Robot Technology News
ROBO SPACE
A better way to control shape-shifting soft robots
illustration only
A better way to control shape-shifting soft robots
by Adam Zewe, MIT News
Boston MA (SPX) May 10, 2024

Imagine a slime-like robot that can seamlessly change its shape to squeeze through narrow spaces, which could be deployed inside the human body to remove an unwanted item.

While such a robot does not yet exist outside a laboratory, researchers are working to develop reconfigurable soft robots for applications in health care, wearable devices, and industrial systems.

But how can one control a squishy robot that doesn't have joints, limbs, or fingers that can be manipulated, and instead can drastically alter its entire shape at will? MIT researchers are working to answer that question.

They developed a control algorithm that can autonomously learn how to move, stretch, and shape a reconfigurable robot to complete a specific task, even when that task requires the robot to change its morphology multiple times. The team also built a simulator to test control algorithms for deformable soft robots on a series of challenging, shape-changing tasks.

Their method completed each of the eight tasks they evaluated while outperforming other algorithms. The technique worked especially well on multifaceted tasks. For instance, in one test, the robot had to reduce its height while growing two tiny legs to squeeze through a narrow pipe, and then un-grow those legs and extend its torso to open the pipe's lid.

While reconfigurable soft robots are still in their infancy, such a technique could someday enable general-purpose robots that can adapt their shapes to accomplish diverse tasks.

"When people think about soft robots, they tend to think about robots that are elastic, but return to their original shape. Our robot is like slime and can actually change its morphology. It is very striking that our method worked so well because we are dealing with something very new," says Boyuan Chen, an electrical engineering and computer science (EECS) graduate student and co-author of a paper on this approach.

Chen's co-authors include lead author Suning Huang, an undergraduate student at Tsinghua University in China who completed this work while a visiting student at MIT; Huazhe Xu, an assistant professor at Tsinghua University; and senior author Vincent Sitzmann, an assistant professor of EECS at MIT who leads the Scene Representation Group in the Computer Science and Artificial Intelligence Laboratory. The research will be presented at the International Conference on Learning Representations.

Controlling dynamic motion
Scientists often teach robots to complete tasks using a machine-learning approach known as reinforcement learning, which is a trial-and-error process in which the robot is rewarded for actions that move it closer to a goal.

This can be effective when the robot's moving parts are consistent and well-defined, like a gripper with three fingers. With a robotic gripper, a reinforcement learning algorithm might move one finger slightly, learning by trial and error whether that motion earns it a reward. Then it would move on to the next finger, and so on.

But shape-shifting robots, which are controlled by magnetic fields, can dynamically squish, bend, or elongate their entire bodies.

"Such a robot could have thousands of small pieces of muscle to control, so it is very hard to learn in a traditional way," says Chen.

To solve this problem, he and his collaborators had to think about it differently. Rather than moving each tiny muscle individually, their reinforcement learning algorithm begins by learning to control groups of adjacent muscles that work together.

Then, after the algorithm has explored the space of possible actions by focusing on groups of muscles, it drills down into finer detail to optimize the policy, or action plan, it has learned. In this way, the control algorithm follows a coarse-to-fine methodology.

"Coarse-to-fine means that when you take a random action, that random action is likely to make a difference. The change in the outcome is likely very significant because you coarsely control several muscles at the same time," Sitzmann says.

To enable this, the researchers treat a robot's action space, or how it can move in a certain area, like an image.

Their machine-learning model uses images of the robot's environment to generate a 2D action space, which includes the robot and the area around it. They simulate robot motion using what is known as the material-point-method, where the action space is covered by points, like image pixels, and overlayed with a grid.

The same way nearby pixels in an image are related (like the pixels that form a tree in a photo), they built their algorithm to understand that nearby action points have stronger correlations. Points around the robot's "shoulder" will move similarly when it changes shape, while points on the robot's "leg" will also move similarly, but in a different way than those on the "shoulder."

In addition, the researchers use the same machine-learning model to look at the environment and predict the actions the robot should take, which makes it more efficient.

Building a simulator
After developing this approach, the researchers needed a way to test it, so they created a simulation environment called DittoGym.

DittoGym features eight tasks that evaluate a reconfigurable robot's ability to dynamically change shape. In one, the robot must elongate and curve its body so it can weave around obstacles to reach a target point. In another, it must change its shape to mimic letters of the alphabet.

"Our task selection in DittoGym follows both generic reinforcement learning benchmark design principles and the specific needs of reconfigurable robots. Each task is designed to represent certain properties that we deem important, such as the capability to navigate through long-horizon explorations, the ability to analyze the environment, and interact with external objects," Huang says. "We believe they together can give users a comprehensive understanding of the flexibility of reconfigurable robots and the effectiveness of our reinforcement learning scheme."

