利用严肃游戏洞察个人和社会对自动驾驶汽车的适应行为

IF 3.2 3区 工程技术 Q2 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
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引用次数: 0

摘要

导言:严肃游戏创造了一个虚拟环境,玩家在独特规则的引导下沉浸在模拟冲突中。它们复制了复杂的系统,如交通系统,通过强化学习鼓励社会参与。与基于偏好的研究不同,这些游戏对玩家的行为提供增强的实时反馈。因此,它们揭示了用户体验和社会互动如何随着时间的推移影响决策。我们利用严肃游戏来研究旅行者采用自动交通(特别是共享交通模式)的意愿,这是缓解交通拥堵、提高城市生活质量、改善人们健康和福祉的重要一步。在 50 个模拟日内,他们从三种自动交通模式(合乘、合用汽车和自动公交)中自主选择如何上下班。他们的目标是通过准时到达来最大化自己的总得分,而总得分受他们的交通方式、出发时间以及其他参与者的选择的影响。根据游戏数据估算了交叉嵌套的 logit 核心选择模型。结果在经常出现拥堵的情况下,玩家学会了采用共享乘车,而牺牲了公交;在非经常出现拥堵的情况下,随机事件增加了公交和共享汽车(单独乘车)的使用。这些影响可转化为促进健康的政策,以鼓励可持续的出行行为,同时提高交通效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Behavioral insights on individual and social adaptation to automated mobility using a serious game

Introduction

Serious games generate a virtual environment where players are immersed in simulated conflicts, guided by distinct rules. They replicate intricate systems, like transportation, encouraging social engagement via reinforced learning. Unlike preference-based studies, these games offer enhanced real-time feedback on players' actions. Thus, they reveal how user experience and social interaction influence decision-making over time. We use a serious game to study the willingness of travelers to adopt automated mobility, specifically shared modes of transport, an important step toward alleviating congestion, enhancing the quality of urban living, and improving people's health and well-being.

Methods

For each scenario, 100 participants were randomly divided into ten groups of ten interacting players. They chose independently out of three automated transportation modes - shared ride, shared car, and automated transit-over 50 simulated days how to commute to work. They aimed to maximize their overall score by arriving punctually, which was influenced by their mode and departure time and the choices of fellow players. Cross-nested logit kernel choice models were estimated based on the game data.

Results

In the recurring congestion scenario players learned to adopt the shared ride at the expense of transit; in the nonrecurring congestion scenario, random incidents increased the use of transit and shared car (ride alone).

Conclusions

Congested traffic motivated a shift to ridesharing at the expense of private rides and public transport; however, the latter was highly demanded when traffic became unsmooth and travel times more uncertain. The implications can be translated to health promoting polices to encourage sustainable travel behaviors while also improving transportation efficiency.

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来源期刊
CiteScore
6.10
自引率
11.10%
发文量
196
审稿时长
69 days
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