首页 | 本学科首页   官方微博 | 高级检索  
相似文献
 共查询到20条相似文献,搜索用时 31 毫秒
1.
根据轨迹数据识别出人们感兴趣的区域,并且挖掘出人们的日常出行特性,作为数据挖掘的一个热点逐渐受到人们的重视。目前,绝大多数大城市的出租车上都安装有GPS,其记录的轨迹数据在时间和空间上都包含丰富的信息,分析出租车的轨迹数据能在一定程度上反映城市人口的出行情况,挖掘有价值的信息。文中挖掘出租车轨迹数据中的乘客上下车的位置点数据,经过数据预处理、地图匹配以及整合后,对位置点进行有权重的热点区域分析,叠加到地图上进行人口活动分析。  相似文献   

2.
城市空间运行的出租车产生大量的OD数据,数据的时序呈现周期性特点,客观反映人们的出行行为模式,本文采用谱聚类算法对北京五环区域内各空间单元的出行特征及其相似性进行探究。由于空间单元的时空行为特征受空间邻域和功能区划的影响,研究添加邻域因子和功能区因子以改进时间序列的相似性度量方法,从而实现时间序列谱聚类算法的空间和功能区拓展,进而增加人们对不同时空条件下出行行为特征的了解,以便对不同空间单元提供差异性服务,如不同时段公交的发车频次、动态调整商场营业时间、不同时空环境出租车候车点的实时变换、调控和优化不同区域服务保障等,将有助于降低城市能耗,更加合理地利用资源,也有助于居民实现智慧生活。  相似文献   

3.
Global positioning system-enabled vehicles provide an efficient way to obtain large quantities of movement data for individuals. However, the raw data usually lack activity information, which is highly valuable for a range of applications and services. This study provides a novel and practical framework for inferring the trip purposes of taxi passengers such that the semantics of taxi trajectory data can be enriched. The probability of points of interest to be visited is modeled by Bayes’ rules, which take both spatial and temporal constraints into consideration. Combining this approach with Monte Carlo simulations, we conduct a study on Shanghai taxi trajectory data. Our results closely approximate the residents’ travel survey data in Shanghai. Furthermore, we reveal the spatiotemporal characteristics of nine daily activity types based on inference results, including their temporal regularities, spatial dynamics, and distributions of trip lengths and directions. In the era of big data, we encounter the dilemma of “trajectory data rich but activity information poor” when investigating human movements from various data sources. This study presents a promising step toward mining abundant activity information from individuals’ trajectories.  相似文献   

4.
Optimal paths computed by conventional path-planning algorithms are usually not “optimal” since realistic traffic information and local road network characteristics are not considered. We present a new experiential approach that computes optimal paths based on the experience of taxi drivers by mining a huge number of floating car trajectories. The approach consists of three steps. First, routes are recovered from original taxi trajectories. Second, an experiential road hierarchy is constructed using travel frequency and speed information for road segments. Third, experiential optimal paths are planned based on the experiential road hierarchy. Compared with conventional path-planning methods, the proposed method provides better experiential optimal path identification. Experiments demonstrate that the travel time is less for these experiential paths than for paths planned by conventional methods. Results obtained for a case study in the city of Wuhan, China, demonstrate that experiential optimal paths can be flexibly obtained in different time intervals, particularly during peak hours.  相似文献   

5.
为了更加有效地利用公共交通,缓解城市交通拥堵,本文在公共交通利用方面提出了一种新的出行路线查询方法。它可以提供基于无需换乘的公交站点位置周边兴趣点路线查询,即根据离自己位置最近的公交站点信息,按照一定条件查找出满足条件的兴趣点,并给出前往自己兴趣点的公交路线。建立相应的空间数据库,储存公交站点等信息。基于ArcEngine开发平台,采用C#.NET语言进行了城市公交站点周边兴趣点查询系统功能的开发,实现了输入兴趣点和公交站点即可得到所需的出行路线。在本文中,查询系统以深圳市为例进行了测试,结果能够满足需求,为城市居民的出行提供了一个新的查询方式。  相似文献   

6.
出租车轨迹数据挖掘进展   总被引:1,自引:0,他引:1  
吴华意  黄蕊  游兰  向隆刚 《测绘学报》2019,48(11):1341-1356
大数据、物联网与精密定位技术的发展推动了城市感知的进步。随着社会活动的与日俱增,出租车轨迹数据不仅记录了出租车的行车轨迹,还蕴藏着道路交通状态、城市居民出行规律、城市结构及其他社会问题。通过各种数据分析与挖掘手段对出租车轨迹数据进行深入探究,对于智能交通、城市规划等有着重要意义。本文综述了近十年国内外基于出租车轨迹大数据的相关研究,按照空间统计方法、时间序列方法、图论与网络方法及机器学习方法等4类,详细阐述各类方法的研究现状。随后,本文分析了现有研究的应用领域、热点主题和发展趋势。最后,本文指出了出租车轨迹数据挖掘研究领域面临的挑战和未来研究方向。  相似文献   

