STATIONARY PROBABILITY DISTRIBUTION FOR COLORED-LOSS-NOISE MODEL OF A SINGLE-MODE DYE LASER
Chen Li-mei (陈黎梅)ab, Fu Hai-xiang (傅海翔)a, Cao Li (曹力)ac, Wu Da-jin (吴大进)ac, Qiu Jun-lin (丘军林)b
a Department of Physics, Huazhong University of Science and Technology, Wuhan 430074, China; b State Key Laboratory of Laser Technology, Huazhong University of Science and Technology, Wuhan 430074, China; c China Center of Advanced Science and Technology (CCAST)(World Laboratory), P. O. Box 8730, Beijing 100080, China
Abstract We apply the interpolation procedure to calculate the stationary probability distribution of the colored-loss-noise model of a single-mode dye laser operating above the threshold with correlation time $\tau$ covering a very wide range. By stochastic Runge-Kutta algorithm, we also carry out numerical simulations of steady-state properties. Comparing the results of the interpolation procedure and the unified colored-noise approximation with simulation results, we find that the agreement between the results of the interpolation procedure and the simulation results is much better than that of the unified colored-noise approximation when correlation time $\tau$ covers a range from moderate to large. We conclude that the interpolation procedure really improve the accuracy of predictions for this system.
Received: 20 July 1998
Accepted manuscript online:
Fund: Project supported by the National Natural Science Foundation of China (Grant No. 19675014).
Cite this article:
Chen Li-mei (陈黎梅), Fu Hai-xiang (傅海翔), Cao Li (曹力), Wu Da-jin (吴大进), Qiu Jun-lin (丘军林) STATIONARY PROBABILITY DISTRIBUTION FOR COLORED-LOSS-NOISE MODEL OF A SINGLE-MODE DYE LASER 1999 Acta Physica Sinica (Overseas Edition) 8 180
PM567-Doped solid dye lasers based on PMMA Li Xiao-Hui(李晓晖), Fan Rong-Wei(樊荣伟), Xia Yuan-Qin (夏元钦), Liu Wei(刘维), and Chen De-Ying(陈德应). Chin. Phys. B, 2007, 16(12): 3681-3684.
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