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Development of Precise Encoder Edge-Based State Estimation for Motors

机译:电机精确的基于编码器边沿状态估计的开发

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We developed and implemented an algorithm named . Instead of conventional periodic encoder sensing to obtain the quantized motor position, we detect the encoder edge’s time and value precisely. Then, we use the edge-time Kalman filter (ETKF) containing predictions at edge time and periodic sampling time, and update at edge time. Only the first edge in each sampling interval is utilized to reduce the computation time at high motor speed. The proposed algorithm guarantees far more accurate state estimation with low encoder resolution and uncertainty on motor parameters. Performance of the proposed algorithm is validated through simulations and implementation on a two-wheeled mobile robot (TMR).
机译:我们开发并实现了名为的算法。取代传统的周期性编码器检测来获得量化的电机位置,我们可以精确地检测编码器边缘的时间和值。然后,我们使用边缘时间卡尔曼滤波器(ETKF)包含边缘时间和周期性采样时间的预测,并在边缘时间进行更新。仅在每个采样间隔中的第一个边沿被用于减少高电机速度时的计算时间。所提出的算法保证了状态估计的准确性,而且编码器分辨率低且电机参数不确定。通过仿真和在两轮移动机器人(TMR)上的实现,验证了所提出算法的性能。

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