本文已被:浏览 1338次 下载 2993次
Received:April 09, 2012 Revised:May 09, 2012
Received:April 09, 2012 Revised:May 09, 2012
中文摘要: 针对BP 神经网络存在着容易陷入局部极小值且收敛速度慢的问题, 提出了一种基于改进禁忌算法和ANN(Artificial neural network)结合的故障诊断模型. 首先对故障诊断模型进行了定义, 然后使用训练数据对网络的权值、阀值等参数进行训练, 将训练结果作为改进禁忌优化算法的初始解进行全局寻优, 对改进的禁忌优化算法进行了定义和描述, 最后将全局寻优的结果代入神经网络中, 使用测试数据进行故障诊断. 通过仿真实验证明文中的方法与未经优化的ANN 故障诊断模型相比, 克服了传统方法的不足, 具
Abstract:Aiming at the traditional artificial neural network (ANN) has the problem of easily falling into the local minimum and the slow convergence, a fault diagnosis model based on Tabu search algorism combined with ANN was proposed. Firstly, the fault diagnosis model was defined, then the trained data was used to train the weight and the threshold of the network, and the trained result was used as the initial solution of the improved tabu search algorism, the definition and description of the algorism were given. Finally, the global optimization result was set to the neural network, and the test data was used to as the input of the neural network to diagnose. The simulation result shows that our method in this paper conquers the defects of the traditional methods, has the advantages of high diagnosis accuracy, rapid diagnosis speed and fast convergence.
文章编号: 中图分类号: 文献标志码:
基金项目:
Author Name | Affiliation |
CAO Feng-Hua | Computer Information Manage College, Inner Mongolia Finance and Economics College, Hohhot 010070, China |
Author Name | Affiliation |
CAO Feng-Hua | Computer Information Manage College, Inner Mongolia Finance and Economics College, Hohhot 010070, China |
引用文本:
曹风华.基于改进禁忌算法和ANN 的故障诊断推理.计算机系统应用,2012,21(11):165-169
CAO Feng-Hua.Fault Diagnosis Based on Improved Tabu Search Algorism and ANN.COMPUTER SYSTEMS APPLICATIONS,2012,21(11):165-169
曹风华.基于改进禁忌算法和ANN 的故障诊断推理.计算机系统应用,2012,21(11):165-169
CAO Feng-Hua.Fault Diagnosis Based on Improved Tabu Search Algorism and ANN.COMPUTER SYSTEMS APPLICATIONS,2012,21(11):165-169