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Discrete linear functional observer for the thermal estimation in power modules

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Academic year: 2021

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Figure

Fig. 1. Surface discretization of the heated plate into elementary surfaces (illustrative example)
Fig. 4. Discretization of the heated plate
Fig. 5. Simulation result of observer of order q = 3, for a discrete state model, with non identical initial conditions
Fig. 6. Simulation result of observer of order q = 14, for a state model of order 121, with non zero initial conditions

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