赛时间-0.0070.003-2.552
景观环境-0.9420.201-4.689
取暖地点布设0.4110.1712.404
公交发车时间-0.6740.179-3.767
比赛期待程度0.6160.1494.149
寒冷感知-0.5060.185-2.731
室外最大候车时间-0.0040.002-2.189
职业10.8070.2383.384
职业2-1.6050.272-5.906
候车点客流量-0.9610.185-5.205
公交载客人数-1.1520.220-5.235
信息发布频次0.3310.1642.020
λ20.4820.1892.549
L(0)-707.010
L(θ?)-557.129
-2[L(0)-L(θ?)]299.763
ρ20.212
ρˉ20.177

Table 4

Probability of interviewees' decision-making behavior while waiting"

行为受手机信息干预/%只受传统站牌信息干预/%
室外候车49.455.7
临时取暖50.644.3

Fig.7

Influence of information release frequency on decision-making behavior of waiting"

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