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EvoDynamic: A Framework for the Evolution of Generally Represented Dynamical Systems and Its Application to Criticality

机译:Devonynamic:一般代表动态系统的演变的框架及其在关键性的应用

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Dynamical systems possess a computational capacity that may be exploited in a reservoir computing paradigm. This paper presents a general representation of dynamical systems which is based on matrix multiplication. That is similar to how an artificial neural network (ANN) is represented in a deep learning library and its computation can be faster because of the optimized matrix operations that such type of libraries have. Initially, we implement the simplest dynamical system, a cellular automaton. The mathematical fundamentals behind an ANN are maintained, but the weights of the connections and the activation function are adjusted to work as an update rule in the context of cellular automata. The advantages of such implementation are its usage on specialized and optimized deep learning libraries, the capabilities to generalize it to other types of networks and the possibility to evolve cellular automata and other dynamical systems in terms of connectivity, update and learning rules. Our implementation of cellular automata constitutes an initial step towards a more general framework for dynamical systems. Our objective is to evolve such systems to optimize their usage in reservoir computing and to model physical computing substrates. Furthermore, we present promising preliminary results toward the evolution of complex behavior and criticality using genetic algorithm in stochastic elementary cellular automata.
机译:动态系统具有可以在储层计算范例中利用的计算能力。本文呈现了基于矩阵乘法的动态系统的一般表示。这类似于人工神经网络(ANN)如何在深度学习库中表示,并且由于这种类型的库具有优化的矩阵操作,其计算可以更快。最初,我们实现了最简单的动态系统,蜂窝自动机。保持在ANN后面的数学基础,但是连接的权重和激活功能被调整为在蜂窝自动机的上下文中作为更新规则。这种实施的优点是它对专业和优化的深度学习库的使用,将其概括为其他类型的网络以及在连接,更新和学习规则方面演化蜂窝自动机和其他动态系统的可能性。我们的蜂窝自动机的实施构成了迈向更普遍的动态系统框架的初步步骤。我们的目标是发展这些系统,以优化其在储层计算和模型物理计算基板中的使用。此外,我们在随机基本蜂窝自动机中使用遗传算法呈现有前途的初步结果朝着复杂行为和临界性的演变。

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