Yao Yao, Storme Veronique, Marchal Kathleen, Van de Peer Yves
Department of Plant Systems Biology, VIB, Ghent, Belgium; Department of Plant Biotechnology and Bioinformatics, Ghent University, Ghent, Belgium; Bioinformatics Institute Ghent, Ghent, Belgium.
Department of Plant Systems Biology, VIB , Ghent , Belgium.
PeerJ. 2016 Dec 21;4:e2812. doi: 10.7717/peerj.2812. eCollection 2016.
We developed a bio-inspired robot controller combining an artificial genome with an agent-based control system. The genome encodes a gene regulatory network (GRN) that is switched on by environmental cues and, following the rules of transcriptional regulation, provides output signals to actuators. Whereas the genome represents the full encoding of the transcriptional network, the agent-based system mimics the active regulatory network and signal transduction system also present in naturally occurring biological systems. Using such a design that separates the static from the conditionally active part of the gene regulatory network contributes to a better general adaptive behaviour. Here, we have explored the potential of our platform with respect to the evolution of adaptive behaviour, such as preying when food becomes scarce, in a complex and changing environment and show through simulations of swarm robots in an A-life environment that evolution of collective behaviour likely can be attributed to bio-inspired evolutionary processes acting at different levels, from the gene and the genome to the individual robot and robot population.
我们开发了一种受生物启发的机器人控制器,它将人工基因组与基于智能体的控制系统相结合。基因组编码一个基因调控网络(GRN),该网络由环境线索激活,并遵循转录调控规则,向执行器提供输出信号。虽然基因组代表转录网络的完整编码,但基于智能体的系统模仿了天然生物系统中也存在的活性调控网络和信号转导系统。使用这种将基因调控网络的静态部分与条件活性部分分离的设计有助于实现更好的一般适应性行为。在这里,我们探讨了我们的平台在复杂多变的环境中关于适应性行为进化的潜力,例如在食物稀缺时捕食,并通过在人工生命环境中对群体机器人的模拟表明,集体行为的进化可能归因于从基因和基因组到单个机器人及机器人群体等不同层面上受生物启发的进化过程。