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Fault Detection with Qualitative Models reduced by Tensor Decomposition methods

机译:用张量分解方法减少定性模型的故障检测

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The paper shows how a fault diagnosis algorithm based on stochastic automata as qualitative models can be improved by tensor decomposition methods to make it applicable to complex discrete-time systems. While exponential growth of the number of transitions of the automaton with the number of states, inputs and outputs of the system can in principle not be avoided, matrix representations of the automaton can be reduced by exploiting the underlying tensor structure of the behaviour relation. For non-negative CP tensor decomposition, algorithms are available that can be tuned by defining an order of the approximation. The example of a heat exchanger shows the applicability of the proposed method in situations where real measurement data of the nominal behaviour are available and the modelling effort has to be small.
机译:本文展示了如何通过张量分解方法改进基于随机自动机作为定性模型的故障诊断算法,使其适用于复杂的离散时间系统。虽然原则上无法避免自动机转变数量随系统状态,输入和输出数量的指数增长,但可以通过利用行为关系的基本张量结构来减少自动机的矩阵表示。对于非负CP张量分解,可以使用可以通过定义近似阶数进行调整的算法。以换热器为例,说明了该方法在标称性能的实际测量数据可用且建模工作量必须较小的情况下的适用性。

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