Review-Reservoir Computing Trend on Software and Hardware Implementation

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Yongbo Liao
Yongbo Liao
α University of Electronic Science and Technology of China University of Electronic Science and Technology of China

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Review-Reservoir Computing Trend on Software and Hardware Implementation

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Abstract

Since Reservoir Computing proposed, it has progressed in two directions, software and hardware implementation, both sharing the same goal of better performance. While applying on the former, the chosen task is increasingly complex and practical, even blending noise to close to physical situation. Meanwhile, the latter, evaluated by benchmark tasks, is proposed as a compensation of software implementation, which will be utilized for complex and practical tasks in the future when it matures. Here will give a brief introduction of conception, methodology, benchmark tasks, developments and some applications of RC.

References

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Funding

No external funding was declared for this work.

Conflict of Interest

The authors declare no conflict of interest.

Ethical Approval

No ethics committee approval was required for this article type.

Data Availability

Not applicable for this article.

How to Cite This Article

Yongbo Liao. 2017. \u201cReview-Reservoir Computing Trend on Software and Hardware Implementation\u201d. Global Journal of Research in Engineering - F: Electrical & Electronic GJRE-F Volume 17 (GJRE Volume 17 Issue F5): .

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Journal Specifications

Crossref Journal DOI 10.17406/gjre

Print ISSN 0975-5861

e-ISSN 2249-4596

Keywords
Classification
GJRE-F Classification: FOR Code: 290903
Version of record

v1.2

Issue date

October 2, 2017

Language
en
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Since Reservoir Computing proposed, it has progressed in two directions, software and hardware implementation, both sharing the same goal of better performance. While applying on the former, the chosen task is increasingly complex and practical, even blending noise to close to physical situation. Meanwhile, the latter, evaluated by benchmark tasks, is proposed as a compensation of software implementation, which will be utilized for complex and practical tasks in the future when it matures. Here will give a brief introduction of conception, methodology, benchmark tasks, developments and some applications of RC.

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Review-Reservoir Computing Trend on Software and Hardware Implementation

Yongbo Liao
Yongbo Liao University of Electronic Science and Technology of China

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