2017
DOI: 10.3389/fnbot.2017.00016
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Morphological Properties of Mass–Spring Networks for Optimal Locomotion Learning

Abstract: Robots have proven very useful in automating industrial processes. Their rigid components and powerful actuators, however, render them unsafe or unfit to work in normal human environments such as schools or hospitals. Robots made of compliant, softer materials may offer a valid alternative. Yet, the dynamics of these compliant robots are much more complicated compared to normal rigid robots of which all components can be accurately controlled. It is often claimed that, by using the concept of morphological com… Show more

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Cited by 36 publications
(28 citation statements)
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“…(Kötter, 2012) and using enhanced learning rules (Roy et al, 2013). LSMs have been used for a variety of applications including robot control (Urbain et al, 2017), sequence generation (Panda and Roy, 2017), decoding actual brain activity (Nikolić et al, 2009), action recognition (Panda and Srinivasa, 2018), speech recognition (Maass et al, 2002; Verstraeten et al, 2005; Goodman and Ventura, 2006; Zhang et al, 2015; Wu et al, 2018; Zhang and Li, 2019), and image recognition (Grzyb et al, 2009; Wang and Li, 2016; Srinivasan et al, 2018; Zhang and Li, 2019).…”
Section: Introductionmentioning
confidence: 99%
“…(Kötter, 2012) and using enhanced learning rules (Roy et al, 2013). LSMs have been used for a variety of applications including robot control (Urbain et al, 2017), sequence generation (Panda and Roy, 2017), decoding actual brain activity (Nikolić et al, 2009), action recognition (Panda and Srinivasa, 2018), speech recognition (Maass et al, 2002; Verstraeten et al, 2005; Goodman and Ventura, 2006; Zhang et al, 2015; Wu et al, 2018; Zhang and Li, 2019), and image recognition (Grzyb et al, 2009; Wang and Li, 2016; Srinivasan et al, 2018; Zhang and Li, 2019).…”
Section: Introductionmentioning
confidence: 99%
“…The other CPG parameters are obtained with a CMA-ES optimization with the optimized simulation model and where the robot speed is used as a score. This optimization has been successfully conducted in previous research [20] and helps to explore the motor space to find the most stable gaits to locomote along D R A F T (a) Optimization. The signal is closer to the real robot after optimization.…”
Section: Validation With Open-loop Gaitsmentioning
confidence: 99%
“…In addition to Hamiltonian optimization and simulations of oscillators behavior, various nonlinear dynamical systems, including electronic, photonic, spintronic, mechanical, and biological systems, have been recently employed as potential reservoirs for reservoir computing (RC) (see ref. [] and references therein).…”
Section: Introductionmentioning
confidence: 99%