Naturalistic Research on Powered Two-Wheelers. Martin Winkelbauer (KFV) Martin Donabauer (KFV) Alexander Pommer (KFV) Reinier Jansen (SWOV)

Similar documents
Eco-driving webinar WP 4.5. Veerle Heijne (TNO)

SAFERIDER Project FP SAFERIDER Andrea Borin November 5th, 2010 Final Event & Demonstration Leicester, UK

Powered Two Wheeler critical risk factors Behaviour - Infrastructure - Weather

Fatigue in Winter Maintenance Operations

Contributory factors of powered two wheelers crashes

A factsheet on Volvo Cars safety technology in the new Volvo S90

b. take a motorcycle-riding course taught by a certified instructor.

A factsheet on the safety technology in Volvo s 90 Series cars

Connectivity Will Make Motorcycling Safer

Euro NCAP Safety Assist

Investigate Moped-Vehicle Conflicts in China Using a Naturalistic Driving Study Approach

Guidelines for Motorcycling

CONNECTED AUTOMATION HOW ABOUT SAFETY?

CMC Roadmap. Motorcycles on track to connectivity & Evaluation of the potential of C-ITS for motorcycles on the basis of real accidents

The Development of ITS Technology, Current Challenges and Future Prospects Antonio Perlot Secretary General

Road Safety. Top 10 misunderstood road rules in NSW

Investigating two-wheeler balance using experimental bicycles and simulators

AKTIV experiencing the future together. Dr. Ulrich Kreßel Daimler AG, Research Center Ulm Walter Schwertberger MAN Nutzfahrzeuge, München

2017 MDTSEA Manual - How it Corresponds to the ADTSEA 3.0 Curriculum for Segment 1 and 2 Classroom Education

Mac McCall VTTI Motorcycle Research Group September 28, 2017

H2020 (ART ) CARTRE SCOUT

Assisted and Automated Driving DEFINITION AND ASSESSMENT: SUMMARY DOCUMENT

The challenges of driving

CSE 352: Self-Driving Cars. Team 14: Abderrahman Dandoune Billy Kiong Paul Chan Xiqian Chen Samuel Clark

THE HIGHWAY-CHAUFFEUR

Automated Driving: The Technology and Implications for Insurance Brake Webinar 6 th December 2016

Puyallup Station Access Improvements Project

Risk factors, crash causation and everyday driving

Sound detection of electric vehicles by blind or visually impaired persons

Motorcycles in connected traffic - a contribution to safety

ecall for Powered Two Wheeler

A Preliminary Look At Safety Critical Events From The Motorcyclists Perspective

Highly Automated Driving: Fiction or Future?

Traffic Safety Basic Facts 2008

Dr. Mohamed Abdel-Aty, P.E. Connected-Autonomous Vehicles (CAV): Background and Opportunities. Trustee Chair

Vehicle: Risks and Measures. Co-funded by the Horizon 2020 Framework Programme of the European Union

ANALYSIS OF THE ACCIDENT SCENARIO OF POWERED TWO- WHEELERS ON THE BASIS OF REAL-WORLD ACCIDENTS

S06 Update 7th SHRP 2 Safety Research Symposium Washington, DC July 12, Driving Transportation with Technology VTTI 7/12/2012 1

SAFETY TIPS. Crossing roads. Use Pavements. Boarding a bus. Don t use headphones. Don t cross at road bends. Crossing in front of vehicles

Preliminary Study of the Response of Forward Collision Warning Systems to Motorcycles

AUTONOMOUS VEHICLES: PAST, PRESENT, FUTURE. CEM U. SARAYDAR Director, Electrical and Controls Systems Research Lab GM Global Research & Development

eurofot - European Large-Scale Field Operational Test on In-Vehicle Systems

Connectivity Will Make Motorcycling Safer

Tenk om bilene ikke kolliderer lenger

University of Michigan s Work Toward Autonomous Cars

Power two. Powered Two

Driver Assessment Report

Road fatalities in 2012

Euro NCAP: Saving Lives with Safer Cars

Intelligent Speed Adaptation The Past, Present and Future of driver assistance. Dave Marples

Traffic Safety Culture - a sigificant driver affecting road safety?

Interaction with IVT-systems Results of driving behaviour. observations from the EU-project INTERACTION. Clemens Kaufmann, Ralf Risser

New York City Motorcycle Safety Study ALLEN MALLS: BEFORE, TEMPORARY MATERIALS, AFTER (CAPITAL): CHINATOWN (MANHATTAN)

1. Commitments of drivers at Colruyt Group

AUTOMATION PILOTS ON PUBLIC ROADS IN THE NETHERLANDS. Maurice Kwakkernaat Program Manager Automated Driving

«From human driving to automated driving"

Application of Autonomous Driving Technology to Transit

State-of-the-Art and Future Trends in Testing of Active Safety Systems

18th ICTCT Workshop, Helsinki, October Technical feasibility of safety related driving assistance systems

