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Chemical process fault diagnosis using pattern recognition and semi-quantitative model based methods.

机译:使用模式识别和基于半定量模型的方法进行化学过程故障诊断。

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No industrial process operates without any deviation from the scheduled operation mode, during its economic life. Deviations from normal operation, if not detected and prevented, may lead to decreased plant life and even to disastrous events. Hence for process safety and preventive maintainance fault diagnosis is of vital importance. To minimize the risk of human error and as a decision support aid, computerized decision support systems for fault detection and diagnosis are valuable tools. The vast size of the design space for diagnostic systems makes a single general approach practically impossible.; In this dissertation, two pattern recognition based and two semi-quantitative model based approaches to chemical process fault diagnosis are developed. First, a symbolic fuzzy genetic algorithm based inductive learning system FGAL is developed. Equipped with a fuzzy c-means based partitioner, FGAL generates symbolic, general fuzzy rules from numerical plant data. This is not possible from a neural network. Unlike discriminative neural network and decision tree based approaches, FGAL is a hybrid generative-discriminative system avoiding novel class problems associated with discriminative learning systems. FGAL is tested on a hydrocarbon dichlorination fault diagnosis problem, showing 98% and 95.7% diagnostic performance for 1.0% and 1.5% Gaussian noise, respectively.; A second system developed is an extension of FGAL obtained by retrofitting it with kernel densities and using hidden Markov models to stochastically model the time component of the underlying dynamic process. The resulting hybrid generative-discriminative system is capable of extracting symbolic knowledge, uses only relevant dimensions for classification and can learn the HMM parameters via the Baum-Welch method. The system was tested successfully on two case studies: a gravity tank and a cascade controlled continuously stirred tank reactor (CSTR), correctly diagnosing all faults in each test case.; The third approach is a model based diagnostic system (MBDS), based on semi-quantitative fuzzy qualitative simulation (Shen and Leitch, 1993). The system makes use of partial process knowledge to generate a semi-quantitative model of the diagnosed process and qualitatively mimics the behavior of the diagnosed system under abnormal conditions. The introduced MBDS uses model selection rules generated from the off-line, one step ahead fuzzy qualitative simulation of fault models unlike QSIM (Kuipers, 1986) based MIMIC's (Dvorak and Kuipers, 1991) dependency tracking, which is not suitable for systems with recycles and control loops. The system was tested on a gravity tank and a constant holdup CSTR.; The last approach converts semi-quantitative dynamic bounding behavior envelopes that result from numerical interval simulation into compact, episodic fuzzy rule sets which are further used to monitor the process under consideration. Equipped with distance and time based belief scaling and novel class detection mechanisms, the system was successfully tested in a gravity tank and a closed-loop CSTR case study. Despite the conservative and highly overlapping envelopes for CSTR, the system was able to detect the correct fault in each test case. The automatic rule base generation capability facilitates rule base maintainance and fault library extension.
机译:在其经济寿命内,任何工业过程都不会偏离计划的操作模式进行操作。如果未发现并防止与正常操作的偏差,则可能导致设备寿命缩短甚至灾难性事件。因此,对于过程安全和预防性维护而言,故障诊断至关重要。为了最大程度地减少人为错误的风险并作为决策支持的辅助工具,用于故障检测和诊断的计算机化决策支持系统是宝贵的工具。诊断系统的巨大设计空间实际上使单一通用方法几乎不可能。本文提出了两种基于模式识别和两种基于半定量模型的化学过程故障诊断方法。首先,开发了一种基于符号模糊遗传算法的归纳学习系统FGAL。配备了基于模糊c均值的分区器,FGAL从数字工厂数据生成符号化的通用模糊规则。从神经网络不可能做到这一点。与基于判别神经网络和基于决策树的方法不同,FGAL是一种混合式生成-判别系统,可避免与判别式学习系统相关的新颖类别问题。 FGAL在烃二氯化物故障诊断问题上进行了测试,对于1.0%和1.5%的高斯噪声,分别显示98%和95.7%的诊断性能。开发的第二个系统是FGAL的扩展,通过对FGAL进行内核密度改造并使用隐马尔可夫模型对基础动态过程的时间分量进行随机建模。生成的混合生成-判别系统能够提取符号知识,仅使用相关维度进行分类,并且可以通过Baum-Welch方法学习HMM参数。该系统已在两个案例研究中成功进行了测试:重力罐和级联控制的连续搅拌罐反应器(CSTR),可正确诊断每个测试案例中的所有故障。第三种方法是基于模型的诊断系统(MBDS),基于半定量模糊定性模拟(Shen and Leitch,1993)。该系统利用部分过程知识来生成诊断过程的半定量模型,并定性地模拟异常条件下诊断系统的行为。引入的MBDS使用从离线生成的模型选择规则,对故障模型进行提前一步的模糊定性仿真,这与基于QSIM(Kuipers,1986)的MIMIC(Dvorak and Kuipers,1991)依赖跟踪不同,后者不适用于具有回收功能的系统和控制回路。该系统在重力罐和恒定滞留量CSTR上进行了测试。最后一种方法将数值间隔模拟产生的半定量动态边界行为包络转换为紧凑的,偶发的模糊规则集,这些规则集进一步用于监视所考虑的过程。配备基于距离和时间的置信度缩放和新颖的类检测机制,该系统已在重力罐和闭环CSTR案例研究中成功进行了测试。尽管CSTR的封套保守且高度重叠,但该系统仍能够在每个测试用例中检测出正确的故障。自动规则库生成功能有助于维护规则库和扩展故障库。

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