7.
为识别城市交通中的频繁路径,本文提出了一种出租车轨迹数据的频繁轨迹识别方法。该方法首先对轨迹数据进行轨迹压缩,以降低计算复杂度;然后基于最长公共子序列和动态时间规整算法进行轨迹相似性度量计算,利用计算得到的轨迹间相似度生成距离矩阵;最后将生成的距离矩阵结合HDBSCAN算法进行聚类得到频繁轨迹。选取厦门岛内两个区域进行试验分析,结果表明,该方法能够识别出轨迹数据集中的频繁轨迹,进而得到城市区域之间通行的频繁路径,对道路规划、路径优化与推荐、交通治理等应用提供帮助。  相似文献   

8.
随着城市的快速发展,道路拥堵、打车难等问题越来越突出,严重影响了居民的出行效率和生活质量。出租车GPS数据,在一定程度上包含了部分居民出行行为的丰富信息。考虑到出租车载客事件发生于一维道路网络空间,本文提出对出租车上下客事件所在路段进行分析,得到不同时段居民出行的热门路段和区域,分析居民出行时空分布特征,有助于了解交通现状和居民出行需求,提高城市对居民出行活动的服务水平。  相似文献   

9.
针对现有出租车轨迹数据挖掘中时间序列邻近度量方法存在的问题,提出一种基于DBSCAN算法和改进的DTW距离的时间序列聚类算法提取具有相似性出行特征的时空模式,进而研究城市人群出行行为的时空差异。以南京市为例,结合电子地图对出行模式的空间分布特征进行分析,证明了本文所提出的方法的有效性。实验结果表明:在空间分布上,工作日出租车出行模式按照平均出行频次由高到低排序,从城市中心向四周扩散,呈中心环状分布,出行模式区域界限较为明显,同类出行模式分布区域对应相似的功能。提出了一种基于DBSCAN算法和改进的DTW距离的时间序列聚类算法提取具有相似性出行特征的时空模式,有效地分析城市人群出行行为的时空差异。  相似文献   

10.
叶浩宇  涂伟  叶贺辉  麦可  赵天鸿  李清泉 《测绘学报》1957,49(12):1630-1639
作为公共交通的重要组成部分,电动出租车对电动车推广具有重要的示范意义。相较于燃油出租车,电动出租车需要耗费更多充电时间,降低了出租车司机的使用意愿,全面推广面临较大阻力。强化学习方法方兴未艾,适用于出租车运营的顺序决策过程。基于强化学习,本文构建双深度Q学习网络(double deep Q-learning network,DDQN)模型模拟电动出租车的运行。根据出租车的实时状态选择并执行最优载客、充电、空驶和等待等动作,通过训练得到全局最优的电动出租车运营策略,实现电动出租车运营智能优化。利用美国纽约市曼哈顿岛的出租车出行数据进行试验。结果表明:相较于简单的电动出租车运营模式,DDQN优化策略最高将充电等待时长降低70%,拒载率降低53%,司机的载客收入提高7%。相对于电池容量,充电速率和车辆总数对出租车运营收入影响更大,当充电速率达到120 kW时,电动出租车达到最佳的运营表现,政府在推广电动出租车的过程中应当建设更多高速率的充电站以提升电动出租车的运营表现。  相似文献   

11.
An analysis of movement patterns between zones using taxi GPS data   总被引:1,自引:0,他引:1       下载免费PDF全文
The discovery of zones and people's movement patterns supports a better understanding of modern cities and enables a more comprehensive strategy for urban planning. This article proposes a modified method based on previous research to simultaneously discover people's zones and movement patterns, called movement patterns between functional zones (MPFZ). The method attempts to take full advantage of taxi GPS data to identify MPFZs by merging the movement traces satisfying the merging conditions. Considering movement directions, movement numbers and the adjacent constraints that consist of spatial relationship and attribute features, the merging conditions limit the movement traces to be merged. The new MPFZs are discovered by an iteration process and are measured by the following three evaluation indices: v‐value, a‐value and c‐value, which represent coverage, accuracy and their trade‐off. Using a real‐world taxi dataset of Beijing, 24 new MPFZs are discovered, which have higher v‐, a‐ and c‐values than the unmerged MPFZs. The results of the real‐world dataset experiment show that the proposed approach is effective and efficient. The proposed method can also be applied to other types of transportation data and regions by adjusting the dataset utilized and controlling the iteration process.  相似文献   

