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首页> 外文期刊>Journal of Chemical Engineering & Process Technology >Improved Fault Detection and Process Safety Using Multiscale Shewhart Charts.
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Improved Fault Detection and Process Safety Using Multiscale Shewhart Charts.

机译:使用多尺度Shewhart图改善了故障检测和过程安全性。

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Process safety is a critical component in various process industries. Statistical process monitoring techniques were initially developed to maximize efficiency and productivity, but over the past few decades with catastrophic industrial disasters, process safety has become a top priority. Sensors play a crucial role in recording process measurements, and according to the number of monitored variables, process monitoring techniques can be classified into univariate or multivariate techniques. Most univariate process monitoring techniques rely on three fundamental assumptions: that process residuals contain a moderate level of noise, are independent, and are normally distributed. Practically, however, due to a variety of reasons such as modeling errors and malfunctioning sensors, these assumptions are violated, which can lead to catastrophic incidents. Fortunately, multiscale wavelet-based representation of data inherently possesses characteristics that are able to deal with these violations of assumptions. Therefore, in this work, multiscale representation is utilized to enhance the performance of the Shewhart chart (which is a well-known univariate fault detection method) to help improve its performance. The performance of the developed multiscale Shewhart chart was assessed and compared to the conventional chart through two examples, one using synthetic data, and the other using simulated distillation column data. The results of both examples clearly show that the developed multiscale Shewhart chart provides lower missed detection and false alarm rates, as well as lower ARL1 values (i.e., quicker detection) for most cases where the fundamental assumptions of the Shewhart chart are violated. Additionally, the relative simplicity of the proposed algorithm encourages its implementation in practice to help improve process safety.
机译:过程安全是各个过程工业中的关键组成部分。统计过程监视技术最初是为了最大程度地提高效率和生产率而开发的,但是在过去的几十年中,由于灾难性的工业灾难,过程安全已成为重中之重。传感器在记录过程测量值中起着至关重要的作用,根据监视变量的数量,过程监视技术可以分为单变量或多变量技术。大多数单变量过程监控技术都基于三个基本假设:过程残差包含中等水平的噪声,独立且呈正态分布。但是,实际上,由于各种原因(例如建模错误和传感器故障),违反了这些假设,这可能导致灾难性事件。幸运的是,基于多尺度小波的数据表示方法固有地具有能够应对这些违反假设的特征。因此,在这项工作中,利用多尺度表示法来增强Shewhart图的性能(这是一种众所周知的单变量故障检测方法),以帮助提高其性能。通过两个示例评估了已开发的多尺度Shewhart图表的性能,并将其与常规图表进行了比较,一个示例使用合成数据,另一个使用模拟蒸馏塔数据。这两个示例的结果清楚地表明,在大多数违反Shewhart图表基本假设的情况下,开发的多尺度Shewhart图表提供较低的漏检和误报率以及较低的ARL1值(即更快的检测)。另外,所提出算法的相对简单性鼓励其在实践中的实施,以帮助提高过程安全性。

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