On-Line Monotonic Fault Diagnostics via Recursive Constrained Quadratic Programming

Vienna(2008)

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摘要
In this paper, we present a model-based approach for estimating fault conditions in a turbine. We formulate fault estimation as a convex optimization problem, where estimates are obtained by solving a quadratic program (QP). A moving horizon framework is used to enable recursive implementation of the QP of fixed size. The estimation scheme takes into account a priori known onotonicity constraints on the faults. Monotonicity implies that the fault conditions can only deteriorate with time. We validate the proposed estimation scheme on a sample of real data from a turbine. An excellent performance of the developed approach is demonstrated by detecting a developing failure while the unit is running at high normalized loads.
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excellent performance,developed approach,high normalized load,model-based approach,on-line monotonic fault diagnostics,fault estimation,estimation scheme,recursive constrained quadratic programming,convex optimization problem,proposed estimation scheme,fault condition,fixed size,convex optimization,data mining,quadratic programming,convex programming,kalman filter,quadratic program
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