基于多层复杂交通网络的社区居民低碳混合交通路线推荐

IF 3 3区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE IEEE Transactions on Sustainable Computing Pub Date : 2023-04-28 DOI:10.1109/TSUSC.2023.3271220
Song Wang;Tangyuan Zou;Weixin Zhao;Liang Liu
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引用次数: 0

摘要

随着中国 "碳封顶 "和 "碳中和 "目标的提出,交通部门作为第二大石油消费部门和温室气体的主要制造部门,成为节能减排行动的关键领域。然而,很少有研究关注解决居民通勤难题与低碳出行的有效结合。本文通过从出租车和共享单车轨迹数据中提取真实交通流数据,形成多层复杂交通网络,实现对城市交通模式的交互式可视化探索。基于该网络,利用改进的遗传算法实现了低碳出行路线推荐,以减少个人碳排放和出行成本。同时,针对城市街道和推荐路线定义了出行链层面的碳排放估算方法。综合上述算法,设计并实现了可视化分析系统,支持城市交通模式与街道碳排放分布的联合探索、社区间通勤的低碳混合交通路线推荐,以及通过调整自行车站点优化低碳推荐路线。以中国厦门的出租车和共享单车轨迹数据为例,对系统的评估分析表明,该方法能有效降低社区居民的通勤成本,同时减少个人出行碳排放。
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Low-Carbon Mixed Traffic Route Recommendation for Community Residents Based on Multilayer Complex Traffic Network
With the proposed ”carbon peaking” and ”carbon neutral” goals in China, the transportation sector, as the second largest consumer of oil and a major producer of greenhouse gases, is a critical area for energy efficiency and emission reduction actions. However, few studies have focused on the effective combination of solving residents’ commuting challenges and low-carbon travel. In this paper, by extracting real traffic flow data from taxi and bike-sharing trajectory data, a multilayer complex traffic network is formed to realize an interactive visual exploration of urban traffic patterns. Based on this network a low-carbon travel route recommendation is implemented using a modified genetic algorithm to reduce personal carbon emission and travel costs. Meanwhile, the trip chain level carbon emission estimation method is defined for city streets and recommended routes. With the integration of the above algorithms, a visual analytics system is designed and implemented to support the joint exploration of urban traffic patterns and the street carbon emission distribution, low-carbon mixed traffic route recommendations for inter-community commuting, and optimization of low-carbon recommended routes by adjusting bike stations. Take the taxi and bike-sharing trajectory data in Xiamen, China as an example, an evaluation analysis of the system shows that the method is effective in reducing commuting costs for community residents while reducing personal travel carbon emission.
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来源期刊
IEEE Transactions on Sustainable Computing
IEEE Transactions on Sustainable Computing Mathematics-Control and Optimization
CiteScore
7.70
自引率
2.60%
发文量
54
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