Reservoir Transfer On Analog Neuromorphic Hardware

2019 9TH INTERNATIONAL IEEE/EMBS CONFERENCE ON NEURAL ENGINEERING (NER)(2019)

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摘要
Analog, unclocked, spiking neuromorphic microchips open new perspectives for implantable or wearable biosensors and biocontrollers, due to their low energy consumption and heat dissipation. However, the challenges from a computational point of view are formidable. Here we outline our solutions to realize the reservoir computing paradigm on such hardware and address the combined problems of low bit resolution, device mismatch, approximate neuron models, and timescale mismatch. The main contribution is a computational scheme, called Reservoir Transfer, which enables us to transfer the dynamical properties of a well-performing neural network which has been optimized on a digital computer, onto neuromorphic hardware that displays the abovementioned problematic properties. Here we present a case study of implementing an ECG heartbeat abnormality detector to showcase the proposed method.
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关键词
analog neuromorphic hardware,wearable biosensors,biocontrollers,low energy consumption,heat dissipation,reservoir computing paradigm,combined problems,low bit resolution,device mismatch,approximate neuron models,timescale mismatch,computational scheme,dynamical properties,digital computer,abovementioned problematic properties,ECG heartbeat abnormality detector,implantable biosensors,spiking neuromorphic microchips,reservoir transfer
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