Reliable Filter Design of Fuzzy Switched Systems with Imprecise Modes

The problem of sensor failures is inevitable in real-world control systems due to harsh working environment, power supply instability, inescapable component aging and so on [1, 2, 3]. Much more attention has been paid to designing a reliable filter that can tolerate the admissible failures and work successfully, such as the reliable filter design for T–S fuzzy systems [4] and the adaptive reliable filtering problem for continuous-time linear systems [5].

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