Chin. Phys. Lett.  2000, Vol. 17 Issue (2): 85-87    DOI:
Original Articles |
Transport Properties of a Classical One-Dimensional Kicked Billiard Model
CHEN He-Sheng;WANG Jiao;GU Yan
Department of Astronomy and Applied Physics, University of Science and Technology of China, Hefei 230026
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CHEN He-Sheng, WANG Jiao, GU Yan 2000 Chin. Phys. Lett. 17 85-87
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Abstract We study a classical I-dimensional kicked billiard model and investigate its transport behavior. The roles played by the two system parameters α and K, governing the direction and strength of the kick, respectively, are found to be quite crucial. For the perturbations which are not strong, i.e. K < 1, we find that as the phase parameter α changes within its range of interest from –π/2 to π/2, the phase space is in turn characterized by the structure of a prevalently connected stochastic web (-π/2 ≤ α < 0), local stochastic webs surrounded by a stochastic sea (0 < α < π/2) and the global stochastic sea (α=π/2). Extensive numerical investigations also indicate that the system's transport behavior in the irregular regions of the phase space for K < 1 has a dependence on the system parameters and the transport coefficient D can be expressed as D≈D0(α)Kf(α) For strong kicks, i.e. K>> 1, the phase space is occupied by the stochastic sea, and the transport behavior of the system seems to be similar to that of the kicked rotor and independent of α.


Keywords: 05.45.+b     
Published: 01 February 2000
PACS:  05.45.+b  
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https://cpl.iphy.ac.cn/       OR      https://cpl.iphy.ac.cn/Y2000/V17/I2/085
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CHEN He-Sheng
WANG Jiao
GU Yan
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