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数据挖掘论文合集-242篇(part1)

于 2021-10-30 发布
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EIS 环境下的数据挖掘技术的研究.caj FCC油品质量指标智能监测系统的数据挖掘与修正技术.caj IDSS 中数据仓库和数据挖掘的研究与实现.caj InternetWeb数据挖掘研究现状及最新进展.caj Internet数据挖掘原理及实现.caj Min-Max模糊神经网络的应用研究.pdf OLAP与数据挖掘一体化模型的分析与讨论.caj OLAP和数据挖掘技术在Web日志上的应用.caj ON-LINE REDUCING MACHINING ERRORS IN BORING OPERATIONBY FORECASTING COMPENSATORY CONTROL TECHNIQUE.pdf SDSS中空间数据挖掘部件的设计与实现.kdh swlms.pdf Web上的数据挖掘技术和工具设计.kdh Web使用模式研究中的数据挖掘.caj Web数据挖掘技术及工具研究.kdh Web数据挖掘技术探讨.kdh Web数据挖掘的BN实现方案.kdh XML与面向Web的数据挖掘技术.caj 一个新的数据挖掘模型与算法.caj 一个面向电子商务的数据挖掘系统的设计与实现.caj 一种估计人工神经网络泛化误差的新方法.pdf 一种基于数据仓库的数据挖掘系统的结构框架.caj 一种基于神经网络的数据挖掘方法.caj 一种基于遗传算法的模糊神经网络最优控制.pdf 一种实时过程控制中的数据挖掘算法研究.caj 一种建立模糊模型的粗糙集方法.pdf 一种新型数据分析技术——数据挖掘.caj 一种新的高效关联规则数据挖掘算法.caj 一种有效的用于数据挖掘的动态概念聚类算法.caj 一种测试数据挖掘算法的数据源生成方法.caj 一种自适应模糊控制器.pdf 一类递归RBF神经网络模型的稳定性讨论.pdf 不确定性线性系统模型处理的一种新方法.pdf 中介粗集及其在数据挖掘中的应用.caj 二进神经网络隐元数目最小上界研究.pdf 以地物识别和分类为目标的高光谱数据挖掘.caj 信息技术在全球银行业的应用(六)——数据挖掘技术及其应用.kdh 信息技术在全球银行业的应用(六)——数据挖掘技术及其应用1.kdh 信息检索中的数据挖掘技术.caj 信息系统中一种面向粗糙集的数据挖掘方法.caj 全连接回归神经网络的稳定性分析.pdf 关注政府上网后的数据挖掘.kdh 决策支持分析新技术——数据挖掘.caj 分类特征规则的数据挖掘技术.caj 利用决策树进行数据挖掘中的信息熵计算.caj 利用模糊神经网络进行数据挖掘的一种算法.caj 前向网络bp算法在数据挖掘中的运用.caj 区间值属性不完全信息下的数据挖掘.caj 可视化数据挖掘技术及其应用.caj 在IDS中利用数据挖掘技术提取用户行为特征.caj 基于CORBA的数据挖掘工具KDD-DC.caj 基于Web的数据仓库与数据挖掘技术.caj 基于Web的数据挖掘技术及访问路径模式的研究.caj 基于XML的WEB数据挖掘技术.kdh 基于中心流形定理的永磁同步电动机模型的分支分析.pdf 基于云模型的Web日志数据挖掘技术.caj 基于代理的分布式数据挖掘系统设计.caj 基于信息熵的地学空间数据挖掘模型.caj 基于关联规则的舰艇故障诊断数据挖掘系统结构框架.caj 基于增强型算法并能自动生成规则的模糊神经网络控制器.pdf 基于多媒体数据库的数据挖掘系统原型.caj 基于小波理论的数据挖掘方法研究.caj 基于属性分类的数据挖掘方法.caj 基于改进Elman网的非线性系统的自适应建模与预估.pdf 基于数据抽取器实现数据挖掘.caj 基于数据挖掘建立动态人事管理决策系统.kdh 基于数据挖掘建立高校系科办学评估体系的合理性评价系统.caj 基于数据挖掘技术的抽油机泵参调整DSS决策支持系统.caj 基于数据挖掘方法的电子邮件过滤.caj 基于数据挖掘模型的高压输电线系统故障诊断.caj 基于数据挖掘的地下硐室围岩稳定性判别.caj 基于数据挖掘的普通话韵律规则学习.caj 基于数据挖掘的智能化入侵检测系统.caj 基于数据挖掘的深部采场岩爆知识的自动获取.caj 基于数据挖掘的知识发现在MDSS中的应用研究.caj 基于数据挖掘的类比推理技术在石油产品分析系统中的实现.caj 基于数据挖掘的类比推理技术在石油产品分析系统中的实现1.caj 基于数据挖掘的群决策模型.caj 基于智能化数据挖掘的高新技术监测分析技术研究.caj 基于模糊对向神经网络的非线性动态系统辨识器.pdf 基于模糊规则的非线性系统建模方法.pdf 基于模糊逻辑的一类非线性系统直接自适应控制.pdf 基于相联规则的数据挖掘理论.caj 基于知识应用的数据挖掘技术理论分析与应用研究.caj 基于神经网络的多模

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All rights reservedPublished by John Wiley sons, InC, Hoboken, New JerseyPublished simultaneously in CanadaNo part of this publication may be reproduced, stored in a retrieval system, or transmitted in any form or byany means, electronic, mechanical, photocopying, recording, scanning, or otherwise, except as permittedunder Section 107 or 108 of the 1976 United States Copyright Act, without either the prior writtenpermission of the Publisher, or authorization through payment of the appropriate per-copy fee to theCopyright Clearance Center, Inc, 222 Rosewood Drive, Danvers, MA 01923,(978)750-8400, fax(978)750-4470,oronthewebatwww.copyright.com.RequeststothePublisherforpermissionshouldbe addressed to the Permissions Department, John Wiley Sons, Inc, lll River Street, Hoboken, NJ07030,(201)748-6011,fax(201)748-6008,oronlineathttp://www.wiley.com/go/permissionimit of liability Disclaimer of Warranty: While the publisher and author have used their best efforts inpreparing this book, they make no representations or warranties with respect to the accuracy or completeness of the contents of this book and specifically disclaim any implied warranties of merchantability orfitness for a particular purpose. No warranty may be created or extended by sales representatives orwritten sales materials. The advice and strategies contained herein may not be suitable for your situationYou should consult with a professional where appropriate. Neither the publisher nor author shall be liablefor any loss of profit or any other commercial damages, including but not limited to special, incidentalconsequential, or other damagesFor general information on our other products and services or for technical support, please contact ourCustomer Care Department within the United States at(800)762-2974, outside the United States at(317)572-3993 or fax(317)572-4002Wiley also publishes its books in a variety of electronic formats. Some content that appears in print maynot be available in electronic format. For more information about wiley products, visit our web site atwww.wiley.comLibrary of Congress Cataloging- in-Publication DataGrewal. Mohinder sKalman filtering: theory and practice using MATLAB/Mohinder S. GrewalAngus p. andrews. 