CITY of BELLEVUE Smart Mobility Plan 2018 Prepared for the City of Bellevue by Table of Contents EXECUTIVE SUMMARY

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CITY of BELLEVUE Smart Mobility Plan 2018 Prepared for the City of Bellevue by Table of Contents EXECUTIVE SUMMARY CITY OF BELLEVUE Smart Mobility Plan 2018 Prepared for the City of Bellevue by Table of Contents EXECUTIVE SUMMARY ............................................... 7 INTRODUCTION .......................................................... 11 A Transformation in Transportation ...................................................................... 11 Vision and Goals ........................................................................................................ 13 A Look Back ................................................................................................................ 14 Preview into the Future ............................................................................................ 15 Elements of the Smart Mobility Plan ..................................................................... 16 Priority Projects Summary ...................................................................................... 17 CITY INITIATIVES ....................................................... 19 Shared-Use Mobility .................................................................................................. 20 Autonomous & Connected Vehicles ...................................................................... 25 Electric Vehicles ......................................................................................................... 34 Real-Time Traveler Information .............................................................................. 39 Data Management .................................................................................................... 43 Traffic Management ................................................................................................. 47 NEXT STEPS .............................................................. 55 Funding ........................................................................................................................ 55 Staff Resources ......................................................................................................... 57 Policies ........................................................................................................................ 58 Societal Impacts ........................................................................................................ 60 Moving the Plan Forward ........................................................................................ 63 APPENDIX ................................................................. 67 Bellevue Interest Statement for Smart Mobility ................................................. 69 Acronyms AAA ......................American Automobile Association ITS........................Intelligent Transportation System ACES ...................Autonomous, Connected, Electric, LiDAR ..................Light Detecting and Ranging and Shared NHTSA ................National Highway Traffic ADAS ...................Advanced Driver Safety Administration Assistance Systems NORCOM ............North East King County Regional ATC ......................Advanced Transportation Controller Public Safety Communication ATCMTD .............Advanced Transportation and Agency Congestion Management O&M.....................Operation and Maintenance Technologies Deployment ODP .....................Open Data Portal ATSPMs ..............Automated Traffic Signal OEM .....................Original Equipment Manufacturer Performance Measures P&R ......................Park and Ride AV.........................Autonomous Vehicle PSE ......................Puget Sound Energy AVL ......................Automatic Vehicle Location SCATS .................Sydney Coordinated Adaptive CAD .....................Computer Aided Dispatch Traffic System CCTV ...................Closed-Circuit Television SPaT ................... Signal, Phase, and Timing CMAQ ..................Congestion Mitigation STP ..................... Surface Transportation Program and Air Quality TaaS ................... Transportation-as-a-Service CMS .....................Changeable Message Sign TDC ..................... Transportation Data Collaborative CPN .....................CommutePool Network TMC .................... Traffic Management Center CPP ......................Connected Citizen Program TSP ..................... Transit Signal Priority CV ........................Connected Vehicle V2I....................... Vehicle-to-Infrastructure DMS .....................Dynamic Message Sign V2V ..................... Vehicle-to-Vehicle DOE ......................Department of Energy V2X ..................... Vehicle-to-Connected Device DSRC ...................Dedicated Short-Range VMT .................... Vehicle Miles Traveled Communications WSDOT .............. Washington State Department EV .........................Electric Vehicle of Transportation FHWA ..................Federal Highway Administration WSTC ..................Washington State GPS ......................Global Positioning System Transportation Commission IoT ........................Internet of Things Executive Summary As the City of Bellevue continues to grow and thrive, the demands on the city’s transportation system continue to grow as well. This growth has resulted in traffic and parking concerns as being the most significant city issues identifiedy b Bellevue citizens in 2015 and 2017. Bellevue’s Smart Mobility Plan aspires to manage this growth through the use of technology to enhance and optimize the transportation system throughout the city. In 2004, the city adopted an ITS Master Plan that They will also shift the roles that the public resulted in one of the most advanced intelligent and private sector will assume in planning and transportation systems in the country—with implementing transportation solutions. an adaptive traffic signal control system at Bellevue’s Smart Mobility Plan outlines the city’s all city intersections, a citywide fiber optics- implementation plan toward both traditional based communications system, and a state- and emerging transportation technologies and of-the-art traffic management center. These discusses steps to accelerate and integrate ITS achievements have improved traffic flow, them in the next 5 years. The plan also reduced congestion on city streets in a cost- discusses potential partnership opportunities 1 effective way and provide a foundation for the to achieve Bellevue’s Smart Mobility Vision: smart mobility initiatives presented in this report. To use innovation and partnerships to deploy The future of mobility in Bellevue is about emerging technologies to enhance the safety, to undergo a transformational change sustainability, efficiency. and accessibility of with emergence of new technologies that Bellevue’s transportation system. demonstrate significant opportunities in Bellevue’s Smart Mobility Plan is divided into six improving transportation efficiency, mobility, key initiatives: safety, and sustainability. Advancements in ■ Shared-use Mobility autonomous, connected, electric, and shared ■ Autonomous and Connected Vehicles (ACES) technologies demonstrate that private ■ Electric Vehicles and public sector can work together toward ■ Real-Time Traveler Information applying technology to shape the transportation ■ Data Management system. Many of these technologies will change ■ Traffic Management the way that people and goods are transported. City of Bellevue Smart Mobility Plan 7 Shared-use Mobility Electric Vehicles Bellevue’s shared-use mobility initiative focuses Electric vehicle (EV) adoption has nearly tripled on partnerships to integrate transportation in Bellevue between 2017 and 2018. The city services that provide or facilitate shared rides anticipates a continued trend as EV charging between travelers. Encouraging shared mobility infrastructure and the number of available EV in Bellevue will be a key component in the city’s models rapidly expand. Bellevue’s EV initiative Smart Mobility Plan as it addresses the need to prepares for this growth by partnering with reduce the number of vehicles on the road to regional stakeholders to build an expansive improve congestion. Bellevue’s smart mobility network of EV charging infrastructure and leads plan includes innovative programs such as the by example by operating and encouraging the “CommutePool” flexible employer rideshare use of EVs in the public sector. program that Bellevue is developing with the City of Kirkland and local employers. The program Data Management will use mobile application technology to arrange Transportation data availability has grown shared rides for the Bellevue and Kirkland exponentially with the widespread increase of workforce in the initial pilot. data sources from the public and private sector. Bellevue’s data management initiative focuses Autonomous and Connected Vehicles on gathering and managing large volumes of In 2018, the auto industry has spent upwards of transportation data to help the city make data- $60 billion to develop autonomous vehicles (AV) driven decisions based on accurate, timely, and and connected vehicles (CV)2. These investments reliable information. Data management also are supported by the potential safety, mobility encompasses safe data handling to ensure that and environmental benefits that both AVs and data privacy is upheld. CVs offer. Automakers such as Ford, GM, Toyota, and Honda are all anticipating the launch of Real-Time Traveler Information vehicles capable of full self-driving capabilities Connected devices such as smartphones and by 2021, prompting cities like Bellevue to plan in-vehicle
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