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Page 1: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Enhancing MOVES Transportation and Air Quality Analysis by Integrating with Simulation-Based

Dynamic Traffic Assignment

Yi-Chang Chiu, University of ArizonaJane Lin, University of Illinois ChicagoSuriya Vallamsundar, University of Illinois ChicagoSong Bai, Sonoma Technology, Inc.

TRB Planning Application Conference, Reno, NVMay 9, 2011

Page 2: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Objectives• To present, through a case study, an integrated

modeling framework of MOVES and simulation-based dynamic traffic assignment (SBDTA) model, i.e., DynusT, especially for project level emission analyses

• To share our experience specifically in– How to integrate a SBDTA model and MOVES– How to properly run and extract traffic activity outputs

from a SBDTA model– Project level emission estimation in MOVES– Differences in using MOVES default drive schedule (i.e.,

specifying only link average speed) versus local specific operating mode distribution input

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Page 3: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Motivations of Our Study

• MOVES is the new EPA regulatory mobile emissions models for transportation conformity analyses.

• MOVES is capable of much finer spatial and temporal emission modeling than its predecessor MOBILE6

• Few research efforts exist in integrating MOVES with transportation models

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Page 4: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Literature Review • Most popular integration of traffic simulation and

emission models in the U.S is between the VISSIM and CMEM (Comprehensive Modal Emissions Model)– Nam, E.K., C.A. Gierczak and J.W. Butler. 2003; Stathopoulos, F.G.

and Noland, R.B. 2003; Noland, R.B. and Quddus, M.A. 2006; Chen, K. and L. Yu., 2007.

• Integrations between CMEM and other traffic simulation models– Barth, M. C. Malcolm, 2001; Malcolm, C., Score, G and Barth, M.

2001; Tate, J. E., Bell, M. C and Liu, R. 2005 • Integration between MOVES and traffic simulation

models is very limited due to the fact that MOVES is new– Integration between TRANSIMS and MOVES by FHWA

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Page 5: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Simulation-Based Dynamic Traffic Assignment

• Iterations between– Mesoscopic traffic simulation– Dynamic user equilibrium (vehicles departing at the same

time between same OD pair has the same experienced travel time)

• SBDTA retains advantages of:– Macro models – large-scale assignment (but with more

realistic congestion patterns)– Micro models – high-fidelity traffic flow dynamics (but

1000+ times faster simulation)• Improved temporal and spatial resolutions at low

computational cost

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Page 6: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Why Using Dynamic Traffic Assignment to Support MOVES?

• Assignment is the linchpin between travel demand model and Mobile6/EMFAC– Capture travelers’ route choice learning network changes.

• This linkage remains crucial when linking MOVES with traffic simulation models– Without which, vehicles may be at wrong locations at wrong

time – misleading VMT and VHT.– One-shot micro simulation (no assignment) is not consistent

with assignment/learning and likely to produce inaccurate and/or counterintuitive results.

– Micro models extracted from TDM sub-area cut may gridlock – OD in TDM not roadway capacity constrained

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Page 7: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Modeling Demand/Supply Interactions in Simulation-Based DTA

• Four fundamental transportation system elements

– Infrastructure• Geometries

– Traffic flows • Speed, density, flow, shockwaves, queue

– Control systems • Signals, ramp meters

– Information• Traveler information, message sings

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Page 8: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Integrated Framework Component I: (Dynamic urban systems for

Transportation)

• Mesoscopic Dynamic Traffic Assignment (DTA)• Developed since 2002, supported by FHWA, used in

20+ regions since 2005 (Univ. of Arizona)– SCAG, PAG, MAG, DRCOG, PSRC, SFCTA, HGAC, Las

Vegas, ELP, NC Triangle, Guam, Florida, SEMCOG, Toronto, SACOG, Mississippi, North Virginia, I-95, US36, New York, Bay Area)

– 50+ agency/firm/university users internationally

• Open Source in 2011 (http://www.dynust.net)

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Page 9: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

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Integrated Framework Component II: MOVES

• EPA’s Next Generation Emission Model• “Modal based approach” for emission factor estimation

– Four major functions - Total activity generator, Source bin distribution generator, Operating mode distribution generator and Emission calculator

