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CMAC 的一种快速学习方法 被引量:2
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作者 张俊杰 杨艳丽 +1 位作者 尤昌德 王雅丽 《西安工业学院学报》 CAS 1997年第2期98-103,共6页
研究了小脑模型连接控制器(CMAC)的快速学习方法.首先分析了学习过程中学习干扰的原因及学习精度、学习次数、内存单元数之间的关系,然后基于内存单元的初始化和学习样本点的选择,构造了可快速精确地收敛于学习函数的快速学习... 研究了小脑模型连接控制器(CMAC)的快速学习方法.首先分析了学习过程中学习干扰的原因及学习精度、学习次数、内存单元数之间的关系,然后基于内存单元的初始化和学习样本点的选择,构造了可快速精确地收敛于学习函数的快速学习方法———初始化随机法. 展开更多
关键词 神经网络 CMAC 快速学习方法 小脑型控制器
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PCA-CMAC based machine performance degradation assessment 被引量:3
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作者 张蕾 曹其新 +1 位作者 Jay Lee Frank L. Lewis 《Journal of Southeast University(English Edition)》 EI CAS 2005年第3期299-303,共5页
A principal component analysis-cerebellar model articulation controller (PCA-CMAC) model is proposed for machine performance degradation assessment.PCA is used to feature selection,which eliminates the redundant inf... A principal component analysis-cerebellar model articulation controller (PCA-CMAC) model is proposed for machine performance degradation assessment.PCA is used to feature selection,which eliminates the redundant information among the features from the sensor signals and reduces the dimension of the input to CMAC.CMAC is used to assess degradation states quantitatively based on its local generalization ability.The implementation of the model is presented and the model is applied in a drilling machine to assess the states of the cutting tool. The results show that the model can assess the wear states quantitatively based on the normal state of the cutting tool.The influence of the quantization parameter g and the generalization parameter r in the CMAC model on the assessment results is analyzed.If g is larger,the generalization ability is better,but the difference of degradation states is not obvious.If r is smaller,the different states are distinct,but memory requirements for storing the weights are larger.The principle for selecting two parameters is that the memory storing the weights should be small while the degradation states should be easily distinguished. 展开更多
关键词 principal component analysis cerebellar model articulation controller (CMAC) performancedegradation assessment
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