首页> 外文会议>9th International conference on fuel cell science, engineering, and technology 2011 >IMPLEMENTATION OF A MODEL-BASED METHODOLOGY AIMED AT DETECTING DEGRADATION AND FAULTY OPERATION IN SOFC SYSTEMS
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IMPLEMENTATION OF A MODEL-BASED METHODOLOGY AIMED AT DETECTING DEGRADATION AND FAULTY OPERATION IN SOFC SYSTEMS

机译:SOFC系统中用于检测退化和故障操作的基于模型的方法的实现

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The paper focuses on a model-based methodology aimed at developing suitable diagnostics strategies to detect degradation level and faulty operation in solid oxide fuel cell (SOFC) systems. The methodology is based on the "inverse" use of a 1-D SOFC stack model to estimate cell parameters from measured variables. Modeling features allow simulating both co- and counter-flow planar SOFC with a good compromise between accuracy and computational burden, thus enhancing final implementation in a variety of optimization procedures. Main objective is to identify those model parameters that are not directly measurable in the real SOFC system, e.g. electrolyte and electrode Ohmic resistance. The inputs are the real-system measurable variables, such as stack voltage and current, inlet mass flow and temperatures. Once unmeasurable variables are identified, they are compared to corresponding reference values to generate suitable residuals, depending on which SOFC stack faulty conditions can be eventually detected and isolated and the stack degradation state can be estimated. The proposed model-based algorithm is suitable in SOFC stack monitoring and diagnosis, thus offering a high potential tool for improving SOFC system safety and durability for on-field applications.
机译:本文着重于基于模型的方法,旨在开发合适的诊断策略来检测固体氧化物燃料电池(SOFC)系统中的退化水平和故障操作。该方法基于一维SOFC堆栈模型的“逆向”使用,以根据测量变量估算电池参数。建模功能允许在精确度和计算负担之间取得良好折衷的情况下模拟同流和逆流平面SOFC,从而增强了各种优化程序的最终实现。主要目标是确定在实际SOFC系统中无法直接测量的那些模型参数,例如电解质和电极的欧姆电阻。输入是实际系统可测量的变量,例如堆电压和电流,入口质量流量和温度。一旦确定了无法测量的变量,就将它们与相应的参考值进行比较,以生成合适的残差,这取决于最终可以检测和隔离哪些SOFC堆故障状况,并可以估计堆退化状态。所提出的基于模型的算法适用于SOFC堆栈监视和诊断,从而为提高SOFC系统的安全性和耐用性提供了一种潜在的工具。

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