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Adaptive Filter Model of Cerebellum for Biological Muscle Control With Spike Train Inputs

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Adaptive Filter Model of Cerebellum for Biological Muscle Control With Spike Train Inputs. / Wilson, Emma.
In: Neural Computation, Vol. 35, No. 12, 12, 07.11.2023, p. 1938-1969.

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Wilson E. Adaptive Filter Model of Cerebellum for Biological Muscle Control With Spike Train Inputs. Neural Computation. 2023 Nov 7;35(12):1938-1969. 12. Epub 2023 Oct 16. doi: 10.1162/neco_a_01617

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Wilson, Emma. / Adaptive Filter Model of Cerebellum for Biological Muscle Control With Spike Train Inputs. In: Neural Computation. 2023 ; Vol. 35, No. 12. pp. 1938-1969.

Bibtex

@article{5aa904c5847e43bb9477925238f04ff4,
title = "Adaptive Filter Model of Cerebellum for Biological Muscle Control With Spike Train Inputs",
abstract = "Prior applications of the cerebellar adaptive filter model have included a range of tasks within simulated and robotic systems. However, this has been limited to systems driven by continuous signals. Here, the adaptive filter model of the cerebellum is applied to the control of a system driven by spiking inputs by considering the problem of controlling muscle force. The performance of the standard adaptive filter algorithm is compared with the algorithm with a modified learning rule that minimizes inputs and a simple proportional-integral-derivative (PID) controller. Control performance is evaluated in terms of the number of spikes, the accuracy of spike input locations, and the accuracy of muscle force output. Results show that the cerebellar adaptive filter model can be applied without change to the control of systems driven by spiking inputs. The cerebellar algorithm results in good agreement between input spikes and force outputs and significantly improves on a PID controller. Input minimization can be used to reduce the number of spike inputs, but at the expense of a decrease in accuracy of spike input location and force output. This work extends the applications of the cerebellar algorithm and demonstrates the potential of the adaptive filter model to be used to improve functional electrical stimulation muscle control.",
author = "Emma Wilson",
year = "2023",
month = nov,
day = "7",
doi = "10.1162/neco_a_01617",
language = "English",
volume = "35",
pages = "1938--1969",
journal = "Neural Computation",
issn = "0899-7667",
publisher = "MIT Press Journals",
number = "12",

}

RIS

TY - JOUR

T1 - Adaptive Filter Model of Cerebellum for Biological Muscle Control With Spike Train Inputs

AU - Wilson, Emma

PY - 2023/11/7

Y1 - 2023/11/7

N2 - Prior applications of the cerebellar adaptive filter model have included a range of tasks within simulated and robotic systems. However, this has been limited to systems driven by continuous signals. Here, the adaptive filter model of the cerebellum is applied to the control of a system driven by spiking inputs by considering the problem of controlling muscle force. The performance of the standard adaptive filter algorithm is compared with the algorithm with a modified learning rule that minimizes inputs and a simple proportional-integral-derivative (PID) controller. Control performance is evaluated in terms of the number of spikes, the accuracy of spike input locations, and the accuracy of muscle force output. Results show that the cerebellar adaptive filter model can be applied without change to the control of systems driven by spiking inputs. The cerebellar algorithm results in good agreement between input spikes and force outputs and significantly improves on a PID controller. Input minimization can be used to reduce the number of spike inputs, but at the expense of a decrease in accuracy of spike input location and force output. This work extends the applications of the cerebellar algorithm and demonstrates the potential of the adaptive filter model to be used to improve functional electrical stimulation muscle control.

AB - Prior applications of the cerebellar adaptive filter model have included a range of tasks within simulated and robotic systems. However, this has been limited to systems driven by continuous signals. Here, the adaptive filter model of the cerebellum is applied to the control of a system driven by spiking inputs by considering the problem of controlling muscle force. The performance of the standard adaptive filter algorithm is compared with the algorithm with a modified learning rule that minimizes inputs and a simple proportional-integral-derivative (PID) controller. Control performance is evaluated in terms of the number of spikes, the accuracy of spike input locations, and the accuracy of muscle force output. Results show that the cerebellar adaptive filter model can be applied without change to the control of systems driven by spiking inputs. The cerebellar algorithm results in good agreement between input spikes and force outputs and significantly improves on a PID controller. Input minimization can be used to reduce the number of spike inputs, but at the expense of a decrease in accuracy of spike input location and force output. This work extends the applications of the cerebellar algorithm and demonstrates the potential of the adaptive filter model to be used to improve functional electrical stimulation muscle control.

U2 - 10.1162/neco_a_01617

DO - 10.1162/neco_a_01617

M3 - Journal article

C2 - 37844325

VL - 35

SP - 1938

EP - 1969

JO - Neural Computation

JF - Neural Computation

SN - 0899-7667

IS - 12

M1 - 12

ER -