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Design and Implementation of Fuzzy Policy Gradient Gait Learning Method for Walking Pattern Generation of Humanoid Robots

並列摘要


The design and implementation of Fuzzy Policy Gradient Learning (FPGL) method for humanoid robot is proposed in this paper. This paper not only introduces the phases of the humanoid robot walking, but also improves and parameterizes the gait pattern of the robot. FPGL is an integrated machine learning method based on Policy Gradient Reinforcement Learning (PGRL) and fuzzy logic concept in order to improve the efficiency and speed of gait learning computation. The result of the experiment shows that FPGL method can train the gait pattern from 9.26 mm/s walking speed to 162.27 mm/s within an hour. The training data of experiments also shows that this method could improve the efficiency of basic PGRL method up to 13%. The effect of arm movement to reduce the tilt of the trunk is also proved by the experimental results. All the results successfully demonstrate the feasibility and the flexibility of the proposed method.

並列關鍵字

Fuzzy logic control FPGL Humanoid robot PGRL

被引用紀錄


黃彥捷(2017)。大型人形機器人之靜態站立平衡〔碩士論文,淡江大學〕。華藝線上圖書館。https://doi.org/10.6846/TKU.2017.00405
周致學(2017)。大型雙足機器人之外力干擾回復平衡控制〔碩士論文,淡江大學〕。華藝線上圖書館。https://doi.org/10.6846/TKU.2017.00282
王彥翔(2015)。小型人形機器人之多感測器步態平衡系統〔碩士論文,淡江大學〕。華藝線上圖書館。https://doi.org/10.6846/TKU.2015.00600
林怡仲(2015)。基於SOPC之人形機器人的步態行走與馬達回授偵測〔碩士論文,淡江大學〕。華藝線上圖書館。https://doi.org/10.6846/TKU.2015.00359
胡越陽(2015)。基於實務型參數最佳化之人形機器人線上步態訓練系統〔博士論文,淡江大學〕。華藝線上圖書館。https://doi.org/10.6846/TKU.2015.00040

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