Smarter ‘transport’ robots could speed up online deliveries

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Researchers are working to speed up the online delivery process with a software model designed to make “transport” robots smarter.

Imagine a team of humans and robots working together to process online orders—real-life workers strategically positioned among their automated coworkers who are moving intelligently back and forth in a warehouse space, picking items for shipping to the customer.

This could become a reality sooner than later, thanks to the researchers’ new work.

“The robotic technology already exists,” says Sharan Srinivas, an assistant professor with a joint appointment in the industrial and manufacturing systems engineering department and the marketing department at the University of Missouri.

“Our goal is to best utilize this technology through efficient planning. To do this, we’re asking questions like ‘given a list of items to pick, how do you optimize the route plan for the human pickers and robots?’ or ‘how many items should a robot pick in a given tour? or ‘in what order should the items be collected for a given robot tour?'” Srinivas says.

“Likewise, we have a similar set of questions for the human worker. The most challenging part is optimizing the collaboration plan between the human pickers and robots.”

Currently, a lot of human effort and labor costs are involved with fulfilling online orders. To help optimize this process, robotic companies have already developed collaborative robots—also known as cobots or autonomous mobile robots (AMRs)—to work in a warehouse or distribution center. The AMRs are equipped with sensors and cameras to help them navigate around a controlled space like a warehouse. The proposed model will help create faster fulfillment of customer orders by optimizing the key decisions or questions pertaining to collaborative order picking, Srinivas says.

“The robot is intelligent, so if it’s instructed to go to a particular location, it can navigate the warehouse and not hit any workers or other obstacles along the way,” Srinivas says.

Srinivas, who specializes in data analytics and operations research, says AMRs are not designed to replace human workers, but instead can work collaboratively alongside them to help increase the efficiency of the order fulfillment process. For instance, AMRs can help fulfill multiple orders at a time from separate areas of the warehouse quicker than a person, but human workers are still needed to help pick items from shelves and place them onto the robots to be transported to a designated drop-off point inside the warehouse.

“The one drawback is these robots do not have good grasping abilities,” Srinivas says. “But humans are good at grasping items, so we are trying to leverage the strength of both resources—the human workers and the collaborative robots. So, what happens in this case is the humans are at different points in the warehouse, and instead of one worker going through the entire aisle to pick up multiple items along the way, the robot will come to the human worker, and the human worker will take an item and put it on the robot. Therefore, the human worker will not have to strain himself or herself in order to move large carts of heavy items throughout the warehouse.”

Srinivas says a future application of their software could also be applied in other locations such as grocery stores, where robots could be used to fill orders while also navigating among members of the general public. He could see this potentially happening within the next three-to-five years.

The research appears in in the International Journal of Production Economics.

Source: University of Missouri