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基于改进神经网络的少齿差行星齿轮参数优化设计 被引量:2
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作者 吕俊峰 陈小安 赵孟娜 《重庆理工大学学报(自然科学)》 CAS 2012年第2期55-59,共5页
在对少齿差行星齿轮进行结构分析的基础上,根据其传动特点和设计要求,运用模糊数学的原理进行了模糊可靠性分析,建立了可靠性数学模型,将模糊设计优化模型转化为了常规的优化模型。通过所建立的模型可以实现最优参数选取,同时针对传统B... 在对少齿差行星齿轮进行结构分析的基础上,根据其传动特点和设计要求,运用模糊数学的原理进行了模糊可靠性分析,建立了可靠性数学模型,将模糊设计优化模型转化为了常规的优化模型。通过所建立的模型可以实现最优参数选取,同时针对传统BP神经网络的不足,将模拟退火和BP网络相结合,设计了一种新型的改进神经网络。实验结果表明,此种算法得出的绝对误差和相对误差都较小。 展开更多
关键词 少齿差行星齿轮 bp神经函数 模拟退火 模糊可靠性
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Application of BP NN and RBF NN in Modeling Activated Sludge System 被引量:6
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作者 王维斌 郑丕谔 李金勇 《Transactions of Tianjin University》 EI CAS 2003年第3期235-240,共6页
Based on the operation data from a certain wastewater treatment plant(WWTP) in northeast China, the models of back propagation neural network(BP NN) and radial basis function neural network(RBF NN) have been designed ... Based on the operation data from a certain wastewater treatment plant(WWTP) in northeast China, the models of back propagation neural network(BP NN) and radial basis function neural network(RBF NN) have been designed respectively and the ability of convergence and generalization has been analyzed separately. As for BP NN, the effects of numbers of layers and nodes have been studied; as for RBF NN, the influences of the number of nodes and the RBF′s width have been studied. It is concluded that BP NN has converged much slowly in comparison with RBF NN. The conclusion that the RBF NN is suitable for modeling activated sludge system has been drawn. An automatically optimum design program for RBF NN has been developed, through which the RBF NN model of traditional activated sludge system has been established. 展开更多
关键词 back propagation neural network(bp NN) radial basis function neural network(RBF NN) MODELING activated sludge
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Prediction of Subcellular Localization of Eukaryotic Proteins Using Position-Specific Profiles and Neural Network with Weighted Inputs 被引量:3
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作者 邹凌云 王正志 黄教民 《Journal of Genetics and Genomics》 SCIE CAS CSCD 北大核心 2007年第12期1080-1087,共8页
Subcellular location is one of the key biological characteristics of proteins. Position-specific profiles (PSP) have been introduced as important characteristics of proteins in this article. In this study, to obtain... Subcellular location is one of the key biological characteristics of proteins. Position-specific profiles (PSP) have been introduced as important characteristics of proteins in this article. In this study, to obtain position-specific profiles, the Position Specific lterative-Basic Local Alignment Search Tool (PSI-BLAST) has been used to search for protein sequences in a database. Position-specific scoring matrices are extracted from the profiles as one class of characteristics. Four-part amino acid compositions and lst-7th order dipeptide compositions have also been calculated as the other two classes of characteristics. Therefore, twelve characteristic vectors are extracted from each of the protein sequences. Next, the characteristic vectors are weighed by a simple weighing function and inputted into a BP neural network predictor named PSP-Weighted Neural Network (PSP-WNN). The Levenberg-Marquardt algorithm is employed to adjust the weight matrices and thresholds during the network training instead of the error back propagation algorithm. With a jackknife test on the RH2427 dataset, PSP-WNN has achieved a higher overall prediction accuracy of 88.4% rather than the prediction results by the general BP neural network, Markov model, and fuzzy k-nearest neighbors algorithm on this dataset. In addition, the prediction performance of PSP-WNN has been evaluated with a five-fold cross validation test on the PK7579 dataset and the prediction results have been consistently better than those of the previous method on the basis of several support vector machines, using compositions of both amino acids and amino acid pairs. These results indicate that PSP-WNN is a powerful tool for subcellular localization prediction. At the end of the article, influences on prediction accuracy using different weighting proportions among three characteristic vector categories have been discussed. An appropriate proportion is considered by increasing the prediction accuracy. 展开更多
关键词 subcellular localization PSI-BLAST position-specific scoring matrices weighting function bp neural network
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Leak Detection in Water Distribution Systems Using Bayesian Theory and Fisher’s Law 被引量:1
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作者 张宏伟 王丽娟 《Transactions of Tianjin University》 EI CAS 2011年第3期181-186,共6页
A leak detection method based on Bayesian theory and Fisher’s law was developed for water distribution systems. A hydraulic model was associated with the parameters of leaks (location, extent). The randomness of para... A leak detection method based on Bayesian theory and Fisher’s law was developed for water distribution systems. A hydraulic model was associated with the parameters of leaks (location, extent). The randomness of parameter values was quantified by probability density function and updated by Bayesian theory. Values of the parameters were estimated based on Fisher’s law. The amount of leaks was estimated by back propagation neural network. Based on flow characteristics in water distribution systems, the location of leaks can be estimated. The effectiveness of the proposed method was illustrated by simulated leak data of node pressure head and flow rate of pipelines in a test pipe network, and the leaks were spotted accurately and renovated on time. 展开更多
关键词 water distribution systems LEAK DETECTION EPANET Fisher's law Bayesian theory back propagationneural network
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三种森林生物量估测模型的比较分析 被引量:45
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作者 范文义 张海玉 +2 位作者 于颖 毛学刚 杨金明 《植物生态学报》 CAS CSCD 北大核心 2011年第4期402-410,共9页
森林生物量的定量估算为全球碳储量、碳循环研究提供了重要的参考依据。该研究采用黑龙江长白山地区的TM影像和133块森林资源一类清查样地的数据,选取地学参数、遥感反演参数等71个自变量分别构建多元逐步回归模型、传统BP(back propaga... 森林生物量的定量估算为全球碳储量、碳循环研究提供了重要的参考依据。该研究采用黑龙江长白山地区的TM影像和133块森林资源一类清查样地的数据,选取地学参数、遥感反演参数等71个自变量分别构建多元逐步回归模型、传统BP(back propagation)神经网络模型和基于高斯误差函数的BP神经网络改进模型(Gaussian error function,Erf-BP),进而估算该地区的森林生物量,并进行比较分析。结果表明,多元逐步回归模型估测的森林生物量预测精度为75%,均方根误差为26.87t·m-2;传统BP神经网络模型估测森林生物量的预测精度为80.92%,均方根误差为21.44t·m-2;Erf-BP估测森林生物量的预测精度为82.22%,均方根误差为20.83t·m-2。可见,改进后的Erf-BP能更好地模拟生物量与各个因子之间的关系,估算精度更高。 展开更多
关键词 生物量 bp神经网络模型 基于高斯误差函数bp神经网络改进模型 多元逐步回归
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