Neuromimetic Linear Systems -- Resilience and Learning
Zexin Sun, John Baillieul

TL;DR
This paper introduces neuromimetic linear systems with resilience to output channel dropouts, proposes a resilient observer and separation principle, and explores neuro-inspired quantization and learning algorithms for control signal encoding.
Contribution
It presents a resilient observer, a resilient separation principle, and a principled quantization method for neuromimetic linear systems, integrating machine learning approaches for optimization.
Findings
Resilient observer tolerates output dropouts.
Resilient separation principle established.
Machine learning methods aid in quantization optimization.
Abstract
Building on our recent work on {\em neuromimetic control theory}, new results on resilience and neuro-inspired quantization are reported. The term neuromimetic refers to the models having features that are characteristic of the neurobiology of biological motor control. As in previous work, the focus is on what we call {\em overcomplete} linear systems that are characterized by larger numbers of input and output channels than the dimensions of the state. The specific contributions of the present paper include a proposed {\em resilient} observer whose operation tolerates output channel intermittency and even complete dropouts. Tying these ideas together with our previous work on resilient stability, a resilient separation principle is established. We also propose a {\em principled quantization} in which control signals are encoded as simple discrete inputs which act collectively through…
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Taxonomy
TopicsNeural dynamics and brain function · Gene Regulatory Network Analysis · Neuroscience and Neuropharmacology Research
MethodsQ-Learning
