水准点(测量)
计算机科学
适应性
人工智能
机器人
机器学习
参数统计
前馈
特征(语言学)
在线模型
控制(管理)
控制工程
无人机
基础(线性代数)
灵活性(工程)
约束(计算机辅助设计)
空气动力学
传感器融合
特征提取
工程类
不确定度归约理论
在线学习
作者
Jindou Jia,Kexin Guo,Yuyang Wang,Sicheng Zhou,Jiayi Zhang,Yuhang Liu,Xiang Yu,Yang Shi,Lei Guo
标识
DOI:10.1177/02783649251364000
摘要
Uncertainties resulting from intricate internal model uncertainties and external environmental disturbances significantly degrade robot planning and control performance. However, recognizing such persistently varying uncertainties in an explainable and lightweight manner is exceptionally challenging. We present two converged uncertainty prediction frameworks through the Fusion of Online Reactive Estimation and Sustained Experience Exploitation for Robots (FORESEER), enabling accurate prediction of two general kinds of uncertainties. Both frameworks feature properties of precision, lightweight, universality, and stability, in comparison with existing solutions. At first, a prediction algorithm for nonlinearly parametric uncertainties is developed by merging analytical basis learning with online symbolic adaptive estimation. Furthermore, an online prediction algorithm for more challenging composite uncertainties is proposed by seamlessly integrating learning-based feedforward and model-based/symbolic feedback observer. Benchmark comparisons on flying drones showcase the accuracy of the FORESEER on various real uncertainties including mass, aerodynamic drag, rain, and rope tension, leading to subsequent high-precision control. Moreover, an energy-saving and time-saving planning strategy is presented by utilizing the favorable wind. The developed algorithms hold the promising potential for direct combination with existing planning/control algorithms, promoting the environmental adaptability of robots.
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