论文标题
用于神经形态计算的旋转
Spintronics for neuromorphic computing
论文作者
论文摘要
神经形态计算使用受脑启发的原理来设计可以执行具有较高功率效率的计算任务的电路。但是,使用传统电子设备来创建人工神经元和突触的方法目前受这些组件的能量和面积要求的限制。利用电子的磁性和电气性能可以提高能量效率并降低这些电路面积,并且磁性隧道连接尤其引起了神经形态计算元件的关注,因为它们与标准集成电路兼容,并且可以支持多个功能。在这里,我们回顾了用于神经形态计算的自旋设备的开发。我们检查了磁性隧道连接如何用作突触和神经元,以及磁纹理(例如域壁和天空)如何充当神经元。我们还探讨了基于自旋的神经形态计算任务的实现,例如在关联内存中的模式识别,并讨论扩展这些系统时存在的挑战。
Neuromorphic computing uses brain-inspired principles to design circuits that can perform computational tasks with superior power efficiency to conventional computers. Approaches that use traditional electronic devices to create artificial neurons and synapses are, however, currently limited by the energy and area requirements of these components. Spintronic nanodevices, which exploit both the magnetic and electrical properties of electrons, can increase the energy efficiency and decrease the area of these circuits, and magnetic tunnel junctions are of particular interest as neuromorphic computing elements because they are compatible with standard integrated circuits and can support multiple functionalities. Here we review the development of spintronic devices for neuromorphic computing. We examine how magnetic tunnel junctions can serve as synapses and neurons, and how magnetic textures, such as domain walls and skyrmions, can function as neurons. We also explore spintronics-based implementations of neuromorphic computing tasks, such as pattern recognition in an associative memory, and discuss the challenges that exist in scaling up these systems.