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Circulating fluidized bed boiler state estimation with an unscented Kalman filter tool

机译:用无味卡尔曼滤波工具估算循环流化床锅炉状态

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The paper discusses the development of a state estimation tool for circulating fluidized bed (CFB) boiler dynamic hotloop models. Bayesian state estimation was used to determine inputs, states and time-variant parameters based on output observations. The goal was to apply advanced state estimation to the original nonlinear model and utilize it for reallife CFB applications. The main algorithm of the tool was the unscented Kalman filter (UKF), with an SIR particle filter as a backup solution. The implementation of the tool and the UKF algorithm were described. The tool was tested with two simulation cases. In the first case, fuel flows and an air leakage parameter were identified based on flue gas compositions for pilot oxy combustion measurements. In the second case, heat transfer coefficient and fuel moisture content values were estimated in an industrial boiler based on the dense bed furnace temperature and the flue gas O content. The results showed a good agreement between measurements and simulations, as well as a good computational performance for the UKF.
机译:本文讨论了用于循环流化床(CFB)锅炉动态热循环模型的状态估计工具的开发。贝叶斯状态估计用于基于输出观察来确定输入,状态和时变参数。目标是将高级状态估计应用于原始非线性模型,并将其用于现实的CFB应用程序。该工具的主要算法是无味卡尔曼滤波器(UKF),其中SIR粒子滤波器是备用解决方案。描述了该工具的实现和UKF算法。该工具已通过两个模拟案例进行了测试。在第一种情况下,基于烟气成分确定燃料流量和漏气参数,以进行先导氧燃烧测量。在第二种情况下,工业锅炉根据致密床炉温度和烟气O含量估算了传热系数和燃料水分含量值。结果表明,测量和仿真之间具有良好的一致性,并且UKF具有良好的计算性能。

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