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上海市区域性医疗中心建设的政策环境和现状分析 被引量:1
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作者 何达 顾一纯 金春林 《中国卫生资源》 北大核心 2022年第2期239-243,共5页
采用政策梳理、文献综述、专家咨询、关键知情人访谈等深入分析上海市区级医院发展的政策环境和发展现状,进一步明确区域性医疗中心发展存在的关键问题,为切实落实区域性医疗中心在医疗体系中的定位提供循证依据和政策建议。上海区域性... 采用政策梳理、文献综述、专家咨询、关键知情人访谈等深入分析上海市区级医院发展的政策环境和发展现状,进一步明确区域性医疗中心发展存在的关键问题,为切实落实区域性医疗中心在医疗体系中的定位提供循证依据和政策建议。上海区域性医疗中心建设存在落实分级诊疗政策的相关机制需进一步完善、服务能力需进一步提升、市民的科学就医习惯需进一步培养等主要问题。建议通过多种措施重塑分级诊疗机制,着力提升区域性医疗中心机构的服务能力,通过多种途径培养市民科学就医习惯,切实落实区域性医疗中心在医疗服务体系中的定位。 展开更多
关键词 区域性医疗中心regional medical center 区级医院secondary hospital 政策policy 分级诊疗hierarchical diagnosis and treatment 就医习惯medical habit
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Deep convolutional tree-inspired network:a decision-tree-structured neural network for hierarchical fault diagnosis of bearings 被引量:1
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作者 Xu WANG Hongyang GU +3 位作者 Tianyang WANG Wei ZHANG Aihua LI Fulei CHU 《Frontiers of Mechanical Engineering》 SCIE CSCD 2021年第4期814-828,共15页
The fault diagnosis of bearings is crucial in ensuring the reliability of rotating machinery.Deep neural networks have provided unprecedented opportunities to condition monitoring from a new perspective due to the pow... The fault diagnosis of bearings is crucial in ensuring the reliability of rotating machinery.Deep neural networks have provided unprecedented opportunities to condition monitoring from a new perspective due to the powerful ability in learning fault-related knowledge.However,the inexplicability and low generalization ability of fault diagnosis models still bar them from the application.To address this issue,this paper explores a decision-tree-structured neural network,that is,the deep convolutional tree-inspired network(DCTN),for the hierarchical fault diagnosis of bearings.The proposed model effectively integrates the advantages of convolutional neural network(CNN)and decision tree methods by rebuilding the output decision layer of CNN according to the hierarchical structural characteristics of the decision tree,which is by no means a simple combination of the two models.The proposed DCTN model has unique advantages in 1)the hierarchical structure that can support more accuracy and comprehensive fault diagnosis,2)the better interpretability of the model output with hierarchical decision making,and 3)more powerful generalization capabilities for the samples across fault severities.The multiclass fault diagnosis case and cross-severity fault diagnosis case are executed on a multicondition aeronautical bearing test rig.Experimental results can fully demonstrate the feasibility and superiority of the proposed method. 展开更多
关键词 BEARING cross-severity fault diagnosis hierarchical fault diagnosis convolutional neural network decision tree
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