• Data driven model – Data are stored and managed in MySQL database

• Outputs total emission inventories and composite emission rates

• Three scales of analysis – National– County – Project

Page 10: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

MOVES Modal Approach

• Associates emission rates with vehicle specific power (VSP) and speed

• VSP – power placed on vehicle under various driving modes

• Distributes activities using several temporal resolutions (e.g., hours of day, weekday vs. weekend)

• Classifies vehicles consistent with HPMS data

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Page 11: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

MOVES – Total Emission Estimation

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Page 12: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

MOVES Input Data• National

– National default database and use of allocation factors• County

– Use of default data and regional user specific data • Project level

– Detailed local specific data

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Travel models Link characteristicsDriving PatternVehicle Operating ModesVehicle Fleet Characteristics

Local sourceMeteorological infoFuel supplyInspection/ Maintenance Program

Data sources for MOVES project-level application

Page 13: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

MOVES Activity Data from Transportation Models

• Key travel model outputs for emissions modeling– Volume (or VMT)– Speed (average for each roadway link)– Fleet mix (cars vs. trucks)

• MOVES requires data at higher resolution than that is provided by traditional travel demand models

• Literature shows using processed traditional travel modeling data introduces noticeable discrepancies in vehicle emissions estimates

• Activity based travel demand models and simulation based DTA – suited to bridge travel activities and MOVES

Page 14: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Integration: Data Flow from DynusT to MOVES

Data Item Description Possible Source

Link Roadway link characteristics(Length, grade, average speed)

User Defined

Link Drive Schedule Speed/ time trace second by second

DTA models

Operating Mode Distribution

Operating mode distribution defined jointly by speed, VSP (a)roadway links – optional (b) off-network link - required

DTA models

Link Source Type Hour Vehicle fleet composition/ link DTA models

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Page 15: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Implementation of Integration (I)

• Two stages are involved in integrating the two components for project level analysis

First StageModifying DynusT to output traffic data as required by MOVES• Network Parameters • Fleet Characteristics • Driving Pattern – Operating Mode versus Drive Schedule Link• Operating modes - “modes” of vehicle activity with distinct

emission rates. – Running activity has modes distinguished by their VSP and instantaneous speed– Start activity has modes distinguished by soak time

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Page 16: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Proposed Integrated Framework

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Simulation based Dynamic Traffic Assignment Model

MOVES

Built-in Converter to Link by Link Operating Mode Distribution

Page 17: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Modification to DynusT Traffic Activity Output: Built in Converter to Link by Link Operating Mode Distribution

at Converged Iteration

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moves_input.dat

At time t, for each vehicle n with prevailing speed Vt andprevious speed Vt-1Compute acceleration/deceleration = (Vt-Vt-1)/SimInterval Operating mode bin count ++1 Total Count ++1

Not = t + 1

End of Sim?

MovesOut_Links_Hour_1MovesOut_LinkSourceTypes_Hour_1.csv

MovesOut_opmodedistribution_Hour_1.csvMovesOut_offNetwork_Hour_1.csv

Yes

Move-switch on and outputinterval in

Parameter.dat

MOVES Excel Input FileLinks

opmodedistributionLinkSourceType

OffNetwork

MovesOut_Links_Hour_2MovesOut_LinkSourceTypes_Hour_2.csv

MovesOut_opmodedistribution_Hour_2.csvMovesOut_offNetwork_Hour_2.csv

MovesOut_Links_Hour_nMovesOut_LinkSourceTypes_Hour_n.csv

MovesOut_opmodedistribution_Hour_n.csvMovesOut_offNetwork_Hour_n.csv

Yes

…..

MOVES Excel Input FileLinks

opmodedistributionLinkSourceType

OffNetwork

MOVES Excel Input FileLinks

opmodedistributionLinkSourceType

OffNetwork

Page 18: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Implementation of Integration (II)

Second StageIdentifying sources for and preparing local data

Data Item Description Possible Sources

Source Type Age Distribution

Vehicle age distribution • Local vehicle registration • Converted from MOBILE • MOVES default data

Off- Network Off-network represents TAZs to model start emissions

• DTA models/activity based models

Meteorology Local specific temperature and humidity information

• Local specific• Converted from MOBILE • MOVES default data

Fuel Supply Fuel supply parameters • Local specific• MOVES default data

Inspection/ Maintenance Program

I/M program parameters • Local specific• MOVES default data

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Page 19: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Summary Features of the Integrated Framework

