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A study of polynomial fit-based methods for qualitative trend analysis

机译:基于多项式拟合的定性趋势分析方法研究

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Qualitative trend analysis (QTA) of sensor data is a useful tool for process monitoring, fault diagnosis and data mining. However, because of the varying background noise characteristics and different scales of sensor trends, automated and reliable trend extraction remains a challenge for trend-based analysis systems. In this paper, several new polynomial fit-based trend extraction algorithms are first developed, which determine the parameters automatically in the hypothesis testing framework. An existing trend analysis method developed by Dash et al. (2004) is then modified and added to the abovementioned trend extraction algorithms, which form a complete solution for QTA. The performance comparison of these algorithms is made on a set of simulated data and Tennessee Eastman process data based on several metrics. (C) 2015 Elsevier Ltd. All rights reserved.
机译:传感器数据的定性趋势分析(QTA)是用于过程监控,故障诊断和数据挖掘的有用工具。但是,由于背景噪声特征的变化和传感器趋势的规模不同,对于基于趋势的分析系统而言,自动化且可靠的趋势提取仍然是一个挑战。在本文中,首先开发了几种基于多项式拟合的趋势提取算法,这些算法在假设检验框架中自动确定参数。 Dash等人开发的现有趋势分析方法。 (2004)然后被修改并添加到上述趋势提取算法中,形成了QTA的完整解决方案。这些算法的性能比较是基于一组基于几个指标的模拟数据和田纳西伊士曼过程数据进行的。 (C)2015 Elsevier Ltd.保留所有权利。

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