swarm robot
Dynamic Collaborative Material Distribution System for Intelligent Robots In Smart Manufacturing
Xiao, Ziren, Xiao, Ruxin, Liu, Chang, Wang, Xinheng
The collaboration and interaction of multiple robots have become integral aspects of smart manufacturing. Effective planning and management play a crucial role in achieving energy savings and minimising overall costs. This paper addresses the real-time Dynamic Multiple Sources to Single Destination (DMS-SD) navigation problem, particularly with a material distribution case for multiple intelligent robots in smart manufacturing. Enumerated solutions, such as in \cite{xiao2022efficient}, tackle the problem by generating as many optimal or near-optimal solutions as possible but do not learn patterns from the previous experience, whereas the method in \cite{xiao2023collaborative} only uses limited information from the earlier trajectories. Consequently, these methods may take a considerable amount of time to compute results on large maps, rendering real-time operations impractical. To overcome this challenge, we propose a lightweight Deep Reinforcement Learning (DRL) method to address the DMS-SD problem. The proposed DRL method can be efficiently trained and rapidly converges to the optimal solution using the designed target-guided reward function. A well-trained DRL model significantly reduces the computation time for the next movement to a millisecond level, which improves the time up to 100 times in our experiments compared to the enumerated solutions. Moreover, the trained DRL model can be easily deployed on lightweight devices in smart manufacturing, such as Internet of Things devices and mobile phones, which only require limited computational resources.
- Education (0.88)
- Information Technology (0.66)
- Information Technology > Artificial Intelligence > Robots (1.00)
- Information Technology > Artificial Intelligence > Representation & Reasoning > Agents (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks (0.95)
- Information Technology > Artificial Intelligence > Machine Learning > Reinforcement Learning (0.71)
An algorithm applied the Turing pattern model to control active swarm robots using only information from neighboring modules
Swarm robots, inspired by the emergence of animal herds, are robots that assemble a large number of modules and self-organize themselves to form specific morphologies and exhibit specific functions. These modular robots perform relatively simple actions and controls, and create macroscopic morphologies and functions through the interaction of a large number of modular robots. This research focuses on such self-organizing robots or swarm robots. The proposed algorithm is a model that applies the Turing pattern, one of the self-organization models, to make a group of modules accumulate and stay within a certain region. The proposed method utilizes the area within the spots of the Turing pattern as the aggregation region of the modules. Furthermore, it considers the value corresponding to the concentration distribution within the spotted pattern of the Turing pattern model (referred to as the potential value in this research), identifies the center of the region (spotted pattern), and makes it the center of the module group. By controlling the modules in the direction of the higher potential value, it succeeds in maintaining the shape of the module group as a whole while moving. The algorithm was validated using a two-dimensional simulation model. The unit module robot was assumed to have the following properties: 1) limited self-drive, 2) no module identifier, 3) information exchange only with adjacent modules, 4) no coordinate system, and 5) only simple arithmetic and memory functions. Using these modules, the devised algorithm was able to achieve not only the creation of static forms but also the realization of the following movements: 1) modules accumulate and grow, 2) modules move to the light source, 3) exit the gap while maintaining its shape, and 4) self-replication.
- North America > United States > Pennsylvania > Philadelphia County > Philadelphia (0.04)
- North America > United States > Florida > Orange County > Orlando (0.04)
- Asia > Japan > Honshū > Chūgoku > Yamaguchi Prefecture > Yamaguchi (0.04)
Swarm Body: Embodied Swarm Robots
Ichihashi, Sosuke, Kuroki, So, Nishimura, Mai, Kasaura, Kazumi, Hiraki, Takefumi, Tanaka, Kazutoshi, Yoshida, Shigeo
The human brain's plasticity allows for the integration of artificial body parts into the human body. Leveraging this, embodied systems realize intuitive interactions with the environment. We introduce a novel concept: embodied swarm robots. Swarm robots constitute a collective of robots working in harmony to achieve a common objective, in our case, serving as functional body parts. Embodied swarm robots can dynamically alter their shape, density, and the correspondences between body parts and individual robots. We contribute an investigation of the influence on embodiment of swarm robot-specific factors derived from these characteristics, focusing on a hand. Our paper is the first to examine these factors through virtual reality (VR) and real-world robot studies to provide essential design considerations and applications of embodied swarm robots. Through quantitative and qualitative analysis, we identified a system configuration to achieve the embodiment of swarm robots.
