Affiliation:
1. Aviation University of Air Force
2. Aviation University of Air Force of PLA
Abstract
The zero drift of sensor and its solution are presented in this paper. The basic principle of data fusion with two-dimensional regression analysis is expounded and the experimental data of any pressure sensor are fused with the two-dimensional regression analysis. Besides, the input-output mathematical model of sensor under the influence of temperature is established. At last, the linear, fitting and fusion methods are compared.
Publisher
Trans Tech Publications, Ltd.
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