Stability and Performance Limits of Latency-Prone Distributed Feedback Controllers
January 13, 2015 ยท Declared Dead ยท ๐ IEEE transactions on industrial electronics (1982. Print)
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Authors
Ye Zhao, Nicholas Paine, Kwan Suk Kim, Luis Sentis
arXiv ID
1501.02854
Category
eess.SY: Systems & Control (EE)
Cross-listed
cs.RO
Citations
24
Venue
IEEE transactions on industrial electronics (1982. Print)
Last Checked
1 month ago
Abstract
Robotic control systems are increasingly relying on distributed feedback controllers to tackle complex sensing and decision problems such as those found in highly articulated human-centered robots. These demands come at the cost of a growing computational burden and, as a result, larger controller latencies. To maximize robustness to mechanical disturbances by maximizing control feedback gains, this paper emphasizes the necessity for compromise between high- and low-level feedback control effort in distributed controllers. Specifically, the effect of distributed impedance controllers is studied where damping feedback effort is executed in close proximity to the control plant and stiffness feedback effort is executed in a latency-prone centralized control process. A central observation is that the stability of high impedance distributed controllers is very sensitive to damping feedback delay but much less to stiffness feedback delay. This study pursues a detailed analysis of this observation that leads to a physical understanding of the disparity. Then a practical controller breakdown gain rule is derived to aim at enabling control designers to consider the benefits of implementing their control applications in a distributed fashion. These considerations are further validated through the analysis, simulation and experimental testing on high performance actuators and on an omnidirectional mobile base.
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