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Indirect training of a spiking neural network for flight control via spike-timing-dependent synaptic plasticity

机译:通过依赖尖峰时间的突触可塑性间接训练尖峰神经网络进行飞行控制

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Recently, spiking neural networks (SNNs) have been shown capable of approximating the dynamics of biological neuronal networks, and of being trainable by biologically-plausible learning mechanisms, such as spike-timing-dependent synaptic plasticity. Numerical simulations also support the possibility that they may possess universal function approximation abilities. However the effectiveness of training algorithms to date is far inferior to those of other artificial neural networks. Moreover, they rely on directly manipulating the SNN weights, which may not be feasible in a number of their potential applications. This paper presents a novel indirect training approach to modulate spike-timing-dependent plasticity (STDP) in an action SNN that serves as a flight controller without directly manipulating its weights. A critic SNN is directly trained with a reward-based Hebbian approach to send spike trains to the action SNN, which in turn controls the aircraft and learns via STDP. The approach is demonstrated by training the action SNN to act as a flight controller for stability augmentation. Its performance and dynamics are analyzed before and after training through numerical simulations and Poincaré maps.
机译:最近,已显示出尖峰神经网络(SNN)能够近似生物神经元网络的动力学,并且可以通过生物学上合理的学习机制(如依赖于尖峰时间的突触可塑性)进行训练。数值模拟还支持它们可能具有通用函数逼近能力的可能性。然而,迄今为止,训练算法的有效性远远不及其他人工神经网络。此外,他们依靠直接操纵SNN权重,这在其许多潜在应用中可能不可行。本文提出了一种新颖的间接训练方法,可在动作SNN中调节依赖于调峰时间的可塑性(STDP),而该动作SNN可以作为飞行控制器而无需直接操纵其权重。评论家SNN直接使用基于奖励的Hebbian方法进行训练,以将尖峰火车发送给动作SNN,后者再控制飞机并通过STDP学习。通过训练动作SNN充当飞行控制器来增强稳定性,可以证明该方法。在训练前后,通过数值模拟和庞加莱图分析其性能和动力学。

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