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16 Will-be-set-by-IN-TECH

decision performance which is higher than the performance from traditional single sensor

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*College of Computer and Information Engineering, Guangxi Teachers Education University Key Lab of Scientific Computing & Intelligent Information Processing in Universities of Guangxi,*

application.

*China*

**Author details** Jiangtao Huang

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**Magnetic Bearings** 

