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首页> 外文期刊>Applied Spectroscopy: Society for Applied Spectroscopy >Recovering Independent Components from Shifted Data Using Fast Independent Component Analysis and Swarm Intelligence
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Recovering Independent Components from Shifted Data Using Fast Independent Component Analysis and Swarm Intelligence

机译:使用快速独立成分分析和群智能从移位数据中恢复独立成分

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摘要

Frequency displacement, or spectral shift, is commonly observed in industrial spectral measurements. It can be caused by many factors such as sensor de-calibration or by external influences, which include changes in temperature. The presence of frequency displacement in spectral measurements can cause difficulties when statistical techniques, such as independent component analysis (ICA), are used to analyze it. Using simulated spectral measurements, this paper initially highlights the effect that frequency displacement has on ICA. A post-processing technique, employing particle swarm optimization (PSO), is then proposed that enables ICA to become robust to frequency displacement in spectral measurements. The capabilities of the proposed approach are illustrated using several simulated examples and using tablet data from a pharmaceutical application.
机译:在工业频谱测量中通常会观察到频率偏移或频谱偏移。它可能是由许多因素引起的,例如传感器失标或外部影响,包括温度变化。当使用统计技术(例如独立成分分析(ICA))对其进行分析时,频谱测量中的频率偏移会引起困难。使用模拟频谱测量,本文首先强调了频率偏移对ICA的影响。然后提出了一种采用粒子群优化(PSO)的后处理技术,该技术可使ICA对频谱测量中的频率位移变得鲁棒。使用几个模拟示例并使用制药应用中的片剂数据说明了所提出方法的功能。

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