Meby Mathew, Mervin Joe Thomas, M. G. Navaneeth, S. Sulaiman, A. Amudhan, A. Sudheer
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The total number of recent articles referred to in this review paper with relevant keywords is filtered to 143.\n\n\nFindings\nExoskeletons are getting smarter often with the integration of various modern tools to enhance the effectiveness of rehabilitation. The recent applications of bio signal sensing for rehabilitation to perform user-desired actions promote the development of independent exoskeleton systems. The modern concepts of artificial intelligence and machine learning enable the implementation of brain–computer interfacing (BCI) and hybrid BCIs in exoskeletons. Likewise, novel actuation techniques are necessary to overcome the significant challenges seen in conventional exoskeletons, such as the high-power requirements, poor back drivability, bulkiness and low energy efficiency. Implementation of suitable controller algorithms facilitates the instantaneous correction of actuation signals for all joints to obtain the desired motion. Furthermore, applying the traditional rehabilitation training methods is monotonous and exhausting for the user and the trainer. The incorporation of games, virtual reality (VR) and augmented reality (AR) technologies in exoskeletons has made rehabilitation training far more effective in recent times. The combination of electroencephalogram and electromyography-based hybrid BCI is desirable for signal sensing and controlling the exoskeletons based on user intentions. The challenges faced with actuation can be resolved by developing advanced power sources with minimal size and weight, easy portability, lower cost and good energy storage capacity. Implementation of novel smart materials enables a colossal scope for actuation in future exoskeleton developments. Improved versions of sliding mode control reported in the literature are suitable for robust control of nonlinear exoskeleton models. Optimizing the controller parameters with the help of evolutionary algorithms is also an effective method for exoskeleton control. The experiments using VR/AR and games for rehabilitation training yielded promising results as the performance of patients improved substantially.\n\n\nResearch limitations/implications\nRobotic exoskeleton-based rehabilitation will help to reduce the fatigue of physiotherapists. Repeated and intention-based exercise will improve the recovery of the affected part at a faster pace. Improved rehabilitation training methods like VR/AR-based technologies help in motivating the subject.\n\n\nOriginality/value\nThe paper describes the recent methods for signal sensing, actuation, control and rehabilitation training approaches used in developing exoskeletons. All these areas are key elements in an exoskeleton where the review papers are published very limitedly. 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引用次数: 5
摘要
目的本文旨在解决过时外骨骼用于康复的实质性挑战,并进一步研究该领域的最新进展。为了进一步改进外骨骼研究,本文解释了在感知输入信号以实现所需运动、驱动、控制和训练方法方面的缺点和技术发展。设计/方法/方法使用Web of Science、IEEE、Scopus、PubMed等检索平台收集文献。这篇综述文章中涉及的近期文章的总数与相关关键词被过滤为143。随着各种现代工具的整合,骨骼变得越来越智能,以提高康复的有效性。最近生物信号传感在康复中的应用,以执行用户期望的动作,促进了独立外骨骼系统的发展。人工智能和机器学习的现代概念使得在外骨骼中实现脑机接口(BCI)和混合BCI成为可能。同样,为了克服传统外骨骼所面临的重大挑战,例如高功率要求、较差的向后驾驶性、体积庞大和低能效,新型驱动技术是必要的。适当的控制器算法的实现有助于对所有关节的驱动信号进行瞬时校正,以获得所需的运动。此外,使用传统的康复训练方法对使用者和训练者来说都是单调和疲惫的。在外骨骼中结合游戏、虚拟现实(VR)和增强现实(AR)技术,使康复训练在最近的时间里更加有效。基于脑电图和肌电图的混合脑机接口的组合是基于用户意图的信号传感和控制外骨骼的理想选择。驱动所面临的挑战可以通过开发具有最小尺寸和重量、易于携带、低成本和良好储能能力的先进电源来解决。新型智能材料的实现为未来外骨骼的发展提供了巨大的驱动范围。文献中报道的滑模控制的改进版本适用于非线性外骨骼模型的鲁棒控制。利用进化算法优化控制器参数也是外骨骼控制的一种有效方法。使用VR/AR和游戏进行康复训练的实验取得了令人满意的结果,患者的表现得到了显着改善。研究局限/启示基于外骨骼的机器人康复将有助于减少物理治疗师的疲劳。重复的和以意图为基础的练习将以更快的速度改善患处的恢复。改进的康复训练方法,如基于VR/ ar的技术,有助于激励受试者。原创性/价值本文描述了最近用于开发外骨骼的信号传感、驱动、控制和康复训练方法。所有这些领域都是外骨骼的关键要素,在这些领域发表的评论论文非常有限。因此,本文对该领域的研究人员具有一定的指导意义。
A systematic review of technological advancements in signal sensing, actuation, control and training methods in robotic exoskeletons for rehabilitation
Purpose
The purpose of this review paper is to address the substantial challenges of the outdated exoskeletons used for rehabilitation and further study the current advancements in this field. The shortcomings and technological developments in sensing the input signals to enable the desired motions, actuation, control and training methods are explained for further improvements in exoskeleton research.
