Electronic Science and Technology ›› 2023, Vol. 36 ›› Issue (12): 16-24.doi: 10.16180/j.cnki.issn1007-7820.2023.12.003
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SUO Fangfei1,JI Yunfeng2
Received:
2022-06-29
Online:
2023-12-15
Published:
2023-12-05
Supported by:
CLC Number:
SUO Fangfei,JI Yunfeng. Review of the Research on the Core Algorithm of Table Tennis Robot[J].Electronic Science and Technology, 2023, 36(12): 16-24.
Table 4.
Summary of the return strategy method based on learning algorithm"
作者 | 学会定点回 球的效率 | 方法 | 性能评价 |
---|---|---|---|
文献[ | 超过20 000 回合 | 基于蒙特卡洛的 强化学习算法(仿 真环境下) | 误差小于0.05 m, 成功率99.22% |
文献[ | 7 000条轨 迹数据 | 通过人类演示训 练动力学模型、虚 拟现实环境 | 误差小于0.2 m, 成功率86.7% |
文献[ | 200个回合 以内 | 改进的DDPG算法 | 误差小于0.2 m, 成功率98% |
文献[ | 超过70万 个回合 | 改进的DDPG算法 (仿真环境下) | 误差小于0.05 m, 成功率100% |
文献[ | 50 000回合 (回击旋转球) | 改进的DDPG算法、 LSTM网络 | 旋转球回球成功 率高于70% |
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