The Orthogonality between Complex Fuzzy Sets and Its Application to Signal Detection
Abstract
:1. Introduction
2. Materials and Methods
- (i)
- 0 for all ,
- (ii)
- if then ,
- (iii)
- if then 0.
3. Results
- (i)
- If then .
- (ii)
- If then for any θ radians.
3.1. Complex Fuzzy Complement
3.2. Complex Fuzzy Union
3.3. Complex Fuzzy Intersection
- (i)
- : Sum (See Theorems 4 and 7);
- (ii)
- : Max, Min and Winner Take All (See Theorems 5 and 8);
3.4. Complex Fuzzy Inference
Premise: | X is ; |
Rule: | IF X is A, THEN Y is B; |
Consequence: | Y is (denote ). |
3.5. Example Application
- Step 1
- Normalize the amplitudes of all Fourier coefficients. Let be the vector of amplitudes of ’s Fourier coefficients, (). Let be the vector of amplitudes of ’s Fourier coefficients, (). Let be the normalized vector , where . Let be the normalized vector . Then is the vector of normalized amplitudes of ’s Fourier coefficients. is the vector of normalized amplitudes of R’s Fourier coefficients.
- Step 2
- Composition the t samples , for each signal (). Define new complex fuzzy sets as:Similarly, define a new complex set as:
- Step 3
- For each (), define its in-phase and quadrature terms, respectively, as:Similarly, define R’s in-phase and quadrature terms, respectively, as:
- Step 4
- Calculate the distance between () and R:
- Step 5
- In order to conclude if may be identified as R, compare to a threshold . If exceeds the threshold, identify as R.
4. Discussion and Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Hu, B.; Bi, L.; Dai, S. The Orthogonality between Complex Fuzzy Sets and Its Application to Signal Detection. Symmetry 2017, 9, 175. https://doi.org/10.3390/sym9090175
Hu B, Bi L, Dai S. The Orthogonality between Complex Fuzzy Sets and Its Application to Signal Detection. Symmetry. 2017; 9(9):175. https://doi.org/10.3390/sym9090175
Chicago/Turabian StyleHu, Bo, Lvqing Bi, and Songsong Dai. 2017. "The Orthogonality between Complex Fuzzy Sets and Its Application to Signal Detection" Symmetry 9, no. 9: 175. https://doi.org/10.3390/sym9090175
APA StyleHu, B., Bi, L., & Dai, S. (2017). The Orthogonality between Complex Fuzzy Sets and Its Application to Signal Detection. Symmetry, 9(9), 175. https://doi.org/10.3390/sym9090175