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水下机器人关节电机多参数辨识研究

石麟 胡桥 石鑫东 孙良杰 张箭 刘海洋

石麟, 胡桥, 石鑫东, 等. 水下机器人关节电机多参数辨识研究[J]. 水下无人系统学报, xxxx, x(x): x-xx doi: 10.11993/j.issn.2096-3920.2024-0062
引用本文: 石麟, 胡桥, 石鑫东, 等. 水下机器人关节电机多参数辨识研究[J]. 水下无人系统学报, xxxx, x(x): x-xx doi: 10.11993/j.issn.2096-3920.2024-0062
SHI Lin, HU Qiao, SHI Xindong, SUN Liangjie, ZHANG jian, Liu Haiyang. Research on Multi-parameter identification of underwater robot joint motor[J]. Journal of Unmanned Undersea Systems. doi: 10.11993/j.issn.2096-3920.2024-0062
Citation: SHI Lin, HU Qiao, SHI Xindong, SUN Liangjie, ZHANG jian, Liu Haiyang. Research on Multi-parameter identification of underwater robot joint motor[J]. Journal of Unmanned Undersea Systems. doi: 10.11993/j.issn.2096-3920.2024-0062

水下机器人关节电机多参数辨识研究

doi: 10.11993/j.issn.2096-3920.2024-0062
基金项目: 国家自然科学项目资助(52371337).
详细信息
    作者简介:

    石麟:石 麟(1998-), 男, 在读硕士, 研究方向为水下机器人关节电机驱动控制

    通讯作者:

    胡 桥(1977-), 男, 博士, 教授, 主要从事海洋智能感知与仿生机器人.

  • 中图分类号: TM351; U674

Research on Multi-parameter identification of underwater robot joint motor

  • 摘要: 随着水下无人系统的快速发展, 水下关节电机作为水下机器人、水下机械臂等水下装备的核心驱动装置发挥着重要的作用。文中针对不同工作环境影响下导致的水下关节电机参数改变, 从而引起的电机控制的精确性和稳定性变差的问题, 开展电机多参数在线辨识研究。采用增加稳态工作点方法实现多参数的满秩辨识。同时, 为提高辨识方法的精度和鲁棒性, 研究了扩展卡尔曼滤波(EKF)方法和H方法在电机参数辨识方面的可行性, 进而提出了一种基于EKF和H的联合估计方法。通过仿真对比发现, 在参数辨识时, 所提出的联合估计方法相较于自适应EKF方法稳态标准差最大减少了84.7%, 相较于自适应H方法精确度最大提升了91.7%。验证联合估计方法优秀的鲁棒性和准确性, 可为水下关节电机的稳定高效运行提供理论和技术支撑。

     

  • 图  1  于EKF和H的联合估计算法流程

    Figure  1.  Process based on EKF and H infinite joint estimation algorithm

    图  2  基于多稳态工作点的满秩参数辨识策略

    Figure  2.  Full rank parameter identification based on multi-stable operating points

    图  3  不同工况下不同算法辨识结果对比

    Figure  3.  Comparison of identification results of different working conditions

    图  4  额定工况下不同方法辨识结果曲线

    Figure  4.  Identification results of different identification methods

    图  5  额定工况下的定子电感辨识性能对比

    Figure  5.  Comparison of stator inductance identification performance

    图  6  额定工况下的定子电阻辨识性能对比

    Figure  6.  Comparison of stator resistance identification performance

    图  7  额定工况下的永磁体磁链辨识性能对比

    Figure  7.  Comparison of flux identification performance of permanent magnet

    表  1  仿真系统中的PMSM参数

    参数 数值 参数 数值
    额定电压/V 24 d轴电感/µH 340
    额定电流/A 2.5 q轴电感/µH 340
    额定扭矩/(N·m) 0.3 定子电阻/mΩ 650
    额定转速/(r/m) 1 200 转子磁链/Wb 0.003 3
    转动惯量/(kg·m2) 1.8×10−5 极对数 14
    下载: 导出CSV

    表  2  额定工况下的不同辨识方法性能对比

    Table  2.   Comparison of the performance of three identification methods

    参数方法均值相对误差标准差均方根误差
    ${L_{\text{s}}}$/uHAEKF339.0400.28%4.2644.370 0
    AHIF342.8400.84%0.9002.980 0
    AEKF+AHIF339.2600.22%2.2322.350 0
    ${R_{\text{s}}}$/mΩAEKF651.4000.22%1.5102.040 0
    AHIF694.5206.85%0.97054.220 0
    AEKF+AHIF653.7000.57%1.0303.850 0
    ${\psi _{\text{f}}}$/(m·Wb)AEKF3.2931.11%0.4380.438 3
    AHIF3.1944.08%0.0280.109 5
    AEKF+AHIF3.2941.08%0.0670.067 7
    下载: 导出CSV
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  • 收稿日期:  2024-04-03
  • 修回日期:  2024-04-29
  • 录用日期:  2024-05-11
  • 网络出版日期:  2024-10-28

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