低通滤波器(有源)Multisim 14 Design File
2023-10-06 14:32:55 343KB 低通滤波器 Multisim
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本文讲解了 电源的电阻电容电感的无源滤波方式和原理,深入介绍了有源滤波-电子电路滤波的原理,附电路图. 非常实用
2023-10-06 14:27:55 104KB 电源滤波 电源整流
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为了降低滤波参数对单相有源滤波器(APF)的补偿效果的影响,提出了基于超稳定理论的模型跟随控制策略。首先对非线性APF模型线性化,并把线性化后的模型等价由前向回路和反馈回路构成,根据超稳定性理论,反馈回路满足波波夫积分不等式,前向回路的传递函数严格正实,由此设计自适应模型跟随控制律。仿真结果表明所提控制策略较PI控制的补偿效果更好,不仅可以有效消除电网谐波电流,而且具有更强的参数抑制能力。
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C++代码是直接调动摄像头,效率比较低,识别准确率也有待提高,有很大的优化空间。 https://blog.csdn.net/OEMT_301/article/details/103789392
2023-10-02 22:11:30 445KB 粒子滤波
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本资源是基于Java的Kalman滤波算法,可以作为一种性能较为优良的滤波器,滤去极端值。本资源可以直接将SRC文件夹中的两个子文件夹复制并使用。
2023-09-26 23:13:00 221KB Java 卡尔曼滤波 Kalman Filter
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stm32单片机AD采集常用的十种滤波算法
2023-09-26 11:15:39 1.59MB 单片机 stm32 算法 嵌入式硬件
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在VC中实现各种滤波 通过该工程实例可以熟练掌握在VC中如何实现信号滤波,并且代码可移植
2023-09-26 00:22:44 6.46MB 滤波 VC源代码
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各种有源无源滤波器设计,一阶二阶滤波器设计,非常详细,非常好用。
2023-09-21 14:55:15 1.17MB 滤波器,低通
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卡尔曼滤波在雷达目标跟踪中的应用 matlab程序 卡尔曼滤波在雷达目标跟踪中的应用 matlab程序 卡尔曼滤波在雷达目标跟踪中的应用 matlab程序 卡尔曼滤波在雷达目标跟踪中的应用 matlab程序
2023-09-16 13:31:52 29KB 卡尔曼 目标跟踪 matlab 程序
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1 Introduction 1 1.1 Chapter Focus, 1 1.2 On Kalman Filtering, 1 1.3 On Optimal Estimation Methods, 6 1.4 Common Notation, 28 1.5 Summary, 30 Problems, 31 References, 34 2 Linear Dynamic Systems 37 2.1 Chapter Focus, 37 2.2 Deterministic Dynamic System Models, 42 2.3 Continuous Linear Systems and their Solutions, 47 2.4 Discrete Linear Systems and their Solutions, 59 2.5 Observability of Linear Dynamic System Models, 61 2.6 Summary, 66 Problems, 69 References, 3 Probability and Expectancy 73 3.1 Chapter Focus, 73 3.2 Foundations of Probability Theory, 74 3.3 Expectancy, 79 3.4 Least-Mean-Square Estimate (LMSE), 87 3.5 Transformations of Variates, 93 3.6 The Matrix Trace in Statistics, 102 3.7 Summary, 106 Problems, 107 References, 110 4 Random Processes 111 4.1 Chapter Focus, 111 4.2 Random Variables, Processes, and Sequences, 112 4.3 Statistical Properties, 114 4.4 Linear Random Process Models, 124 4.5 Shaping Filters (SF) and State Augmentation, 131 4.6 Mean and Covariance Propagation, 135 4.7 Relationships Between Model Parameters, 145 4.8 Orthogonality Principle, 153 4.9 Summary, 157 Problems, 159 References, 167 5 Linear Optimal Filters and Predictors 169 5.1 Chapter Focus, 169 5.2 Kalman Filter, 172 5.3 Kalman–Bucy Filter, 197 5.4 Optimal Linear Predictors, 200 5.5 Correlated Noise Sources, 200 5.6 Relationships Between Kalman and Wiener Filters, 201 5.7 Quadratic Loss Functions, 202 5.8 Matrix Riccati Differential Equation, 204 5.9 Matrix Riccati Equation in Discrete Time, 219 5.10 Model Equations for Transformed State Variables, 223 5.11 Sample Applications, 224 5.12 Summary, 228 Problems, 232 References, 235 6 Optimal Smoothers 239 6.1 Chapter Focus, 239 6.2 Fixed-Interval Smoothing, 244 6.3 Fixed-Lag Smoothing, 256 6.4 Fixed-Point Smoothing, 268 7 Implementation Methods 281 7.1 Chapter Focus, 281 7.2 Computer Roundoff, 283 7.3 Effects of Roundoff Errors on Kalman Filters, 288 7.4 Factorization Methods for “Square-Root” Filtering, 294 7.5 “Square-Root” and UD Filters, 318 7.6 SigmaRho Filtering, 330 7.7 Other Implementation Methods, 346 7.8 Summary, 358 Problems, 360 References, 363 8 Nonlinear Approximations 367 8.1 Chapter Focus, 367 8.2 The Affine Kalman Filter, 370 8.3 Linear Approximations of Nonlinear Models, 372 8.4 Sample-and-Propagate Methods, 398 8.5 Unscented Kalman Filters (UKF), 404 8.6 Truly Nonlinear Estimation, 417 8.7 Summary, 419 Problems, 420 References, 423 9 Practical Considerations 427 9.1 Chapter Focus, 427 9.2 Diagnostic Statistics and Heuristics, 428 9.3 Prefiltering and Data Rejection Methods, 457 9.4 Stability of Kalman Filters, 460 9.5 Suboptimal and Reduced-Order Filters, 461 9.6 Schmidt–Kalman Filtering, 471 9.7 Memory, Throughput, and Wordlength Requirements, 478 9.8 Ways to Reduce Computational Requirements, 486 9.9 Error Budgets and Sensitivity Analysis, 491 9.10 Optimizing Measurement Selection Policies, 495 9.11 Summary, 501 Problems, 501 References, 502 10 Applications to Navigation 503 10.1 Chapter Focus, 503 10.2 Navigation Overview, 504
2023-09-15 18:26:06 43.47MB 清晰版
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