2010
DOI: 10.2478/v10006-010-0005-7
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A biologically inspired approach to feasible gait learning for a hexapod robot

Abstract: The objective of this paper is to develop feasible gait patterns that could be used to control a real hexapod walking robot. These gaits should enable the fastest movement that is possible with the given robot's mechanics and drives on a flat terrain. Biological inspirations are commonly used in the design of walking robots and their control algorithms. However, legged robots differ significantly from their biological counterparts. Hence we believe that gait patterns should be learned using the robot or its si… Show more

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Cited by 37 publications
(22 citation statements)
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“…Genetic Algorithms (GAs), which mimic the evolutionary process in nature, have shown many successful applications to many fields, for example, to solve optimization problems (Akpinar and Bayhan, 2010;Xing et al, 2008), control problems (Witkowska et al, 2007;Belter and Skrzypczyński, 2010), operational problems (Aytug et al, 2003;Hart et al, 2005;Kashan et al, 2008;Wang et al, 1999) and transportation problems (Dridi and Kacem, 2004), etc.…”
Section: Proposed Genetic Algorithm and A Dynamic Programming Algorithmmentioning
confidence: 99%
“…Genetic Algorithms (GAs), which mimic the evolutionary process in nature, have shown many successful applications to many fields, for example, to solve optimization problems (Akpinar and Bayhan, 2010;Xing et al, 2008), control problems (Witkowska et al, 2007;Belter and Skrzypczyński, 2010), operational problems (Aytug et al, 2003;Hart et al, 2005;Kashan et al, 2008;Wang et al, 1999) and transportation problems (Dridi and Kacem, 2004), etc.…”
Section: Proposed Genetic Algorithm and A Dynamic Programming Algorithmmentioning
confidence: 99%
“…EAs may be successfully combined with neural networks (Styrcz et al, 2011), reinforcement learning (Krawiec et al, 2011), ensemble machine learning methods (Troć and Unold, 2010) or heuristics which reduce the search space (Belter and Skrzypczyński, 2010). Hybrid approaches may also be utilised at various stages of EAs, including crossover (Jóźwiak and Postula, 2002).…”
Section: Crossover Operatorsmentioning
confidence: 99%
“…We applied the simulator to a method which allows to evolutionary optimize the gait of a six-legged robot 1 . The simulator is used to test various solutions (trajectories of the robot) found by the algorithm.…”
Section: Evolutionary Gait Optimizationmentioning
confidence: 99%
“…However, increasing the integration time step decreases the accuracy of the simulation and can even render the simulation unstable. To solve the stability problem and preserve accuracy of the simulation, we first optimize for the parameters of the simulation, and moreover, for the physical parameters of the robot 1 . As a result, the parameters of the simulated world and robot model differ from the real parameters.…”
Section: Evolutionary Gait Optimizationmentioning
confidence: 99%