Union Station: Improving Operational Efficiencies and Profit with a High-Tech Parking Guidance System
Toronto’s Union Station has been going through a long-term revitalization project, which includes the addition of a 150,000 sq. ft. retail shopping complex. Anticipating that the increase in delivery traffic would lead to backlogs and inefficiencies for existing and new tenants, the City of Toronto reached out to A1IG to design a method to control traffic into and throughout the shared truck tunnel. In this case study, we examine the issues confronted and the solution proposed by the A1 Innovation Group.
A1 Parking is the new standard in smart parking guidance technology — easing the flow of traffic with smart parking lot guidance can reduce congestion and create a better overall customer experience.
Every part of our design and deployment process revolves around providing you with the highest level of data integrity — 99.6% accuracy, to be exact — and we have the audits to prove it.
Whether you operate a large retail facility, office building, sports venue, residential towers, or anything in between, you’ll find A1 Innovation Group offers far better, customized parking guidance solutions than our competitors.
DOWNLOAD our Parking Guidance CASE STUDY by completing the form on this page.
Download Case Study
To download our latest parking guidance case study, please complete and submit the form below.
Clicking the “Submit” button constitutes your express written consent to be contacted by A1 Innovation Group (A1IG). You understand that you can opt out at any time and are not required to provide additional consent to receive services from A1IG. We take privacy seriously.
What Our Customers Say
A1’s platform has significantly impacted our ability to assist shoppers at Yorkdale and Square One… The A1 team ensured a solution was designed specifically for each site.

A1’s Parking System was designed and integrated specifically for One York, and helps us to manage our capacity so that both income and parking experience are maximized.