29 research outputs found

    The Shape of Damping: Optimizing Damping Coefficients to Improve Transparency on Bilateral Telemanipulation

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    This thesis presents a novel optimization-based passivity control algorithm for hapticenabled bilateral teleoperation systems involving multiple degrees of freedom. In particular, in the context of energy-bounding control, the contribution focuses on the implementation of a passivity layer for an existing time-domain scheme, ensuring optimal transparency of the interaction along subsets of the environment space which are preponderant for the given task, while preserving the energy bounds required for passivity. The involved optimization problem is convex and amenable to real-time implementation. The effectiveness of the proposed design is validated via an experiment performed on a virtual teleoperated environment. The interplay between transparency and stability is a critical aspect in haptic-enabled bilateral teleoperation control. While it is important to present the user with the true impedance of the environment, destabilizing factors such as time delays, stiff environments, and a relaxed grasp on the master device may compromise the stability and safety of the system. Passivity has been exploited as one of the the main tools for providing sufficient conditions for stable teleoperation in several controller design approaches, such as the scattering algorithm, timedomain passivity control, energy bounding algorithm, and passive set position modulation. In this work it is presented an innovative energy-based approach, which builds upon existing time-domain passivity controllers, improving and extending their effectiveness and functionality. The set of damping coefficients are prioritized in each degree of freedom, the resulting transparency presents a realistic force feedback in comparison to the other directions. Thus, the prioritization takes effect using a quadratic programming algorithm to find the optimal values for the damping. Finally, the energy tanks approach on passivity control is a solution used to ensure stability in a system for robotics bilateral manipulation. The bilateral telemanipulation must maintain the principle of passivity in all moments to preserve the system\u2019s stability. This work presents a brief introduction to haptic devices as a master component on the telemanipulation chain; the end effector in the slave side is a representation of an interactive object within an environment having a force sensor as feedback signal. The whole interface is designed into a cross-platform framework named ROS, where the user interacts with the system. Experimental results are presented

    Expert-in-the-Loop Multilateral Telerobotics for Haptics-Enabled Motor Function and Skills Development

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    Among medical robotics applications are Robotics-Assisted Mirror Rehabilitation Therapy (RAMRT) and Minimally-Invasive Surgical Training (RAMIST) that extensively rely on motor function development. Haptics-enabled expert-in-the-loop motor function development for such applications is made possible through multilateral telerobotic frameworks. While several studies have validated the benefits of haptic interaction with an expert in motor learning, contradictory results have also been reported. This emphasizes the need for further in-depth studies on the nature of human motor learning through haptic guidance and interaction. The objective of this study was to design and evaluate expert-in-the-loop multilateral telerobotic frameworks with stable and human-safe control loops that enable adaptive “hand-over-hand” haptic guidance for RAMRT and RAMIST. The first prerequisite for such frameworks is active involvement of the patient or trainee, which requires the closed-loop system to remain stable in the presence of an adaptable time-varying dominance factor. To this end, a wave-variable controller is proposed in this study for conventional trilateral teleoperation systems such that system stability is guaranteed in the presence of a time-varying dominance factor and communication delay. Similar to other wave-variable approaches, the controller is initially developed for the Velocity-force Domain (VD) based on the well-known passivity assumption on the human arm in VD. The controller can be applied straightforwardly to the Position-force Domain (PD), eliminating position-error accumulation and position drift, provided that passivity of the human arm in PD is addressed. However, the latter has been ignored in the literature. Therefore, in this study, passivity of the human arm in PD is investigated using mathematical analysis, experimentation as well as user studies involving 12 participants and 48 trials. The results, in conjunction with the proposed wave-variables, can be used to guarantee closed-loop PD stability of the supervised trilateral teleoperation system in its classical format. The classic dual-user teleoperation architecture does not, however, fully satisfy the requirements for properly imparting motor function (skills) in RAMRT (RAMIST). Consequently, the next part of this study focuses on designing novel supervised trilateral frameworks for providing motor learning in RAMRT and RAMIST, each customized according to the requirements of the application. The framework proposed for RAMRT includes the following features: a) therapist-in-the-loop mirror therapy; b) haptic feedback to the therapist from the patient side; c) assist-as-needed therapy realized through an adaptive Guidance Virtual Fixture (GVF); and d) real-time task-independent and patient-specific motor-function assessment. Closed-loop stability of the proposed framework is investigated using a combination of the Circle Criterion and the Small-Gain Theorem. The stability analysis addresses the instabilities caused by: a) communication delays between the therapist and the patient, facilitating haptics-enabled tele- or in-home rehabilitation; and b) the integration of the time-varying nonlinear GVF element into the delayed system. The platform is experimentally evaluated on a trilateral rehabilitation setup consisting of two Quanser rehabilitation robots and one Quanser HD2 robot. The framework proposed for RAMIST includes the following features: a) haptics-enabled expert-in-the-loop surgical training; b) adaptive expertise-oriented training, realized through a Fuzzy Interface System, which actively engages the trainees while providing them with appropriate skills-oriented levels of training; and c) task-independent skills assessment. Closed-loop stability of the architecture is analyzed using the Circle Criterion in the presence and absence of haptic feedback of tool-tissue interactions. In addition to the time-varying elements of the system, the stability analysis approach also addresses communication delays, facilitating tele-surgical training. The platform is implemented on a dual-console surgical setup consisting of the classic da Vinci surgical system (Intuitive Surgical, Inc., Sunnyvale, CA), integrated with the da Vinci Research Kit (dVRK) motor controllers, and the dV-Trainer master console (Mimic Technology Inc., Seattle, WA). In order to save on the expert\u27s (therapist\u27s) time, dual-console architectures can also be expanded to accommodate simultaneous training (rehabilitation) for multiple trainees (patients). As the first step in doing this, the last part of this thesis focuses on the development of a multi-master/single-slave telerobotic framework, along with controller design and closed-loop stability analysis in the presence of communication delays. Various parts of this study are supported with a number of experimental implementations and evaluations. The outcomes of this research include multilateral telerobotic testbeds for further studies on the nature of human motor learning and retention through haptic guidance and interaction. They also enable investigation of the impact of communication time delays on supervised haptics-enabled motor function improvement through tele-rehabilitation and mentoring

