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基于改进超限学习机的制造过程质量监控模型 被引量:1
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作者 杨阳 赵章红 张帅 《机床与液压》 北大核心 2023年第5期128-133,共6页
针对超限学习机识别模型在制造过程质量异常模式识别中存在输入权值和偏置向量随机设置导致识别效率低的问题,通过粒子群优化算法对超限学习机模型的网络结构进行优化,提出一种基于改进超限学习机的制造过程质量监控模型。利用主成分分... 针对超限学习机识别模型在制造过程质量异常模式识别中存在输入权值和偏置向量随机设置导致识别效率低的问题,通过粒子群优化算法对超限学习机模型的网络结构进行优化,提出一种基于改进超限学习机的制造过程质量监控模型。利用主成分分析方法进行过程质量数据的特征提取,利用主成分特征对识别模型进行训练,利用粒子群优化算法对识别模型的网络结构进行优化。仿真实验和实测数据均表明:所提基于改进超限学习机的制造过程质量异常识别模型的识别效率明显高于其他同类模型,能够用于制造过程的实时监控。 展开更多
关键词 超限学习机 过程监控 质量模式识别
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An attribute recognition model based on entropy weight for evaluating the quality of groundwater sources 被引量:21
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作者 CHEN Suo-zhong WANG Xiao-jing ZHAO Xiu-jun 《Journal of China University of Mining and Technology》 EI 2008年第1期72-75,共4页
In our study, entropy weight coefficients, based on Shannon entropy, were determined for an attribute recognition model to model the quality of groundwater sources. The model follows the theory previously proposed by ... In our study, entropy weight coefficients, based on Shannon entropy, were determined for an attribute recognition model to model the quality of groundwater sources. The model follows the theory previously proposed by Chen Q S. In the model, firstly, the author establishes the attribute space matrix and determines the weight based on Shannon entropy theory; secondly, calculates attribute measure; thirdly, evaluates that with confidence criterion and score criterion; finally, an application example is given. The results show that the water quality of the groundwater sources for the city comes up to the grade II or III standard. There is no pollution that obviously exceeds the standard and the water can meet people’s needs .The results from an evaluation of this model are in basic agreement with the observed situation and with a set pair analysis (SPA) model. 展开更多
关键词 water quality evaluation groundwater sources entropy weigh attribute recognition model
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Comprehensive Assessment of Seawater Quality Based on an Improved Attribute Recognition Model 被引量:4
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作者 ZHANG Libing CHENG Jilin +1 位作者 JIN Juliang JIANG Xiaohong 《Journal of Ocean University of China》 SCIE CAS 2006年第4期300-304,共5页
The attribute recognition model (ARM) has been widely used to make comprehensive assessment in many engineering fields, such as environment, ecology, and economy. However, large numbers of experiments indicate that th... The attribute recognition model (ARM) has been widely used to make comprehensive assessment in many engineering fields, such as environment, ecology, and economy. However, large numbers of experiments indicate that the value of weight vector has no relativity to its initial value but depends on the data of Quality Standard and actual samples. In the present study, the ARM is enhanced with the technique of data driving, which means some more groups of data from the Quality Standard are selected with the uniform random method to make the calculation of weight values more rational and more scientific. This improved attribute recognition model (IARM) is applied to a real case of assessment on seawater quality. The given example shows that the IARM has the merits of being simple in principle, easy to operate, and capable of producing objective results, and is therefore of use in evaluation problems in marine environment science. 展开更多
关键词 comprehensive assessment seawater quality improved attribute recognition model
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