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  • 2017 European Conference on Lasers and Electro-Optics and European Quantum Electronics Conference
  • (Optica Publishing Group, 2017),
  • paper CJ_9_4

Ultrafast picosecond MOPA With Yb-doped Tapered Double Clad Fiber

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Abstract

Recent rapid progress of high-power picosecond and femtosecond fiber MOPA technology is remarkable. The picosecond MOPA has already crossed the threshold of mJ-level [1]. Usually, these powerful amplification systems contain unbendable rod-type fibers and, therefore, optical schemes are bulky and cumbersome [1]. Nevertheless, the industry requires a simple, all-fiber MOPA system with high peak power and energy. Recently, to reduce thermal stresses and influence of nonlinear effects all-fiber picosecond fiber laser using doping management have been proposed [2,3].

© 2017 IEEE

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