    Nonlinear Subsystem-Based Adaptive Impedance Control of Physical Human-Robot-Environment Interaction in Contact-Rich Tasks

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    Haptic upper limb exoskeletons are robots that assist human operators during task execution while having the ability to render virtual or remote environments. Therefore, ensuring the stability of such robots in physical human-robot-environment interaction (pHREI) is crucial. Having a wide range of Z-width, which indicates the region of passively renderable impedance by a haptic display, is also important for rendering a broad range of virtual environments. To address these issues, this study designs subsystem-based adaptive impedance control to achieve a stable pHREI for 7 degrees of freedom haptic exoskeleton. The presented controller decomposes the entire system into subsystems and designs the controller at the subsystem level. The stability of the controller in the presence of contact with a virtual environment and human arm force is proven by employing the concept of virtual stability. Additionally, the Z-width of the 7-DoF haptic exoskeleton is illustrated using experimental data and improved by exploiting varying virtual mass element. Experimental results are provided to demonstrate the performance of the controller. The control results are also compared to state-of-the-art control methods, highlighting the excellence of the designed controller.Peer reviewe

    Novel Actuation Methods for High Force Haptics

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    Robotics 2010

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    Without a doubt, robotics has made an incredible progress over the last decades. The vision of developing, designing and creating technical systems that help humans to achieve hard and complex tasks, has intelligently led to an incredible variety of solutions. There are barely technical fields that could exhibit more interdisciplinary interconnections like robotics. This fact is generated by highly complex challenges imposed by robotic systems, especially the requirement on intelligent and autonomous operation. This book tries to give an insight into the evolutionary process that takes place in robotics. It provides articles covering a wide range of this exciting area. The progress of technical challenges and concepts may illuminate the relationship between developments that seem to be completely different at first sight. The robotics remains an exciting scientific and engineering field. The community looks optimistically ahead and also looks forward for the future challenges and new development

