The Agricultural, Biological, and Cognitive (ABC) Robotics Initiative
Awards

ABC Current Research Development Projects

​Ilana Nisky, Biomedical Engineering
Yair Binyamin, Soroka Hospital, Faculty of Health Sciences​

The anesthesiologist's case experience is the main cause of the most common complications of epidural analgesia. To enhance patient safety and create a controlled learning environment, we will combine robotics, sensorimotor control theories, and advanced data analysis to improve the skill of novice anesthesiologists. We will develop a bimanual robotic simulator for optimizing training by presenting realistic force feedback to trainees, and allowing for an extensive practice before ever touching the first patient. We will combine 3D printing for rendering rigid anatomically-accurate structures and two robotic devices for rendering modifiable soft tissue resistance and for kinematic data recording. Sensorimotor learning theories will help to optimally harness explicit and implicit learning, and advanced data analysis will help to quantify the progress of trainees. Our aims are: (1) Develop a bimanual simulator for epidural analgesia (2) Develop quantitative metrics of skilled analgesia and an optimal epidural analgesia training protocol. (3) Examine the efficiency of training with the simulator compared to the standard training protocol in place currently. ​ 

Aslan Miriyev, Mechanical Engineering​

Mirko Kovač, Materials and Technology Center of Robotics, Empa, Switzerland

 

Soft actuation is deemed one of the central and longstanding gaps to achieve soft collaborative ro-bots. In recent years, the trend in soft actuation gradually shifted from pneumatic devices to func-tional materials. However, soft actuators still suffer from relatively low durability, which is reflected in a small number of actuation cycles. In recent years, we began working on understanding the effect of chemical triggering on muscle fiber contraction for further implementation in soft bio-hybrid ro-botics. We demonstrated the feasibility of using chemical stimuli to control muscle contraction in vitro. However, the chemical-based control of muscle fibers required a minute-scale duration for actuation and de-actuation, rendering the actuation speed and number of cycles challenging to utilize in the context of soft collaborative robots. To address this issue, here we propose to combine chem-ical stimulus with optogenetics, a technique that utilizes light to induce muscle fiber contraction, resulting in a sub-second response, and implement it in a bio-hybrid artificial muscle. We can po-tentially control a muscle fiber contraction with adequate response speeds by employing such a hy-brid approach. The proposed research activities include (i) the development of bio-fiber-based 3D-bioconstruct capable of hybrid chemical/optogenetics-triggered actuation, (ii) integrating the con-trollable 3D-bioconstruct in a synthetic robotic environment, and (iii) showcasing a new type of bio-hybrid artificial muscle in a representative robotic device and subsequent performance characteriza-tion (actual robotic implementation). The demonstrators will be capable of various motion primitives via introducing structural kinematics by actuator design and time-modulated stimulus supply. We suggest that the proposed approach may redefine human-robot interaction and lead to a paradigm shift in robotics.

 

 

Shabtai Isaac, Civil and Environmental Engineering​​

Thomas Linner​, Chair of Building Realization and Robotics, Technical University of Munich

 

Buildings are among the most complex products created by mankind, in terms of the sheer number of types of components they contain, and the complex dependencies between those components. On the other hand, buildings contain many features that are similar to each other, and their construction involves numerous repetitive activities. Yet so far, the use of robotics in the building industry to improve its efficiency has been relatively limited. The development of robots for construction activities requires, among other things, a solution to the question of how such robots will move in a highly dynamic and spatially complex environment. Currently, a building is constructed by teams of workers who pass through it and around it and carry out a series of repetitive successive actions at different locations. At each location, the team adds a certain component to the product, or processes the existing product. Efforts to replace those teams of human workers with robots in a cost-effective way have been hampered by the size and technical complexity of buildings, which make it impossible to implement the assembly line concept at a scale that exceeds the offsite manufacture of a relatively small building components. Consequently, construction robotics research has often focused on the effort to replace workers with robots that have locomotion capabilities (Bock & Linner 2016). Yet, this is challenging due to the spatial complexity of buildings, in terms of the rooms and corridors of infinitely varying shapes that they typically contain, situated at different levels and continuously evolving while the building is being constructed. This makes the development of a robot able to move through such a spatially complex landscape extremely difficult and expensive, in particular since such a robot also needs to be heavy enough so that it is capable of executing activities involving significant loads.

 

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