交通密度预测的技术趋势——系统文献综述

N. Maulida, K. Mutijarsa
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引用次数: 1

摘要

当涉及到从一个位置移动到另一个位置所消耗的时间时,道路交通变得至关重要。出行时间的长短直接影响到市民白天的活动。政府倾向于通过开发新的道路来迁移道路容量来解决这个问题。交通管理是克服过度拥挤和产能过剩所造成的挤塞的新需要。目前的管理系统仍然利用从道路上的各个实体获得的信息。对道路状况的观察变得非常主观。然而,有一些潜在的技术可以用来帮助解决现有的问题。面对这些问题和机遇,我们需要利用最新技术提供更加客观的交通密度信息。各类信息系统的发展适应和技术的运用是能够定期提供信息的。机器学习作为一种正在被优化的技术发展形式,可以解决交通控制中典型的信息需求。基于需求,与交通管理相关的技术应用得到了更高的发展。本研究旨在运用系统文献综述(SLR)方法,探讨交通分类技术在交通管理中的应用趋势。本研究的目的是为研究人员在开发流量分类系统时所考虑的相关活动提供背景。此外,这项研究提供了重要的见解,需要制定合适的和相关的方法,以适当的方式支持证据管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Technology Trend of Traffic Density Prediction – A Systematic Literature Review
Road traffic becomes critical when it comes to the time consuming amount when moved from one to another location. The travel duration is affected directly to citizen activity during the day. Government tends to try solving the problem by developing new road for migrating the road capacity. Traffic management is the new needs to overcome congestion due to overcrowding and overcapacity. The current management system still utilizes information obtained from various entities on the road. Observation of conditions and situations on the road becomes very subjective. However, there are potential technologies that can be utilized to help the existing problems. With these problems and opportunities, there is in providing traffic density information that is more objective utilizing the latest technology. The development of various types of information system adaptation and the use of technology is able to provide information on a regular basis. Machine learning as a form of technology development that is being optimized, can solve the information needs typical of traffic control. Based on the needs, the technology application related to traffic management get higher overtime. This study aims to examine the trends of the technology application on traffic classification for traffic management using the Systematic Literature Review (SLR) method. The purpose of this study is to provide the background of relevant activities which are considered by researcher while developing traffic classification system. In addition, this research provides important insight into the need to make suitable and correlated methodologies which support the management of evidence in an appropriate manner.
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