EMERGING TRENDS IN AUTOMOTIVE ACTIVE-SAFETY APPLICATIONS

Single vehicle accidents

WEEVIL project RESOLVE project s final event 2018/04/25

Single vehicle accidents

Traffic Safety Basic Facts 2010

Driver Assessment Companion Document

MAZDA CX-8 JULY ONWARDS ALL VARIANTS

ELECTRIC CARGO MOTORCYCLE: FINAL YEAR PROJECT SUMMARY

Driver Performance in the Presence of Adaptive Cruise Control Related Failures

Customize Your. Kia Sorento

AdaptIVe: Automated driving applications and technologies for intelligent vehicles

A comparison of hazard perception and responding in car drivers and motorcyclists. Narelle Haworth & Christine Mulvihill

Procedure for assessing the performance of Autonomous Emergency Braking (AEB) systems in front-to-rear collisions

D1.3 FINAL REPORT (WORKPACKAGE SUMMARY REPORT)

Tenth International Conference on Managing Fatigue: Abstract for Review

SIMULATING AUTONOMOUS VEHICLES ON OUR TRANSPORT NETWORKS

The Implications of Automated Vehicles for the Public Transit Industry

Aria Etemad Volkswagen Group Research. Key Results. Aachen 28 June 2017

Press Information. Volvo Car Group. Originator Malin Persson, Date of Issue

Automated Driving - Object Perception at 120 KPH Chris Mansley

West Broadway Reconstruction/LRT Design. March 19, 2015

Built at the Honda UK plant in Swindon, the all new fourth. generation Civic Type R is developed from the Mk9 Civic.

4th ACEM Annual Conference

The all-new HR-V, (known as the Vezel in Japan), is a new. crossover, derived from the Jazz. The HR-V has Honda s

Motorcycle Safety A Single Point of Truth

EVALUATION OF ACCIDENT AVOIDANCE SUPPORTING SYSTEM AT INTERSECTIONS FOR MOTORCYCLISTS USING ADAS

WHITE PAPER Autonomous Driving A Bird s Eye View

NHTSA Update: Connected Vehicles V2V Communications for Safety

Motorcycle competency-based training and assessment (CBTA) course guide. February 2014

Assessing the potential benefits of Autonomous Emergency Braking system based on Indian road accidents.

American Center for Mobility

a new.wave.of city transport vesper.world

TOWARDS ACCIDENT FREE DRIVING

New Mexico Motorcycle. Crash Data. Safety Program Committee Meeting

The final test of a person's defensive driving ability is whether or not he or she can avoid hazardous situations and prevent accident..

ROAD SAFETY RESEARCH, POLICING AND EDUCATION CONFERENCE, NOV 2001

Programs and Behaviors that. Can Improve Motorcyclists Conspicuity. Raymond L Ochs. Vice President, Training Systems Motorcycle Safety Foundation

ACTIVE SAFETY 3.0. Prof. Kompaß, VP Fahrzeugsicherheit, 14. April 2016

Response to. Department for Transport Consultation Paper. Allowing Learner Drivers To Take Lessons on Motorways

Level of Service Classification for Urban Heterogeneous Traffic: A Case Study of Kanapur Metropolis

Increasing road rules awareness for improved road safety

Transcription:

Naturalistic Research on Powered Two-Wheelers Martin Winkelbauer (KFV) Martin Donabauer (KFV) Alexander Pommer (KFV) Reinier Jansen (SWOV) 2017 03 07 UDRIVE Webinar

Two worlds two populations 2

Typical Riding Purposes 75% leisure riders 25% commuters Hardly any overlaps (Austria, 2012, n=1038) Leisure riders Commuters Group riding Travelling Sport Riding Track&Offroad Returning riders Permanent riders Returning riders Permanent riders Returning riders Permanent riders Returning riders Permanent riders Returning riders Permanent riders Returning riders Permanent riders 3

Camera positions Forward cameras Feet camera Face camera Driver s action camera Passenger compertment camera Right blind spot camera Rear View

Camera Position PTW Forward cameras Face camera Side cameras 78 78 Top case 90 90 78 5 2017 03 08 UDRIVE Webinar

DAS overview Cars Trucks PTW Cars Trucks PTW Cars Trucks Cars Cars Trucks PTW Cars Trucks PTW Cars Trucks UDRIVE Webinar

UDRIVE PTW Piaggio Liberty 125 8

9 2017 03 08 UDRIVE Webinar

Research questions particular in PTW Everyday riding 50 km/h right turn, left turn Acceleration from stop etc Safety Critical Event (SCE) detection Test triggers Validate by video Time Headway Read endings, 62% drivers at fault Car data only Use mobileye 10

Preliminary results: Time Headway 10% PTW crashes rear ending 62% car at fault research based on car data using Mobileye queries direction on SGL database avoid traffic jam v > 30 km/h v > 0,5 speed limit sidewards distance < 3 m lead vehicle present > 10 s 134 mio records i.e. 1242 h 22% behind car 1.25% behind truck 0.07% behind PTW for v > 85 km/h distance detection probably not exact enough (currently too few data) 11

Frequency (%) Frequency of distance, v < 55 km/h 7,00% 6,00% 5,00% 4,00% 3,00% 2,00% 1,00% 0,00% 0 0,5 1 1,5 2 2,5 3 3,5 4 Distance (s) Bike Car Truck 12

