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一类考虑光学邻近效应的片内互连寄生电容提取方法
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作者 何剑春 王晓东 +2 位作者 章旌红 贾立新 王涌 《浙江工业大学学报》 CAS 2006年第5期538-540,545,共4页
大规模集成电路(ULSI)的高速发展使光刻中曝光线条的特征尺寸日益接近曝光系统的理论分辨极限,光学邻近效应可导致实际光刻版图的较大畸变.文中基于BEM和神经网络技术,通过定义等效长度概念,建立了一个计算寄生参数的小型专家系统NNCE,... 大规模集成电路(ULSI)的高速发展使光刻中曝光线条的特征尺寸日益接近曝光系统的理论分辨极限,光学邻近效应可导致实际光刻版图的较大畸变.文中基于BEM和神经网络技术,通过定义等效长度概念,建立了一个计算寄生参数的小型专家系统NNCE,以实现对光刻后实际版图的寄生电容参数的有效提取.一些简单环境中的矩形互连实例被用来比较光刻前后寄生参数的变化,数值模拟表明该方法具有良好的精度. 展开更多
关键词 nnce 光学邻近效应 寄生参数 边界元方法
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Neural Network Compact Ensemble and Its Applications
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作者 WANG Qinghua ZHANG Youyun ZHU Yongsheng 《Chinese Journal of Mechanical Engineering》 SCIE EI CAS CSCD 2010年第2期209-216,共8页
There has been many methods in constructing neural network (NN) ensembles, where the method of simultaneous training has succeed in generalization performance and efficiency. But just like regular methods of constru... There has been many methods in constructing neural network (NN) ensembles, where the method of simultaneous training has succeed in generalization performance and efficiency. But just like regular methods of constructing NN ensembles, it follows the two steps, first training component networks, and then combining them. As the two steps being independent, an assumption is used to facilitate interactions among NNs during the training stage. This paper presents a compact ensemble method which integrates the two steps of ensemble construction into one step by attempting to train individual NNs in an ensemble and weigh the individual members adaptively according to their individual performance in the same learning process. This provides an opportunity for the individual NNs to interact with each other based on their real contributions to the ensemble. The classification performance of NN compact ensemble (NNCE) was validated through some benchmark problems in machine learning, including Australian credit card assessment, pima Indians diabetes, heart disease, breast cancer and glass. Compared with other ensembles, the classification error rate of NNCE can be decreased by 0.45% to 68%. In addition, the NNCE was applied to fault diagnosis for rolling element bearing. The 11 time-domain statistical features are extracted as the properties of data, and the NNCE is employed to classify the data. With the results of several experiments, the compact ensemble method is shown to give good generalization performance. The compact ensemble method can recognize the different fault types and various fault degrees of the same fault type. 展开更多
关键词 neural network compact ensemble(nnce combination weights classification performance fault diagnosis
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