登入帳戶  | 訂單查詢  | 購物車/收銀台( 0 ) | 在線留言板  | 付款方式  | 運費計算  | 聯絡我們  | 幫助中心 |  加入書簽
會員登入 新用戶登記
HOME新書上架暢銷書架好書推介特價區會員書架精選月讀2023年度TOP分類瀏覽雜誌 臺灣用戶
品種:超過100萬種各類書籍/音像和精品,正品正價,放心網購,悭钱省心 服務:香港台灣澳門海外 送貨:速遞郵局服務站

新書上架簡體書 繁體書
暢銷書架簡體書 繁體書
好書推介簡體書 繁體書

三月出版:大陸書 台灣書
二月出版:大陸書 台灣書
一月出版:大陸書 台灣書
12月出版:大陸書 台灣書
11月出版:大陸書 台灣書
十月出版:大陸書 台灣書
九月出版:大陸書 台灣書
八月出版:大陸書 台灣書
七月出版:大陸書 台灣書
六月出版:大陸書 台灣書
五月出版:大陸書 台灣書
四月出版:大陸書 台灣書
三月出版:大陸書 台灣書
二月出版:大陸書 台灣書
一月出版:大陸書 台灣書

『簡體書』Research on Multi UAVs Formation Detection and Its Extensions in Control Theory

書城自編碼: 3776952
分類:簡體書→大陸圖書→工業技術能源与动力工程
作者: 王建宏 著
國際書號(ISBN): 9787502488222
出版社: 冶金工业出版社
出版日期: 2021-06-01

頁數/字數: /
書度/開本: 16开 釘裝: 平装

售價:HK$ 70.8

我要買

 

** 我創建的書架 **
未登入.


新書推薦:
高颜值创意饮品:咖啡 茶饮 鸡尾酒 气泡水
《 高颜值创意饮品:咖啡 茶饮 鸡尾酒 气泡水 》

售價:HK$ 71.8
慢慢来,好戏都在烟火里
《 慢慢来,好戏都在烟火里 》

售價:HK$ 59.8
一间自己的房间
《 一间自己的房间 》

售價:HK$ 47.8
波段交易的高级技术:股票和期权交易者的资金管理、规则、策略和程序指南
《 波段交易的高级技术:股票和期权交易者的资金管理、规则、策略和程序指南 》

售價:HK$ 94.8
人,为什么需要存在感:罗洛·梅谈死亡焦虑
《 人,为什么需要存在感:罗洛·梅谈死亡焦虑 》

售價:HK$ 81.6
锁国:日本的悲剧
《 锁国:日本的悲剧 》

售價:HK$ 93.6
AI智能写作: 巧用AI大模型 让新媒体变现插上翅膀
《 AI智能写作: 巧用AI大模型 让新媒体变现插上翅膀 》

售價:HK$ 70.8
家庭养育七步法5:理解是青春期的通关密码
《 家庭养育七步法5:理解是青春期的通关密码 》

售價:HK$ 59.8

 

建議一齊購買:

