Simpson County Travel Demand Model Mobility Analysis November 7, 2003.

Slides:



Advertisements
Similar presentations
Capacity, Level of Service, Intersection Design (1)
Advertisements

Determining the Free-Flow Speeds in a Regional Travel Demand Model based on the Highway Capacity Manual Chao Wang Joseph Huegy Institute for Transportation.
Abstract Travel time based performance measures are widely used for transportation systems and particularly freeways. However, it has become evident that.
Fourth Annual Preserving the American Dream Conference Atlanta September 16, 2006 Reforming Public Transit – Transit and Congestion Relief Thomas A. Rubin.
Corridor planning: a quick response strategy. Background NCHRP Quick Response Urban Travel Estimation Techniques (1978) Objective: provide tools.
ARC’s Strategic Thoroughfare Plan Bridging the Gap from Travel Demand Model to Micro-Simulation GPA Conference Fall 2012 Presented By: David Pickworth,
Simpson County Travel Demand Model July 22, 2003.
Traffic & Congestion In Connecticut State of Connecticut Department of Transportation April 2010.
Project Introduction Methodology Data Collection Data Analysis Counter Measure for Improving Quality of Traffic Counter Measure for Improving Safety Performance.
Case Study 4 New York State Alternate Route 7. Key Issues to Explore: Capacity of the mainline sections of NYS-7 Adequacy of the weaving sections Performance.
Lec 8, Ch4, pp :Volume Studies Know the definitions of typical volume study terms Know typical volume count methods (through reading) Be able to.
Session 11: Model Calibration, Validation, and Reasonableness Checks
2015/6/161 Traffic Flow Theory 2. Traffic Stream Characteristics.
Travel Costs Lecture 14 October 16, /
Chapter 5: Traffic Stream Characteristics
TRB Lianyu Chu *, K S Nesamani +, Hamed Benouar* Priority Based High Occupancy Vehicle Lanes Operation * California Center for Innovative Transportation.
CEE 320 Fall 2008 Queuing CEE 320 Anne Goodchild.
Highways & Transportation I (ECIV 4333) Course Outline 1 The Islamic University of Gaza Faculty of Engineering Highways & Transportation I (ECIV 4333)
CEE 320 Fall 2008 Course Logistics Course grading scheme correct Team assignments posted HW 1 posted Note-taker needed Website and Transportation wiki.
Norman W. Garrick Travel Flow Data Some Basic Concepts Good travel flow data for all modes of travel is important for transportation planning and design.
Estimating Congestion Costs Using a Transportation Demand Model of Edmonton, Canada C.R. Blaschuk Institute for Advanced Policy Research University of.
15 th TRB Planning Applications Conference Atlantic City, New Jersey Joyoung Lee, New Jersey Institute of Technology Byungkyu Brian Park, University.
TRIP ASSIGNMENT.
Design Speed and Design Traffic Concepts
Use of Truck GPS Data for Travel Model Improvements Talking Freight Seminar April 21, 2010.
Traffic Incident Management – a Strategic Focus Inspector Peter Baird National Adviser: Policy and Legislation: Road Policing.
Milton-Madison Bi-State Travel Demand Model Rob Bostrom Planning Application Conference Houston, Texas May 19, 2009.
Interpreting Demand and Capacity for Street and Highway Design Lecture 5.1 CE Norman Garrick Norman W. Garrick.
Fuel Economy in Harris County-2007 Graciela Lubertino, PhD.
Transportation leadership you can trust. presented to Talking Freight Seminar presented by Richard Margiotta Cambridge Systematics, Inc. September 21,
Forecasting Travel Time Index using a Travel Demand Model to Measure Plan Performance Thomas Williams, AICP Texas A&M Transportation Institute 2015 TRB.
4-1 Model Input Dollar Value  Dollar value of time  Accident costs  Fuel costs  Emission costs.
How to Put “Best Practice” into Traffic Assignment Practice Ken Cervenka Federal Transit Administration TRB National Transportation.
