Length Based Vehicle Classification on Freeways from Single Loop Detectors

Length Based Vehicle Classification on Freeways from Single Loop Detectors PDF Author: Benjamin André Coifman
Publisher:
ISBN:
Category : Vehicle detectors
Languages : en
Pages : 170

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Length Based Vehicle Classification on Freeways from Single Loop Detectors

Length Based Vehicle Classification on Freeways from Single Loop Detectors PDF Author: Benjamin André Coifman
Publisher:
ISBN:
Category : Vehicle detectors
Languages : en
Pages : 170

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Vehicle Classification from Single Loop Detectors

Vehicle Classification from Single Loop Detectors PDF Author: Benjamin André Coifman
Publisher:
ISBN:
Category : Detectors
Languages : en
Pages : 66

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Loop- and Length-based Vehicle Classification

Loop- and Length-based Vehicle Classification PDF Author: Erik D. Minge
Publisher:
ISBN:
Category : Vehicle detectors
Languages : en
Pages : 106

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While most vehicle classification currently conducted in the United States is axle-based, some applications could be supplemented or replaced by length-based data. Common length-based methods are more widespread and can be less expensive, including loop detectors and several types of non-loop sensors (both sidefire and in-road sensors). Loop detectors are the most frequently deployed detection system and most dual-loop installations have the capability of reporting vehicle lengths. This report analyzes various length-based vehicle classification schemes using geographically diverse data sets. This report also conducted field and laboratory tests of loop and non-loop sensors for their performance in determining vehicle length and vehicle speed. The study recommends a four bin length scheme with a fifth bin to be considered in areas with significant numbers of long combination vehicles. The field and laboratory testing found that across a variety of detection technologies, the sensors generally reported comparable length and speed data.

Improved Vehicle Length Measurement and Classification from Freeway Dual-loop Detectors in Congested Traffic

Improved Vehicle Length Measurement and Classification from Freeway Dual-loop Detectors in Congested Traffic PDF Author: Lan Wu
Publisher:
ISBN:
Category :
Languages : en
Pages : 86

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Classified vehicle counts are a critical measure for forecasting the health of the roadway infrastructure and for planning future improvements to the transportation network. Balancing the cost of data collection with the fidelity of the measurements, length-based vehicle classification is one of the most common techniques used to collect classified vehicle counts. Typically the length-based vehicle classification process uses a pair of detectors to measure effective vehicle length. The calculation is simple and seems well defined. In particular, most conventional calculations assume that acceleration can be ignored. Unfortunately, at low speeds this assumption is invalid and performance degrades in congestion. As a result of this fact, many operating agencies are reluctant to deploy classification stations on roadways where traffic is frequently congested.

Improved Dual-loop Detection System for Collecting Real-time Truck Data

Improved Dual-loop Detection System for Collecting Real-time Truck Data PDF Author: Nancy L. Nihan
Publisher:
ISBN:
Category : Detectors
Languages : en
Pages : 216

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Evaluation of Vehicle Classification Equipment

Evaluation of Vehicle Classification Equipment PDF Author: Richard W. Lyles
Publisher:
ISBN:
Category : Motor vehicles
Languages : en
Pages : 128

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Mining Vehicle Classification from Archived Loop Detector Data

Mining Vehicle Classification from Archived Loop Detector Data PDF Author: Bo Huang
Publisher:
ISBN:
Category :
Languages : en
Pages : 129

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Vehicle classification data are used in many transportation applications, including: pavement design, environmental impact studies, traffic control, and traffic safety. Ohio has over 200 permanent count stations, supplemented by many more short-term count locations. Due to the high costs involved, the density of monitoring stations is still very low given the lane miles that are covered. This study leveraged the deployed detectors in the Columbus Metropolitan Freeway Management System (CMFMS) to collect and analyze classification data from critical freeways where the Ohio Department of Transportation has not been able to collect much classification data in the past due to site limitations. The CMFMS was deployed in an unconventional manner because it included an extensive fiber optic network, frontloading most of the communications costs, and rather than aggregating the data in the field, the detector stations sent all of the individual per-vehicle actuations (i.e., PVR data) to the traffic management center (TMC). The PVR data include the turn-on and turn-off time for every actuation at each detector at the given station. Our group has collected and archived all of the PVR data from the CMFMS for roughly a decade. The PVR data allows this study to reprocess the original actuations retroactively. As described in this thesis, the research undertook extensive diagnostics and cleaning to extract the vehicle classification data from detectors originally deployed for traffic operations. The work yielded length based vehicle classification data from roughly 40 bi-directional miles of urban freeways in Columbus, Ohio over a continuous monitoring period of up to 10 years. The facilities span I-70, I-71, I-270, I-670, and SR-315, including the heavily congested inner-belt. Prior to this study, these facilities previously had either gone completely without vehicle classification or were only subject to infrequent, short-term counts.

Investigating Inductive Loop Signature Technology for Statewide Vehicle Classification Counts

Investigating Inductive Loop Signature Technology for Statewide Vehicle Classification Counts PDF Author: Chen-Fu Liao
Publisher:
ISBN:
Category : Vehicle detectors
Languages : en
Pages : 84

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An inductive loop signature technology was previously developed by a US Department of Transportation (DOT) Small Business Innovation Research (SBIR) program to classify vehicles along a section of the roadway using existing inductive loop detectors installed under the pavement. It was tested and demonstrated in California that the loop signature system could obtain more accurate, reliable and comprehensive traffic performance measures for transportation agencies. Results from the studies in California indicated that inductive loop signature technology was able to re-identify and classify vehicles along a section of roadway and provide reliable performance measures for assessing progress, at the local, State, or national level. This study aimed to take advantage of the outcomes from the loop signature development to validate the performance with ground truth vehicle classification data in the Twin Cities Metropolitan Area (TCMA). Based on the results from individual vehicle class verification, class 2 vehicles had the highest match rate of 90%. Possible causes of classification accuracy for other vehicle classes may include types of loops, sensitivity of inductive loops that generates a shadow loop signal on neighboring lanes, and classification library that was built based on California data. To further understand the causes of loop signature performance and improve the classification accuracy, the author suggests performing additional data verification at a permanent Automatic Traffic Recorder (ATR) site. There is also an opportunity to investigate the classification algorithm and develop an enhanced pattern recognition methodology based on the raw loop signature profile of various types of vehicles in Minnesota.

Evaluation of Dual-loop Data Accuracy Using Video Ground Truth Data

Evaluation of Dual-loop Data Accuracy Using Video Ground Truth Data PDF Author: Nancy L. Nihan
Publisher:
ISBN:
Category : Detectors
Languages : en
Pages : 50

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Evaluation of Vehicle Classification Equipment

Evaluation of Vehicle Classification Equipment PDF Author:
Publisher:
ISBN:
Category : Motor vehicles
Languages : en
Pages : 26

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