The bouncing ball on a sinusoidally vibrating plate exhibits a rich variety of nonlinear dynamical behavior and is one of the simplest mechanical systems to produce chaotic behavior. A computer control system is designed for output calibration, state determination, system identification, and control of a new bouncing ball apparatus designed in collaboration with Magnetic Moments. The experiments described here constitute the first research performed with the apparatus. Experimental methods are used to determine the coefficient of restitution of the ball, an extremely sensitive parameter needed for modeling and control. The coefficient of restitution is estimated using data from a stable one-cycle orbit both with and without using corresponding data from a ball map. For control purposes, two methods are used to construct linear maps. The first map is determined by collecting data directly from the apparatus. The second map is derived analytically using a high bounce approximation. The maps are used to estimate the domains of attraction to a stable one-cycle orbit. These domains of attraction are used to construct a chaotic control algorithm for driving the ball to a stable one-cycle from any initial state. Experimental results based on the chaotic control algorithm are compared and it is found that the linear map obtained directly from the data not only gives a more accurate representation of the domain of attraction, but also results in more robust control of the ball to the stable one-cycle.
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e-mail: anantẖkini@rediffmail.com
e-mail: vincent@u.arizona.edu
e-mail: paden@engineering.ucsb.edu
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June 2006
Technical Papers
The Bouncing Ball Apparatus as an Experimental Tool
Ananth Kini,
Ananth Kini
Aerospace and Mechanical Engineering,
e-mail: anantẖkini@rediffmail.com
University of Arizona
, Tucson, AZ 85721
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Thomas L. Vincent,
Thomas L. Vincent
Aerospace and Mechanical Engineering,
e-mail: vincent@u.arizona.edu
University of Arizona
, Tucson, AZ 85721
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Brad Paden
Brad Paden
Mechanical and Environmental Engineering,
e-mail: paden@engineering.ucsb.edu
University of California
, Santa Barbara, CA 93106
Search for other works by this author on:
Ananth Kini
Aerospace and Mechanical Engineering,
University of Arizona
, Tucson, AZ 85721e-mail: anantẖkini@rediffmail.com
Thomas L. Vincent
Aerospace and Mechanical Engineering,
University of Arizona
, Tucson, AZ 85721e-mail: vincent@u.arizona.edu
Brad Paden
Mechanical and Environmental Engineering,
University of California
, Santa Barbara, CA 93106e-mail: paden@engineering.ucsb.edu
J. Dyn. Sys., Meas., Control. Jun 2006, 128(2): 330-340 (11 pages)
Published Online: June 1, 2005
Article history
Received:
February 20, 2004
Revised:
June 1, 2005
Citation
Kini, A., Vincent, T. L., and Paden, B. (June 1, 2005). "The Bouncing Ball Apparatus as an Experimental Tool." ASME. J. Dyn. Sys., Meas., Control. June 2006; 128(2): 330–340. https://doi.org/10.1115/1.2194069
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