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Optimization for Nonlinear Time Series and Forecast for Sleep

机译:非线性时间序列的优化和睡眠预测

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摘要

It is important processes that phase-space diagram and computation of geometrical eigenvalues are reconstituted in nonlinear dynamical analysis. It's difficult to analyze nonlinear system such as EEG real-time because the algorithms of phase-space diagram reconstitution and geometrical eigenvalue computation are complex on both time and space. The algorithms were optimized to reduce their complexity, after that the algorithms were parallelized, at last the integrated algorithm's running time is 1/30 of the running time before optimization and parallelization. It was found that the value of correlation dimension can reflect sleep stages after analyzing the sleep EEG, final sleep stages were also forecasted simply.
机译:在非线性动力学分析中重构相空间图和几何特征值的计算是重要的过程。相空间图重构和几何特征值计算的算法在时间和空间上都很复杂,因此难以实时分析诸如EEG的非线性系统。对算法进行优化以降低其复杂度,然后对算法进行并行化,最后集成算法的运行时间为优化和并行化之前运行时间的1/30。在分析睡眠脑电图后,发现相关维数的值可以反映睡眠阶段,最终睡眠阶段也得到了简单的预测。

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