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Modeling multiple autonomous robot behaviors and behavior switching with a single reservoir computing network

Eric Aislan Antonelo, Benjamin Schrauwen, Dirk Stroobandt

发表年份
2008
引用次数
15

摘要

Reservoir computing (RC) uses a randomly created Recurrent Neural Network as a reservoir of rich dynamics which projects the input to a high dimensional space. These projections are mapped to the desired output using a linear output layer, which is the only part being trained by standard linear regression. In this work, RC is used for imitation learning of multiple behaviors which are generated by different controllers using an intelligent navigation system for mobile robots previously published in literature. Target seeking and exploration behaviors are conflicting behaviors which are modeled with a single RC network. The switching between the learned behaviors is implemented by an extra input which is able to change the dynamics of the reservoir, and in this way, change the behavior of the system. Experiments show the capabilities of Reservoir Computing for modeling multiple behaviors and behavior switching.

关键词

Reservoir computingComputer scienceImitationMobile robotRobotArtificial neural networkArtificial intelligenceDistributed computingRecurrent neural network

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