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Energy-Efficient SVM Learning Control System for Biped Walking Robots

Liyang Wang, Zhi Liu, C. L. Philip Chen, Yun Zhang, Sukhan Lee, Xin Chen

Year
2013
Citations
45

Abstract

An energy-efficient support vector machine (EE-SVM) learning control system considering the energy cost of each training sample of biped dynamic is proposed to realize energy-efficient biped walking. Energy costs of the biped walking samples are calculated. Then the samples are weighed with the inverses of the energy costs. An EE-SVM objective function with energy-related slack variables is proposed, which follows the principle that the sample with the lowest energy consumption is treated as the most important one in the training. That means the samples with lower energy consumption contribute more to the EE-SVM regression function learning, which highly increases the energy efficiency of the biped walking. Simulation results demonstrate the effectiveness of the proposed method.

Keywords

Support vector machineEnergy consumptionEnergy (signal processing)Computer scienceSample (material)Function (biology)Biped robotRobotEfficient energy useControl (management)

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