Murray A F, Woodburn R
Department of Electrical Engineering, University of Edinburgh, Scotland, UK.m afm,
Int J Neural Syst. 1997 Oct-Dec;8(5-6):559-79. doi: 10.1142/s0129065797000525.
In recent years, the efforts of analogue, neural-hardware designers have shifted from generic analogue neurocomputers to "niche" markets in sensor fusion and robotics, and we explain why this is so. We describe the main differences between digital and analogue computation, and consider the advantages of pure analogue and pulsed methods of design. We then investigate some important issues in analogue design of neural machines, namely weight storage (volatile and non-volatile), on-chip learning, and arithmetic accuracy and its relationship to noise. Finally, we outline those areas in which analogue techniques are likely to prove most useful, and speculate as to their likely long-term utility.
近年来,模拟神经硬件设计者的工作重点已从通用模拟神经计算机转向传感器融合和机器人领域的“小众”市场,我们将对此予以解释。我们描述了数字计算和模拟计算的主要区别,并探讨了纯模拟设计方法和脉冲设计方法的优势。接着,我们研究了神经机器模拟设计中的一些重要问题,即权重存储(易失性和非易失性)、片上学习、算术精度及其与噪声的关系。最后,我们概述了模拟技术可能最有用的领域,并推测了其可能的长期效用。