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首页> 外文期刊>Frontiers in Neuroscience >Spatial Properties of STDP in a Self-Learning Spiking Neural Network Enable Controlling a Mobile Robot
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Spatial Properties of STDP in a Self-Learning Spiking Neural Network Enable Controlling a Mobile Robot

机译:STDP在自学尖峰神经网络中的STDP空间属性,控制移动机器人

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Development of spiking neural networks (SNNs) controlling mobile robots is one of the modern challenges in computational neuroscience and artificial intelligence. Such networks, being replicas of biological ones, are expected to have a higher computational potential than traditional artificial neural networks (ANNs). The critical problem is in the design of robust learning algorithms aimed at building a “living computer” based on SNNs. Here, we propose a simple SNN equipped with a Hebbian rule in the form of spike-timing-dependent plasticity (STDP). The SNN implements associative learning by exploiting the spatial properties of STDP. We show that a LEGO robot controlled by the SNN can exhibit classical and operant conditioning. Competition of spike-conducting pathways in the SNN plays a fundamental role in establishing associations of neural connections. It replaces the irrelevant associations by new ones in response to a change in stimuli. Thus, the robot gets the ability to relearn when the environment changes. The proposed SNN and the stimulation protocol can be further enhanced and tested in developing neuronal cultures, and also admit the use of memristive devices for hardware implementation.
机译:尖刺神经网络(SNNS)控制移动机器人的发展是计算神经科学和人工智能的现代挑战之一。这种网络是生物学的网络,预计比传统的人工神经网络(ANNS)具有更高的计算潜力。关键问题是在设计基于SNNS的“生活计算机”的强大学习算法的设计中。在这里,我们提出了一个简单的SNN,其具有峰时依赖性塑性(STDP)形式的Hebbian规则。 SNN通过利用STDP的空间属性实现关联学习。我们表明,由SNN​​控制的乐高机器人可以表现出经典和操作的调理。 SNN中尖峰导电途径的竞争在建立神经连接的协会方面发挥着重要作用。它通过新的刺激改变来取代新的无关关联。因此,机器人在环境变化时获得了relearn的能力。在开发神经元培养方面可以进一步增强和测试所提出的SNN和刺激方案,并承认使用忆阻器件进行硬件实现。

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