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Self-tuning fiber lasers

机译:自调谐光纤激光器

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摘要

Advanced methods in data science are driving the characterization and control of nonlinear dynamical systems in optics. In this work, we investigate the use of machine learning, sparsity methods and adaptive control to develop a self-tuning fiber laser, which automatically learns and adapts to maintain high-energy ultrashort pulses. In particular, a two-stage procedure is introduced consisting of a machine learning algorithm to recognize different dynamical regimes with distinct behavior, followed by an adaptive control algorithm to reject disturbances and track optimal solutions despite stochastically varying system parameters. The machine learning algorithm, called sparse representation for classification, comes from machine vision and is typically used for image recognition. The adaptive control algorithm is extremum-seeking control, which has been applied to a wide range of systems in engineering; extremum-seeking is beneficial because of rigorous stability guarantees and ease of implementation.
机译:数据科学中的先进方法正在驱动光学非线性动力学系统的表征和控制。在这项工作中,我们研究了使用机器学习,稀疏方法和自适应控制来开发自调谐光纤激光器,该激光器可以自动学习并适应于维持高能量超短脉冲。特别地,引入了两阶段过程,该过程包括机器学习算法以识别具有不同行为的不同动态状态,然后是自适应控制算法以拒绝干扰并跟踪尽管系统参数随机变化的最优解。机器学习算法(用于分类的稀疏表示)来自机器视觉,通常用于图像识别。自适应控制算法是极值搜索控制,已被广泛应用于工程系统中。由于严格的稳定性保证和易于实施,寻求极值是有益的。

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