UMD Poster - 2017 AVS

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incenTrip: A Real-Time Data-Driven Decision-Support Toolkit for the Incentivization and Guidance of Shared, Electrified, and Automated Vehicles (SEAVs)

Technology at a Glance

Potential Collaborations - SEAVs

►Adoption

of automated vehicles, Electrified vehicles

►Shared-vehicle/ride Long-Term Incentives Destination: Work Preferred Arrival: 8am

program participation ►Travel

and driving behavior shifts

►Eco-routing Pre-Trip Incentives

re-route

Real-Time Big Data Hub

Incentive Optimizer

►Regional

Integrated Transportation Information System (RITIS) at University of Maryland (UMD)

guidance positive social influence.

Accurate behavior intent prediction

Multimodal 4%

►Stated-Preference Drive

Rideshare 3%

Seed saver

►Over

3,000 samples ► Behavioral response under incentives ►Attitudes towards rideshare and SEAVs ►Work with DFHV and LM on SEAV scenarios

73%

LEAF SAVER

TREE SAVER

FOREST SAVER

PLANET SAVER

AWS Cloud Deployment

Alternative 1 Alternative 2

Alternative 1 Alternative 2

Feasible Alternatives Dedicated Data API

►Gamification,

►Passive

SM-CA Data API

Predictive Dataset

SM-CA Cloud Database

Alternative 1 Alternative 2

Control Architecture (CA)

CATT RITIS Database

Key Features of Our Approach •

Real-time API of traffic incidents, events, volumes, speeds, and climate condition

AgBM Behavior Model

• • • • • •

A large-scale simulation model based on Navteq network for D.C. and Baltimore

High-fidelity traffic prediction Data Fusion Real-time events/incidents Real-time traffic monitoring Weather conditions Real-time traffic simulation

DTALite iOS SDK

MOVESLite

Error: ± 3 min.

140 120 80 60

Estimated Travel Time Experienced Travel Time

40 20 0



Actual User Data App Deployment

160

100

Android SDK



The Geo-Location Heat-Map for one Anonymous App User

tracking ►Rich behavior evolution from actual app users ►App pop-up questions for decision verification

System Model (SM)

A Data-Driven Model

Time (min.)

►“Congestion is a 10% phenomenon”, a small % change can lead to significant drop in energy consumption and congestion ►“Carrots, not sticks”, personalized/optimized incentivization, features game-type activities and membership levels for loyalty, balances monetary and non-monetary incentives, utilizes social recognition and influence in a user friendly interface. ►Advanced methodology for behavior research supported by surveys, focus groups, laboratory experiments, naturalistic driving platforms and real world test beds ►Real-time prediction of traffic and user intent, powered by AI and data-driven approach. Responsively re-adjust information and incentives to achieve maximum efficiency

Transit 2%

►Prosocial Gamification

https://ritis.org

guidance

Decision-Science Support

Walk/Bike 18%

Connections: To connect over 40,000 D.C. commuters ►RideAmigos: Collaborate on a Ridesharing platform at UMD campus ►Incentive Optimizer, ►DC Dept. of For Hire Vehicles: Incentivize the usage of Electrified Taxi Efficient Budget Allocation ►Local Motors: effectively incentivize the adoption/usage of its AV: Olli

for SEAVs ►Dynamic

Real-Time Incentives

►Commuter

►Alpha Testing, with 355 driver samples. 3% incentivized to Rideshare; 24% to more energyefficient means of transportation

Chenfeng Xiong1*, Lei Zhang1, Mehrdad Shahabi2, Yafeng Yin2 1. National Transportation Center, University of Maryland, College Park 2. Dept. of Civil and Environmental Engineering, University of Michigan * [email protected]; 301-405-9430

Predicted Travel Times matches Actual Experiences

incenTrip Deployment ►24/7

Monitoring and comprehensive situation awareness, e.g. incidents, Etc. ►Real-time guidance of routing, departure times, and ride-matching for SEAVs ►Quick and accurate analysis using actual user data as feedback