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Evolutionary Optimisation of Neural Network Models for Fish Collective Behaviours in Mixed Groups of Robots and Zebrafish

机译:机器人和斑马鱼混合群中鱼类集体行为神经网络模型的进化优化

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Animal and robot social interactions are interesting both for ethological studies and robotics. On the one hand, the robots can be tools and models to analyse animal collective behaviours, on the other hand the robots and their artificial intelligence are directly confronted and compared to the natural animal collective intelligence. The first step is to design robots and their behavioural controllers that are capable of socially interact with animals. Designing such behavioural bio-mimetic controllers remains an important challenge as they have to reproduce the animal behaviours and have to be calibrated on experimental data. Most animal collective behavioural models are designed by modellers based on experimental data. This process is long and costly because it is difficult to identify the relevant behavioural features that are then used as a priori knowledge in model building. Here, we want to model the fish individual and collective behaviours in order to develop robot controllers. We explore the use of optimised black-box models based on artificial neural networks (ANN) to model fish behaviours. While the ANN may not be biomimetic but rather bio-inspired, they can be used to link perception to motor responses. These models are designed to be implementable as robot controllers to form mixed-groups of fish and robots, using few a priori knowledge of the fish behaviours. We present a methodology with multilayer perceptron or echo state networks that are optimised through evolutionary algorithms to model accurately the fish individual and collective behaviours in a bounded rectangular arena. We assess the biomimetism of the generated models and compare them to the fish experimental behaviours.
机译:动物和机器人的社交互动对于行为学和机器人学都很有趣。一方面,机器人可以作为分析动物集体行为的工具和模型,另一方面,机器人及其人工智能直接面对并与自然动物集体智能进行比较。第一步是设计能够与动物进行社交互动的机器人及其行为控制器。设计这种行为仿生控制器仍然是一项重要的挑战,因为它们必须重现动物的行为并必须根据实验数据进行校准。大多数动物的集体行为模型是由建模者根据实验数据设计的。该过程耗时长且成本高,因为很难识别出相关的行为特征,然后将这些行为特征用作模型构建中的先验知识。在这里,我们要对鱼类的个体和集体行为进行建模,以开发机器人控制器。我们探索使用基于人工神经网络(ANN)的优化黑盒模型来对鱼类行为进行建模。虽然人工神经网络可能不是仿生的,而是受生物启发的,但是它们可以用来将感知与运动反应联系起来。这些模型被设计为可以用作机器人控制器,以使用鱼类行为的一些先验知识来形成鱼类和机器人的混合组。我们提出了一种具有多层感知器或回声状态网络的方法,该方法通过进化算法进行了优化,可以准确地模拟有限矩形区域中鱼类的个体行为和集体行为。我们评估所生成模型的仿生效果,并将其与鱼类的实验行为进行比较。

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