soft robot
Learning-In-The-Loop Optimization: End-To-End Control And Co-Design Of Soft Robots Through Learned Deep Latent Representations
Soft robots have continuum solid bodies that can deform in an infinite number of ways. Controlling soft robots is very challenging as there are no closed form solutions. We present a learning-in-the-loop co-optimization algorithm in which a latent state representation is learned as the robot figures out how to solve the task. Our solution marries hybrid particle-grid-based simulation with deep, variational convolutional autoencoder architectures that can capture salient features of robot dynamics with high efficacy. We demonstrate our dynamics-aware feature learning algorithm on both 2D and 3D soft robots, and show that it is more robust and faster converging than the dynamics-oblivious baseline. We validate the behavior of our algorithm with visualizations of the learned representation.
Inchworm-Inspired Soft Robot with Groove-Guided Locomotion
Thanabalan, Hari Prakash, Bengtsson, Lars, Lafont, Ugo, Volpe, Giovanni
Soft robots require directional control to navigate complex terrains. However, achieving such control often requires multiple actuators, which increases mechanical complexity, complicates control systems, and raises energy consumption. Here, we introduce an inchworm-inspired soft robot whose locomotion direction is controlled passively by patterned substrates. The robot employs a single rolled dielectric elastomer actuator, while groove patterns on a 3D-printed substrate guide its alignment and trajectory. Through systematic experiments, we demonstrate that varying groove angles enables precise control of locomotion direction without the need for complex actuation strategies. This groove-guided approach reduces energy consumption, simplifies robot design, and expands the applicability of bio-inspired soft robots in fields such as search and rescue, pipe inspection, and planetary exploration.
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- Europe > Germany (0.04)
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BactoBot: A Low-Cost, Bacteria-Inspired Soft Underwater Robot for Marine Exploration
Chowdhury, Rubaiyat Tasnim, Bala, Nayan, Roy, Ronojoy, Mahmud, Tarek
Traditional rigid underwater vehicles pose risks to delicate marine ecosystems due to high-speed propellers and rigid hulls. This paper presents BactoBot, a low-cost, soft underwater robot designed for safe and gentle marine exploration. Inspired by the efficient flagellar propulsion of bacteria, BactoBot features 12 flexible, silicone-based arms arranged on a dodecahedral frame. Unlike high-cost research platforms, this prototype was fabricated using accessible DIY methods, including food-grade silicone molding, FDM 3D printing, and off-the-shelf DC motors. A novel multi-stage waterproofing protocol was developed to seal rotating shafts using a grease-filled chamber system, ensuring reliability at low cost. The robot was successfully tested in a controlled aquatic environment, demonstrating stable forward propulsion and turning maneuvers. With a total fabrication cost of approximately $355 USD, this project validates the feasibility of democratizing soft robotics for marine science in resource-constrained settings.
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- Asia > Japan > Honshū > Tōhoku > Miyagi Prefecture > Sendai (0.04)
- Asia > Bangladesh > Dhaka Division > Dhaka District > Dhaka (0.04)
Field-programmable dynamics in a soft magnetic actuator enabling true random number generation and reservoir computing
Oliveros-Mata, Eduardo Sergio, Pylypovskyi, Oleksandr V., Raimondo, Eleonora, Illing, Rico, Zabila, Yevhen, Guo, Lin, Mu, Guannan, López, Mónica Navarro, Wang, Xu, Tzortzinis, Georgios, Filippatos, Angelos, Bermúdez, Gilbert Santiago Cañón, Garescì, Francesca, Finocchio, Giovanni, Makarov, Denys
Department of Mathematical and Computer Sciences, Physical Sciences and Earth Sciences, University of Messina, 8166 Messina, Italy Complex and even chaotic dynamics, though prevalent in many natural and engineered systems, has been largely avoided in the design of electromechanical systems due to concerns about wear and controlability. Here, we demonstrate that complex dynamics might be particularly advantageous in soft robotics, offering new functionalities beyond motion not easily achievable with traditional actuation methods. We designed and realized resilient magnetic soft actuators capable of operating in a tunable dynamic regime for tens of thousands cycles without fatigue. We experimentally demonstrated the application of these actuators for true random number generation and stochastic computing. These findings show that exploring the complex dynamics in soft robotics would extend the application scenarios in soft computing, human-robot interaction and collaborative robots as we demonstrate with biomimetic blinking and randomized voice modulation. A large number of mechanical systems, including simple ones such as the double pendulum, exhibit dynamics characterized by deterministic periodic and chaotic responses depending on the excitation frequency f and amplitude A of the applied force [1]. Mechanical systems with a tendency to chaotisation demonstrate multiple resonances and various transitions to chaos [2]. Today, the concept of complexity and, especially, deterministic chaos that refers to systems without stochastic fluctuations jet losing stability of phase space trajectories is explored for a variety of directions [3] even including biological systems [4] or optics [5]. In particular, chaos is a fundamental aspect of electromechanical systems and is broadly explored in motion planning for mobile rigid robots, fluid mixing, and improving energy harvesting, as well as in mechanisms used in washing machines, dishwashers, and air conditioners [6]. Although the analysis of traditional robotics and mechanisms has revealed inherent chaotic dynamics [7], chaos can also be intentionally generated through nonlinear feedback [6] to achieve specific functionalities. In contrast to rigid mechanisms, soft actuators can facilitate transition into complex dynamics without the need for dedicated feedback algorithms. Mechanically soft actuators do not possess any rigid components in their embodiment rendering them ideally suited to explore complex and even chaotic dynamics which is typically observed at higher frequencies (Supplementary Tables 1 and 2). The inherent nonlinear oscillations emerging in soft actuators for specific parameter values [8, 9] can be applied for secure, biomimetic, and soft computing applications.