• Integrated framework: DynusT (DTA) + MOVES – advantages of DTA over static traffic assignment and one-shot simulation

• Run Time integration with built in converters of traffic activity output from traffic simulation model to MOVES required operating mode distribution format

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Page 20: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

6. Sacramento Case Study (Parts 1 and 2)

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• Part 1: improvement vs. baseline• Part 2: local data vs. MOVES default

Page 21: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Case Study Setup: Baseline• Emission analyses focus on CO2 from on-road traffic

– Time period: 6-10 AM in a weekday, February 2009• Downtown Sacramento area

– 437 nodes, 768 links, – 66,150 vehicles (hourly demand variation: 23/22/18/37%)– Fleet mix: 90% passenger vehicles and 10% heavy-duty vehicles– Westbound congestion significant

23Source: Google Map

Source: DynusT simulation

Page 22: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Case Study Part 1: Improvement Scenario

• Improving freeway interchange to relieve congestion– Increase off-ramp and downstream interchange capacity– Signal re-timing for higher off-ramp traffic throughput

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Source: Google Map

Page 23: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Improvement vs. Baseline : Traffic Activities

Baseline Improvement % Change

VHT (hrs) 3,569 3,130 12.3%

VMT (miles) 148,076 141,775 4.3%

Total Stop Time (hrs) 550 338 38.5%

• Both VHT and VMT were reduced (12.3% and 4.3%) due to interchange improvement

• Total stop time was reduced by 38.5% (directly related to changes in operating mode distributions)

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Page 24: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Speed improvement on Business Loop I-80 main lanes

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Baseline Improvement

Improvement vs. Baseline : Traffic Activities

Page 25: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Improvement vs. Baseline : Operating Mode

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Baseline

19%

23%58%

Low-speed

Medium-speed

High-speed

Improvement

19%

19%

62%

Page 26: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Hour by Hour Comparison

6:00 - 6:59 AM Source Type VMT (mile) CO2e (kg) VMT (mile) CO2e (kg) VMT CO2eLDV 45,309 13,936 44,558 12,983 -1.7% -6.8%LDT 4,553 1,909 4,596 1,877 0.9% -1.7%HDT 445 730 428 621 -3.8% -14.9%Total 50,307 16,575 49,581 15,481 -1.4% -6.6%

7:00 - 7:59 AM Source Type VMT (mile) CO2e (kg) VMT (mile) CO2e (kg) VMT CO2eLDV 86,849 26,031 84,392 23,644 -2.8% -9.2%LDT 8,954 3,657 9,056 3,593 1.1% -1.7%HDT 726 1,199 851 1,309 17.2% 9.2%Total 96,528 30,887 94,299 28,545 -2.3% -7.6%

8:00 - 8:59 AM Source Type VMT (mile) CO2e (kg) VMT (mile) CO2e (kg) VMT CO2eLDV 125,784 36,263 121,689 33,532 -3.3% -7.5%LDT 12,825 5,077 13,378 5,098 4.3% 0.4%HDT 1,120 1,719 1,180 1,649 5.4% -4.1%Total 139,730 43,058 136,247 40,279 -2.5% -6.5%

Baseline Improvement % change:Impr. v.s. base

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Page 27: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Case Study Part 1: Conclusion

• Variation in VMT and CO2 emissions (total and by source type) are consistent over the four-hour period

• CO2 emissions benefit in the improvement scenario is related to:– VMT reductions– shift in operating mode distributions (reduced stop

time and improved travel speed)

9:00 - 9:59 Am Source Type VMT (mile) CO2e (kg) VMT (mile) CO2e (kg) VMT CO2eLDV 194,152 108,055 190,550 92,848 -1.9% -14.1%LDT 20,453 15,190 20,346 13,368 -0.5% -12.0%HDT 1,802 5,025 1,945 4,758 7.9% -5.3%Total 216,407 128,270 212,842 110,974 -2% -13%

Baseline Improvement % change: Imp vs. Base

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Page 28: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Case Study Part 2: Local vs. Default Data

• MOVES default drive schedule vs. user-supplied operating mode distribution– How much difference in emissions estimates?