3rd edIncludes bibliographical references and indexISBN978-0-470-17366-4( cloth)1. Kalman filtering. 2. MATLAB. I. Andrews, Angus P. II. TitleQA402.3.G69520086298312—dc22200803733Printed in the United States of america10987654321CONTENTSPrefaceAcknowledgmentsXIIIList of abbreviationsXV1 General Information1.1 On Kalman Filtering1.2 On Optimal Estimation Methods, 51. 3 On the notation Used In This book 231. 4 Summary, 25Problems. 262 Linear Dvnamic Systems2. 1 Chapter focus, 312.2 Dynamic System Models, 362. 3 Continuous Linear Systems and Their Solutions, 402.4 Discrete Linear Systems and Their Solutions, 532.5 Observability of Linear Dynamic System Models, 552.6 Summary, 61Problems. 643 Random Processes and Stochastic Systems3.1 Chapter Focus, 673.2 Probability and random Variables (rvs), 703.3 Statistical Properties of RVS, 78CONTEN3.4 Statistical Properties of Random Processes(RPs),803.5 Linear rp models. 883.6 Shaping Filters and State Augmentation, 953.7 Mean and Covariance propagation, 993.8 Relationships between Model Parameters, 1053.9 Orthogonality principle 1143.10 Summary, 118Problems. 1214 Linear Optimal Filters and Predictors1314.1 Chapter Focus, 1314.2 Kalman Filter. 1334.3 Kalman-Bucy filter, 1444.4 Optimal Linear Predictors, 1464.5 Correlated noise Sources 1474.6 Relationships between Kalman-Bucy and wiener Filters, 1484.7 Quadratic Loss Functions, 1494.8 Matrix Riccati Differential Equation. 1514.9 Matrix Riccati Equation In Discrete Time, 1654.10 Model equations for Transformed State Variables, 1704.11 Application of Kalman Filters, 1724.12 Summary, 177Problems. 1795 Optimal Smoothers5.1 Chapter Focus, 1835.2 Fixed-Interval Smoothing, 1895.3 Fixed-Lag Smoothing, 2005.4 Fixed-Point Smoothing, 2135.5 Summary, 220Problems. 226 Implementation Methods2256. 1 Chapter Focus, 2256.2 Computer Roundoff, 2276.3 Effects of roundoff errors on Kalman filters 2326.4 Factorization Methods for Square-Root Filtering, 2386. 5 Square-Root and UD Filters, 2616.6 Other Implementation Methods, 2756.7 Summary, 288Problems. 2897 Nonlinear Filtering2937.1 Chapter Focus, 2937.2 Quasilinear Filtering, 296CONTENTS7.3 Sampling Methods for Nonlinear Filtering, 3307.4 Summary, 345Problems. 3508 Practical Considerations3558.1 Chapter Focus. 3558.2 Detecting and Correcting Anomalous behavior, 3568.3 Prefiltering and Data Rejection Methods, 3798.4 Stability of Kalman Filters, 3828. 5 Suboptimal and reduced- Order Filters, 3838.6 Schmidt-Kalman Filtering, 3938.7 Memory, Throughput, and wordlength Requirements, 4038.8 Ways to Reduce Computational requirements 4098.9 Error Budgets and Sensitivity Analysis, 4148.10 Optimizing Measurement Selection Policies, 4198.11 Innovations analysis, 4248.12 Summary, 425Problems. 4269 Applications to Navigation4279.1 Chapter focus, 4279.2 Host vehicle dynamics, 4319.3 Inertial Navigation Systems(INS), 4359. 4 Global Navigation Satellite Systems(GNSS), 4659.5 Kalman Filters for GNSS. 4709.6 Loosely Coupled GNSS/INS Integration, 4889.7 Tightly Coupled GNSS /INS Integration, 4919. 8 Summary, 507Problems. 508Appendix A MATLAB Software511A 1 Notice. 511A 2 General System Requirements, 511A 3 CD Directory Structure, 512A 4 MATLAB Software for Chapter 2, 512A. 5 MATLAB Software for Chapter 3, 512A6 MATLAB Software for Chapter 4, 512A. 7 MATLAB Software for Chapter 5, 513A 8 MATLAB Software for Chapter 6, 513A 9 MATLAB Software for Chapter 7, 514A10 MATLAB Software for Chapter 8, 515A 11 MATLAB Software for Chapter 9, 515A 12 Other Sources of software 516CONTENAppendix b A Matrix Refresher519B. 1 Matrix Forms. 519B 2 Matrix Operations, 523B 3 Block matrix Formulas. 