Non-Parametric Local Maxima and Minima Finder with Filtering Techniques for Bioprocess

K. K. L. B. Adikaram, M. Hussein, M. Effenberger, T. Becker
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引用次数: 2

Abstract

Typically extrema filtration techniques are based on non-parametric properties such as magnitude of prominences and the widths at half prominence, which cannot be used with data that possess a dynamic nature. In this work, an extrema identification that is totally independent of derivative-based approaches and independent of quantitative attributes is introduced. For three consecutive positive terms arranged in a line, the ratio (R) of the sum of the maximum and minimum to the sum of the three terms is always 2/n, where n is the number of terms and 2/3 ≤ R ≤ 1 when n = 3. R > 2/3 implies that one term is away from the other two terms. Applying suitable modifications for the above stated hypothesis, the method was developed and the method is capable of identifying peaks and valleys in any signal. Furthermore, three techniques were developed for filtering non-dominating, sharp, gradual, low and high extrema. Especially, all the developed methods are non-parametric and suitable for analyzing processes that have dynamic nature such as biogas data. The methods were evaluated using automatically collected biogas data. Results showed that the extrema identification method was capable of identifying local extrema with 0% error. Furthermore, the non-parametric filtering techniques were able to distinguish dominating, flat, sharp, high, and low extrema in the biogas data with high robustness.
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生物过程非参数局部极大极小查找器与滤波技术
典型的极值过滤技术是基于非参数属性,如日珥的大小和半日珥的宽度,这不能与具有动态性质的数据一起使用。在这项工作中,引入了一种完全独立于基于导数的方法和独立于定量属性的极值识别。对于连续排列成一行的三个正项,最大值和最小值之和与三项之和的比值R总是2/n,其中n为项数,当n = 3时,2/3≤R≤1。R > 2/3意味着其中一项与另外两项相距甚远。对上述假设进行适当的修改,开发了该方法,该方法能够识别任何信号中的峰和谷。此外,还开发了三种滤波技术,分别用于非主导、锐、渐、低和高极值。特别是,所开发的方法都是非参数的,适合于分析具有动态性质的过程,如沼气数据。使用自动收集的沼气数据对这些方法进行评估。结果表明,该方法能够以0%的误差识别出局部极值。此外,非参数滤波技术能够区分沼气数据中的主导、平坦、尖锐、高、低极值,具有较高的鲁棒性。
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