Congestion Causes and Solutions. Traffic Congestion Characteristics Slower speeds Longer trip time Increased queues More vehicles.
2030 Mobility Plan City of Jacksonville Planning and Development Department January 2011.
TRB Planning Applications Identifying the Long-Range Transportation Improvement and Funding Needs for Urban Areas in Texas By Kevin M. Hall, Texas Transportation.
Abstract Transportation sustainability is of increasing concern to professionals and the public. This project describes the modeling and calculation of.
RPS Modeling Results Presentation to RPS Policy Committee Brian Gregor Transportation Planning Analysis Unit June 6,
Traffic Parameters for use with MOBILE6 in Ky. - Update by Jesse Mayes, P.E. Division of Multimodal Programs July 22, 2003.
Highway Information Seminar October 25, 2012 Adella Santos, NHTS Program Manager FHWA, Office of Highway Policy Information.
Prediction of Traffic Density for Congestion Analysis under Indian Traffic Conditions Proceedings of the 12th International IEEE Conference on Intelligent.
Interpreting Demand and Capacity for Street and Highway Design Lecture 6 CE 5720 Norman Garrick Norman W. Garrick.
Major Transportation Corridor Studies Using an EMME/2 Travel Demand Forecasting Model: The Trans-Lake Washington Study Carlos Espindola, Youssef Dehghani.
Chapter 5: Traffic Stream Characteristics
Freeway Congestion In The Washington Region Presentation to National Capital Region Transportation Planning Board February 15, 2006 Item # 9.
Integrated Travel Demand Model Challenges and Successes Tim Padgett, P.E., Kimley-Horn Scott Thomson, P.E., KYTC Saleem Salameh, Ph.D., P.E., KYOVA IPC.
Assessing the Marginal Cost of Congestion for Vehicle Fleets Using Passive GPS Data Nick Wood, TTI Randall Guensler, Georgia Tech Presented at the 13 th.
Traffic Flow Parameters Surface Street Application.
Review of the Texas Transportation Institute (TTI) 2007 Urban Mobility Report By Ronald F. Kirby Daivamani Sivasailam TPB Technical Committee October 5,
1 Methods to Assess Land Use and Transportation Balance By Carlos A. Alba May 2007.
2004 Transportation M etropolitan A tlanta P erformance Report – Congestion Measures Presentation to ITS Georgia August 29, 2005.
11 th National Planning Applications Conference Topic: Statewide Modeling Validation Measures and Issues Authors: Dave Powers, Anne Reyner, Tom Williams,
Hcm 2010: BASIC CONCEPTS praveen edara, ph.d., p.e., PTOE
HPMS Traffic Data Review Highway Information Seminar Oct , 2012 Patrick Zhang, P.E Office of Highway Information Policy, FHWA 1.
Review of the Texas Transportation Institute (TTI) 2007 Urban Mobility Report By Ronald F. Kirby Presentation to Transportation Planning Board October.
TRAVEL TIME ANALYSIS Use of Data IN-KY-OH Traffic Incident Management Conference October 9, 2015 Dayton, OH.
2007 Urban Mobility Report Principal Speaking Points.
IH-10 Managed Lanes Project: A “Public-Public” Partnership ENGINEERS PLANNERS ECONOMISTS Wilbur Smith Associates Presented at the Value Pricing Conference.
Geometric Design: General Concept CE331 Transportation Engineering.
2015 Urban Mobility Scorecard Tim Lomax Texas A&M Transportation Institute Austin Chamber of Commerce December 2015.
Do Mobility-Based Performance Measures Reflect Emissions Trends? Congestion and Emissions Co-performance Alex Bigazzi & Dr. Miguel Figliozzi ITE Western.
Case Study 1 Problem 5 Styner/Lauder Intersection Moscow, Idaho.
SMOKE-MOVES Processing
Overview of FHWA CMAQ & System Performance Measures
Performance Measure Exploration Preparing for the 2018 RTP
Macroscopic Speed Characteristics
ITTS FEAT Tool Methodology Review ITTS Member States Paula Dowell, PhD
Presented to 2017 TRB Planning Applications Conference
Johnson City MPO Travel Demand Model
Ventura County Traffic Model (VCTM) VCTC Update
Presentation transcript:

