Advanced Materials Metrology and Life Sciences Division, INRiM (Istituto Nazionale di Ricerca Metrologica), Strada delle Cacce 91, 10135 Torino, Italy.
Departament d'Enginyeria Electrònica, Universitat Autònoma de Barcelona (UAB), 08193 Barcelona, Spain.
Neural Netw. 2022 Jun;150:137-148. doi: 10.1016/j.neunet.2022.02.022. Epub 2022 Mar 7.
Hardware implementation of neural networks represents a milestone for exploiting the advantages of neuromorphic-type data processing and for making use of the inherent parallelism associated with such structures. In this context, memristive devices with their analogue functionalities are called to be promising building blocks for the hardware realization of artificial neural networks. As an alternative to conventional crossbar architectures where memristive devices are organized with a top-down approach in a grid-like fashion, neuromorphic-type data processing and computing capabilities have been explored in networks realized according to the principle of self-organization similarity found in biological neural networks. Here, we explore structural and functional connectivity of self-organized memristive nanowire (NW) networks within the theoretical framework of graph theory. While graph metrics reveal the link of the graph theoretical approach with geometrical considerations, results show that the interplay between network structure and its capacity to transmit information is related to a phase transition process consistent with percolation theory. Also the concept of memristive distance is introduced to investigate activation patterns and the dynamic evolution of the information flow across the network represented as a memristive graph. In agreement with experimental results, the emergent short-term dynamics reveals the formation of self-selected pathways with enhanced transport characteristics connecting stimulated areas and regulating the trafficking of the information flow. The network capability to process spatio-temporal input signals can be exploited for the implementation of unconventional computing paradigms in memristive graphs that take into advantage the inherent relationship between structure and functionality as in biological systems.
硬件实现神经网络是利用神经形态数据处理的优势和利用与这种结构相关的固有并行性的一个里程碑。在这种情况下,具有模拟功能的忆阻器被认为是硬件实现人工神经网络的有前途的构建块。作为传统交叉架构的替代方案,其中忆阻器以自上而下的方式以网格状方式组织,在根据生物神经网络中发现的自组织相似性原理实现的网络中已经探索了神经形态类型的数据处理和计算能力。在这里,我们在图论的理论框架内探索自组织忆阻器纳米线 (NW) 网络的结构和功能连接。虽然图度量揭示了图论方法与几何考虑之间的联系,但结果表明,网络结构与其传输信息的能力之间的相互作用与符合渗流理论的相变过程有关。还引入了忆阻距离的概念,以研究作为忆阻图表示的网络中信息流动的激活模式和动态演化。与实验结果一致,出现的短期动力学揭示了形成具有增强传输特性的自选择路径,这些路径连接刺激区域并调节信息流的传输。该网络处理时空输入信号的能力可用于在忆阻图中实现非常规计算范例,这些范例利用了结构和功能之间的固有关系,就像在生物系统中一样。