Journal of Systems Engineering and Electronics ›› 2025, Vol. 36 ›› Issue (1): 1-14.doi: 10.23919/JSEE.2023.000167
• ELECTRONICS TECHNOLOGY •
Jiaqi TAN(), Tianpeng LIU(
), Weidong JIANG(
), Yongxiang LIU(
), Yun CHENG(
)
Received:
2022-08-15
Accepted:
2023-12-15
Online:
2025-02-18
Published:
2025-03-18
Contact:
Tianpeng LIU
E-mail:tanjiaqi17@sina.com;everliutianpeng@sina.cn;jwd2232@vip.163.com;lyx_bible@sina.com;moraincy@126.com
About author:
Supported by:
Jiaqi TAN, Tianpeng LIU, Weidong JIANG, Yongxiang LIU, Yun CHENG. Azimuth-dimensional RCS prediction method based on physical model priors[J]. Journal of Systems Engineering and Electronics, 2025, 36(1): 1-14.
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Table 1
Network module setting parameters"
Modules stack | Parameters | Value |
Scattering-center modules stack | Number of scattering-center modules | 4 |
Shared FC layers | 4 | |
FC layer size | 512 | |
Order of fractional polynomials | ||
Seasonality modules stack | Number of seasonality modules | 2 |
Shared FC layers | 4 | |
FC layer size | 256 | |
Harmonic number | 1 |
Table 2
RMSE comparison of four network prediction results"
Predicted azimuth/(°) | Network | |||
Improved N-BEATS | N-BEATS | LSTM | Season N-BEATS | |
0.1 | ||||
0.2 | ||||
0.3 | ||||
0.4 | ||||
0.5 | ||||
0.6 | ||||
0.7 | ||||
0.8 | ||||
0.9 | ||||
1.0 | ||||
1.1 | ||||
1.2 | ||||
1.3 | ||||
1.4 | ||||
1.5 | ||||
1.6 | ||||
1.7 | ||||
1.8 | ||||
1.9 | ||||
2.0 | ||||
2.1 | ||||
2.2 | ||||
2.3 | ||||
2.4 | ||||
2.5 | ||||
2.6 | ||||
2.7 | ||||
2.8 | ||||
2.9 | ||||
3.0 |
Table 3
Correlation coefficients comparison of four network prediction results"
Predicted azimuth/(°) | Network | |||
Improved N-BEATS | N-BEATS | LSTM | Season N-BEATS | |
0.1 | ||||
0.2 | ||||
0.3 | ||||
0.4 | ||||
0.5 | ||||
0.6 | ||||
0.7 | ||||
0.8 | ||||
0.9 | ||||
1.0 | ||||
1.1 | ||||
1.2 | ||||
1.3 | ||||
1.4 | ||||
1.5 | ||||
1.6 | ||||
1.7 | ||||
1.8 | ||||
1.9 | ||||
2.0 | ||||
2.1 | ||||
2.2 | ||||
2.3 | ||||
2.4 | ||||
2.5 | ||||
2.6 | ||||
2.7 | ||||
2.8 | ||||
2.9 | ||||
3.0 |
Table 5
RMSE results obtained by the proposed network predicting the other eight cones"
Predicted azimuth/(°) | Cone | |||||||
Cone 1 | Cone 2 | Cone 3 | Cone 4 | Cone 5 | Cone 6 | Cone 7 | Cone 8 | |
0.1 | ||||||||
0.3 | ||||||||
0.5 | ||||||||
0.7 | ||||||||
0.9 | ||||||||
1.1 | ||||||||
1.3 | ||||||||
1.5 | ||||||||
1.7 | ||||||||
1.9 | ||||||||
2.1 | ||||||||
2.3 | ||||||||
2.5 | ||||||||
2.7 | ||||||||
2.9 |
Table 6
Correlation coefficients results obtained by the proposed network predicting the other eight cones"
Predicted azimuth/( | Target | |||||||
Cone 1 | Cone 2 | Cone 3 | Cone 4 | Cone 5 | Cone 6 | Cone 7 | Cone 8 | |
0.1 | ||||||||
0.3 | ||||||||
0.5 | 09705 | |||||||
0.7 | ||||||||
0.9 | ||||||||
1.1 | ||||||||
1.3 | ||||||||
1.5 | ||||||||
1.7 | ||||||||
1.9 | ||||||||
2.1 | ||||||||
2.3 | ||||||||
2.5 | ||||||||
2.7 | ||||||||
2.9 |
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