12.
基于地理格网的复杂路线车辆通行时间估算方法   总被引:1,自引:1,他引:0  
车辆通行时间隐含了特定时隙的交通状况,准确地计算该时间在交通监测和路径规划中具有重要意义。现有研究通常利用车辆历史轨迹估算一定距离内选定路径的通行时间,然而当路径距离较长时,限于很难找到完整穿越指定路径的历史轨迹而无法对其通行时间进行准确估计;此外,海量历史轨迹在估计路径通行时间时会产生巨大的数据管理和计算压力。因此,本文引入地理格网,首先构建统一的时空索引,将路网及其历史轨迹分别划分为一系列落在地理格网单元(Cell)中的路段模式及轨迹段;然后利用一系列频繁共享轨迹在Cell中的停留时间计算车辆在当前路段模式的通行时间;最后通过一组历史时段相似路径模式的通行时间估算较长路线的车辆通行时间。通过对北京市10 000辆出租车一周的轨迹数据进行试验,验证了本文方法在处理海量历史轨迹数据上的有效性,以及在估算较长路径上车辆通行时间的优越性。  相似文献   

13.
Big urban mobility data, such as taxi trips, cell phone records, and geo‐social media check‐ins, offer great opportunities for analyzing the dynamics, events, and spatiotemporal trends of the urban social landscape. In this article, we present a new approach to the detection of urban events based on location‐specific time series decomposition and outlier detection. The approach first extracts long‐term temporal trends and seasonal periodicity patterns. Events are defined as anomalies that deviate significantly from the prediction with the discovered temporal patterns, i.e., trend and periodicity. Specifically, we adopt the STL approach, i.e., seasonal and trend decomposition using LOESS (locally weighted scatterplot smoothing), to decompose the time series for each location into three components: long‐term trend, seasonal periodicity, and the remainder. Events are extracted from the remainder component for each location with an outlier detection method. We analyze over a billion taxi trips for over seven years in Manhattan (New York City) to detect and map urban events at different temporal resolutions. Results show that the approach is effective and robust in detecting events and revealing urban dynamics with both holistic understandings and location‐specific interpretations.  相似文献   

14.
唐炉亮  戴领  任畅  张霞 《测绘学报》2019,48(5):618-629
城市活动事件(如文化、娱乐、体育等事件)的规模与影响力是城市经济文化发展的重要体现,其发生的全过程对城市现实空间与赛博空间都会产生巨大影响,从现实空间与赛博空间对城市活动事件的演化感知、动态建模与时空分析,具有重要的理论研究与应用价值。提出了一种结合现实空间交通数据与赛博空间社交媒体数据的城市活动事件时空建模分析方法,从事件进行中的交通轨迹,探测识别与事件显著相关的城市时空区域和交通流,分析现实空间事件热度的时空变化;从事件发生全过程的社交媒体数据中,探测分析赛博空间事件热度的时空变化;通过将现实空间和赛博空间的融合,建立城市活动事件时空模型,刻画事件全过程中城市地理空间与城市行为空间的时空演变特征。以2015年周杰伦"魔天伦2.0"世界巡回演唱会(武汉站)事件为例,采用武汉市出租车GPS轨迹数据和微博数据,对演唱会的事前、事中、事后实现城市地理空间与行为空间全过程建模与时空演变分析,并与单一数据源事件刻画模型进行比较,结果显示本方法能更合理地结合现实空间和赛博空间刻画城市活动事件。  相似文献   

15.
Recent urban studies have used human mobility data such as taxi trajectories and smartcard data as a complementary way to identify the social functions of land use. However, little work has been conducted to reveal how multi‐modal transportation data impact on this identification process. In our study, we propose a data‐driven approach that addresses the relationships between travel behavior and urban structure: first, multi‐modal transportation data are aggregated to extract explicit statistical features; then, topic modeling methods are applied to transform these explicit statistical features into latent semantic features; and finally, a classification method is used to identify functional zones with similar latent topic distributions. Two 10‐day‐long “big” datasets from the 2,370 bicycle stations of the public bicycle‐sharing system, and up to 9,992 taxi cabs within the core urban area of Hangzhou City, China, as well as point‐of‐interest data are tested to reveal the extent to which different travel modes contribute to the detection and understanding of urban land functions. Our results show that: (1) using latent semantic features delineated from the topic modeling process as the classification input outperforms approaches using explicit statistical features; (2) combining multi‐modal data visibly improves the accuracy and consistency of the identified functional zones; and (3) the proposed data‐driven approach is also capable of identifying mixed land use in the urban space. This work presents a novel attempt to uncover the hidden linkages between urban transportation patterns with urban land use and its functions.  相似文献   

