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Artificial intelligence for monitoring and supervisory control of process systems

机译:人工智能用于过程系统的监视和监督控制

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Complex processes involve many process variables, and operators faced with the tasks of monitoring, control, and diagnosis of these processes often find it difficult to effectively monitor the process data, analyse current states, detect and diagnose process anomalies, or take appropriate actions to control the processes. The complexity can be rendered more manageable provided important underlying trends or events can be identified based on the operational data (Rengaswamy and Venkatasubramanian, 1992. An Integrated Framework for Process Monitoring, Diagnosis, and Control Using Knowledge-based Systems and Neural Networks. IFAC, Delaware, USA, pp. 49-54.). To assist plant operators, decision support systems that incorporate artificial intelligence (AI) and non-AI technologies have been adopted for the tasks of monitoring, control, and diagnosis. The support systems can be implemented based on the data-driven, analytical, and knowledge-based approach (Chiang et al., 2001. Fault Detection and Diagnosis in Industrial Systems. Springer, London, Great Britain). This paper presents a literature survey on intelligent systems for monitoring, control, and diagnosis of process systems. The main objectives of the survey are first, to introduce the data-driven, analytical, and knowledge-based approaches for developing solutions in intelligent support systems, and secondly, to present research efforts of four research groups that have done extensive work in integrating the three solutions approaches in building intelligent systems for monitoring, control and diagnosis. The four main research groups include the Laboratory of Intelligent Systems in Process Engineering (LISPE) at Massachusetts Institute of Technology, the Laboratory for Intelligent Process Systems (LIPS) at Purdue University, the Intelligent Engineering Laboratory (IEL) at the University of Alberta, and the Department of Chemical Engineering at University of Leeds. The paper also gives some comparison of the integrated approaches, and suggests their strengths and weaknesses.
机译:复杂的过程涉及许多过程变量,面对这些过程的监视,控制和诊断任务的操作员经常发现很难有效监视过程数据,分析当前状态,检测和诊断过程异常或采取适当措施进行控制流程。如果可以根据运营数据识别出重要的潜在趋势或事件,则可以使复杂性更易于管理(Rengaswamy和Venkatasubramanian,1992年。使用基于知识的系统和神经网络进行过程监控,诊断和控制的集成框架。美国特拉华州,第49-54页。)。为了协助工厂操作员,已将结合了人工智能(AI)和非AI技术的决策支持系统用于监视,控制和诊断任务。可以基于数据驱动,分析和基于知识的方法来实现支持系统(Chiang等人,2001年。《工业系统中的故障检测和诊断》,施普林格,伦敦,英国)。本文介绍了有关用于监视,控制和诊断过程系统的智能系统的文献综述。该调查的主要目标是,首先,介绍在智能支持系统中开发解决方案的数据驱动,分析和基于知识的方法,其次,介绍四个在整合该解决方案方面进行了大量工作的研究小组的研究成果。构建用于监视,控制和诊断的智能系统的三种解决方案。四个主要研究小组包括麻省理工学院的过程工程智能系统实验室(LISPE),普渡大学的智能过程系统实验室(LIPS),艾伯塔大学的智能工程实验室(IEL)和利兹大学化学工程系。本文还对集成方法进行了一些比较,并提出了它们的优缺点。

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