527B 4 Functions of Square Matrices, 531B 5 Norms. 538B6 Cholesky decomposition, 541B7 Orthogonal Decompositions of Matrices, 543B 8 Quadratic Forms, 545B 9 Derivatives of matrices. 546Bibliography549Index565PREFACEThis book is designed to provide familiarity with both the theoretical and practicalaspects of Kalman filtering by including real-world problems in practice as illustrativeexamples. The material includes the essential technical background for Kalman filter-ing and the more practical aspects of implementation: how to represent the problem ina mathematical model, analyze the performance of the estimator as a function ofsystem design parameters, implement the mechanization equations in numericallystable algorithms, assess its computational requirements, test the validity of resultsitor the filteThetant attributes ofthe subject that are often overlooked in theoretical treatments but are necessary forapplication of the theory to real-world problemsIn this third edition, we have included important developments in the implemen-tation and application of Kalman filtering over the past several years, including adaptations for nonlinear filtering, more robust smoothing methods, and develelopingapplications in navigationWe have also incorporated many helpful corrections and suggefrom ourreaders, reviewers, colleagues, and students over the past several years for theoverall improvement of the textbookAll software has been provided in MatLab so that users can take advantage ofits excellent graphing capabilities and a programming interface that is very close tothe mathematical equations used for defining Kalman filtering and its applicationsSee Appendix a for more information on MATLAB softwareThe inclusion of the software is practically a matter of necessity because Kalmanfiltering would not be very useful without computers to implement it. It provides aMATLAB is a registered trademark of The Mathworks, IncEFACEbetter learning experience for the student to discover how the Kalman filter works byobserving it in actionThe implementation of Kalman filtering on computers also illuminates some of thepractical considerations of finite-wordlength arithmetic and the need for alternativealgorithms to preserve the accuracy of the results. If the student wishes to applywhat she or he learns, then it is essential that she or he experience its workingsand failings--and learn to recognize the differenceThe book is organized as a text for an introductory course in stochastic processes atthe senior level and as a first-year graduate-level course in Kalman filtering theory andapplicationIt can also be used for self-instruction or for purposes of review by practi-cing engineers and scientists who are not intimately familiar with the subject. Theorganization of the material is illustrated by the following chapter-level dependencygraph, which shows how the subject of each chapter depends upon material in otherchapters. The arrows in the figure indicate the recommended order of study. Boxesabove another box and connected by arrows indicate that the material represented bythe upper boxes is background material for the subject in the lower boxAPPENDIX B: A MATRIX REFRESHERGENERAL INFORMATION2. LINEAR DYNAMIC SYSTEMSRANDOM PROCESSES AND STOCHASTIC SYSTEMS4. OPTIMAL LINEAR FILTERS AND PREDICTORS5. OPTIMAL SMOOTHERS6. IMPLEMENTATIONMETHODS7. NONLINEAR8. PRACTICAL9. APPLICATIONSFILTERINGCONSIDERATIONSTO NAVIGATIONAPPENDIX A: MATLAB SOFTWAREChapter l provides an informal introduction to the general subject matter by wayof its history of development and application. Chapters 2 and 3 and Appendix b coverthe essential background material on linear systems, probability, stochastic processesand modeling. These chapters could be covered in a senior-level course in electricalcomputer, and systems engineeringChapter 4 covers linear optimal filters and predictors, with detailed examples ofapplications. Chapter 5 is a new tutorial-level treatment of optimal smoothing
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