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Dpamic Risk Analfsis Using Alarm Databases to improve Process Safety and Product Quality:Part I-Data Compaction

机译:使用警报数据库提高过程安全性和产品质量的动态风险分析:第一部分-数据压缩

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摘要

In most industrial processes, vast amounts of data are recorded through their distributed control systems (DCSs) and emergency shutdown (ESD) systems. This two-part article presents a dynamic risk analysis methodology that uses alarm databases to improve process safety and product quality. The methodology consists of three steps: (i) tracking of abnormal events over an extended period of time, (ii) event-tree and set-theoretic formulations to compact the abnormal-event data, and (Hi) Bayesian analysis to calculate the likelihood of the occurrence of incidents. Steps (i) and (ii) are presented in Part I and step (Hi) in Part II. The event-trees and set-theoretic formulations allow compaction of massive numbers (millions) of abnormal events. For each abnormal event, associated with a process or quality variable, its path through the safety or quality systems designed to return its variable to the normal operation range is recorded. Event trees are prepared to record the successes and failures of each safety or quality system as it acts on each abnormal event. Over several months of operation, on the order of 10 paths through event trees are stored. The new set-theoretic structure condenses the paths to a single compact data record, leading to significant improvement in the efficiency of the probabilistic calculations and permitting Bayesian analysis of large alarm databases in real time. As a case study, steps (i) and (ii) are applied to an industrial, fluidized-catalytic-cracker.
机译:在大多数工业过程中,通过其分布式控制系统(DCS)和紧急停机(ESD)系统记录了大量数据。这篇分为两部分的文章介绍了一种动态风险分析方法,该方法使用警报数据库来提高过程安全性和产品质量。该方法包括三个步骤:(i)长时间跟踪异常事件;(ii)事件树和集合理论公式以压缩异常事件数据;以及(Hi)贝叶斯分析以计算可能性事件的发生。步骤(i)和(ii)在第一部分中介绍,在步骤(Hi)中在第二部分中介绍。事件树和集合理论公式可压缩大量(数百万)异常事件。对于与过程或质量变量相关的每个异常事件,都会记录其通过安全或质量系统的路径,该路径旨在将其变量返回到正常操作范围。准备事件树以记录每个安全或质量系统在处理每个异常事件时的成败情况。在运行的几个月中,存储了通过事件树的10条路径的顺序。新的集合理论结构将路径压缩到单个紧凑的数据记录中,从而显着提高了概率计算的效率,并允许对大型警报数据库进行实时贝叶斯分析。作为案例研究,将步骤(i)和(ii)应用于工业流化床催化裂化器。

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