- Asia > Japan > Honshū > Kantō > Tokyo Metropolis Prefecture > Tokyo (0.14)
- Europe > United Kingdom > Scotland > City of Glasgow > Glasgow (0.14)
- North America > United States > New York > New York County > New York City (0.06)
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- Research Report > New Finding (1.00)
- Questionnaire & Opinion Survey (1.00)
Intelligent Collective Escape of Swarm Robots Based on a Novel Fish-inspired Self-adaptive Approach with Neurodynamic Models
Fish schools present high-efficiency group behaviors through simple individual interactions to collective migration and dynamic escape from the predator. The school behavior of fish is usually a good inspiration to design control architecture for swarm robots. In this paper, a novel fish-inspired self-adaptive approach is proposed for collective escape for the swarm robots. In addition, a bio-inspired neural network (BINN) is introduced to generate collision-free escape robot trajectories through the combination of attractive and repulsive forces. Furthermore, to cope with dynamic environments, a neurodynamics-based self-adaptive mechanism is proposed to improve the self-adaptive performance of the swarm robots in the changing environment. Similar to fish escape maneuvers, simulation and experimental results show that the swarm robots are capable of collectively leaving away from the threats. Several comparison studies demonstrated that the proposed approach can significantly improve the effectiveness and efficiency of system performance, and the flexibility and robustness in complex environments.
- North America > Canada > Ontario > Wellington County > Guelph (0.14)
- Asia > China > Beijing > Beijing (0.04)
- Asia > China > Chongqing Province > Chongqing (0.04)
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OA-Bug: An Olfactory-Auditory Augmented Bug Algorithm for Swarm Robots in a Denied Environment
Tan, Siqi, Zhang, Xiaoya, Li, Jingyao, Jing, Ruitao, Zhao, Mufan, Liu, Yang, Quan, Quan
Searching in a denied environment is challenging for swarm robots as no assistance from GNSS, mapping, data sharing, and central processing is allowed. However, using olfactory and auditory signals to cooperate like animals could be an important way to improve the collaboration of swarm robots. In this paper, an Olfactory-Auditory augmented Bug algorithm (OA-Bug) is proposed for a swarm of autonomous robots to explore a denied environment. A simulation environment is built to measure the performance of OA-Bug. The coverage of the search task can reach 96.93% using OA-Bug, which is significantly improved compared with a similar algorithm, SGBA. Furthermore, experiments are conducted on real swarm robots to prove the validity of OA-Bug. Results show that OA-Bug can improve the performance of swarm robots in a denied environment.
- North America > United States > Virginia (0.04)
- Asia > China > Beijing > Beijing (0.04)
Individuality in Swarm Robots with the Case Study of Kilobots: Noise, Bug, or Feature?
Raoufi, Mohsen, Romanczuk, Pawel, Hamann, Heiko
Inter-individual differences are studied in natural systems, such as fish, bees, and humans, as they contribute to the complexity of both individual and collective behaviors. However, individuality in artificial systems, such as robotic swarms, is undervalued or even overlooked. Agent-specific deviations from the norm in swarm robotics are usually understood as mere noise that can be minimized, for example, by calibration. We observe that robots have consistent deviations and argue that awareness and knowledge of these can be exploited to serve a task. We measure heterogeneity in robot swarms caused by individual differences in how robots act, sense, and oscillate. Our use case is Kilobots and we provide example behaviors where the performance of robots varies depending on individual differences. We show a non-intuitive example of phototaxis with Kilobots where the non-calibrated Kilobots show better performance than the calibrated supposedly ``ideal" one. We measure the inter-individual variations for heterogeneity in sensing and oscillation, too. We briefly discuss how these variations can enhance the complexity of collective behaviors. We suggest that by recognizing and exploring this new perspective on individuality, and hence diversity, in robotic swarms, we can gain a deeper understanding of these systems and potentially unlock new possibilities for their design and implementation of applications.
