从原始GPS数据中提取潜在的旅行时间信息并评估公共交通的性能——以斯里兰卡康提为例

Shiveswarran Ratneswaran, Uthayasanker Thayasivam
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摘要

在公共交通工具上广泛使用的定位设备产生了大量的地理空间数据。本研究的主要目标是建立一个解决方案框架,该框架可以处理从不同路线的不同公交车上固定的GPS(全球定位系统)接收器获得的大量地理空间数据,并对这些数据进行预处理、清理和转换以供分析。与GPS数据处理相关的挑战有很多,比如不连续性、不均匀性、网络覆盖率差和人为错误。本研究提出了两种新颖、简单的算法,从粗糙的原始数据中提取公交行程和公交车站序列,并结合了这些挑战。此外,在数据过滤过程中,仅使用该GPS数据在三种不同的可能情况下估计公交车站的停留时间。结合以往相关研究成果,本文提出的方法适用于异构交通条件下中等采样率(例如15秒)的GPS数据,并且具有独特的停留时间估计过程。此外,采用统计方法分析各种新的公共交通系统性能指标,如(i)超额行程时间(EJT);(ii)多余停留时间;(ii)超额运行时间;(iv)分段空闲时间比(SITR),在不同的时间范围内,这些指标是在没有进度数据的情况下制定的。这些指标有助于运输当局实时监测公交车,评估其性能,并识别不适当的驾驶行为。通过对斯里兰卡康提地区两条主要路线的案例研究,提供了详细的解释。
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Extracting potential Travel time information from raw GPS data and Evaluating the Performance of Public transit - a case study in Kandy, Sri Lanka
The widespread use of location-enabled devices on public transportation vehicles produces a huge amount of geospatial data. The primary objective of this research study is to build a solution framework that can process a large amount of geospatial data obtained from GPS (Global Positioning System) receivers fixed on different buses on different routes, preprocess, clean, and transform that data for analysis. There are various challenges associated with the processing of GPS data, like discontinuities, non-uniformities, poor network coverage, and human errors. This study proposes two novel, simple algorithms to extract bus trip and bus stop sequences, from the crude raw data, incorporating those challenges. Moreover, the dwell times at the bus stops are estimated solely using this GPS data in three different possible scenarios in the data filtering process. When considering the previous related studies in this area, the proposed approaches are applied to GPS data obtained at a medium sample rate (for example, 15 seconds) for heterogeneous traffic conditions, and also with a unique dwell time estimation process. In addition, statistical methods are implemented to analyse a variety of novel public transit-system performance metrics, such as (i) excess journey time (EJT); (ii) excess dwelling time (EDT); (ii) excess running time (ERT); and (iv) segment idle time ratio (SITR), at different time horizons, where these metrics are developed in the absence of schedule data. These metrics facilitate the transport authorities in real-time bus monitoring, evaluating their performance, and identifying inappropriate driving behaviours. A detailed explanation is provided through a case study of two main routes in the Kandy district of Sri Lanka.
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