The notion of smart cities is being adapted globally to provide a better quality of living. A smart city's smart mobility component focuses on providing smooth and safe commuting for its residents and promotes eco-friendly and sustainable alternatives such as public transit (bus). Among several smart applications, a system that provides up-to-the-minute information like bus arrival, travel duration, schedule, etc., improves the reliability of public transit services. Still, this application needs live information on traffic flow, accidents, events, and the location of the buses. Most cities lack the infrastructure to provide these data. In this context, a bus arrival prediction model is proposed for forecasting the arrival time using limited data sets. The location data of public transit buses and spatial characteristics are used for the study. One of the routes of Tumakuru city service, Tumakuru, India, is selected and divided into two spatial patterns: sections with intersections and sections without intersections. The machine learning model XGBoost is modeled for both spatial patterns individually. A model to dynamically predict bus arrival time is developed using the preceding trip information and the machine learning model to estimate the arrival time at a downstream bus stop. The performance of models is compared based on the R-squared values of the predictions made, and the proposed model established superior results. It is suggested to predict bus arrival in the study area. The proposed model can also be extended to other similar cities with limited traffic-related infrastructure.
翻译:智能城市的概念正在全球得到调整,以提供更好的生活质量。智能城市的智能流动部分侧重于为其居民提供顺畅和安全的通勤,并推广生态友好和可持续的替代方法,如公共交通(公共汽车)。在几个智能应用中,一个提供公共汽车抵达、旅行期限、日程等最新信息的系统提高了公共过境服务的可靠性。不过,这一应用需要关于交通流量、事故、事件和公共汽车位置的实时信息。大多数城市缺乏提供这些数据的基础设施。在这方面,提出了用有限的数据集预测到达时间的公共汽车抵达预测模型。在研究中使用了公共交通客车的位置数据和空间特点。选择了Tumakuru市服务(印度的Tumakuru)的路线之一,并分为两种空间模式:路口和路段没有交叉。机器学习模式XGBoost可以单独为空间模式建模。动态预测公共汽车到达时间的模式是利用前一次旅行信息以及机器学习模型来预测到达时间,以估计下游公共汽车的抵达时间。拟议在下游站的预测结果也是以亚路路路路路路路段为基准。拟议的预测模型。拟议在下游城市进行。拟议的业绩是扩展的模型,在下游城市进行。在下游路段预测。拟议中进行。提议的预测。