+

HK$ 79.7
《 新能源系列--晶体硅光伏组件 》
+

HK$ 195.0
《 氢能工程:日本视角 》
+

HK$ 169.0
《 钙钛矿太阳能电池(第二版) 》
+

HK$ 107.5
《 氢能发展战略与前沿技术 》
+

HK$ 380.2
《 能源互联网 》
+

HK$ 57.0
《 让光伏驱动中国 》
內容簡介:
In Chapter 1 the idea of multi UAVs formation anomaly detection is proposed there, and its relations with system identification, advanced control theory are also introduced. After formulating the problem of multi UAVs formation anomaly detection as one system identification problem, then two special cases are considered about its linear or nonlinear form respectively. From the detailed description on multi UAVs formation anomaly detection problem in previous Chapter 1, other interesting topics exist still, such as the nonlinear dynamic model and control strategy, so in Chapter 2 other two improved identification methods are proposed to improve the identification accuracy. Furthermore, an improved ellipsoid optimization is extended to advanced control theory. In Chapter 3, we want to study the optimal input design for multi UAVs formation anomaly detection. In order to extend the theory on optimal input design, we extend our derived theory in one control strategy-internal model control. In Chapter 4, we change to detect and identify the flutter model parameters for multi UAVs formation. After our detailed formulation, we find that this problem corresponds to one parameter identification problem too. The ground target positioning and tra algorithm for cooperative detection of multi UAVs formation is studied in Chapter 5, where the problem of target tra or state estimation is reduced to build ellipsoidal approximation of the considered state, whose inner and outer ellipsoidal approximations are derived through two semidefinite programs. Due to some optimization problems exist in above chapters, and as the best of our knowledge that the optimization problem is one important step in the advanced model predictive control strategy, so the mission of the Chapter 6 is to consider the same optimization problem in this model predictive control strategy. It means that system identification is combined with the model predictive control, and the interval predictor estimation is applied into robust model predictive control in case of the unmodeled noise or disturbance. Concluding remarks are provided at the end of each chapter, and In Chapter 7 we then provide a brief summary of the results presented in this monograph and an outlook to pole directions for future research on these topics.
目錄
Chapter 1 Basic Knowledge for Multi UAVs Formation Anomaly Detection
1.1 Introduction
1.2 Bias Compensated Estimation in Multi UAVs Formation Anomaly Detection
1.2.1 Model Description
1.2.2 Anomaly Detection with Unbiased Estimation
1.2.3 Anomaly Detection with Biased Estimation
1.2.4 Simulation Example
1.3 Combining Recursive Projection and Dynamic Programming Technique in Multi UAVs Formation Anomaly Detection
1.3.1 System Description
I.3.2 Projection Algorithm with Dead Zone
1.3.3 Dynamic Programming Techniques in Anomaly Detection
1.4 Summary
Chapter 2 Synthesis Identification Analysis for Multi UAVs Formation Anomaly Detection and Its Extension
2.1 Introduction
2.2 Synthesis Analysis for Multi UAVs Formation Anomaly Detection
2.2.1 Multi UAVs Formation Anomaly Detection
2.2.2 Bias Compensated Approach for White Noir/> 2.2.3 An Analytic Center Approach for Bounded Noir/> 2.2.4 Simulation Example
2.3 An Improved Ellipsoid Optimization Algorithm in Subspace Predictive Control
2.3.1 Problem Formulation
2.3.2 Derivations of Output Predictorr/> 2.3.3 Improved Ellipsoid Optimization Algorithm
2.3.4 Simulation Example
2.4 Summary
Chapter 3 Optimal Input Design for Multi UAVs Formation Anomaly Detection and Its Extension
3.1 Introduction
3.2 Optimal Input Deign for Multi UAVs Formation Anomaly Detection
3.2.1 Problem Description
3.2.2 Optimal Input Design for Statistical Noir/> 3.2.3 Conclusion
3.3 Optimal Input Design for Internal Model Control
3.3.1 Internal Model Structure
3.3.2 Equivalence between Internal Model Control and Feedback Control
3.3.3 Some Asymptotic Results in Closed Loop System
3.3.4 Optimal Closed Loop Input Signal Design
3.3.5 Simulation Example
3.4 Summary
Chapter 4 Detection and Identification for Multi UAVs Formation Flutter Model Parameterr/> 4.1 Introduction
4.2 Combing Instrumental Variable and Variance Matching
4.2.1 Stochastic Model for Aircraft Flutter Ter/> 4.2.2 Analysis Procer/> 4.2.3 Instrumental Variable Variance Method
4.2.4 Asymptotic Analysir/> 4.2.5 Simulation Exampler/> 4.3 Set Membership Identification
4.3.1 System Description
4.3.2 Analysis Procer/> 4.3.3 Set Membership Identification
4.3.4 Simulation Example
4.4 Summary
Chapter 5 Target Tra for Multi UAVs Formation Cooperative Detection
5.1 Introduction
5.2 Application of Ellipsoidal Approximation
5.2 .] Ground Target Positioning System
5.2.2 Unscented Kalman Filter Algorithm for Target Tra Procer/> 5.2.3 Building Ellipsoidal Approximation
5.2.4 Further Analysis on Alternative Formr/> 5.2.5 Simulation Example
5.3 Summary
Chapter 6 Some Extensions in Robust Model Predictive Control Based on Interval Predictor Estimation
6.1 Introduction
6.2 Basic Priori Knowledge
6.3 Some Preliminarieout State Space Equation and Interval Predictor
6.4 Interval Predictor
6.4.1 Construction of Interval Predictor
6.4.2 Explicit Form for Interval Predictor
6.5 Robust Model Predictive Control Based on Interval Predictor
6.6 Solving Min-max Optimization
6.6.1 Analysis Procer/> 6.6.2 Gradient Projection Method
6.6.3 Simulation Exampler/> 6.7 Summary
Chapter 7 Conclusions and Outlook
7.1 Conclusionr/> 7.2 Outlook
Referencer/>

 

 

書城介紹  | 合作申請 | 索要書目  | 新手入門 | 聯絡方式  | 幫助中心 | 找書說明  | 送貨方式 | 付款方式 香港用户  | 台灣用户 | 大陸用户 | 海外用户
megBook.com.hk
Copyright © 2013 - 2024 (香港)大書城有限公司  All Rights Reserved.