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Scaling-up Behaviours in EvoTanks: Applying Subsumption Principles to Artificial Neural Networks

机译:Evotanks中的扩展行为:将资料原则应用于人工神经网络

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Applying evolution to generate simple agent behaviours has become a successful and heavily used practice. However the notion of scaling up behaviour into something more noteworthy and complex is far from elementary. In this paper we propose a method of combining neuroevolution practices with the subsumption paradigm; in which we generate Artificial Neural Network (ANN) layers ordered in a hierarchy such that high-level controllers can override lower behaviours. To explore this proposal we apply our controllers to the 'EvoTanks' domain; a small, dynamic, adversarial environment. Our results show that once layers are evolved we can generate competent and capable results that can deal with hierarchies of multiple layers. Further analysis of results provides interesting insights into design decisions for such controllers, particularly when compared to the original suggestions for the subsumption paradigm.
机译:应用进化以产生简单的代理行为已成为一种成功和严重的练习。然而,将行为扩展到更值得注意和复杂的行为的概念远非小学。在本文中,我们提出了一种将神经发展措施与集中资期范式相结合的方法;其中我们生成以层次结构下令的人工神经网络(ANN)层,使得高级控制器可以覆盖低行为。探讨此提案,我们将控制器应用于“Evotanks”域;小,动态,对抗的环境。我们的结果表明,一旦层次进化,我们就可以生成能够处理多层的层次结构的能力和能力的结果。进一步分析结果为这些控制人员的设计决策提供了有趣的见解,特别是与上传范式的原始建议相比。

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