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Discovering Several Robot Behaviors through Speciation

机译:通过物种发现几种机器人行为

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This contribution studies speciation from the standpoint of evolutionary robotics (ER). A common approach to ER is to design a robot's control system using neuro-evolution during training. An extension to this methodology is presented here, where speciation is incorporated to the evolution process in order to obtain a varied set of solutions for a robotics problem using a single algorithmic run. Although speciation is common in evolutionary computation, it has been less explored in behavior-based robotics. When employed, speciation usually relies on a distance measure that allows different individuals to be compared. The distance measure is normally computed in objective or phenotypic space. However, the speciation process presented here is intended to produce several distinct robot behaviors; hence, speciation is sought in behavioral space. Thence, individual neurocontrollers are described using behavior signatures, which represent the traversed path of the robot within the training environment and are encoded using a character string. With this representation, behavior signatures are compared using the normalized Levenshtein distance metric (N-GLD). Results indicate that speciation in behavioral space does indeed allow the ER system to obtain several navigation strategies for a common experimental setup. This is illustrated by comparing the best individual from each species with those obtained using the Neuro-Evolution of Augmenting Topologies (NEAT) method which speciates neural networks in topological space.
机译:此贡献从进化机器人技术(ER)的角度研究物种形成。 ER的常见方法是在训练过程中使用神经进化来设计机器人的控制系统。此处介绍了此方法的扩展,其中将物种形成纳入了演化过程,以便使用单个算法运行就机器人问题获得一套多样化的解决方案。尽管形态在进化计算中很常见,但在基于行为的机器人技术中却很少进行探索。在使用时,物种形成通常依赖于距离度量,该距离度量允许比较不同的个体。距离量度通常在目标空间或表型空间中计算。但是,此处介绍的形成过程旨在产生几种不同的机器人行为。因此,在行为空间中寻求物种形成。因此,使用行为签名描述各个神经控制器,这些行为签名表示机器人在训练环境中的遍历路径,并使用字符串进行编码。通过这种表示,使用标准化的Levenshtein距离度量(N-GLD)比较行为签名。结果表明,行为空间中的物种确实确实允许ER系统获得用于常见实验设置的几种导航策略。通过将每个物种的最佳个体与使用增强拓扑神经进化(NEAT)方法获得的个体进行比较来说明这一点,该方法指定了拓扑空间中的神经网络。

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