dc.contributor.author |
Stewart, TC
|
|
dc.contributor.author |
DeWolf, T
|
|
dc.contributor.author |
Kleinhans, A
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|
dc.contributor.author |
Eliasmith, C
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|
dc.date.accessioned |
2015-12-18T12:41:10Z |
|
dc.date.available |
2015-12-18T12:41:10Z |
|
dc.date.issued |
2015-11 |
|
dc.identifier.citation |
Stewart, T.C, DeWolf, T, Kleinhans, A and Eliasmith, C. 2015. Closed-loop neuromorphic benchmarks. Frontiers in Neuroscience, vol. 9, pp 1-22 |
en_US |
dc.identifier.issn |
1662-453X |
|
dc.identifier.uri |
http://journal.frontiersin.org/article/10.3389/fnins.2015.00464/abstract
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|
dc.identifier.uri |
http://hdl.handle.net/10204/8322
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|
dc.description |
Copyright: 2015 Frontiers. |
en_US |
dc.description.abstract |
Evaluating the effectiveness and performance of neuromorphic hardware is difficult. It is even more difficult when the task of interest is a closed-loop task; that is, a task where the output from the neuromorphic hardware affects some environment, which then in turn affects the hardware's future input. However, closed-loop situations are one of the primary potential uses of neuromorphic hardware. To address this, we present a methodology for generating closed-loop benchmarks that makes use of a hybrid of real physical embodiment and a type of "minimal" simulation. Minimal simulation has been shown to lead to robust real-world performance, while still maintaining the practical advantages of simulation, such as making it easy for the same benchmark to be used by many researchers. This method is flexible enough to allow researchers to explicitly modify the benchmarks to identify specific task domains where particular hardware
excels. To demonstrate the method, we present a set of novel benchmarks that focus on motor control for an arbitrary system with unknown external forces. Using these benchmarks, we show that an error-driven learning rule can consistently improve motor control performance across a randomly generated family of closed-loop simulations, even when there are up to 15 interacting joints to be controlled. |
en_US |
dc.language.iso |
en |
en_US |
dc.publisher |
Frontiers |
en_US |
dc.relation.ispartofseries |
Workflow;15952 |
|
dc.subject |
Neuromorphic hardware |
en_US |
dc.subject |
Closed-loop task |
en_US |
dc.subject |
Arbitrary system |
en_US |
dc.title |
Closed-loop neuromorphic benchmarks |
en_US |
dc.type |
Article |
en_US |
dc.identifier.apacitation |
Stewart, T., DeWolf, T., Kleinhans, A., & Eliasmith, C. (2015). Closed-loop neuromorphic benchmarks. http://hdl.handle.net/10204/8322 |
en_ZA |
dc.identifier.chicagocitation |
Stewart, TC, T DeWolf, A Kleinhans, and C Eliasmith "Closed-loop neuromorphic benchmarks." (2015) http://hdl.handle.net/10204/8322 |
en_ZA |
dc.identifier.vancouvercitation |
Stewart T, DeWolf T, Kleinhans A, Eliasmith C. Closed-loop neuromorphic benchmarks. 2015; http://hdl.handle.net/10204/8322. |
en_ZA |
dc.identifier.ris |
TY - Article
AU - Stewart, TC
AU - DeWolf, T
AU - Kleinhans, A
AU - Eliasmith, C
AB - Evaluating the effectiveness and performance of neuromorphic hardware is difficult. It is even more difficult when the task of interest is a closed-loop task; that is, a task where the output from the neuromorphic hardware affects some environment, which then in turn affects the hardware's future input. However, closed-loop situations are one of the primary potential uses of neuromorphic hardware. To address this, we present a methodology for generating closed-loop benchmarks that makes use of a hybrid of real physical embodiment and a type of "minimal" simulation. Minimal simulation has been shown to lead to robust real-world performance, while still maintaining the practical advantages of simulation, such as making it easy for the same benchmark to be used by many researchers. This method is flexible enough to allow researchers to explicitly modify the benchmarks to identify specific task domains where particular hardware
excels. To demonstrate the method, we present a set of novel benchmarks that focus on motor control for an arbitrary system with unknown external forces. Using these benchmarks, we show that an error-driven learning rule can consistently improve motor control performance across a randomly generated family of closed-loop simulations, even when there are up to 15 interacting joints to be controlled.
DA - 2015-11
DB - ResearchSpace
DP - CSIR
KW - Neuromorphic hardware
KW - Closed-loop task
KW - Arbitrary system
LK - https://researchspace.csir.co.za
PY - 2015
SM - 1662-453X
T1 - Closed-loop neuromorphic benchmarks
TI - Closed-loop neuromorphic benchmarks
UR - http://hdl.handle.net/10204/8322
ER -
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en_ZA |