A retrofit sensing strategy for soft fluidic robots

Shibo Zou, Sergio Picella, Jelle de Vries, Vera G. Kortman, Aimée Sakes, Johannes T.B. Overvelde*

*Corresponding author for this work

Research output: Contribution to journalArticleScientificpeer-review

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Abstract

Soft robots are intrinsically capable of adapting to different environments by changing their shape in response to interaction forces. However, sensory feedback is still required for higher level decisions. Most sensing technologies integrate separate sensing elements in soft actuators, which presents a considerable challenge for both the fabrication and robustness of soft robots. Here we present a versatile sensing strategy that can be retrofitted to existing soft fluidic devices without the need for design changes. We achieve this by measuring the fluidic input that is required to activate a soft actuator during interaction with the environment, and relating this input to its deformed state. We demonstrate the versatility of our strategy by tactile sensing of the size, shape, surface roughness and stiffness of objects. We furthermore retrofit sensing to a range of existing pneumatic soft actuators and grippers. Finally, we show the robustness of our fluidic sensing strategy in closed-loop control of a soft gripper for sorting, fruit picking and ripeness detection. We conclude that as long as the interaction of the actuator with the environment results in a shape change of the interval volume, soft fluidic actuators require no embedded sensors and design modifications to implement useful sensing.

Original languageEnglish
Article number539
Number of pages12
JournalNature Communications
Volume15
Issue number1
DOIs
Publication statusPublished - 2024

Funding

We are grateful to Niels Commandeur for technical support. This work is part of the Dutch Research Council (NWO), 4TU HTSF Soft Robotics Programme, and supported by European Research Council Starting Grants (grant agreement ID: 948132).

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