16.
The implementation of social network applications on mobile platforms has significantly elevated the activity of mobile social networking. Mobile social networking offers a channel for recording an individual’s spatiotemporal behaviors when location-detecting capabilities of devices are enabled. It also facilitates the study of time geography on an individual level, which has previously suffered from a scarcity of georeferenced movement data. In this paper, we report on the use of georeferenced tweets to display and analyze the spatiotemporal patterns of daily user trajectories. For georeferenced tweets having both location information in longitude and latitude values and recorded creation time, we apply a space–time cube approach for visualization. Compared to the traditional methodologies for time geography studies such as the travel diary-based approach, the analytics using social media data present challenges broadly associated with those of Big Data, including the characteristics of high velocity, large volume, and heterogeneity. For this study, a batch processing system has been developed for extracting spatiotemporal information from each tweet and then creating trajectories of each individual mobile Twitter user. Using social media data in time geographic research has the benefits of study area flexibility, continuous observation and non-involvement with contributors. For example, during every 30-minute cycle, we collected tweets created by about 50,000 Twitter users living in a geographic region covering New York City to Washington, DC. Each tweet can indicate the exact location of its creator when the tweet was posted. Thus, the linked tweets show a Twitter users’ movement trajectory in space and time. This study explores using data intensive computing for processing Twitter data to generate spatiotemporal information that can recreate the space–time trajectories of their creators.  相似文献   

17.
This article studies the analysis of moving object data collected by location‐aware devices, such as GPS, using graph databases. Such raw trajectories can be transformed into so‐called semantic trajectories, which are sequences of stops that occur at “places of interest.” Trajectory data analysis can be enriched if spatial and non‐spatial contextual data associated with the moving objects are taken into account, and aggregation of trajectory data can reveal hidden patterns within such data. When trajectory data are stored in relational databases, there is an “impedance mismatch” between the representation and storage models. Graphs in which the nodes and edges are annotated with properties are gaining increasing interest to model a variety of networks. Therefore, this article proposes the use of graph databases (Neo4j in this case) to represent and store trajectory data, which can thus be analyzed at different aggregation levels using graph query languages (Cypher, for Neo4j). Through a real‐world public data case study, the article shows that trajectory queries are expressed more naturally on the graph‐based representation than over the relational alternative, and perform better in many typical cases.  相似文献   

18.
Travelling is a critical component of daily life. With new technology, personalized travel route recommendations are possible and have become a new research area. A personalized travel route recommendation refers to plan an optimal travel route between two geographical locations, based on the road networks and users’ travel preferences. In this paper, we define users’ travel behaviours from their historical Global Positioning System (GPS) trajectories and propose two personalized travel route recommendation methods – collaborative travel route recommendation (CTRR) and an extended version of CTRR (CTRR+). Both methods consider users’ personal travel preferences based on their historical GPS trajectories. In this paper, we first estimate users’ travel behaviour frequencies by using collaborative filtering technique. A route with the maximum probability of a user’s travel behaviour is then generated based on the naïve Bayes model. The CTRR+ method improves the performances of CTRR by taking into account cold start users and integrating distance with the user travel behaviour probability. This paper also conducts some case studies based on a real GPS trajectory data set from Beijing, China. The experimental results show that the proposed CTRR and CTRR+ methods achieve better results for travel route recommendations compared with the shortest distance path method.  相似文献   

19.
Abstract

Detecting and describing movement of vehicles in established transportation infrastructures is an important task. It helps to predict periodical traffic patterns for optimizing traffic regulations and extending the functions of established transportation infrastructures. The detection of traffic patterns consists not only of analyses of arrangement patterns of multiple vehicle trajectories, but also of the inspection of the embedded geographical context. In this paper, we introduce a method for intersecting vehicle trajectories and extracting their intersection points for selected rush hours in urban environments. Those vehicle trajectory intersection points (TIP) are frequently visited locations within urban road networks and are subsequently formed into density-connected clusters, which are then represented as polygons. For representing temporal variations of the created polygons, we enrich these with vehicle trajectories of other times of the day and additional road network information. In a case study, we test our approach on massive taxi Floating Car Data (FCD) from Shanghai and road network data from the OpenStreetMap (OSM) project. The first test results show strong correlations with periodical traffic events in Shanghai. Based on these results, we reason out the usefulness of polygons representing frequently visited locations for analyses in urban planning and traffic engineering.  相似文献   

20.
在传统可达性度量方法的基础上进行改进,提出了一种行程时间不确定环境下地点时空效用可达性度量方法,考虑了行程时间不确定性以及需求端竞争的时变效应。利用深圳市真实的浮动车数据和在线用户原创内容(user-generated content,UGC)数据对深圳市餐饮可达性分布水平进行了分析,结果表明,所提的可达性度量模型比传统可达性度量模型能更准确地表达城市可达性分布。  相似文献   

设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号