- Europe > Germany > Saxony > Dresden (0.04)
- Europe > Ukraine > Kyiv Oblast > Kyiv (0.04)
- Asia > Japan > Honshū > Chūbu > Ishikawa Prefecture > Kanazawa (0.04)
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- Health & Medicine (0.93)
- Construction & Engineering (0.74)
- Energy (0.66)
- Information Technology > Artificial Intelligence > Robots (1.00)
- Information Technology > Artificial Intelligence > Representation & Reasoning > Mathematical & Statistical Methods (0.71)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks (0.68)
- Information Technology > Artificial Intelligence > Representation & Reasoning > Uncertainty (0.54)
Toward generic control for soft robotic systems
Sun, Yu, Deng, Yaosheng, Mei, Wenjie, Xiong, Xiaogang, Bai, Yang, Ogura, Masaki, Zhou, Zeyu, Feroskhan, Mir, Wang, Michael Yu, Zuo, Qiyang, Li, Yao, Lou, Yunjiang
Soft robotics has advanced rapidly, yet its control methods remain fragmented: different morphologies and actuation schemes still require task-specific controllers, hindering theoretical integration and large-scale deployment. A generic control framework is therefore essential, and a key obstacle lies in the persistent use of rigid-body control logic, which relies on precise models and strict low-level execution. Such a paradigm is effective for rigid robots but fails for soft robots, where the ability to tolerate and exploit approximate action representations, i.e., control compliance, is the basis of robustness and adaptability rather than a disturbance to be eliminated. Control should thus shift from suppressing compliance to explicitly exploiting it. Human motor control exemplifies this principle: instead of computing exact dynamics or issuing detailed muscle-level commands, it expresses intention through high-level movement tendencies, while reflexes and biomechanical mechanisms autonomously resolve local details. This architecture enables robustness, flexibility, and cross-task generalization. Motivated by this insight, we propose a generic soft-robot control framework grounded in control compliance and validate it across robots with diverse morphologies and actuation mechanisms. The results demonstrate stable, safe, and cross-platform transferable behavior, indicating that embracing control compliance, rather than resisting it, may provide a widely applicable foundation for unified soft-robot control.
- Asia > China > Guangdong Province > Shenzhen (0.05)
- Asia > Japan > Honshū > Chūgoku > Hiroshima Prefecture > Hiroshima (0.04)
- Asia > China > Heilongjiang Province > Harbin (0.04)
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AFT: Appearance-Based Feature Tracking for Markerless and Training-Free Shape Reconstruction of Soft Robots
Yuan, Shangyuan, Fairchild, Preston, Mei, Yu, Zhou, Xinyu, Tan, Xiaobo
Accurate shape reconstruction is essential for precise control and reliable operation of soft robots. Compared to sensor-based approaches, vision-based methods offer advantages in cost, simplicity, and ease of deployment. However, existing vision-based methods often rely on complex camera setups, specific backgrounds, or large-scale training datasets, limiting their practicality in real-world scenarios. In this work, we propose a vision-based, markerless, and training-free framework for soft robot shape reconstruction that directly leverages the robot's natural surface appearance. These surface features act as implicit visual markers, enabling a hierarchical matching strategy that decouples local partition alignment from global kinematic optimization. Requiring only an initial 3D reconstruction and kinematic alignment, our method achieves real-time shape tracking across diverse environments while maintaining robustness to occlusions and variations in camera viewpoints. Experimental validation on a continuum soft robot demonstrates an average tip error of 2.6% during real-time operation, as well as stable performance in practical closed-loop control tasks. These results highlight the potential of the proposed approach for reliable, low-cost deployment in dynamic real-world settings.
- North America > United States > Michigan > Ingham County > Lansing (0.04)
- North America > United States > Michigan > Ingham County > East Lansing (0.04)
- North America > United States > Massachusetts > Middlesex County > Cambridge (0.15)
- North America > Canada (0.04)
- Asia > Middle East > Republic of Türkiye > Karaman Province > Karaman (0.04)
takes natural advantage of fully differentiable simulation, which is exploding in popularity and relevance
We thank the reviewers for their constructive feedback. NeurIPS, control of soft robots has seldom been addressed. We appreciate the reviewers' compliments that our submission is "an interesting piece of work that can have a good We believe concerns can be addressed within the review cycle with text improvements and additional experiments. CNNs can adequately learn over such inputs. We include a few new results below. The topheavy, unactuated head makes this a challenging control task. After 100 optimization iters., it runs 1.5 body lengths in 4 s . After 100 optimization iterations, it runs two body lengths in 4s . However, such an approach has never been demonstrated. Why a Latent Space Is Necessary ( R1). This approach doesn't scale: we tried feeding If the dynamics of the target trajectory are not explored initially, the observer and resulting optimization suffer. This issue is especially salient during design optimization, where system dynamics change. This is enough to bootstrap our learning. R1 wrote "of course the paper's focus is on multi-task learning for soft robotics.