A Survey on Neuromorphic Computing: Models and Hardware

IEEE Circuits and Systems Magazine(2022)

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摘要
The explosion of “big data” applications imposes severe challenges of speed and scalability on traditional computer systems. As the performance of traditional Von Neumann machines is greatly hindered by the increasing performance gap between CPU and memory (“known as the memory wall”), neuromorphic computing systems have gained considerable attention. The biology-plausible computing paradigm carries out computing by emulating the charging/discharging process of neuron and synapse potential. The unique spike domain information encoding enables asynchronous event driven computation and communication, and hence has the potential for very high energy efficiency. This survey reviews computing models and hardware platforms of existing neuromorphic computing systems. Neuron and synapse models are first introduced, followed by the discussion on how they will affect hardware design. Case studies of several representative hardware platforms, including their architecture and software ecosystems, are further presented. Lastly we present several future research directions.
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关键词
traditional computer systems,neuromorphic computing systems,biology-plausible computing paradigm,unique spike domain information encoding,asynchronous event driven computation,computing models,hardware design,big data applications,traditional Von Neumann machines performance,CPU,discharging process,charging process,high energy efficiency,software ecosystems,hardware platforms
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