Will self-driving cars solve the problem of traffic congestion?
Someday in the future, If you believe the hype, we'll all get around in self-driving cars.With little to no human input, these cars are expected to plan their trajectory and navigate using advanced sensing technology.
The cars will communicate with other self-driving cars and road network infrastructure, increasing reaction time, and maintaining a consistent speed and distance from other vehicles.
In addition to making our roads safer, these capabilities are hoped to eliminate stop-and-go traffic, increasing road capacity, and optimising traffic flow. Overall, the prediction is that autonomous vehicles will reduce traffic congestion. But just how realistic a future this is remains unclear.
To realise the full potential of the congestion-busting self-driving future, substantial upgrades to existing communication technologies and transportation infrastructure are required. To handle the range of movements an autonomous vehicle can make, roads must be redesigned. To facilitate the car’s camera vision and object identification, road markings and signs will need to become clear and uniform.
Meanwhile, individually-owned self-driving cars may contribute little to traffic congestion reduction. Due to their convenience, self-driving cars may actually increase the number of trips taken. Self-driving cars may exacerbate urban sprawl with commuters content to relax in their vehicles for a long commute.
But shared self-driving cars may combat these problems and deliver the much-longed for free-flowing traffic.
Like ride-sharing “pool” services today, such as Uber, Didi, Lyft and Ola, self-driving cars trips could be shared with one or more riders. They could provide convenient and low-cost mobility-on-demand services.
Shared self-driving cars may even complement or replace conventional fixed-schedule and fixed-route transit systems, such as buses.
Shared self-driving cars coupled with transit could be one solution to cities’ traffic congestion problems.
For example, in Malaysia, during peak hours, Kuala Lumpur's road users endure delays totalling 480 million person-hours each year, costing the nation up to 19 billion ringgits (or 1.8% of Malaysia's GDP).
Recent studies showed that middle-income commuters between 20 and 39 years of age were the most likely to adopt shared self-driving cars, especially if they think it will save travel and walking time. Modelling of traffic flows showed shared self-driving cars could increase public transport use by 3% and reduce personal car use by 6%.
But the study also suggested that when wait times for the shared self-driving car were shorter, passengers would be more willing to skip the switch to public transit and ride in the car for the whole journey.
Self-driving car technology is still a long way from being widespread, and there are plenty who doubt it will ever fulfil its promise. In the meantime, traffic congestion continues to grow.
Strategies to reduce congestion exist already, such as public transport, congestion charging and flexible work schedules that allow employees to begin work at various times of the day. Pinning all hopes on a still-developing technology would seem a poor solution to traffic congestion today.
Originally published under Creative Commons by 360info™.
About the Authors
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Susilawati
Senior Lecturer, School of Engineering, Monash University, Malaysia
Susilawati received her Master's and Doctorate degrees in Transportation Engineering from the University of South Australia in 2007 and 2012. Before joining Monash, she worked in multinational consulting firms as a geo-spatial data analyst in Indonesia and Australia. Her research interests are mainly on dynamic transport planning and modeling that consider the stochastic nature of traffic demand and road capacity to measure travel demand management's effectiveness, including congestion charging and creating reliable transport systems. She has been working on projects to evaluate various effects of road disruptions on traffic performances considering supply and demand variation using the transport network vulnerability approach. Her current research activities are focused on the evaluation of the effects of Autonomous Vehicles (AVs) and Shared Autonomous Vehicles (SAVs) adoption on public transport's first-mile and last-mile connectivity and the in-vehicle value of time (IVVT) and schedule delay.
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