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Modeling and Simulation of Components in an Integrated Gasification Combined Cycle Plant for Developing Sensor Networks to Detect Faults.

机译:用于开发传感器网络以检测故障的集成气化联合循环工厂中组件的建模和仿真。

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摘要

The goal of this work is to help synthesize a sensor network to detect and diagnose faults and to monitor conditions of the key equipment items. The desired algorithm for sensor network design would provide information about the number, type and location of sensors that should be deployed for fault diagnosis and condition monitoring of a plant. In this work, the focus was on the integrated gasification combined cycle (IGCC) power plant where the faults at the equipment level and the plant level are considered separately. At the plant level, the objective is to observe whether a fault has occurred or not and identify the specific fault. For component-level faults, the objective is to obtain quantitative information about the extent of a particular fault. For the model-based sensor network design, high-fidelity process model of the IGCC plant is the key requirement.;For component level sensor placement, high-fidelity partial differential algebraic equation (PDAE)-based models are developed. Mechanistic models for faults are developed and included in the PDAE-based models. For system-level sensor placement, faults are simulated in the IGCC plant and the dynamic response of the process is captured. Both the steady-state and dynamic information are used to generate markers that are then utilized for sensor network design.;Whether faults in a particular equipment item should be considered at the unit level or system level depend on the criticality of the equipment item, its likelihood to failure, and the resolution desired for specific faults. In this work, the sour water gas shift reactor (SWGSR) and the gasifier are considered at the unit level. Fly ash may get deposited on the SWGSR catalyst and in the voids in the SWGSR resulting in decreased conversion of carbon monoxide. A MATLAB-based PDAE model of the SWGSR has been developed that considers key faults such as changes in the porosity, surface area, and catalyst activity. In a slagging gasifier, the molten slag that flows along the inner wall can penetrate into the refractory layer, and due to chemical corrosion and thermal and mechanical stress eventually result in thinning or spalling of the refractory. Extent of penetration of slag into the refractory wall and the spalling of the refractory are considered to be important variables for condition monitoring of the gasifier. In addition, as an increasing slag layer thickness can eventually lead to shutdown of the gasifier yet the slag layer thickness cannot be directly measured using the current measurement technology, slag layer thickness is also considered to be an important variable for condition monitoring. For capturing the slag formation, and detachment phenomena accurately, a novel hybrid shrinking core-shrinking particle (HSCSP) model is developed. For tracking the detached slag droplets and the char particles along the gasifier, a particle model is developed and integrated with the HSCSP model. A slag model is developed that captures the process of the detachment of the slag droplets from the char surface, transport