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Resource-Competing Oscillator Network as a Model of Amoeba-Based Neurocomputer

机译:资源竞争振荡器网络作为基于Amoeba的神经计算机的模型

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An amoeboid organism, Physarum, exhibits rich spatiotemporal oscillatory behavior and various computational capabilities. Previously, the authors created a recurrent neurocomputer: incorporating the amoeba as a computing substrate to solve optimization problems. In this paper, considering the amoeba to be a network of oscillators coupled such that they compete for constant amounts of resources, we present a model of the amoeba-based neurocomputer. The model generates a number of oscillation modes and produces not only simple behavior to stabilize a single mode but also complex behavior to spontaneously switch among different modes, which reproduces well the experimentally observed behavior of the amoeba. To explore the significance of the complex behavior, we set a test problem used to compare computational performances of the oscillation modes. The problem is a kind of optimization problem of how to allocate a limited amount of resource to oscillators such that conflicts among them can be minimized. We show that the complex behavior enables to attain a wider variety of solutions to the problem and produces better performances compared with the simple behavior.
机译:作用枯肠生物,幼虫,表现出丰富的时空振荡行为和各种计算能力。此前,作者创造了一种复发性神经计算机:将AmoEBA作为计算基板掺入以解决优化问题。在本文中,考虑到AmoEBA作为振荡器网络,耦合,使得它们竞争恒定的资源,我们提出了基于AmoEba的神经计算机的模型。该模型产生许多振荡模式,不仅产生简单的行为,可以稳定单个模式,而且产生复杂的行为,以自发地切换不同的模式,这易于通过实验观察到的AmoEBA的行为。为了探讨复杂行为的重要性,我们设置了一个用于比较振荡模式的计算性能的测试问题。问题是如何将有限量的资源分配给振荡器的一种优化问题,使得它们之间的冲突可以最小化。我们表明复杂的行为使得能够对问题进行更广泛的解决方案,并与简单的行为相比产生更好的性能。

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