期刊文献+
共找到2篇文章
< 1 >
每页显示 20 50 100
Sigma-Point Filters in Robotic Applications 被引量:1
1
作者 Mohammad Al-Shabi 《Intelligent Control and Automation》 2015年第3期168-183,共16页
Sigma-Point Kalman Filters (SPKFs) are popular estimation techniques for high nonlinear system applications. The benefits of using SPKFs include (but not limited to) the following: the easiness of linearizing the nonl... Sigma-Point Kalman Filters (SPKFs) are popular estimation techniques for high nonlinear system applications. The benefits of using SPKFs include (but not limited to) the following: the easiness of linearizing the nonlinear matrices statistically without the need to use the Jacobian matrices, the ability to handle more uncertainties than the Extended Kalman Filter (EKF), the ability to handle different types of noise, having less computational time than the Particle Filter (PF) and most of the adaptive techniques which makes it suitable for online applications, and having acceptable performance compared to other nonlinear estimation techniques. Therefore, SPKFs are a strong candidate for nonlinear industrial applications, i.e. robotic arm. Controlling a robotic arm is hard and challenging due to the system nature, which includes sinusoidal functions, and the dependency on the sensors’ number, quality, accuracy and functionality. SPKFs provide with a mechanism that reduces the latter issue in terms of numbers of required sensors and their sensitivity. Moreover, they could handle the nonlinearity for a certain degree. This could be used to improve the controller quality while reducing the cost. In this paper, some SPKF algorithms are applied to 4-DOF robotic arm that consists of one prismatic joint and three revolute joints (PRRR). Those include the Unscented Kalman Filter (UKF), the Cubature Kalman Filter (CKF), and the Central Differences Kalman Filter (CDKF). This study gives a study of those filters and their responses, stability, robustness, computational time, complexity and convergences in order to obtain the suitable filter for an experimental setup. 展开更多
关键词 SIGMA POINT Unscented KALMAN FILTER CUBATURE KALMAN FILTER Centeral Difference KALMAN FILTER Filtering Estimation robotIC Arm prrr
暂未订购
基于位置误差模型的PRRR型机器人运动学参数标定方法 被引量:2
2
作者 侯润 刘明尧 《数字制造科学》 2024年第2期134-139,共6页
为提高PRRR机器人的绝对定位精度,基于MDH参数微分误差推导了运动学参数误差与末端点的位姿误差之间的映射关系,并据此建立了位置误差模型,通过对映射关系的分析,去除冗余参数。使用标定板和激光位移传感器组合的测量工具进行实验,基于... 为提高PRRR机器人的绝对定位精度,基于MDH参数微分误差推导了运动学参数误差与末端点的位姿误差之间的映射关系,并据此建立了位置误差模型,通过对映射关系的分析,去除冗余参数。使用标定板和激光位移传感器组合的测量工具进行实验,基于迭代最小二乘法辨识参数,最终将PRRR机器人绝对定位误差降低到±0.15 mm以内。 展开更多
关键词 prrr型机器人 运动学参数标定 标定板 激光位移传感器
原文传递
上一页 1 下一页 到第
使用帮助 返回顶部