Their algorithm outperformed baseline methods and was the only technique suitable for completing multistage tasks that required several shape changes.

"We have a stronger correlation between action points that are closer to each other, and I think that is key to making this work so well," says Chen.

While it may be many years before shape-shifting robots are deployed in the real world, Chen and his collaborators hope their work inspires other scientists not only to study reconfigurable soft robots but also to think about leveraging 2D action spaces for other complex control problems.

Research Report:DittoGym: Learning to Control Soft Shape-Shifting Robots

Related Links
Massachusetts Institute of Technology
All about the robots on Earth and beyond!

Subscribe Free To Our Daily Newsletters
Tweet

RELATED CONTENT
The following news reports may link to other Space Media Network websites.
ROBO SPACE
Robotic Feeding System Developed by Cornell Researchers to Aid Individuals with Mobility Challenges
Los Angeles CA (SPX) May 10, 2024
Researchers at Cornell University have unveiled a robotic feeding system designed to aid individuals with severe mobility limitations, such as those affected by spinal cord injuries, cerebral palsy, and multiple sclerosis. The system leverages advanced technologies including computer vision, machine learning, and multimodal sensing to deliver food safely and effectively. "Feeding individuals with severe mobility limitations with a robot is difficult, as many cannot lean forward and require food to ... read more

ROBO SPACE
Elsight boosts Indago 4 UAS with advanced BVLOS communications

Pyka and SNC team up to deliver electric cargo drones to the Defense Department

Amnesty says Somali strikes with Turkish drones killed civilians

Russia fires nine drones at Ukraine, damages hotel in city of Mykolaiv

ROBO SPACE
Energy transition risks critical mineral shortage: IEA

Microbial Enzyme Could Make Plastics Biodegradable

SwRI investigates boiling processes in partial gravity

AI Training Strategies Tested on World's Fastest Supercomputer

ROBO SPACE
Rapidus 'last opportunity' to put Japan back on global chip map

3D Printed Glass Sensors on Optical Fiber for Enhanced Connectivity

Experiment Allows for Potential Millions of Qubits on Single Chip

Biden sharply hikes US tariffs on Chinese EVs and chips

ROBO SPACE
Fuel rods from GE Vernova's Nuclear Fuels are under evaluation at Oak Ridge

Sam Altman-backed nuclear start-up crashes after Wall Street debut

France's next-gen nuclear reactor gets green light

France's EDF, Korea's KHNP bid in Czech nuclear tender

ROBO SPACE
Kremlin rejects US claims Russia used 'chemical weapon' in Ukraine

U.S. Central Command finds 2023 U.S. airstrike in Syria killed civilian, not terrorist

Iraq repatriates 700 people from Syria camp

Hamas chief Haniyeh to visit Turkey this weekend: Erdogan

ROBO SPACE
Green policies can be vote winners, London mayor says

Activists warn against EU 'tearing up' green policies

Australia unveils budget aimed at becoming 'renewable superpower'

$2.2b pledged to end deadly planet-heating cooking methods

ROBO SPACE
Using AI to improve, speed up plasma physics in fusion

Eco-friendly battery developed for low-income countries

Push for new US lithium mine leaves some Americans wary

Quantum advances enhance understanding of high-temperature superconductors

ROBO SPACE
International Support for China's Chang'e-6 Lunar Mission

Shenzhou XVII astronauts safely back from Tiangong space station

Shenzhou XVIII crew takes command at Tiangong space station

Shenzhou XVIII astronauts enter space station

Subscribe Free To Our Daily Newsletters




The content herein, unless otherwise known to be public domain, are Copyright 1995-2024 - Space Media Network. All websites are published in Australia and are solely subject to Australian law and governed by Fair Use principals for news reporting and research purposes. AFP, UPI and IANS news wire stories are copyright Agence France-Presse, United Press International and Indo-Asia News Service. ESA news reports are copyright European Space Agency. All NASA sourced material is public domain. Additional copyrights may apply in whole or part to other bona fide parties. All articles labeled "by Staff Writers" include reports supplied to Space Media Network by industry news wires, PR agencies, corporate press officers and the like. Such articles are individually curated and edited by Space Media Network staff on the basis of the report's information value to our industry and professional readership. Advertising does not imply endorsement, agreement or approval of any opinions, statements or information provided by Space Media Network on any Web page published or hosted by Space Media Network. General Data Protection Regulation (GDPR) Statement Our advertisers use various cookies and the like to deliver the best ad banner available at one time. All network advertising suppliers have GDPR policies (Legitimate Interest) that conform with EU regulations for data collection. By using our websites you consent to cookie based advertising. If you do not agree with this then you must stop using the websites from May 25, 2018. Privacy Statement. Additional information can be found here at About Us.