Breslin C, O'Lenskie A
Department of Computing Science and Mathematics, University of Stirling, Stirling FK9 4LA, UK.
Philos Trans R Soc Lond B Biol Sci. 2001 Aug 29;356(1412):1249-58. doi: 10.1098/rstb.2001.0904.
Neuromorphic hardware is the term used to describe full custom-designed integrated circuits, or silicon 'chips', that are the product of neuromorphic engineering--a methodology for the synthesis of biologically inspired elements and systems, such as individual neurons, retinae, cochleas, oculomotor systems and central pattern generators. We focus on the implementation of neurons and networks of neurons, designed to illuminate structure-function relationships. Neuromorphic hardware can be constructed with either digital or analogue circuitry or with mixed-signal circuitry--a hybrid of the two. Currently, most examples of this type of hardware are constructed using analogue circuits, in complementary metal-oxide-semiconductor technology. The correspondence between these circuits and neurons, or networks of neurons, can exist at a number of levels. At the lowest level, this correspondence is between membrane ion channels and field-effect transistors. At higher levels, the correspondence is between whole conductances and firing behaviour, and filters and amplifiers, devices found in conventional integrated circuit design. Similarly, neuromorphic engineers can choose to design Hodgkin-Huxley model neurons, or reduced models, such as integrate-and-fire neurons. In addition to the choice of level, there is also choice within the design technique itself; for example, resistive and capacitive properties of the neuronal membrane can be constructed with extrinsic devices, or using the intrinsic properties of the materials from which the transistors themselves are composed. So, silicon neurons can be built, with dendritic, somatic and axonal structures, and endowed with ionic, synaptic and morphological properties. Examples of the structure-function relationships already explored using neuromorphic hardware include correlation detection and direction selectivity. Establishing a database for this hardware is valuable for two reasons: first, independently of neuroscientific motivations, the field of neuromorphic engineering would benefit greatly from a resource in which circuit designs could be stored in a form appropriate for reuse and re-fabrication. Analogue designers would benefit particularly from such a database, as there are no equivalents to the algorithmic design methods available to designers of digital circuits. Second, and more importantly for the purpose of this theme issue, is the possibility of a database of silicon neuron designs replicating specific neuronal types and morphologies. In the future, it may be possible to use an automated process to translate morphometric data directly into circuit design compatible formats. The question that needs to be addressed is: what could a neuromorphic hardware database contribute to the wider neuroscientific community that a conventional database could not? One answer is that neuromorphic hardware is expected to provide analogue sensory-motor systems for interfacing the computational power of symbolic, digital systems with the external, analogue environment. It is also expected to contribute to ongoing work in neural-silicon interfaces and prosthetics. Finally, there is a possibility that the use of evolving circuits, using reconfigurable hardware and genetic algorithms, will create an explosion in the number of designs available to the neuroscience community. All this creates the need for a database to be established, and it would be advantageous to set about this while the field is relatively young. This paper outlines a framework for the construction of a neuromorphic hardware database, for use in the biological exploration of structure-function relationships.
神经形态硬件是用于描述完全定制设计的集成电路或硅“芯片”的术语,这些是神经形态工程的产物——一种用于合成受生物启发的元件和系统的方法,例如单个神经元、视网膜、耳蜗、动眼系统和中枢模式发生器。我们专注于神经元和神经元网络的实现,旨在阐明结构 - 功能关系。神经形态硬件可以用数字电路、模拟电路或混合信号电路构建——两者的混合。目前,这类硬件的大多数实例是使用互补金属氧化物半导体技术的模拟电路构建的。这些电路与神经元或神经元网络之间的对应关系可以存在于多个层面。在最低层面,这种对应关系存在于膜离子通道和场效应晶体管之间。在更高层面,对应关系存在于整体电导与放电行为以及滤波器和放大器之间,这些是传统集成电路设计中常见的器件。同样,神经形态工程师可以选择设计霍奇金 - 赫胥黎模型神经元或简化模型,例如积分发放神经元。除了层面的选择,在设计技术本身也有选择;例如,神经元膜的电阻和电容特性可以用外部器件构建,或者利用晶体管本身所由材料的固有特性构建。因此,可以构建具有树突、胞体和轴突结构,并具备离子、突触和形态学特性的硅神经元。已经使用神经形态硬件探索的结构 - 功能关系的例子包括相关性检测和方向选择性。建立这个硬件的数据库有两个重要原因:首先,独立于神经科学的动机,神经形态工程领域将从一个能够以适合重用和重新制造的形式存储电路设计的资源中受益匪浅。模拟电路设计师将尤其从这样的数据库中受益,因为数字电路设计师可用的算法设计方法不适用于模拟电路设计师。其次,对于本专题而言更重要的是,有可能建立一个复制特定神经元类型和形态的硅神经元设计数据库。未来,可能可以使用自动化过程将形态测量数据直接转换为与电路设计兼容的格式。需要解决的问题是:神经形态硬件数据库能为更广泛的神经科学界做出哪些传统数据库无法做到的贡献?一个答案是,神经形态硬件有望提供模拟感觉运动系统,用于将符号数字系统的计算能力与外部模拟环境连接起来。它也有望为神经 - 硅接口和假肢方面正在进行的工作做出贡献。最后,使用可重构硬件和遗传算法的进化电路有可能使神经科学界可用的设计数量激增。所有这些都使得有必要建立一个数据库,并且在该领域相对年轻的时候着手此事将是有利的。本文概述了一个用于构建神经形态硬件数据库的框架,用于在结构 - 功能关系的生物学探索中使用。