    Compliant and stable robot control for physical human-robot cooperation

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    The main goal of this thesis is to accomplish a compliant and stable closed-loop physical human-robot cooperation by guaranteeing the safety metrics for all of the agents in a shared-working environment. There is increasing interest in control frameworks capable of moving robots from industrial cages to unstructured environments and coexisting with humans. Initially, having robots capable of safely interacting with humans was of interest for medical applications (e.g., rehabilitation, surgical). Despite significant improvement in some specific applications like medical robotics, there is still the need for a general control framework that improves interaction robustness and motion dynamics. Passive controllers show promising results in this direction; however, they often rely on virtual energy tanks that can guarantee passivity as long as they do not run out of energy. In this thesis, a fractal attractor is proposed to implement a variable impedance controller that can retain passivity without relying on energy tanks. The controller generates a fractal attractor around the desired state using an asymptotic stable potential field, making the controller robust to discretization and numerical integration errors. Thus, the proposed Fractal Impedance Controller (FIC) in this thesis is robust for low-bandwidth applications. I have tested this controller with a torque controlled 7-DoF manipulator. The results prove that it can accurately track both trajectories and end-effector forces during interaction. Furthermore, it can automatically deal with the extra energy introduced by changes in interaction conditions, null-space controller and environment. Therefore, on the one hand these properties make the controller ideal for applications where the dynamic interaction at the end-effector is challenging to be characterized a priori, such as proximate physical human-robot cooperation and unknown dynamics. On the other hand in remote human-robot cooperation, robotic teleoperation provides human-in-the-loop capabilities of complex manipulation tasks in dangerous or remote environments, such as planetary exploration or nuclear decommissioning. This thesis proposes a novel bilateral telemanipulation architecture using the proposed passive FIC, which does not depend upon an active viscous component for guaranteeing stability. Compared to a traditional impedance controller in ideal conditions (no delays and maximum communication bandwidth), the proposed method yields higher transparency in interaction and demonstrates superior dexterity and capability in my telemanipulation test scenarios. I also validate its performance with extreme delays up to 1s and communication bandwidths as low as 10Hz. The results of the carried out experiments validate a consistent stability when using the proposed controller in challenging conditions, regardless of operator expertise. The proposed fractal impedance controller in this thesis exploits its non-linear stiffness to adapt to multiple cooperative scenarios without tuning the controller. Furthermore, the FIC has an intuitive method to adjust the impedance that can be performed online without affecting stability. The experimental results, carried out using 2 torque controlled 7-DoF manipulators and the Sigma.7 haptic device, also show that the proposed method can perform tasks such as drilling, moving objects with unknown dynamics, and interacting with humans without re-tuning the controller's impedance in a tele-cooperative manner consisting of multi-agents in the loop. The FIC also allows identifying the highest impedance profile for a robot experimentally, and it bounds the maximum momentum generated while moving. Thus, it opens new possibilities for developing better adaptive controllers by coupling the proposed method with learning and optimisation algorithms to modulate its behaviour without the risk of incurring instability issues.YOUTUBE links to Chapters 3,4 & 5 below

