مشخصات پژوهش

صفحه نخست /Spiking ink drop spread ...
عنوان Spiking ink drop spread clustering algorithm and its memristor crossbar conceptual hardware design
نوع پژوهش مقاله چاپ شده
کلیدواژه‌ها Active learning method, Ink drop spread, Memristor, Neuro-fuzzy clustering, Spiking neural network
چکیده In this study, a new clustering algorithm that combines neural networks and fuzzy logic properties is proposed based on spiking neural network and ink drop spread (IDS) concepts. The proposed structure is a single-layer artificial neural network with leaky integrate and fire (LIF) neurons. The structure implements the IDS algorithm as a fuzzy concept. Each training data will result in firing the corresponding input neuron and its neighboring neurons. A synchronous time coding algorithm is used to manage input and output neurons firing time. For an input data, one or several output neurons of the network will fire; confidence degree of the network to outputs is defined as the relative delay of the firing times with respect to the synchronous pulse. A memristor crossbar-based hardware is introduced for implementation of the proposed algorithm as a processing hardware. The simulation result corroborates that the proposed algorithm can be used as a neuro-fuzzy clustering and vector quantization algorithm.
پژوهشگران تُله سوتیکنو (نفر سوم)، وحدت ناظریان (نفر دوم)، ایمان اسماعیلی پایین افراکتی (نفر اول)