Keeping Bike Shares Running Smoothly Requires Seriously Complex Math
Here's kind of a dirty secret about bike share:
"Rebalancing" is the technical term for this reallocation of bikes, and it's a reality for pretty much every
Bike share systems look at their data to try and anticipate where bikes need to move, but it's largely based on educated guesses by examining maps and previous trip information. A new story in Science explores how some cities are developing their own highly technical methods to anticipate where bikes need to go.
One of the most comprehensive studies comes from Austrian computer scientist Günther Raidl which uses a UPS-inspired approach to help the cities direct the bikes more efficiently, and in real time:
Raidl's approach, which he developed with colleagues at the Austrian Institute of Technology, resembles the "pickup and delivery vehicle routing"
algorithmsthat package delivery services use to route their trucks most efficiently. His algorithm-which gives updated suggestions throughout the day- also takes into account a forecast of demand based mainly on season, day of the week, and weather.
The algorithm has already been employed for the 700 stations of Wein, Austria's bike share and although it seems to be working, there are some quirks. Drivers tasked with moving the bikes around became annoyed when they were only told to pick up a few bikes when their vans could hold up to 20. In New York, where
Over 600 cities currently have bike share systems, a number that's certain to grow quickly over the next few years. These newer systems could build in smarter tech that might incorporate these algorithmic solutions and save planners and riders some of their current headaches. One bike share rebalancing concept named BICO , proposed by the London firm Stage Intelligence, uses algorithms to not only recommend how many bikes should move, but also which routes that a fleet of transporting vehicles should take based on traffic patterns. In the future, a system like BICO wouldn't need human intervention at all:
Computer scientist Lin Li modeled autonomous rebalancing trucks, which self-organize like a bee colony, he says. The trucks flit from station to station like bees to flowers, attracted by signals that the stations feed into the model, announcing whether they are short of bikes or have too many.
Moving bikes around in London, photo by Tom Anderson