acm-header
Sign In

Communications of the ACM

ACM Careers

Backscatter Method Allows 3D-Printed Objects to Communicate Their ­sage Wirelessly


View as: Print Mobile App Share:
flex of prosthetic wrist

The system can monitor a prosthetic wrist's activation and detect if it has been opened or closed.

Credit: YouTube

Cheap and easily customizable, 3-D printed devices are perfect for assistive technology, like prosthetics or "smart" pill bottles that can help patients remember to take their daily medications.

But these plastic parts don't have electronics, which means they can't monitor how patients are using them.

Now engineers at the University of Washington have developed 3-D printed devices that can track and store their own use—without using batteries or electronics. Instead, this system uses a method called backscatter, through which a device can share information by reflecting signals that have been transmitted to it with an antenna.

"We're interested in making accessible assistive technology with 3-D printing, but we have no easy way to know how people are using it," says co-author Jennifer Mankoff, a professor in the UW's Paul G. Allen School of Computer Science & Engineering. "Could we come up with a circuitless solution that could be printed on consumer-grade, off-the-shelf printers and allow the device itself to collect information? That's what we showed was possible in this paper."

The UW team describes its findings in "Wireless Analytics for 3D Printed Objects," to be presented at UIST 2018, the 31st ACM User Interface Software and Technology Symposium in Berlin.

Previously the team developed the first 3-D printed objects that connect to Wi-Fi without electronics. These purely plastic devices can measure if a detergent bottle is running low and then automatically order more online.

"Using plastic for these applications means you don't have to worry about batteries running out or your device getting wet. That can transform the way we think of computing," says senior author Shyam Gollakota, an associate professor in the Allen School. "But if we really want to transform 3-D printed objects into smart objects, we need mechanisms to monitor and store data."

The researchers tackled the monitoring problem first. In their previous study, their system tracks movement in one direction, which works well for monitoring laundry detergent levels or measuring wind or water speed. But now they needed to make objects that could monitor bidirectional motion like the opening and closing of a pill bottle.

"We have two antennas, one on top and one on bottom, that can be contacted by a switch attached to a gear," says lead author Vikram Iyer, a doctoral student in the UW Department of Electrical & Computer Engineering. "So opening a pill bottle cap moves the gear in one direction, which pushes the switch to contact one of the two antennas. And then closing the pill bottle cap turns the gear in the opposite direction, and the switch hits the other antenna."

Both of the antennas are identical, so the team had to devise a way to decode which direction the cap was moving.

"The gear's teeth have a specific sequencing that encodes a message. It's like Morse code," says co-author Justin Chan, a doctoral student in the Allen School. "So when you turn the cap in one direction, you see the message going forward. But when you turn the cap in the other direction, you get a reverse message."

In addition to tracking, for example, pill bottle cap movement, this same method can be used to monitor how people use prosthetics, such as 3-D printed e-NABLE arms. These mechanical hands, which attach at the wrist, are designed to help children with hand abnormalities grasp objects. When children flex their wrists, cables on the hand tighten to make the fingers close. So the UW team 3-D printed an e-NABLE arm with a prototype of their bidirectional sensor that monitors the hand opening and closing by determining the angle of the wrist.

The researchers also wanted to create a 3-D printed object that could store its usage information while out of Wi-Fi range. For this application, they chose an insulin pen that could monitor its use and then signal when it was getting low.

"You can still take insulin even if you don't have a Wi-Fi connection," Gollakota says. "So we needed a mechanism that stores how many times you used it. Once you're back in the range, you can upload that stored data into the cloud."

This method requires a mechanical motion, like the pressing of a button, and stores that information by rolling up a spring inside a ratchet that can only move in one direction. Each time someone pushes the button, the spring gets tighter. It can't unwind until the user releases the ratchet, hopefully when in range of the backscatter sensor. Then, as the spring unwinds, it moves a gear that triggers a switch to contact an antenna repeatedly as the gear turns. Each contact is counted to determine how many times the user pressed the button.

These devices are only prototypes to show that it is possible for 3-D printed materials to sense bidirectional movement and store data. The next challenge will be to take these concepts and shrink them so that they can be embedded in real pill bottles, prosthetics, or insulin pens, Mankoff says.

"This system will give us a higher-fidelity picture of what is going on," she says. "For example, right now we don't have a way of tracking if and how people are using e-NABLE hands. Ultimately what I'd like to do with these data is predict whether or not people are going to abandon a device based on how they're using it."

Ian Culhane, an undergraduate student in the UW Department of Mechanical Engineering, is also a co-author on the UIST 2018 paper. This research was funded by the U.S. National Science Foundation and Google Faculty Awards.


 

No entries found

Sign In for Full Access
» Forgot Password? » Create an ACM Web Account