Simpson County Travel Demand Model Mobility Analysis November 7, 2003

Study Location

MODEL BACKGROUND The main objective was to forecast traffic volumes on a new section of the KY 1008 bypass in Franklin, KY Project was coordinated through: The Division of Planning The Division of Multimodal Programs KYTC decided to build a full travel demand model for Simpson County for future uses such as: Air quality analysis (non-attainment) Any other transportation-related testing

BACKGROUND (CONT.) Additional purpose was to test mobility in Simpson County KYTC wanted to apply Texas Transportation Institute’s (TTI) Mobility Indices in a travel demand model The result was a preliminary set of procedures that could be used to quantify mobility using travel demand models

RESEARCH Two reports were reviewed as part of this project: The 2002 Urban Mobility Study (TTI): Outlines the definitions and procedures for determining mobility indices Includes results of indices throughout U.S. A case study of Grand Junction, Colorado: Written by TTI and the Colorado Department of Transportation Uses travel time research to derive area-wide mobility indices

2002 URBAN MOBILITY STUDY Methodology can be found in Appendix B of the 2002 Urban Mobility Study report Other information included in report: Constants Formulas Sample Calculations Mobility Indices of Major Cities in U.S.

GRAND JUNCTION CASE STUDY Grand Junction was used to test TTI’s mobility methodology in the year 2000 Travel time was most important attribute for accurate results Travel Time Data was collected during the following periods: AM Peak PM Peak Off Peak (Free Flow Period)

GRAND JUNCTION CASE STUDY (cont.) Additional data collected included: Road segment distance Vehicle occupancy 24 hour traffic counts

SIMPSON MODEL ISSUES The KYTC wanted the TTI methodology to apply to travel demand models Much of the data collected can be obtained from a travel demand model However, the Simpson County Travel Demand Model was a 24-hour model and did not contain peak volumes Initially, it was believed that not having the peak hour traffic information may limit the use of the TTI methodology

ADDITIONAL INFORMATION The TTI methodology applies to Interstates and Principal Arterials Since there were not any Principal Arterials in Simpson County, Minor Arterials were used as the next ‘best’ thing in the analysis Roads such as I-65, US 31W, KY 73, KY 100, KY 383, and KY 1171 were used

TTI INDICES RCI – Roadway Congestion Index TRI – Travel Rate Index TTI – Travel Time Index

ROADWAY CONGESTION INDEX (RCI) Provides an indication of the total number of hours in a day that a road may experience congestion Therefore, a value of 20% would indicate that 20% of the daily travel along the road occurred in congested conditions Also, the RCI can be used to determine the annual person-hours of delay for a specific study area

RCI INPUTS The index requires the following input: Number of Lanes ADT Peak Directional Traffic Speed Estimates Estimates of Travel Delay

RCI PROBLEMS / SOLUTIONS As previously noted, the Simpson model did not include peak hour directional forecasts Because of this, a ‘true’ RCI calculation could not be calculated based on TTI methodology However, a similar index could be calculated by: Subtracting modeled travel time from free flow travel time Multiplying result by number of vehicles on segment This was conducted for all interstates and arterials

RCI RESULTS Based on this procedure, the average annual delay in Simpson County was 0.87 hours per person. In the 2002 Urban Mobility Study, the smallest RCI value was 5.0 hours/delay per person in Brownsville, Texas Considering Brownsville, Texas is nearly ten times the size of Franklin, KY, the value for Simpson County seemed reasonable

TRAVEL RATE INDEX (TRI) Provides an indication of the total amount of extra time required to make a trip as a result of congestion along a roadway Therefore, a value of 1.20 would indicate that it would take 20% longer to make a trip during peak periods when compared to free-flow speeds

TRI INPUTS The index requires the following input: Average Freeway Speed Freeway Vehicle Miles of Travel Average Arterial Speed Arterial Vehicle Miles of Travel

TRI FORMULA Travel Rate Index = Freeway Travel Rate Freeway Free Flow Rate Peak Period Freeway VMT x + Prin. Arterial Travel Rate Prin. Arterial Free Flow Rate Peak Period Principle Arterial VMT x Peak Period Principle Arterial VMT + Peak Period Freeway VMT

TRI PROCEDURE The following steps were taken to calculate TRI: Calculate average model speed for each segment Calculate VMT for each segment Calculate a Free Flow Rate per segment Assume a K-Factor to obtain a peak VMT per segment Use TRI equations to calculate study area TRI

TRI RESULTS Based on this procedure, the Travel Rate Index was calculated to be hours per person This indicates that it will take approximately 0.2% longer during peak periods than free flow periods Based on the TTI report, Anchorage, Alaska and Corpus Christi, Texas had the lowest TRI value of 1.02 Therefore, a value of in Franklin, a much smaller city, seems reasonable

Future 2025 TRI

RESULTS ScenarioDescription Freeway TRI Arterial TRI Overall TRI 1Base Base 2025 (I-65: 4 Lanes) E+C 2025 (I-65: 4 Lanes) E+C 2025 with Bypass (I-65: 4 Lanes) Base 2025 (I-65: 6 Lanes) E+C 2025 (I-65: 6 Lanes) E+C 2025 with Bypass (I-65: 6 Lanes)

TRAVEL TIME INDEX (TTI) The TTI is similar to the TRI, but more complex This index includes recurring and incident congestion whereas the TRI only considers recurring congestion The TTI also requires peak direction information to determine mobility Without this information, it would be difficult to use the TTI procedures As a result, it was decided that this index would not be included as part of the Simpson County analysis

Geographic Application of Mobility Index Measures In these illustrations, mobility indices for TAZ’s are used to illustrate the effect that a new bypass has option has on improving the mobility service for some areas and not affecting others is Best >1.00 is Worst New Bypass Mobility Improved Mobility Unaffected

CONCLUSIONS The RCI and TRI are two indices that can potentially be used to report mobility from a small-urban travel demand model Accurate speed data (peak periods) from the model is necessary for good results The mobility indices will produce more accurate results if used on a model with hourly assignments Consider opportunities for modified approach to deal with small urban areas Consider applications to correlate mobility indices to smaller geographic units (TAZ’s)

QUESTIONS? COMMENTS?