The
new hybrid robotic hand blends soft and rigid parts with touch-sensitive
technology, allowing for precise and flexible object handling. Credit:
Sriramana Sankar / Johns Hopkins University
Johns
Hopkins University engineers have developed a pioneering prosthetic hand that
can grip plush toys, water bottles, and other everyday objects like a human,
carefully conforming and adjusting its grasp to avoid damaging or mishandling
whatever it holds.
The system's hybrid design is a first
for robotic hands, which have typically been too rigid or too soft to replicate
a human's touch when handling objects of varying textures and materials. The
innovation offers a promising solution for people with hand loss and could
improve how robotic arms interact with their environment.
Details about the device appear in Science
Advances.
"The goal from the beginning has been to create a prosthetic hand that we model based on the human hand's physical and sensing capabilities—a more natural prosthetic that functions and feels like a lost limb," said Sriramana Sankar, a Johns Hopkins biomedical engineer who led the work. "We want to give people with upper-limb loss the ability to safely and freely interact with their environment, to feel and hold their loved ones without concern of hurting them."
Forearm muscle signals control the new hybrid
robot hand, effortlessly gripping and adjusting to different objects. Credit:
Sriramana Sankar / Johns Hopkins University
The device, developed by the same
Neuroengineering and Biomedical Instrumentations Lab that in 2018 created the
world's first electronic "skin" with a humanlike sense of pain,
features a multi-finger system with rubberlike polymers and a rigid 3D-printed
internal skeleton. Its three layers of tactile sensors, inspired by the layers
of human skin, allow it to grasp and distinguish objects of various shapes and
surface textures, rather than just detect touch.
Each of its soft, air-filled finger
joints can be controlled by the forearm's muscles, and machine-learning
algorithms focus the signals from the artificial touch receptors to create a
realistic sense of touch, Sankar said, explaining, "The sensory information from its fingers is translated into the language
of nerves to provide naturalistic sensory feedback through electrical nerve
stimulation."
In the lab, the hand identified and
manipulated 15 everyday objects, including delicate stuffed toys, dish sponges,
and cardboard boxes, as well as pineapples, metal water bottles, and other
sturdier items. In the experiments, the device achieved the best performance
compared with the alternatives, successfully handling objects with 99.69%
accuracy and adjusting its grip as needed to prevent mishaps. The best example
was when it nimbly picked up a thin, fragile plastic cup filled with water,
using only three fingers without denting it.
"We're combining the strengths
of both rigid and soft robotics to mimic the human hand," Sankar said. "The human hand isn't
completely rigid or purely soft—it's a hybrid
system, with bones, soft joints, and tissue working together. That's
what we want our prosthetic hand to achieve. This is new territory for robotics
and prosthetics, which haven't fully embraced this hybrid technology before.
It's being able to give a firm handshake or pick up a soft object without fear
of crushing it."
To help
amputees regain the ability to feel objects while grasping, prostheses will
need three key components: sensors to detect the environment, a system to
translate that data into nerve-like signals, and a way to stimulate nerves so
the person can feel the sensation, said Nitish Thakor, a Johns Hopkins
biomedical engineering professor who directed the work.
The
bioinspired technology allows the hand to function this way, using muscle
signals from the forearm, like most hand prostheses. These signals bridge the
brain and nerves, allowing the hand to flex, release, or react based on its
sense of touch. The result is a robotic hand that intuitively "knows"
what it's touching, much like the nervous system does, Thakor said.
"If
you're holding a cup of coffee, how do you know you're about to drop it? Your
palm and fingertips send signals to your brain that the cup is slipping,"
Thakor said. "Our system is neurally inspired—it models the hand's touch
receptors to produce nervelike messages so the prosthetics' 'brain,' or its
computer, understands if something is hot or cold, soft or hard, or slipping
from the grip."
While the
research is an early breakthrough for hybrid robotic technology that could
transform both prosthetics and robotics, more work is needed to refine the
system, Thakor said. Future improvements could include stronger grip forces,
additional sensors, and industrial-grade materials.
"This
hybrid dexterity isn't just essential for next-generation prostheses,"
Thakor said. "It's what the robotic hands of the future need, because they
won't just be handling large, heavy objects. They'll need to work with delicate
materials such as glass, fabric, or soft toys. That's why a hybrid robot,
designed like the human hand, is so valuable—it combines soft and rigid
structures, just like our skin, tissue, and bones."
Other authors include Wen-Yu Cheng of Florida Atlantic University; Jinghua Zhang, Ariel Slepyan, Mark M. Iskarous, Rebecca J. Greene, Rene DeBrabander, and Junjun Chen of Johns Hopkins; and Arnav Gupta of the University of Illinois Chicago.
by Roberto Molar Candanosa, Johns Hopkins
University
Source: Feeling is believing: Bionic hand 'knows' what it's touching, grasps like a human
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