Application of adaptive Kalman filtering technique for the diagnostic system of nuclear power plants

J. Wakabayashi, Akira Fukumoto, Shin-ichi Tashima, Isao Kawahara
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引用次数: 2

Abstract

The authors propose a diagnostic system of nuclear power plants which is composed of three blocks, i.e. 1) detection and classification block, 2) disturbance estimation block and 3) storage of past observed signals. In the block-1, a set of observed signals is identified with one of the categories prescribed to present the normal and several anomalous situations in multidimentional space, where the linear discriminant functions basing maximum likelihood technique are utilized. An approximate linear dynamic model for the individual prescribed anomalous state is identified beforehand, where the disturbance and several assumed variables are utilized in a dynamic model and a observed vector is composed of several selected observed signals. The Kalman filters for all anomalous categories are obtained using corresponding dynamic models, and they are provided in the block-2. When the present state is identified to one of the prescribed anomalous situations by the block-1, a Kalman filter corresponding to the identified category is selected from the block-2, and the disturbance is estimated using the past observed signals obtained from the block-3 and future coming signals. The linear discriminate functions and the approximate linear dynamic models are derived using the data base of prescribed categories obtained from the accurate plant simulator. The database will be improved by the experience of actual plant. The effectiveness of this diagnostic system was examined by the computer experiment. The results show that classification of the present operating state and estimation of disturbance are available with reasonable reliability and reasonable computation time.
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自适应卡尔曼滤波技术在核电厂诊断系统中的应用
提出了一种核电厂故障诊断系统,该系统由三个模块组成:1)检测与分类模块,2)干扰估计模块和3)过去观测信号的存储模块。在block-1中,一组观测信号被识别为在多维空间中表示正常和几种异常情况的规定类别之一,其中使用基于最大似然技术的线性判别函数。预先确定了单个指定异常状态的近似线性动态模型,其中在动态模型中利用扰动和几个假设变量,并由几个选定的观测信号组成观测向量。所有异常类别的卡尔曼滤波器都是使用相应的动态模型得到的,它们在block-2中提供。当当前状态被block-1识别为规定的异常情况之一时,从block-2中选择与识别类别对应的卡尔曼滤波器,并使用从block-3中获得的过去观测信号和未来即将到来的信号来估计干扰。利用精确植物模拟器获得的规定类别数据库,建立了线性判别函数和近似线性动态模型。该数据库将通过实际工厂的经验加以改进。通过计算机实验验证了该诊断系统的有效性。结果表明,该方法具有较好的可靠性和较合理的计算时间,可以对系统的运行状态进行分类和干扰估计。
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