Identification of Critical Factors for Non-Recurrent Congestion Induced by Urban Freeway Crashes and Its Mitigating Strategies
نویسنده
چکیده
Given the extreme difficulty of estimating crash likelihoods, the most important aspect of the development of congestion management strategies is the identification of the factors that affect non-recurrent congestion caused by crashes. Such factors must be identified to develop crash management strategies and congestion management strategies. The objectives of this study are to identify causal factors that affect non-recurrent congestion and to propose some operational strategies for mitigating crash-induced non-recurrent traffic congestion. To achieve these objectives, a case study was conducted to identify spatiotemporal non-recurrent congestion regions using a previously developed method based on historical inductance loop detector data collected from six major freeways in Orange County, California. Based on the case study results, potentially significant factors in non-recurrent congestion were identified using the Cox proportional hazard model. Additionally, with the factors identified as significant, operational strategies were proposed for mitigating non-recurrent congestion due to freeway crashes.
منابع مشابه
Automatic Calibration of the Fundamental Diagram and Empirical Observations on Capacity
We present a method for automated, empirical calibration of freeway traffic flow characteristics. The method uses 5-min flow and density values for a section of freeway and rapidly and reliably estimates key parameters such as free flow speed, capacity, critical density, congestion wave speed and jam density, which are key inputs to many macroscopic traffic simulation models. The method consist...
متن کاملFreeway safety as a function of traffic flow.
In this paper, we present evidence of strong relationships between traffic flow conditions and the likelihood of traffic accidents (crashes), by type of crash. Traffic flow variables are measured using standard monitoring devices such as single inductive loop detectors. The key traffic flow elements that affect safety are found to be mean volume and median speed, and temporal variations in volu...
متن کاملCustomisation of Automatic Incident Detection Algorithms for Signalised Urban Arterials
Non-recurrent congestion or incidents are detrimental to the operability and efficiency of busy urban transport networks. There exists multiple Automatic Incident Detection Algorithms (AIDA) to remotely detect the occurrence of an incident in highway or freeway scenarios, however very little research has been performed to automatically detect incidents in signalised urban arterials. This limite...
متن کاملComparing a Bottleneck Identification Tool with the Congested Traffic Pattern Recognition System Asda/foto Using Archived Freeway Data from Portland, Oregon
Bottlenecks are key features of any freeway system and represent the emerging location for recurrent and non-recurrent traffic congestion. In Oregon, a freeway data archive known as PORTAL records volume, occupancy, and speed measurements from over 600 freeway locations every 20 seconds. This archive has enabled development of online freeway performance and reliability analysis tools. This pape...
متن کاملThe Moving Dynamic Nature of Progression Curves for Freeway Incident Related Congestion
Incidents on urban freeways usually have a major impact on the normal operation of traffic causing congestion and delays. With queues propagating rapidly, the probability of secondary incidents occurring increases. Of particular concern is the threat of serious secondary crashes in both directions. However, this secondary impact has been poorly defined by using static time and length thresholds...
متن کامل