Centralized H∞ Fusion Filter Design in Multi-Sensor Data Fusion System
نویسندگان
چکیده
Some multi-sensor fusion systems are not asymptotic stable like target tracking system. When using classical H∞ filtering theory to design the fusion filter for these systems, there are no feasible solutions to the problem. Applying H∞ theory and LMI methods to design the H∞ fusion filter for those kind of fusion systems, in which the process and measurement noise have unknown statistic characteristic but bounded power, a new approach is presented in this paper. Finally, an example is given to illustrate the effectiveness of our method. Keywords—H∞ filtering, multi-sensor data fusion, LMI
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