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基于BP神经网络的SAR干扰效果评估 被引量:12
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作者 刘鹏军 马孝尊 +2 位作者 武忠国 王岩 刘志浩 《舰船电子工程》 2009年第2期88-90,98,共4页
将BP神经网络引入SAR干扰效果评估过程,根据干扰效果评定诸因素构造合适的指标作为网络输入,网络输出为干扰效果所对应的等级划分,然后利用训练样本对网络进行学习和训练。仿真结果表明,这种方法是可行的,减少了评估过程中人为因素的干... 将BP神经网络引入SAR干扰效果评估过程,根据干扰效果评定诸因素构造合适的指标作为网络输入,网络输出为干扰效果所对应的等级划分,然后利用训练样本对网络进行学习和训练。仿真结果表明,这种方法是可行的,减少了评估过程中人为因素的干扰,使得评估结果更为准确、可靠。 展开更多
关键词 合成孔径雷达BP神经网络 干扰效果评估
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Compositional optimization of glass forming alloys based on critical dimension by using artificial neural network 被引量:2
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作者 蔡安辉 熊翔 +6 位作者 刘咏 安伟科 周果君 罗云 李铁林 李小松 谭湘夫 《Transactions of Nonferrous Metals Society of China》 SCIE EI CAS CSCD 2014年第5期1458-1466,共9页
An artificial neural network (ANN) model was developed for simulating and predicting critical dimension dc of glass forming alloys. A group of Zr-Al-Ni-Cu and Cu-Zr-Ti-Ni bulk metallic glasses were designed based on... An artificial neural network (ANN) model was developed for simulating and predicting critical dimension dc of glass forming alloys. A group of Zr-Al-Ni-Cu and Cu-Zr-Ti-Ni bulk metallic glasses were designed based on the dc and their de values were predicted by the ANN model. Zr-Al-Ni-Cu and Cu-Zr-Ti-Ni bulk metallic glasses were prepared by injecting into copper mold. The amorphous structures and the determination of the dc of as-cast alloys were ascertained using X-ray diffraction. The results show that the predicted de values of glass forming alloys are in agreement with the corresponding experimental values. Thus the developed ANN model is reliable and adequate for designing the composition and predicting the de of glass forming alloy. 展开更多
关键词 critical dimension glass forming alloy artificial neural network metallic glasses
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Analysis and Prediction of Sintering Behavior of Diphase Sialon and Diphase β—Sialon/Alumina Composites by Artificial Neural Network 被引量:1
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作者 LIYoufen HONGYanruo 《China's Refractories》 CAS 1997年第4期3-8,共6页
In this paper,the sintering behavior of diphase β-Sialon and Al2O3/diphase β-Sialon composites has been studied and predicted by using ANN (Artificial Neural Network) method.It is found that relative density is well... In this paper,the sintering behavior of diphase β-Sialon and Al2O3/diphase β-Sialon composites has been studied and predicted by using ANN (Artificial Neural Network) method.It is found that relative density is well correlated with phase composition and sintering temperature and that the predicted values by this method are very clos to experimental results.Effectiveness of modeling has been discussed nd analyzed by presenting formulas, This may be the first attempt of applying ANN mthod in the study of refractories science and has indicated that ANN is an efficeint method. 展开更多
关键词 烧结 复相硅铝氧氮聚合材料 氧化铝 矾土 耐火材料 陶瓷材料 合成神经网络
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Synthetic Intelligent Fault Diagnosis Technology for Complex Process 被引量:1
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作者 刘晓颖 GuiWeihua 《High Technology Letters》 EI CAS 2002年第2期72-75,共4页
A fault diagnosis method of knowledge based fuzzy neural network is proposed for complex process, which is hard to develop practical mathematical model. Fault detection is performed through a knowledge based system, w... A fault diagnosis method of knowledge based fuzzy neural network is proposed for complex process, which is hard to develop practical mathematical model. Fault detection is performed through a knowledge based system, where fault detection heuristic rules have been generated from deep and shallow knowledge of the process. The fuzzy neural network performs the fault diagnosis task. This method does not need practical mathematical models of objects, so it is a strong implement for complex process. 展开更多
关键词 fault detection fault diagnosis knowledge based system fuzzy neural network
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Estimation of half-wave potential of anabolic androgenic steroids by means of QSER Approach
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作者 戴益民 刘辉 +3 位作者 牛兰利 陈聪 陈晓青 刘又年 《Journal of Central South University》 SCIE EI CAS CSCD 2016年第8期1906-1914,共9页
The quantitative structure-property relationship(QSPR) of anabolic androgenic steroids was studied on the half-wave reduction potential(E1/2) using quantum and physico-chemical molecular descriptors. The descriptors w... The quantitative structure-property relationship(QSPR) of anabolic androgenic steroids was studied on the half-wave reduction potential(E1/2) using quantum and physico-chemical molecular descriptors. The descriptors were calculated by semi-empirical calculations. Models were established using partial least square(PLS) regression and back-propagation artificial neural network(BP-ANN). The QSPR results indicate that the descriptors of these derivatives have significant relationship with half-wave reduction potential. The stability and prediction ability of these models were validated using leave-one-out cross-validation and external test set. 展开更多
关键词 anabolic androgenic steroids half-wave reduction potential model validation quantitative structure-electrochemistry relationship
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Simulation and optimization for synthetic technology of 2-chloro-4,6-dinitroresorcinol based on back-propagation neural network
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作者 史瑞欣 Huang Yudong 《High Technology Letters》 EI CAS 2007年第3期283-286,共4页
Back-propagation neural network was applied to predict and optimize the synthetic technology of 2-chloro-4,6-dinitroresorcinol. A model was established based on back-propagation neural network using the experimental d... Back-propagation neural network was applied to predict and optimize the synthetic technology of 2-chloro-4,6-dinitroresorcinol. A model was established based on back-propagation neural network using the experimental data of homogeneous design as the training sample set and the technological parameters were optimized by it. The optimal technological parameters are as follows: the reaction time is 4h, the reaction temperature is 80℃, the molar ratio of NaOH to 4,6-dinitro-1,2,3-trichlorobenzene is 5.5:1, the molar ratio of methanol to 4,6-dinitro-1,2,3- trichlorobenzene is 11:1, and the molar ratio of water to 4,6-dinitro-1,2,3-trichlorobenzene is 70:1. Under the optimal conditions, three groups of experiments were performed and the average yield of 2-chloro-4,6-dinitroresorcinol is 96.64%, the absolute error of it with the predicted value is -1.07%. 展开更多
关键词 2-chlom-4 6-dinitroresorcinol synthetic technology OPTIMIZATION back-propagation neural network model constructing
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Application of data fusion on multi-function earth drill
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作者 胡长胜 赵伟民 +3 位作者 李瑰贤 杨春蕾 牛红 胡长军 《Journal of Harbin Institute of Technology(New Series)》 EI CAS 2003年第1期89-92,共4页
taking the bucket of multi function earth drill as an example, combining with the conception of multi sensor integration and data fusion, adopting the terrene column chart and digging torque formula as control depende... taking the bucket of multi function earth drill as an example, combining with the conception of multi sensor integration and data fusion, adopting the terrene column chart and digging torque formula as control dependence, the detecting method of the earth drill’s working state is introduced. Multi sensor data fusion is done with the aid of BP neural network in Matlab. The data to be interfused are pre processed and the program of simulation and “point checking” is given. 展开更多
关键词 multi function earth drill multi sensor integration and data fusion normalization preprocessing simulation experiment
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