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neurofuzzySVMinverter
- new control neuro fuzzy SVM applies to three voltage inverter
AForge.NET Framework-2.2.5
- AForge.NET是一个专门为开发者和研究者基于C#框架设计的,这个框架提供了不同的类库和关于类库的资源,还有很多应用程序例子,包括计算机视觉与人工智能,图像处理,神经网络,遗传算法,机器学习,机器人等领域。 这个框架由一系列的类库组成。主要包括有: AForge.Imaging -- 一些日常的图像处理和过滤器 AForge.Vision -- 计算机视觉应用类库 AForge.Neuro -- 神经网络计算库AForge.Genetic -进化算法编程库 AF
神经模糊预测控制及其matlab实现第3版matlab程序
- 《神经模糊预测控制及其matlab实现》(第3版)matlab程序(Neuro fuzzy predictive control and its matlab implementation (Third Edition) matlab program)
moi_jee
- Neuro-fuzzy control of Dual star induction machine
ANFIS Adaptive Neuro-Fuzzy Inference Systems
- paper of anfis, the original
Neuro-Fuzzy Systems A Survey
- lesson anfis, very good
ANFIS algorithm
- 自适应神经模糊推理系统的可运行实例,注释清楚易懂(Operable examples of adaptive neuro-fuzzy inference system)
anfismicrogrid
- Anfis microgrid system that simulates an microgrid by adaptive neuro fuzzy system
Neuro-Fuzzy and Soft Computing
- 本文提供了对神经模糊和软计算方法的综合处理。(This paper provides a comprehensive treatment of neural fuzzy and soft computing methods.)
neural networks
- 1.elman神经网络对输入波形进行检测 2.设计具有3个神经元的Hopfield网络 3.建立自适应神经模糊推理系统对非线性函数进行逼近(正弦加滞后) 4.建立自适应神经模糊推理系统对非线性函数进行逼近(正弦多项式) 5.利用模糊C均值聚类方法将一类随机给定的三维数据分为三类(1.Detection of input waveform by elman neural network 2. design a Hopfield network with 3 neurons 3. est
神经模糊预测控制及其matlab实现
- 神经模糊预测控制及其matlab实现,包含书籍中各类案例代码(Neuro-Fuzzy Predictive Control and Its Matlab Implementation)
Neuro-Fuzzy-master
- 模糊神经网络的实现 用于控制,优化等自动领域(Algoritmo de inferencia difusa ANFIS Takagi-sugeno)
LOLIMOT-master
- work, I have implemented a neuro-fuzzy neural network using Locally Linear Model Tree learning algorithm in order to predict chaotic time-series.
intelligent control
- 蔡自兴 智能控制课件,内含模糊控制及其数学基础, 分层递阶控制系统,专家控制系统,神经控制系统,自学习控制系统ppt,较为有用。(This is a zip including some advanced intelligent control systems theory, such as Fuzzy Control Systems, Hierarchical Control Systems, Neuro-Control Systems, Learning Control Systems. M
Adapative neuro fuzzy
- Matlab anfis file to To train a fuzzy system using ANFIS, the Fuzzy Logic Toolbox software uses a back-propagation algorithm either alone or in combination with a least-squares