Design/methodology/approach
Search platforms such as Web of Science, IEEE, Scopus and PubMed were used to collect the literature. The total number of recent articles referred to in this review paper with relevant keywords is filtered to 143.
Findings
Exoskeletons are getting smarter often with the integration of various modern tools to enhance the effectiveness of rehabilitation. The recent applications of bio signal sensing for rehabilitation to perform user-desired actions promote the development of independent exoskeleton systems. The modern concepts of artificial intelligence and machine learning enable the implementation of brain–computer interfacing (BCI) and hybrid BCIs in exoskeletons. Likewise, novel actuation techniques are necessary to overcome the significant challenges seen in conventional exoskeletons, such as the high-power requirements, poor back drivability, bulkiness and low energy efficiency. Implementation of suitable controller algorithms facilitates the instantaneous correction of actuation signals for all joints to obtain the desired motion. Furthermore, applying the traditional rehabilitation training methods is monotonous and exhausting for the user and the trainer. The incorporation of games, virtual reality (VR) and augmented reality (AR) technologies in exoskeletons has made rehabilitation training far more effective in recent times. The combination of electroencephalogram and electromyography-based hybrid BCI is desirable for signal sensing and controlling the exoskeletons based on user intentions. The challenges faced with actuation can be resolved by developing advanced power sources with minimal size and weight, easy portability, lower cost and good energy storage capacity. Implementation of novel smart materials enables a colossal scope for actuation in future exoskeleton developments. Improved versions of sliding mode control reported in the literature are suitable for robust control of nonlinear exoskeleton models. Optimizing the controller parameters with the help of evolutionary algorithms is also an effective method for exoskeleton control. The experiments using VR/AR and games for rehabilitation training yielded promising results as the performance of patients improved substantially.
Research limitations/implications
Robotic exoskeleton-based rehabilitation will help to reduce the fatigue of physiotherapists. Repeated and intention-based exercise will improve the recovery of the affected part at a faster pace. Improved rehabilitation training methods like VR/AR-based technologies help in motivating the subject.
Originality/value
The paper describes the recent methods for signal sensing, actuation, control and rehabilitation training approaches used in developing exoskeletons. All these areas are key elements in an exoskeleton where the review papers are published very limitedly. Therefore, this paper will stand as a guide for the researchers working in this domain.
期刊介绍:
Industrial Robot publishes peer reviewed research articles, technology reviews and specially commissioned case studies. Each issue includes high quality content covering all aspects of robotic technology, and reflecting the most interesting and strategically important research and development activities from around the world.
The journal’s policy of not publishing work that has only been tested in simulation means that only the very best and most practical research articles are included. This ensures that the material that is published has real relevance and value for commercial manufacturing and research organizations. Industrial Robot''s coverage includes, but is not restricted to:
Automatic assembly
Flexible manufacturing
Programming optimisation
Simulation and offline programming
Service robots
Autonomous robots
Swarm intelligence
Humanoid robots
Prosthetics and exoskeletons
Machine intelligence
Military robots
Underwater and aerial robots
Cooperative robots
Flexible grippers and tactile sensing
Robot vision
Teleoperation
Mobile robots
Search and rescue robots
Robot welding
Collision avoidance
Robotic machining
Surgical robots
Call for Papers 2020
AI for Autonomous Unmanned Systems
Agricultural Robot
Brain-Computer Interfaces for Human-Robot Interaction
Cooperative Robots
Robots for Environmental Monitoring
Rehabilitation Robots
Wearable Robotics/Exoskeletons.