[关键词]
[摘要]
摘 要:利用CEEMDAN对转子振动信号进行分解,提取PE(排列熵)作为故障特征值,并构造特征向量;其次将混沌理论引入到BBO(生物地理学优化算法)中,得到CBBO,通过CBBO优化SVM得到诊断模型的最优参数。最后通过ZT-3转子试验台模拟汽轮机转子故障,利用得到的4种状态下的试验数据验证优化模型的有效性与先进性。结果表明:CBBO优化SVM模型可以准确、高效地对汽轮机转子进行故障诊断;与CPSO(混沌粒子群算法)优化SVM模型相比,该方法的故障诊断准确率和识别效率更高。
[Key word]
[Abstract]
To enhance the accuracy and identification efficiency to diagnose any faults in the rotor of a steam turbine,proposed was a method for diagnosing any faults based on a combination of the CEEMDAN and CBBOSVM.Firstly,the CEEMDAN was employed to perform a decomposition of the vibration signals from rotors,extract the permutation entropy (PE) as the fault characteristic values and create the characteristic vectors.Subsequently,the chaos theory was introduced into the BBO to obtain a CBBObased algorithm and the optimum parameters of the diagnostic model by optimizing the SVM through the adoption of the CBBO.Finally,the fault of the rotor of the steam turbine was simulated on the ZT-3 rotor test rig and the test data obtained in the four states were utilized to verify the effective ness and advanced nature of the optimization model.It has been found that to optimize the SVM model by using the CBBO can accurately and efficiently diagnose any faults of steam turbine rotors.Compared with CPSO (chaos particle swarm optimization)based SVM model,the method in question has an even higher accuracy and identification efficiency to diagnose any faults.
[中图分类号]
TK267
[基金项目]
国家自然科学基金(51576036);吉林省科技发展计划项目(20100506)