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High dimension time series mining based on state transition chain analysis method

机译:基于状态过渡链分析方法的高尺寸时间序列挖掘

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In concerned with the high dimensions time series, which have the characteristic of multivariable, time-varying and time-lagging, were collected from multi-stage industrial processes, a method which is used to synchronize high-dimensions time series with temporal and spatial conversion is introduced in this paper. The high-dimensions time series is synchronized in spatial sampling by the conversion method. After the discretization for high-dimensions time series which is preprocessed by synchronization, first the control state is classified into normal state and high risk state by a simple association analysis; then using the method of state transition chain analysis, we successfully find the transition condition when the control system transform normal state into high risk state. This condition can be applied to reduce the quality defects of product and be used to guide the control strategy design of control system.
机译:从多级工业过程中收集了具有多变量,时变和时间滞后的特征的高尺寸时间序列,该方法用于将高维时间序列与时间和空间转换同步的方法本文介绍。高尺寸时间序列通过转换方法在空间采样中同步。在通过同步预处理的高维时间序列的离散化之后,首先通过简单的关联分析分类为正常状态和高风险状态;然后使用状态转换链分析方法,当控制系统将正常状态转换为高风险状态时,我们成功地找到了过渡条件。可以应用这种情况来降低产品的质量缺陷,并用于指导控制系统的控制策略设计。

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