of the droplets towards the wall, deposition of a fraction of the droplets on the wall and formation of a slag layer on the wall. Finally, a refractory degradation model is developed for calculating the penetration of the slag inside the wall and the size and time for a spall to occur due to the combined effects of volume change as a result of slag penetration as well as thermal and mechanical stresses.;System-level models are enhanced and faults are simulated spanning across various sections of the IGCC plant. For example, in the SELEXOL-based acid gas removal unit the available area in the trays of distillation columns may get reduced due to deposition of solids. This can result in loss of efficiency. Leakages in heat exchangers in this unit can result in the loss of expensive solvent or hazardous gases. In the combined cycle section, faults such as leakages and fouling in the heat exchangers, increased loss of heat through the combustor insulation that can result in loss of efficiency are simulated.;Sensor placement using a "two-tier" approach is also performed by developing a sensor network for a combined system that includes unit level as well as system level faults. A model of the gasification island is developed by integrating the SWGSR model developed in MATLAB with the model of the rest of the plant developed in Aspen Plus Dynamics. Since the two models are developed using different software platforms, an integration framework is developed that couples and synchronizes the two dynamic models. The sensor network obtained using the models developed in this work is found to be effective in observing and resolving faults both at the unit level as well as the plant level. (Abstract shortened by UMI.).
机译:这项工作的目的是帮助综合传感器网络以检测和诊断故障并监视关键设备的状况。用于传感器网络设计的期望算法将提供有关应该部署用于工厂的故障诊断和状态监视的传感器的数量,类型和位置的信息。在这项工作中,重点是集成气化联合循环(IGCC)发电厂,在该发电厂中,设备级别和工厂级别的故障是分开考虑的。在工厂一级,目的是观察是否发生故障并确定具体故障。对于组件级故障,目标是获得有关特定故障范围的定量信息。对于基于模型的传感器网络设计,IGCC工厂的高保真过程模型是关键要求。对于组件级传感器放置,开发了基于高保真偏微分代数方程(PDAE)的模型。开发了故障机制模型,并将其包含在基于PDAE的模型中。对于系统级传感器的放置,将在IGCC工厂中模拟故障,并捕获过程的动态响应。稳态和动态信息均用于生成标记,然后将其用于传感器网络设计。是否应在设备级别或系统级别考虑特定设备项目中的故障取决于设备项目的关键性,发生故障的可能性以及特定故障所需的分辨率。在这项工作中,将酸性水煤气变换反应器(SWGSR)和气化炉视为单元级的。粉煤灰可能沉积在SWGSR催化剂上和SWGSR的空隙中,从而导致一氧化碳转化率降低。已经开发了基于MATLAB的SWGSR的PDAE模型,该模型考虑了关键故障,例如孔隙率,表面积和催化剂活性的变化。在炉渣气化炉中,沿内壁流动的熔融炉渣会渗入耐火材料层,由于化学腐蚀以及热和机械应力,最终会导致耐火材料变薄或剥落。炉渣渗入耐火材料壁的程度和耐火材料的剥落被认为是气化炉状态监测的重要变量。另外,由于增加的炉渣层厚度最终会导致气化炉关闭,而炉渣层厚度不能使用当前的测量技术直接测量,因此炉渣层厚度也被认为是状态监测的重要变量。为了准确地捕获炉渣的形成和分离现象,开发了一种新型的混合收缩核收缩颗粒(HSCSP)模型。为了跟踪沿气化炉分离的渣滴和炭颗粒,开发了颗粒模型并将其与HSCSP模型集成。建立了一种渣模型,该模型捕获渣小滴从焦炭表面分离,小滴向壁的传输,小滴的一部分在壁上的沉积以及在壁上形成渣层的过程。最后,开发了一种难熔降解模型,用于计算炉渣在壁内的渗透以及由于炉渣渗透以及热应力和机械应力导致的体积变化的综合影响而导致的剥落的大小和时间。 ;增强了系统级模型,并模拟了IGCC工厂各个部分的故障。例如,在基于SELEXOL的酸性气体去除装置中,由于固体的沉积,蒸馏塔塔板中的可用面积可能会减少。这会导致效率降低。本机中热交换器的泄漏会导致昂贵的溶剂或有害气体损失。在联合循环部分,模拟了诸如热交换器中的泄漏和结垢,通过燃烧器绝热的热量损失增加(这些损失会导致效率损失)之类的故障。使用“两层”方法进行传感器放置为包括单元级以及系统级故障在内的组合系统开发传感器网络。通过将在MATLAB中开发的SWGSR模型与在Aspen Plus Dynamics中开发的其余工厂模型进行集成,可以开发出气化岛模型。由于这两个模型是使用不同的软件平台开发的,因此开发了一个集成框架,可以将两个动态模型耦合并同步。发现使用在这项工作中开发的模型获得的传感器网络可有效地观察和解决单元级别以及工厂级别的故障。 (摘要由UMI缩短。)。

著录项

  • 作者

    Pednekar, Pratik.;

  • 作者单位

    West Virginia University.;

  • 授予单位 West Virginia University.;
  • 学科 Chemical engineering.
  • 学位 Ph.D.
  • 年度 2016
  • 页码 220 p.
  • 总页数 220
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:40:18

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