Frequency (%) Frequency of distance, 55 < v < 85 km/h 9,00% 8,00% 7,00% 6,00% 5,00% 4,00% 3,00% 2,00% 1,00% 0,00% 0 0,5 1 1,5 2 2,5 3 3,5 4 Distance (s) Bike Car Truck 13

Average of distance 1.1 s behind cars 1.2 s behind PTWs 0.9 s behind trucks Explanation for rear endings? Back to conspicuity? 14

Everyday riding: Setup Aim: To detect, understand, and possibly prevent motorscooter crashes Approach: Descriptives on everyday riding at urban intersections Measures: Speed choice & g-forces Depending on: Scenarios: Flow, Full stop Manoeuvres: Left turn, Right turn, Straight ahead Driver personalities based on questionnaires 15

Everyday riding: Expected results Scenario Speed (km/h) distribution, %above limit Acceleration (g) distribution Pre-stop Pre-man Man Post-man Pre-stop Pre-man Man Post-man Flow Full stop Left X X X X X X X Right X X X X X X X Straight X X X X X X X Left X X X X X X X X Right X X X X X X X X Straight X X X X X X X X 16

Everyday riding: Expected results Scenario Speed (km/h) mean,min,max, %above limit Acceleration (g) mean,min,max Full stop Pre-stop Pre-man Man Post-man Pre-stop Pre-man Man Post-man Gender Age Experience Personality M X X X X X X X X F X X X X X X X X Young X X X X X X X X Old X X X X X X X X Novice X X X X X X X X Exp. X X X X X X X X Cat 1 X X X X X X X X Cat 2 X X X X X X X X Cat 3 X X X X X X X X Cat 4 X X X X X X X X 17

SCEs: What we're looking for... Recording Vehicle manoeuvres: e.g. speed, acceleration/deceleration, direction, high jerk Driver/rider behaviour: e.g. eye, head and hand manoeuvres External conditions: e.g. road, traffic and weather characteristics 18

acceleration (g) Preliminary results: SCEs 19 / 40 scooters 500 hours of riding data Acceleration x / y / x Rotation speed x / y / z y longitudinal x lateral z vertical corrected by average filtered 30 to 2 Hz cut off at 55km/h map-matched GPS speed original y acceleration filtered y acceleration time (s) 19

acceleration (g) Preliminary results: SCEs 19 / 40 scooters 500 hours of riding data Acceleration x / y / x Rotation speed x / y / z y longitudinal x lateral z vertical corrected by average filtered 30 to 2 Hz cut off at 55km/h map-matched GPS speed original y acceleration filtered y acceleration time (s) 20

-0,94-0,86-0,79-0,72-0,67-0,63-0,58-0,53-0,49-0,45-0,41-0,37-0,33-0,29-0,25-0,21-0,17-0,13-0,09-0,05-0,01 0,03 0,07 0,11 0,15 0,19 0,23 0,27 0,31 0,35 0,39 0,43 0,47 0,51 0,55 0,59 0,63 0,67 0,72 0,77 0,81 0,86 0,93 1 Distribution of longitudinal acceleration 30000 25000 Trigger = 0,5 g N 20000 15000 10000 5000 0 21

-1,72-1,44-1,39-1,27-1,19-1,13-1,06-1,01-0,95-0,9-0,85-0,77-0,71-0,62-0,55-0,49-0,42-0,37-0,32-0,27-0,22-0,17-0,12-0,07-0,02 0,03 0,08 0,13 0,18 0,23 0,28 0,33 0,38 0,43 0,48 0,54 0,6 0,65 0,71 0,77 0,82 0,89 0,96 1,01 1,06 1,15 1,23 1,3 1,42 1,49 Distribution of lateral acceleration 90000 80000 Trigger = 0,25 g 70000 60000 50000 40000 N 30000 20000 10000 0 22

Distribution of vertical acceleration Trigger = 0,25 g 90000 80000 70000 60000 N 50000 40000 30000 20000 10000 0-4 -3-2 -1 0 1 2 3 4 23

Observations at outliers but nothing dangerous 24 2017 03 07 obs subjective assessment 87 no reason recognisable 47 in garage 32 curve 29 brake 16 start from traffic light 10 strong brake at zebra (no ped.) 6 gravel road 5 lane change 5 brake for pedestrian on zebra 4 speed hump 4 probably curve (unsecure detection) 4 rough road 3 start (other) 3 strong braking at traffic light 2 start from parking 2 swerve 2 turn 1 start from traffic light and change lane 1 enter parking lot 1 accelerate 1 non-critical interaction with pedestrian on zebra 1 strong braking in congestion 1 brakíng, curve 1 strong braking behind other PTW 1 overtaking bicycle 1 strong braking for parking space 1 strong braking 271 Total

Distributions of rotation speed x y 109 cases as acceleration. and a lot of roundabouts and some u-turns z 25

NR is not easy, but worth it TRA Conference Paris 2014 Martin Winkelbauer, KFV Phone: +43 5 77077 1214 martin.winkelbauer@kfv.at www.kfv.at 26 3/7/2017