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Self-growing robots are an emerging solution in soft robotics for navigating, exploring, and colonizing unstructured environments. However, their ability to grow and move in heterogeneous three-dimensional (3D) spaces, comparable with real-world conditions, is still developing. We present an autonomous growing robot that draws inspiration from the behavioral adaptive strategies of climbing plants to navigate unstructured environments. The robot mimics climbing plants' apical shoot to sense and coordinate additive adaptive growth via an embedded additive manufacturing mechanism and a sensorized tip. Growth orientation, comparable with tropisms in real plants, is dictated by external stimuli, including gravity, light, and shade. These are incorporated within a vector field method to implement the preferred adaptive behavior for a given environment and task, such as growth toward light and/or against gravity. We demonstrate the robot's ability to navigate through growth in relation to voids, potential supports, and thoroughfares in otherwise complex habitats. Adaptive twining around vertical supports can provide an escape from mechanical stress due to self-support, reduce energy expenditure for construction costs, and develop an anchorage point to support further growth and crossing gaps. The robot adapts its material printing parameters to develop a light body and fast growth to twine on supports or a tougher body to enable self-support and cross gaps. These features, typical of climbing plants, highlight a potential for adaptive robots and their on-demand manufacturing. They are especially promising for applications in exploring, monitoring, and interacting with unstructured environments or in the autonomous construction of complex infrastructures.
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http://dx.doi.org/10.1126/scirobotics.adi5908 | DOI Listing |
Rev Sci Instrum
September 2025
Hefei University of Technology, School of Mechanical Engineering, Hefei 230009, China.
In unstructured environments, robots face challenges in efficiently and accurately grasping irregular, fragile objects. To address this, this paper introduces a soft robotic hand tailored for such settings and enhances You Only Look Once v5s (YOLOv5s), a lightweight detection algorithm, to achieve efficient grasping. A rapid pneumatic network-based soft finger structure, broadly applicable to various irregularly placed objects, is designed, with a mathematical model linking the bending angle of the fingers to input gas pressure, validated through simulations.
View Article and Find Full Text PDFJMIR Form Res
September 2025
SA MRC/ Wits Developmental Pathways for Health Research Unit, Department of Paediatrics, Faculty of Health Sciences, School of Clinical Medicine, University of the Witwatersrand, Johannesburg, South Africa.
Background: Allowing infants access to unstructured, unrestricted play in their home environment is imperative for increasing healthy movement behaviors and, therefore, developmental outcomes. Interventions should equip mothers to provide opportunities for infant play as early as possible. Evaluating such interventions is necessary to understand the feasibility for scale-up and implementation in specific contexts.
View Article and Find Full Text PDFStud Health Technol Inform
September 2025
Department of Computer Science, Kempten University of Applied Sciences, Kempten, Germany.
Introduction: Manual ICD-10 coding of German clinical texts is time-consuming and error-prone. This project aims to develop a semi-automated pipeline for efficient coding of unstructured medical documentation.
State Of The Art: Existing approaches often rely on fine-tuned language models that require large datasets and perform poorly on rare codes, particularly in low-resource languages such as German.
iScience
September 2025
College of Instrument Science and Electrical Engineering, Jilin University, Jilin, China.
Reducing energy consumption of wheeled robots in urban inspection and unstructured environments is a pressing challenge. This study proposes a human-like trajectory planning method based on deep learning to address energy inefficiency. A convolutional neural network (CNN) with multi-dimensional attention extracts spatial features from driving scenes and radar maps of hazardous areas.
View Article and Find Full Text PDFJ Community Health
August 2025
Psychology Department, State University of New York at Cortland, Cortland, NY, USA.
This study aimed to comprehensively understand how children engaged with physical activity in after-school programs developed through a university-community partnership initiative. The program was designed to enhance physical activity opportunities for elementary school students by offering a variety of structured and unstructured activities, facilitated by physical education teacher education (PETE) major students serving as mentors. A mixed-methods approach was employed, using both quantitative and qualitative data.
View Article and Find Full Text PDF