Event-based PID controller fully realized in neuromorphic hardware - a one DoF study.

IROS(2020)

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摘要
Spiking Neuronal Networks (SNNs) realized in neuromorphic hardware lead to low-power and low-latency neuronal computing architectures. Neuromorphic computing systems are most efficient when all of perception, decision making, and motor control are seamlessly integrated into a single neuronal architecture that can be realized on the neuromorphic hardware. Many neuronal network architectures address the perception tasks, while work on neuronal motor controllers is scarce. Here, we present an improved implementation of a neuromorphic PID controller. The controller was realized on Intel’s neuromorphic research chip Loihi and its performance tested on a drone, constrained to rotate on a single axis. The SNN controller is built using neuronal populations, in which a single spike carries information about sensed and control signals. Neuronal arrays perform computation on such sparse representations to calculate the proportional, derivative, and integral terms. The SNN PID controller is compared to a PID controller, implemented in software, and achieves a comparable performance, paving the way to a fully neuromorphic system in which perception, planning, and control are realized in an on-chip SNN.
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关键词
event-based PID controller,neuromorphic computing systems,decision making,neuronal network architectures,perception tasks,neuronal motor controllers,neuromorphic PID controller,neuronal populations,Neuronal arrays,proportional terms,integral terms,SNN PID controller,derivative terms,Intels neuromorphic research chip Loihi,neuromorphic hardware,one DoF study,spiking neural networks,drone,sparse representations,on-chip SNN
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