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Richard W. Longman

Mechanical Engineering · Columbia University  high

研究方向

方向提炼待补(distill 阶段生成)。

该校申请信息 · Columbia University

ME deadline(legacy)
申请费

近三年论文 · 3 篇 (点击展开摘要,时间倒序)

Zero Placement for Inverting Discrete-time Model and its Relation with Pseudo-Inverse
Research Square · 2025 · cited 0 · doi.org/10.21203/rs.3.rs-7673461/v1
Zero Placement for Discrete Time Systems
The Journal of the Astronautical Sciences · 2023 · cited 1 · doi.org/10.1007/s40295-023-00412-9
A Method to Speed Up Convergence of Iterative Learning Control for High Precision Repetitive Motions
arXiv (Cornell University) · 2023 · cited 0 · doi.org/10.48550/arxiv.2307.15912
Various spacecraft have sensors that repeatedly perform a prescribed scanning maneuver, and one may want high precision. Iterative Learning Control (ILC) records previous run tracking error, adjusts the next run command, aiming for zero tracking error in the real world, not our model of the world. In response to a command, feedback control systems perform a convolution sum over all commands given since time zero, with a weighting factor getting smaller going further back in time. ILC learns to eliminate this error through iterations in hardware. It aims to find that command that causes the real world system to actually follow the desired command. The topic of this paper considers the possibility of learning to make our model of the world produce less error. This can be done easily and quickly numerically, and the result then used as a starting point for the ILC iterations performed in hardware. The point is to reduce the number of hardware iteration, converging more quickly to closely tracking the desired trajectory in the world. How to decide how many iterations with our model to make before switching to hardware iterations is presented, with numerical simulations performed to illustrate the approach.