• Use of MOVES default drive schedule– Easy to implement in practice– Potential limitations

• Use of project-level operating mode distribution– Requires data preparation and conversion– Presumably more appropriate for emissions modeling

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Page 29: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Comparison Scenarios Setup

• Using the same baseline scenario as presented previously for the Sacramento case study

• Running MOVES in separate runs with1. Link average speeds, i.e., using MOVES default drive

schedules, to replace user supplied operating mode distribution

2. User-supplied operating mode distribution, i.e., the baseline scenario in the previous case study

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Page 30: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Comparison Results

% change:(Op. Mode Distribution) Default vs. Op Mode

6:00 - 6:59 Source Type VMT (mile) CO2e (kg) VMT (mile) CO2e (kg) CO2eLDV 45,309 13,936 45,309 16,359 17.4%LDT 4,553 1,909 4,553 2,401 25.8%HDT 445 730 445 941 28.9%Total 50,307 16,575 50,307 19,701 18.9%

7:00 - 7:59 Source Type VMT (mile) CO2e (kg) VMT (mile) CO2e (kg) CO2eLDV 86,849 26,031 86,849 30,821 18.4%LDT 8,954 3,657 8,954 4,649 27.1%HDT 726 1,199 726 1,543 28.7%Total 96,528 30,887 96,528 37,013 19.8%

8:00 - 8:59 Source Type VMT (mile) CO2e (kg) VMT (mile) CO2e (kg) CO2eLDV 125,784 36,263 125,784 43,816 20.8%LDT 12,825 5,077 12,825 6,566 29.3%HDT 1,120 1,719 1,120 2,353 36.9%Total 139,730 43,058 139,730 52,736 22.5%

Baseline Baseline(MOVES default Drive Schedule)

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Page 31: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Comparison Results (cont’d)

• Q/A check: VMT by source type remains the same;• Results for the first 3 hours: using MOVES default

drive schedules yields much higher CO2 emissions;• Results for hour 4: pattern is opposite.

% change:Default vs. Op Mode

9:00 - 9:59 Source Type VMT (mile) CO2e (kg) VMT (mile) CO2e (kg) CO2eLDV 194,152 108,055 194,152 101,146 -6.4%LDT 20,453 15,190 20,453 15,086 -0.7%HDT 1,802 5,025 1,802 3,994 -20.5%Total 216,407 128,270 216,407 120,226 -6%

Baseline Baseline(Op. Mode Distribution) (MOVES default Drive Schedule)

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Page 32: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Using MOVES Default Drive Schedules

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Source: User Guide for MOVES2010a (EPA, 2010), pp 66.

Page 33: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Part 2: Conclusion (Local vs. Default Data)

• In this case (especially hour 4 results), for links with speed below 5.8 mph, MOVES does not provide HDV emissions if default drive schedules were used.

• Similar situation for LDV emissions (speed < 2.5 mph)

• The missed emissions associated with low-speed links contributed to underestimation in MOVES when using default drive schedules.

• Using local-specific data under a highly congested condition seems important to produce more consistent results than using default drive schedules.

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Page 34: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Overall Summary and Next Steps

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• An integrated modeling framework of DynusT and MOVES - connecting and automating the modeling process from DTA to MOVES project-scale applications

• Advantages of the integrated model in policy analysis• Using local-specific traffic activity inputs and

operating mode distributions is important• MOVES default drive schedules are convenient to use

but may become questionable when modeling highly congested traffic; further investigation is needed.

Page 35: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Future Research

• Use DynusT project-specific drive schedules in MOVES modeling

• Compare static traffic assignment with dynamic traffic assignment for emissions modeling

• Conduct a series of sensitivity analyses with selected traffic and MOVES parameters

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Page 36: Yi-Chang Chiu , University of Arizona Jane Lin , University of Illinois Chicago

Acknowledgments

• This research is part of the TRB SHRP C10 project led by Cambridge Systematics, Inc.

• This study is a joint effort among:Dr. Song Bai, Sonoma Technology, Inc. [email protected]

Dr. Yi-Chang Chiu, University of Arizona [email protected]

Dr. Jane Lin, University of Illinois at Chicago [email protected]

Ms. Suriya Vallamsundar, University of Illinois at Chicago [email protected]

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