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Use of multivariate data analysis for lumber drying process monitoring and fault detection

机译:用于木材干燥过程监测和故障检测的多变量数据分析

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Process monitoring refers to the task of detecting abnormal process operations resulting from the shift in the mean and/or the variance of one or more process variables. To successfully operate any process it is important to detect and diagnose any process upsets, equipment failures or other events that may have significant impact on energy consumption and productivity. In most manufacturing processes, it is difficult if not impossible to detect abnormal operation by simply tracking some physical variable such as temperatures and pressures. Lumber drying (batch process) performance depends on more than 200 variables making the process very difficult to model and control using classical methods. Multivariate data analysis (MVDA) as a data mining technique makes the task easier and allows early fault detection thus allowing acting well before process goes out of control. MVDA techniques (PCA, PLS) were successfully applied on historical data of a sawmill operation to develop a multivariate statistical process monitoring (MSPM) of the wood kiln drying. A multivariate statistical process monitoring (MSPM) was developed using the SIMCA-P commercial software and applied offline on batches which went out of control (also known as outliers). The method was proven very powerful to detect the abnormalities and then diagnosis the faults. A database of faults and diagnosis is under development and an expert system will be developed for on-line fault detection and diagnosis. The purpose of this paper is not to discuss the theory behind of multivariate data analysis but rather to demonstrate the applicability and the usefulness of the technique.
机译:过程监控是指检测由一个或多个过程变量的平均值和/或差异中的变化产生的异常处理操作的任务。为了成功运行任何过程,重要的是要检测和诊断任何可能对能量消耗和生产率产生重大影响的任何过程的扰乱,设备故障或其他事件。在大多数制造过程中,难以通过简单地跟踪一些物理变量(例如温度和压力)来检测异常操作。木材干燥(批处理)性能取决于200多个变量,使得使用经典方法模拟和控制的过程非常困难。多变量数据分析(MVDA)作为数据挖掘技术使得任务更容易,并且允许早期故障检测,从而在处理失控之前允许发挥作用。 MVDA技术(PCA,PLS)成功地应用于锯木厂运行的历史数据,以开发木窑干燥的多元统计过程监测(MSPM)。使用SIMCA-P商业软件开发了多变量统计过程监测(MSPM),并在批次上施用的批次应用(也称为异常值)。该方法被证明非常强大以检测异常,然后诊断故障。正在开发的故障和诊断数据库,将开发专家系统,用于在线故障检测和诊断。本文的目的不是讨论多变量数据分析背后的理论,而是展示技术的适用性和有用性。

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