This is mainly due to the rise in traffic congestion which has ensnarled hundreds of cities across the country. Even in suburban areas, traffic congestion is a rising issue, especially when more delivery trucks are competing for road and curb space delivering our online shopping orders. What’s more, competing modes of transportation are also tying up traffic patterns.
On average, American drivers lost approximately 26 hours in traffic during 2020, down from 99 hours in 2019. While this number shows an improvement year-over-year, this trend was largely due to the COVID-19 pandemic and the resulting millions of people reducing their transportation commuting by working from home. As more businesses invite employees back to the office, traffic problems are expected to rise again.
All areas of the U.S. transportation system are focused on curbing this growing traffic trend by introducing and leveraging technologies and solutions that utilize data analytics to create a better traffic flow. Carmakers are also promoting more connected vehicle technologies to make cars and trucks on the roads smarter and more efficient by connecting to any number of databases and platforms that can help vehicles read traffic patterns in real-time.
To fully realize the promise of ITS and connected vehicles, transit agencies are now revisiting Transit Signal Priority (TSP) systems in the hopes of restoring route reliability and on-time performance. Over the last few decades, transit signal priority systems haven’t evolved much from being a transmitter on buses that send messages to receivers installed on traffic signals. The hardware cost to both signals and buses is quite high and requires annual maintenance to guarantee operation. Furthermore, it’s hard to determine whether the system is working because the equipment generally doesn’t produce event logs. When making such a large capital investment, it is very important to know whether the system is working so further expansion can be appropriately determined.
Your local Sennebogen LLC dealer |
---|
Brandeis Machinery |
However, these systems, when leveraged with state-of-the-art technologies, are proving to be extremely effective. According to a recent survey, the majority of city officials from communities leveraging transit prioritization technologies said they’re seeing growing improvements in on-time performance of their transit network.
In today’s age of highly reliable large-scale communication access, there exists the opportunity to eliminate the hardware cost of transit signal priority solutions while maximizing the investment on current solutions. Many of today’s signal controller firmware vendors have software functionality to facilitate the function of placing virtual priority calls. The information needed to place these virtual calls can be found at the transit agency. To better manage their fleet, agencies typically have implemented tracking devices on each of their vehicles to report to their computer-aided dispatch and automatic vehicle location (CAD/AVL) software. With vehicle locations known in near real-time, software and networking can now be used to bridge the gap between transit vehicles and city signals to facilitate transit priority in a more reliable, sustainable, and intelligent way.
This removes the need for vehicle detection hardware at the intersection because vehicle location is known through the CAD/AVL system. This enables both priority calls from greater distances away from signals and priority calls coordinated among a group of signals. Furthermore, the system provides real-time insights on which buses are currently receiving priority along with daily reports of performance metrics.
When the system is set up, traffic signals, bus routes, and bus stops all receive a digital representation on this vector. This produces a digital geospatial map where software can then track bus progression along bus routes. This results in a system that can dynamically place transit calls regardless of its location. Instead, the system makes precise priority calls based on the expected time of arrival which is the basis for all TSP check-in calls supported by all signal controller vendors. And due to the nature of the tracking algorithm, any significant changes to ETA can be adjusted. For example, if a bus was predicted to skip a bus stop but didn't, the system will detect the change and adjust the priority call accordingly.
These data-sharing platforms have been proven to be highly effective, but only when cities and municipalities that oversee transportation systems make them open for proper data sharing. Many municipalities remain locked into contracts with smart-traffic solution providers who are unwilling to operate under an open data platform, and these cities severely restrict themselves from the true possibilities that a cloud-based platform can provide.
Your local Leica Geosystems Inc dealer |
---|
Laser Specialist inc |
This is problematic since 71 percent of community officials said their current electronic data provider does not allow for the integration of transit vehicle data with other systems. This issue must be addressed since 90 percent of these officials believe they own their transit vehicle data, not the provider.
Cities could and should provide their open sourced-data for a more fluid platform that relies on Automation-as-a-Service and defines the rules of engagement between public and private transport operators, ultimately ensuring that urban mobility delivers benefits for all rather than just a few.
Cloud-based TSP systems take the global picture of a route into account and use machine learning to predict the optimal time to grant the green light to transit vehicles at just the right time. It minimizes the interference with crisscrossing routes and simultaneously maximizes the probability of a continuous drive.
With this technology now at our fingertips, cities and municipalities have the technology they need to properly accelerate the build out of intelligent transit networks to benefit everyone in the region.
Your local Komatsu America Corp dealer |
---|
Brandeis Machinery |