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Spiking neuro-fuzzy clustering system and its memristor crossbar based implementation

机译:尖峰神经模糊聚类系统及其基于忆阻器交叉开关的实现

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This study proposes a spiking neuro-fuzzy clustering system based on a novel spike encoding scheme and a compatible learning algorithm. In this system, we utilize an analog to binary encoding scheme that properly maps the concept of "distance" in multi-dimensional analog spaces to the concept of "dissimilarity" of binary bits in the equivalent binary spaces. When this scheme is combined with a novel binary to spike encoding scheme and a proper learning algorithm is applied, a powerful clustering algorithm is produced. This algorithm creates flexible fuzzy clusters in its analog input space and modifies their shapes to different convex shapes during the learning process. This system has plausible biological support due to its spike-based learning mechanism, its Quasi Spike Time Dependent Plasticity learning policy and its brain-like fuzzy clustering performance. Moreover, this neuro-fuzzy system is fully implementable on the hybrid memristor-crossbar/CMOS platform. The resultant circuit was simulated on one clustering task carried out in the binary input space on the Simon Lucas handwritten dataset and another clustering task carried out in the analog input space on Fisher's Iris standard dataset. The results show that it attained a higher clustering rate in comparison with other algorithms such as the Self Organizing Map, K-mean and the Spiking Radial Basis Function. The circuit was also successfully simulated on an image segmentation task and some clustering tasks performed in noisy spaces with various cluster sizes. Furthermore, the circuit variability analysis shows that device and signal variations up to 20% had no significant impact on the circuit's clustering performance, so the system is sufficiently immune to different variations due to its fuzzy nature.
机译:本研究提出了一种基于新型尖峰编码方案和兼容学习算法的尖峰神经模糊聚类系统。在此系统中,我们使用了一种模拟到二进制编码方案,该方案将多维模拟空间中的“距离”概念正确映射到等效二进制空间中二进制位的“相异性”概念。当该方案与新颖的二进制加尖峰编码方案结合并应用适当的学习算法时,将产生强大的聚类算法。该算法在其模拟输入空间中创建了灵活的模糊聚类,并在学习过程中将其形状修改为不同的凸形。该系统由于其基于峰值的学习机制,其准峰值时间相关可塑性学习策略以及类似于大脑的模糊聚类性能,因此具有合理的生物学支持。此外,这种神经模糊系统可在混合忆阻器/交叉开关/ CMOS平台上完全实现。在Simon Lucas手写数据集的二进制输入空间中执行的一个聚类任务以及在Fisher's Iris标准数据集的模拟输入空间中执行的另一个聚类任务上,对生成的电路进行了仿真。结果表明,与自组织图,K均值和尖峰径向基函数等其他算法相比,该算法具有更高的聚类率。该电路还成功进行了图像分割任务和在具有各种簇大小的嘈杂空间中执行的一些聚类任务的仿真。此外,电路可变性分析表明,高达20%的器件和信号变化对电路的群集性能没有显着影响,因此,由于其模糊性质,系统足以抵抗各种变化。

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