Srinivasa Narayan, Stepp Nigel D, Cruz-Albrecht Jose
Information and System Sciences Lab, Center for Neural and Emergent Systems, HRL Laboratories LLC Malibu, CA, USA.
Microelectronics Laboratory, HRL Laboratories LLC Malibu, CA, USA.
Front Neurosci. 2015 Dec 1;9:449. doi: 10.3389/fnins.2015.00449. eCollection 2015.
Neuromorphic hardware are designed by drawing inspiration from biology to overcome limitations of current computer architectures while forging the development of a new class of autonomous systems that can exhibit adaptive behaviors. Several designs in the recent past are capable of emulating large scale networks but avoid complexity in network dynamics by minimizing the number of dynamic variables that are supported and tunable in hardware. We believe that this is due to the lack of a clear understanding of how to design self-tuning complex systems. It has been widely demonstrated that criticality appears to be the default state of the brain and manifests in the form of spontaneous scale-invariant cascades of neural activity. Experiment, theory and recent models have shown that neuronal networks at criticality demonstrate optimal information transfer, learning and information processing capabilities that affect behavior. In this perspective article, we argue that understanding how large scale neuromorphic electronics can be designed to enable emergent adaptive behavior will require an understanding of how networks emulated by such hardware can self-tune local parameters to maintain criticality as a set-point. We believe that such capability will enable the design of truly scalable intelligent systems using neuromorphic hardware that embrace complexity in network dynamics rather than avoiding it.
神经形态硬件的设计灵感源自生物学,旨在克服当前计算机架构的局限性,同时推动一类能够展现自适应行为的新型自主系统的发展。近期的一些设计能够模拟大规模网络,但通过最小化硬件中支持和可调的动态变量数量来避免网络动态的复杂性。我们认为,这是由于缺乏对如何设计自调谐复杂系统的清晰理解。大量研究表明,临界状态似乎是大脑的默认状态,并以神经活动的自发尺度不变级联形式表现出来。实验、理论和近期模型表明,处于临界状态的神经网络展现出影响行为的最佳信息传递、学习和信息处理能力。在这篇观点文章中,我们认为,要理解如何设计大规模神经形态电子器件以实现涌现的自适应行为,就需要理解此类硬件模拟的网络如何自调谐局部参数以将临界状态维持为设定点。我们相信,这种能力将使使用神经形态硬件设计真正可扩展的智能系统成为可能,这类系统能够接受网络动态中的复杂性而非回避它。