    Télé-opération Corps Complet de Robots Humanoïdes

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    This thesis aims to investigate systems and tools for teleoperating a humanoid robot. Robotteleoperation is crucial to send and control robots in environments that are dangerous or inaccessiblefor humans (e.g., disaster response scenarios, contaminated environments, or extraterrestrialsites). The term teleoperation most commonly refers to direct and continuous control of a robot.In this case, the human operator guides the motion of the robot with her/his own physical motionor through some physical input device. One of the main challenges is to control the robot in a waythat guarantees its dynamical balance while trying to follow the human references. In addition,the human operator needs some feedback about the state of the robot and its work site through remotesensors in order to comprehend the situation or feel physically present at the site, producingeffective robot behaviors. Complications arise when the communication network is non-ideal. Inthis case the commands from human to robot together with the feedback from robot to human canbe delayed. These delays can be very disturbing for the human operator, who cannot teleoperatetheir robot avatar in an effective way.Another crucial point to consider when setting up a teleoperation system is the large numberof parameters that have to be tuned to effectively control the teleoperated robots. Machinelearning approaches and stochastic optimizers can be used to automate the learning of some of theparameters.In this thesis, we proposed a teleoperation system that has been tested on the humanoid robotiCub. We used an inertial-technology-based motion capture suit as input device to control thehumanoid and a virtual reality headset connected to the robot cameras to get some visual feedback.We first translated the human movements into equivalent robot ones by developping a motionretargeting approach that achieves human-likeness while trying to ensure the feasibility of thetransferred motion. We then implemented a whole-body controller to enable the robot to trackthe retargeted human motion. The controller has been later optimized in simulation to achieve agood tracking of the whole-body reference movements, by recurring to a multi-objective stochasticoptimizer, which allowed us to find robust solutions working on the real robot in few trials.To teleoperate walking motions, we implemented a higher-level teleoperation mode in whichthe user can use a joystick to send reference commands to the robot. We integrated this setting inthe teleoperation system, which allows the user to switch between the two different modes.A major problem preventing the deployment of such systems in real applications is the presenceof communication delays between the human input and the feedback from the robot: evena few hundred milliseconds of delay can irremediably disturb the operator, let alone a few seconds.To overcome these delays, we introduced a system in which a humanoid robot executescommands before it actually receives them, so that the visual feedback appears to be synchronizedto the operator, whereas the robot executed the commands in the past. To do so, the robot continuouslypredicts future commands by querying a machine learning model that is trained on pasttrajectories and conditioned on the last received commands.Cette thĂšse vise Ă  Ă©tudier des systĂšmes et des outils pour la tĂ©lĂ©-opĂ©ration d’un robot humanoĂŻde.La tĂ©lĂ©opĂ©ration de robots est cruciale pour envoyer et contrĂŽler les robots dans des environnementsdangereux ou inaccessibles pour les humains (par exemple, des scĂ©narios d’interventionen cas de catastrophe, des environnements contaminĂ©s ou des sites extraterrestres). Le terme tĂ©lĂ©opĂ©rationdĂ©signe le plus souvent le contrĂŽle direct et continu d’un robot. Dans ce cas, l’opĂ©rateurhumain guide le mouvement du robot avec son propre mouvement physique ou via un dispositifde contrĂŽle. L’un des principaux dĂ©fis est de contrĂŽler le robot de maniĂšre Ă  garantir son Ă©quilibredynamique tout en essayant de suivre les rĂ©fĂ©rences humaines. De plus, l’opĂ©rateur humain abesoin d’un retour d’information sur l’état du robot et de son site via des capteurs Ă  distance afind’apprĂ©hender la situation ou de se sentir physiquement prĂ©sent sur le site, produisant des comportementsde robot efficaces. Des complications surviennent lorsque le rĂ©seau de communicationn’est pas idĂ©al. Dans ce cas, les commandes de l’homme au robot ainsi que la rĂ©troaction du robotĂ  l’homme peuvent ĂȘtre retardĂ©es. Ces dĂ©lais peuvent ĂȘtre trĂšs gĂȘnants pour l’opĂ©rateur humain,qui ne peut pas tĂ©lĂ©-opĂ©rer efficacement son avatar robotique.Un autre point crucial Ă  considĂ©rer lors de la mise en place d’un systĂšme de tĂ©lĂ©-opĂ©rationest le grand nombre de paramĂštres qui doivent ĂȘtre rĂ©glĂ©s pour contrĂŽler efficacement les robotstĂ©lĂ©-opĂ©rĂ©s. Des approches d’apprentissage automatique et des optimiseurs stochastiques peuventĂȘtre utilisĂ©s pour automatiser l’apprentissage de certains paramĂštres.Dans cette thĂšse, nous avons proposĂ© un systĂšme de tĂ©lĂ©-opĂ©ration qui a Ă©tĂ© testĂ© sur le robothumanoĂŻde iCub. Nous avons utilisĂ© une combinaison de capture de mouvement basĂ©e sur latechnologie inertielle comme pĂ©riphĂ©rique de contrĂŽle pour l’humanoĂŻde et un casque de rĂ©alitĂ©virtuelle connectĂ© aux camĂ©ras du robot pour obtenir un retour visuel. Nous avons d’abord traduitles mouvements humains en mouvements robotiques Ă©quivalents en dĂ©veloppant une approchede retargeting de mouvement qui atteint la ressemblance humaine tout en essayant d’assurer lafaisabilitĂ© du mouvement transfĂ©rĂ©. Nous avons ensuite implĂ©mentĂ© un contrĂŽleur du corps entierpour permettre au robot de suivre le mouvement humain reciblĂ©. Le contrĂŽleur a ensuite Ă©tĂ©optimisĂ© en simulation pour obtenir un bon suivi des mouvements de rĂ©fĂ©rence du corps entier,en recourant Ă  un optimiseur stochastique multi-objectifs, ce qui nous a permis de trouver dessolutions robustes fonctionnant sur le robot rĂ©el en quelques essais.Pour tĂ©lĂ©-opĂ©rer les mouvements de marche, nous avons implĂ©mentĂ© un mode de tĂ©lĂ©-opĂ©rationde niveau supĂ©rieur dans lequel l’utilisateur peut utiliser un joystick pour envoyer des commandesde rĂ©fĂ©rence au robot. Nous avons intĂ©grĂ© ce paramĂštre dans le systĂšme de tĂ©lĂ©-opĂ©ration, ce quipermet Ă  l’utilisateur de basculer entre les deux modes diffĂ©rents.Un problĂšme majeur empĂȘchant le dĂ©ploiement de tels systĂšmes dans des applications rĂ©ellesest la prĂ©sence de retards de communication entre l’entrĂ©e humaine et le retour du robot: mĂȘmequelques centaines de millisecondes de retard peuvent irrĂ©mĂ©diablement perturber l’opĂ©rateur,encore plus quelques secondes. Pour surmonter ces retards, nous avons introduit un systĂšme danslequel un robot humanoĂŻde exĂ©cute des commandes avant de les recevoir, de sorte que le retourvisuel semble ĂȘtre synchronisĂ© avec l’opĂ©rateur, alors que le robot exĂ©cutait les commandes dansle passĂ©. Pour ce faire, le robot prĂ©dit en permanence les commandes futures en interrogeant unmodĂšle d’apprentissage automatique formĂ© sur les trajectoires passĂ©es et conditionnĂ© aux derniĂšrescommandes reçues
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