The progress of connected vehicle (CV) technologies takes centre stage among the hot topics highlighted in the September 2017 edition – the first since 2014 – of the ‘ITS Benefits, Costs and Lessons Learned’ survey from the 
     
Covered in the report are some of America’s most recently assessed CV implications for safety, enhanced mobility and the environment. Central to this programme aimed at reducing road deaths and injuries, is the development of a key CV tool - the basic safety message or BSM.
     
This transmissible data packet contains core information on key factors such as a vehicle’s size, current position, heading and speed - that indicate its present state and predicted path.
     
Work on the BSM is being tailored to suit the low-latency, localised broadcasts needed for vehicle-to-vehicle (V2V) safety applications and one major benefit is its ability to transmit at the rate of ten times per second.
     
Spurring on the current efforts is USDoT’s 
     
Once fully deployed, the refined version of this system is expected to prevent between 439,000 and  615,000 crashes per year, save between 987 and 1,366 lives, avoid between 305,000 and 418,000 major injuries, and eliminate between 537,000 and 746,000 cases of vehicle-only damage. 
     
In addition to the DSRC technology, the refinement identified by NHTSA would involve the auto manufacturers agreeing to install two application seen as being important to maximise the safety benefits of elements of V2V deployment: intersection movement assist and left turn assist. The industry has indicated that both systems are already included in their research and deployment programmes.
     
Initial estimates of the costs per vehicle for supplying a package including a DSRC radio, antenna, GPS unit, hardware security module, the two apps and installation have come in at between US$249 and US$351. The JPO expects these to fall to less than US$200 by 2025. 
     
In terms of overall benefits delivered, the JPO believes that its calculations may be understated, because manufacturers could take advantage of the opportunity of the ruling to incorporate further safety aids.
The main challenge it foresees is securing the funding for the roadside infrastructure necessary to support the implementation. It stresses the need for large-scale, public/private-sector collaboration in developing a system that will actively engage the automotive, telecommunications and consumer electronics industries in working to achieve an ‘integrated outcome’.
In the mobility arena, the recent JPO Intelligent Network Flow Optimisation (INFLO) initiative aims to optimise traffic flows and reduce levels of rear-end crashes during periods of congestion. A prototype has successfully demonstrated the feasibility of using frequently collected and fast disseminated data from both CVs and the road infrastructure.     
A  dynamic speed harmonisation component enables drivers to adapt the  appropriate speed in response to congestion levels, incidents and poor  weather or road conditions. Its queue warning component gives drivers  timely warning when approaching a queue to enable them to brake safely,  change lanes, or modify their behaviour to minimise the risk of  collisions. It uses both vehicle-to-infrastructure (V2I) and V2V  communications to enable affected vehicles to automatically broadcast  their current status to other road users and the traffic management  centre. 
     
A 2015  demonstration in the Seattle area of Washington State showed the  combined components have the potential to reduce the number of vehicles  travelling at unsafe speeds by up to 20% - and without any sudden  deceleration that could prove dangerous. A dashboard-mounted smartphone  showed drivers the recommended speeds and the existence of, and distance  to, any upcoming queues (or, if already in a queue, the estimated time  to freeing up) as well as traffic-related weather information.
     
Capturing  the data, storing it for processing and delivering the resulting BSMs  proved to take less than ten seconds. As a result, drivers could expect  to receive warnings at least one mile (1.6km) in advance of the back of a  queue. The exercise also demonstrated the scope for detecting a queue  three minutes earlier by using CV data than was achievable using only  that which became available from the road infrastructure.
     
When  quizzed afterwards, participants saw immediate practical benefits in  the queue warnings although those for speed harmonisation were not as  apparent.  
     
Environment
     
In  the environmental arena, the JPO’s Applications for the Environment:  Real-Time Information Synthesis (AERIS) research programme has focused  on the contributions that CV technologies can make to reducing fuel  consumption and emissions. Its on-board Eco-Approach and Departure  system uses wireless data communications from roadside equipment to  calculate the optimal speed to enable a vehicle to arrive at the next  intersection as the signal is green (often called speed-to-green).
     
AERIS’s  brief did not initially extend to the development and testing of a  prototype. However, this particular effort showed enough promise as a  near-term solution, with the potential for delivering substantial  environmental benefits, to justify a field trial at USDoT’s  Turner-Fairbank Highway Research Center in Virginia.
 
     
So   AERIS launched its GlidePath project, which incorporated a cooperative   adaptive cruise control system designed to communicate with an  upcoming  traffic signal to automatically control a vehicle’s speed. As a  test car  approached the intersection, it received two distinct  DSRC-based  messages; one describing the signal phase and timing (which  was made  available to the driver in an illustrative form), and the  other the  intersection geometry.
     
The   on-board system then calculated the vehicle’s optimal speed to pass  the  signal on a green light or to come to a halt with the  least-possible  impact on fuel economy. Its recommendation was displayed  on a separate  tablet and the driver had the option to send the  instruction directly to  the car’s cooperative adaptive cruise control  system.
     
Results  showed  fuel savings of as much as 22% compared with unequipped  vehicles, due  mainly to circumventing the driver-induced delay in  achieving (and  maintaining) the optimal speed of approach.
     
In   2015, USDoT engaged the automakers’ Crash Avoidance Metrics  Partnership  consortium to develop a roadmap for the near-term  deployment of this  technology.  Areas spotlighted for early attention  include researching  the scope for operation at multiple intersections  and then real-world  testing along a traffic corridor.
     
Another   AERIS project, Eco-Signal Operations, is encouraging the optimisation   of existing high-occupancy vehicle (HOV) and high-occupancy toll (HOT)   lanes as ‘eco lanes’. These would take advantage of CV-derived  real-time  traffic and environmental data to modify their times of  operation and  vehicle admissibility rules, in response to levels of  demand.
     
The  new lanes  would mainly target CV-equipped low-emission, high-occupancy  and  alternative fuel vehicles, which would be able to opt in. Research  to  date suggests that there would be synergistic benefits for  non-equipped  vehicles that were following equipped ones.
     
The   JPO also sees CVs playing important roles in realising smart city   deployments by reducing the numbers of traffic collisions, deaths and   injuries while also enhancing the urban environment through lower   congestion and emissions levels.
     
Other   areas being investigated include using the shared data for the dynamic   routing of trucks, package delivery by car share operators and   ‘radically programmable’ city streets with dynamic markings which could   change from thoroughfares to loading zones on demand. In addition,   dynamically-routed on-demand minibuses could provide affordable first   mile/last mile transportation options to underserved communities. 
    
        
        
        
        



