V. Azimirad, Saleh Valizadeh Sotubadi, F. Janabi Sharifi
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引用次数: 2
摘要
本文将一种基于奖励的spike- time -dependent塑性方法用于非完整机器人获得目标吸引任务的学习过程。开发了一个特定的拟合函数来衡量不同多巴胺乘法系数对尖峰神经网络训练过程的影响,并确定网络的最佳工作频率。遗传算法用于这两种方法。根据拟合函数的取值和总训练时间选择多个系数,检测机器人的性能。此外,在训练阶段完成后,将不同的操作频率与不同的神经区域相关联,以增强网络的功能。将训练好的网络实现在移动机器人上,以评估机器人的性能。
Optimizing the parameters of spiking neural networks for mobile robot implementation
In this paper, a reward-based spike-timing-dependent plasticity method is used for the learning process of non-holonomic robots to acquire the task of target attraction. A specific fit function is developed to measure the effects of different dopamine multiplication coefficients on the training process of the spiking neural networks as well as determining the optimal operating frequencies for the network. Genetic Algorithms are used for both approaches. Several coefficients are chosen and the performance of the robot is detected based on the value of the developed fit function and the total training time. Moreover, different operational frequencies are associated with different neural regions to enhance the functionality of the network after the training phase is complete. The trained network is implemented on a mobile robot to evaluate robot performance.