MISC

2019年

フラクタルリザーバコンピューティングを用いた4脚ロボットの階層強化学習

ロボティクス・メカトロニクス講演会講演概要集
  • 杉野 峻生
  • ,
  • 小林 泰介
  • ,
  • 杉本 謙二

2019
0
開始ページ
1A1
終了ページ
M02
記述言語
日本語
掲載種別
DOI
10.1299/jsmermd.2019.1A1-M02
出版者・発行元
一般社団法人 日本機械学会

<p>Catastrophic forgetting is one of the most challenging problems of (deep) neural networks, but autonomous robots, which would acquire many tasks in real life sequentially, require to resolve or mitigate it. Modular networks are expected to mitigate this problem since it can exploit different modules for respective tasks. However, this approach would waste the learnable parameters due to duplication of common tasks in given tasks. Furthermore, if given tasks, e.g., locomotion control of legged robots, are with high state-action spaces and are difficult to be learned, exploration is required for a long time, which causes the catastrophic forgetting. Hence, this paper proposes the way to divide the locomotion control tasks modularly and hierarchically. To this end, fractality of fractal reservoir computing is utilized so as to transfer the learned knowledge of one leg control to the other legs control.</p>

リンク情報
DOI
https://doi.org/10.1299/jsmermd.2019.1A1-M02
J-GLOBAL
https://jglobal.jst.go.jp/detail?JGLOBAL_ID=201902280698268688
CiNii Research
https://cir.nii.ac.jp/crid/1390002184856384256?lang=ja
ID情報
  • DOI : 10.1299/jsmermd.2019.1A1-M02
  • eISSN : 2424-3124
  • J-Global ID : 201902280698268688
  • CiNii Articles ID : 130007774216
  • CiNii Research ID : 1390002184856384256

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