HeRoSwarm: Fully-Capable Miniature Swarm Robot Hardware Design With Open-Source ROS Support
Starks, Michael, Gupta, Aryan, Venkata, Sanjay Sarma Oruganti, Parasuraman, Ramviyas
Experiments using large numbers of miniature swarm robots are desirable to teach, study, and test multi-robot and swarm intelligence algorithms and their applications. To realize the full potential of a swarm robot, it should be capable of not only motion but also sensing, computing, communication, and power management modules with multiple options. Current swarm robot platforms developed for commercial and academic research purposes lack several of these critical attributes by focusing only on a few of these aspects. Therefore, in this paper, we propose the HeRoSwarm, a fully-capable swarm robot platform with open-source hardware and software support. The proposed robot hardware is a low-cost design with commercial off-the-shelf components that uniquely integrates multiple sensing, communication, and computing modalities with various power management capabilities into a tiny footprint. Moreover, our swarm robot with odometry capability with Robot Operating Systems (ROS) support is unique in its kind. This simple yet powerful swarm robot design has been extensively verified with different prototyping variants and multi-robot experimental demonstrations.
- North America > United States > Georgia > Clarke County > Athens (0.14)
- North America > United States > Georgia > Fulton County > Atlanta (0.04)
- Asia > Japan (0.04)
- Electrical Industrial Apparatus (0.69)
- Transportation (0.49)
How Blockchain & Artificial Intelligence Optimize the Functioning of Swarm Robots
Artificial intelligence (AI) and blockchain provide endless possibilities. Combing blockchain and artificial intelligence has enhanced the efficiencies of swarm robots through the installation of smart protocols to navigate past traditional challenges. Swarm robots in today's world have revolutionized different applications, be it in health, manufacturing, tourism, education, and different other fields. Their versatile characteristics make these robots an ideal choice for applications of the future. Robots have solved several traditional problems but are hindered by various issues like data security, unnamed navigation problems and communication between the swarm robots.
Optimizing robotic swarm based construction tasks
Liyanage, Teshan, Fernando, Subha
Social insects in nature such as ants, termites and bees construct their colonies collaboratively in a very efficient process. In these swarms, each insect contributes to the construction task individually showing redundant and parallel behavior of individual entities. But the robotics adaptations of these swarm's behaviors haven't yet made it to the real world at a large enough scale of commonly being used due to the limitations in the existing approaches to the swarm robotics construction. This paper presents an approach that combines the existing swarm construction approaches which results in a swarm robotic system, capable of constructing a given 2 dimensional shape in an optimized manner.
- Asia > Sri Lanka > Western Province > Colombo > Colombo (0.05)
- North America > United States > Nevada > Clark County > Las Vegas (0.04)
- Africa (0.04)
Inside Ocado's burning robotic warehouse
Walking into the first chamber of Ocado's robot warehouse system in May, I was immediately struck by three things: how cold it was, how enormous it was, and how quiet. No shouts from warehouse staff, or tinny radios playing pop hits. The robots collect groceries from crates beneath them, and drop them off at a packing station. Occasionally they would all simultaneously come to a halt, green lights blinking, awaiting their next command, received via an unofficial 4G network custom-built by Ocado. Hundreds of swarm robots at Ocado's automated warehouse gathering grocery orders - they have a top speed of 4m per second.
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- North America > Canada (0.05)
- Europe > France (0.05)