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An Auto-Framing Method for Stochastic Process Signal by using a Hidden Markov Model based Approach

机译:基于隐马尔可夫模型的随机过程信号自动成帧方法

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In this paper, an "auto-framing" method, an algorithmic method to divide stochastic time-series process data into appropriate intervals, is developed based on the approach of hidden Markov model (HMM). While enormous amounts of process time-series data are being measured and collected today, their use is limited by the high costs to gather, store, and analyze them. "Data-framing" refers to the task of dividing stochastic signal data into time frames of distinct patterns so that the data can be stored and analyzed in an efficient manner. Data-framing is typically carried out manually, but doing so can be both laborious and ineffective. For the purpose of automating the data-framing task, stochastic signals of switching patterns are modeled using a hidden Markov model (HMM) based jump linear system (JLS), which switches the stochastic model probabilistically in accordance with the underlying Markov chain. Based on the model, an estimator is constructed to estimate from the collected signal data the state sequence of the underlying Markov chain, which is subsequently used to decide on the framing points. An Expectation Maximization (EM) algorithm, which is composed of two optimal estimators, fixed interval Kalman smoother and Viterbi algorithm, is used to estimate for the state estimation. We demonstrate the effectiveness of the HMM-based approach for auto-framing using simulated data constructed based on real industrial data.
机译:在本文中,基于隐马尔可夫模型(HMM)的方法,开发了一种“自动成帧”方法,即一种将随机时间序列过程数据划分为适当间隔的算法。尽管今天正在测量和收集大量的过程时间序列数据,但是由于收集,存储和分析它们的高昂成本,它们的使用受到了限制。 “数据成帧”是指将随机信号数据分为不同模式的时间范围,以便可以有效地存储和分析数据的任务。数据成帧通常是手动执行的,但是这样做既费力又无效。为了自动化数据成帧任务,使用基于隐马尔可夫模型(HMM)的跳跃线性系统(JLS)对切换模式的随机信号进行建模,该跳变线性系统根据基础马尔可夫链概率地切换随机模型。基于该模型,构造了一个估计器,以从收集的信号数据中估计基础马尔可夫链的状态序列,随后将其用于确定成帧点。由两个最佳估计器(固定间隔卡尔曼平滑器和Viterbi算法)组成的期望最大化(EM)算法用于状态估计。我们展示了基于HMM的方法在使用基于真实工业数据构建的模拟数据进行自动成帧时的有效性。

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