首页> 外文会议>Asia-Pacific Conference on Simulated Evolution and Learning(SEAL'2002); 20021118-22; Singapore(SG) >EVOLUTIONARY MULTI-OBJECTIVE ROBOTICS: EVOLVING A PHYSICALLY SIMULATED QUADRUPED USING THE PDE ALGORITHM
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EVOLUTIONARY MULTI-OBJECTIVE ROBOTICS: EVOLVING A PHYSICALLY SIMULATED QUADRUPED USING THE PDE ALGORITHM

机译:进化的多目标机器人:使用PDE算法进化出物理模拟的四分体

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This chapter investigates the use of a multi-objective approach for evolving artificial neural networks that act as controllers for the legged locomotion of a 3-dimensional, artificial quadruped creature simulated in a physics-based environment. The Pareto-frontier Differential Evolution (PDE) algorithm is used to generate a Pareto optimal set of artificial neural networks that optimizes the conflicting objectives of maximizing locomotion behavior and minimizing neural network complexity. The evolutionary and operational dynamics of controller evolution is analyzed to provide an insight into how the best controller emerges from the artificial evolution and how it generates the emergent walking behavior in the creature. A comparison between Pareto optimal controllers showed that artificial neural networks (ANNs) with varying numbers of hidden units resulted in noticeably different locomotion behaviors. We also found that a much higher level of sensory-motor coordination was present in the best evolved controller. Finally we investigated the effects of environmental, morphological and nervous system changes on the artificial creature's behavior and found that certain changes are detrimental to the creature's locomotion capability.
机译:本章研究了在进化的人工神经网络中使用多目标方法,该方法充当在基于物理的环境中模拟的3维,人工四足动物的有腿运动的控制器。帕累托边界差分进化(PDE)算法用于生成帕累托最优的一组人工神经网络,该神经网络优化了使运动行为最大化和神经网络复杂度最小化的冲突目标。分析了控制器进化的进化和操作动力学,以洞悉最佳控制器如何从人工进化中出现,以及它如何在生物中产生紧急行走行为。帕累托最优控制器之间的比较表明,具有不同数量隐藏单元的人工神经网络(ANN)导致明显不同的运动行为。我们还发现,在最佳进化的控制器中,感觉运动协调性更高。最后,我们研究了环境,形态和神经系统变化对人工生物行为的影响,发现某些变化对生物的运动能力有害。

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