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張連璧老師 雷射原理

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張連璧老師

雷射原理 Principles of lasers (碩博) 星期二 D5~D7

教學目標: The object of the course is to provide students with sufficient knowledge of laser physics and technology.

課程範圍:

The physical and engineering principles of laser operation and design.

授課方式:

Lectures

課程進度及綱要:

Ray Tracing in an Optical System Gaussian Beams

Optical Cavities

Resonant Optical Cavities Atomic Radiation

Laser Oscillation and Amplification General Characteristics of Lasers Laser Excitation

參考書籍:

Orazio Svelto: Principles of Lasers, 4th ed. Springer-Business Media. Inc, 1998 A.Siegman: Lasers, University Science Books, 1986

A. Yariv and P. Yeh: Photonics: Optical Electronics in Modern Communications, 6th ed. Oxford University Press, USA, 2006

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