慣性基偏振羅盤定向信息處理技術(Information Processing Technology for Bioinspired Polarization Compass)
Donghua Zhao(趙東花)
- 出版商: 電子工業
 - 出版日期: 2024-03-01
 - 售價: $888
 - 語言: 簡體中文
 - 頁數: 220
 - ISBN: 7121474077
 - ISBN-13: 9787121474071
 - 
    相關分類:
    
      Machine Learning
 
下單後立即進貨 (約4週~6週)
商品描述
This book systematically and comprehensively elaborates on the intelligent information processing technology for a bioinspired polarization compass. The content of this book are briefly consisted of three parts. The research background and significance of intelligent information processing technology for a bioinspired polarization compass is introduced first, which analyzes the research status, development trends, and gap with foreign countries in the field of orientation methods based on atmospheric polarization pattern, as well as the processing methods of the orientation error for a bioinspired polarization compass and integrated system information processing. Subsequently, the noise components of a bioinspired polarization compass and the impact of noise on its directional accuracy is analyzed, introducing the denoising and orientation error compensation technique based on intelligent algorithms such as multi-scale principal component analysis and multi-scale adaptive time-frequency peak filtering. The third part focuses on the application of cubature Kalman filter and their improvement methods in seamless combination orientation systems based on a bioinspired polarization compass. A seamless combination orientation model under discontinuous observation conditions is proposed and a discontinuous observation algorithm based on neural networks is designed.
目錄大綱
Chapter1  Introduction	1
1.1  Development Background and Research Significance	1
1.2  Bioinspired polarization orientation method	3
1.3  Orientation error processing method for bioinspired polarization 
compass	13
1.4  Combined orientation system and method for bioinspired polarizaition 
compass/inertial navigation	20
Chapter2  Orientation Method and System for Atmospheric Polarization 
Pattern	27
2.1  Orientation method for atmospheric polarization pattern	28
2.1.1  Analysis and automatic identification of neutral point characteristics of atmospheric polarization pattern	28
2.1.2  Orientation algorithm based on solar meridian for imaging 
bioinspired polarization compass	32
2.2  Design and integration for bioinspired polarization compass based on 
FPGA	37
2.3  Verification of Bioinspired Polarization compass orientation test	41
2.3.1  Static orientation test	46
2.3.2  Turntable dynamic orientation test	48
2.3.3  UAV airborne dynamic orientation test	49
2.4  Chapter Summary	53
Chapter3  Processing technology for Bioinspired polarization 
compass noise	55
3.1  Noise analysis for bioinspired polarization compass	56
3.1.1  Analysis of the generation mechanism and characteristics for 
polarization angle image noise	56
3.1.2  Analysis of the generation mechanism and characteristics for heading 
angle data noise	63
3.2  Image denoising technology based on multi-scale transformation for bioinspired Polarization compass	65
3.2.1  Denoising technology for polarization angle image based on 
multi-scale transformation	68
3.2.2  MS-PCA Image Denoising Technology based on BEMD for 
Bioinspired Polarization Compass	72
3.2.3  Verification of MS-PCA polarization angle image denoising method 
based on BEMD	77
3.3  Heading data denoising technology based on multi-scale transformation 
for bioinspired polarization compass	92
3.3.1  Heading data denoising technology based on multi-scale 
transformation	93
3.3.2  MS-TFPF heading data denoising technology based on EEMD for 
bioinspired polarization compass	96
3.4  Verification of heading data denoising based on multi-scale 
transformation for bioinspired polarization compass	104
3.5  Chapter Summary	115
Chapter4  Orientation error modeling and compensation technology for 
Bioinspired polarization compass	118
4.1  Polarization orientation error analysis and model	119
4.1.1  Analysis of polarization orientation error	119
4.1.2  Model Construction for polarization orientation error	125
4.2  Typical neural network models	128
4.2.1  Recurrent Neural Networks (RNNs)	128
4.2.2  Long Short-Term Memory Neural Networks (LSTMs)	133
4.2.3  Gated Recurrent Unit Neural Networks (GRUs)	141
4.3  Modeling and compensation of orientation error based on GRU deep 
learning neural network for bioinspired polarization compass	145
4.4  Experimental verification of orientation error model based on GRU 
deep learning neural network for bioinspired polarization compass	152
4.5  Chapter summary	156
Chapter5  Seamless combined orientation method and system for bioinspired 
polarization compass/inertial navigation	158
5.1  Seamless combined orientation system for bioinspired polarization compass/inertial navigation	160
5.2  Seamless combination orientation model construction for bioinspired 
polarization compass/inertial navigation	162
5.3  Seamless combined orientation method based on self-learning 
multi-frequency residual correction for bioinspired polarization 
compass/inertial navigation	166
5.4  Experimental verification of the seamless combined orientation method 
for bioinspired polarization compass/inertial navigation	176
5.5  Chapter summary	185
Chapter6  Summary and prospect	187
6.1  Summary of intelligent information processing technology for 
bioinspired polarization compass	187
6.2  Research outlook	190
References	192
