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      A Complexity Framework for Self-Engineering Systems

      1 , 2
      Smart and Sustainable Manufacturing Systems
      ASTM International

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          Robots that can adapt like animals

          Robots have transformed many industries, most notably manufacturing, and have the power to deliver tremendous benefits to society, such as in search and rescue, disaster response, health care and transportation. They are also invaluable tools for scientific exploration in environments inaccessible to humans, from distant planets to deep oceans. A major obstacle to their widespread adoption in more complex environments outside factories is their fragility. Whereas animals can quickly adapt to injuries, current robots cannot 'think outside the box' to find a compensatory behaviour when they are damaged: they are limited to their pre-specified self-sensing abilities, can diagnose only anticipated failure modes, and require a pre-programmed contingency plan for every type of potential damage, an impracticality for complex robots. A promising approach to reducing robot fragility involves having robots learn appropriate behaviours in response to damage, but current techniques are slow even with small, constrained search spaces. Here we introduce an intelligent trial-and-error algorithm that allows robots to adapt to damage in less than two minutes in large search spaces without requiring self-diagnosis or pre-specified contingency plans. Before the robot is deployed, it uses a novel technique to create a detailed map of the space of high-performing behaviours. This map represents the robot's prior knowledge about what behaviours it can perform and their value. When the robot is damaged, it uses this prior knowledge to guide a trial-and-error learning algorithm that conducts intelligent experiments to rapidly discover a behaviour that compensates for the damage. Experiments reveal successful adaptations for a legged robot injured in five different ways, including damaged, broken, and missing legs, and for a robotic arm with joints broken in 14 different ways. This new algorithm will enable more robust, effective, autonomous robots, and may shed light on the principles that animals use to adapt to injury.
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            Combating COVID-19—The role of robotics in managing public health and infectious diseases

            COVID-19 may drive sustained research in robotics to address risks of infectious diseases.
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              A hollow fibre reinforced polymer composite encompassing self-healing and enhanced damage visibility

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                Author and article information

                Journal
                SSMSCY
                Smart and Sustainable Manufacturing Systems
                Smart Sustain. Manuf. Syst.
                ASTM International
                25206478
                December 16 2020
                December 16 2020
                March 01 2020
                November 04 2020
                : 4
                : 3
                : 20200059
                Affiliations
                [1 ]School of Mathematics, Computer Science and Engineering, City University of London, Northampton Square, London EC1V 0HB, UK (Corresponding author), e-mail: Sam.Brooks@city.ac.uk, http://orcid.org/0000-0002-5712-7358
                [2 ]School of Mathematics, Computer Science and Engineering, City University of London, Northampton Square, London EC1V 0HB, UK, https://orcid.org/0000-0001-5491-7437
                Article
                10.1520/SSMS20200059
                bd1581a5-08e3-4196-bb6a-570db77f4b74
                © 2020
                History

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