Based on the relationship among the geographic events, spatial changes and the database operations, a new automatic (semi-automatic) incremental updating approach of spatio-temporal database (STDB) named as (event-bas...Based on the relationship among the geographic events, spatial changes and the database operations, a new automatic (semi-automatic) incremental updating approach of spatio-temporal database (STDB) named as (event-based) incremental updating (E-BIU) is proposed in this paper. At first, the relationship among the events, spatial changes and the database operations is analyzed, then a total architecture of E-BIU implementation is designed, which includes an event queue, three managers and two sets of rules, each component is presented in detail. The process of the E-BIU of master STDB is described successively. An example of building’s incremental updating is given to illustrate this approach at the end. The result shows that E-BIU is an efficient automatic updating approach for master STDB.展开更多
Product family(PF) is the most important part of product platform. A new method is proposed to mine PF based on multi-space product data in PLM database. Product structure tree(PST) and bill of material(BOM) are used ...Product family(PF) is the most important part of product platform. A new method is proposed to mine PF based on multi-space product data in PLM database. Product structure tree(PST) and bill of material(BOM) are used as the data source. A PF can be obtained by mining physics space, logic space and attribute space of product data. In this work, firstly, a PLM database is described, consisting of data organization form, data structure, and data characteristics. Then the PF mining method introduces the sequence alignment techniques used in bio-informatics, which mainly includes data pre-processing, regularization, mining algorithm and cluster analysis. Finally, the feasibility and effectiveness of the proposed method are verified by a case study of high and middle pressure valve, demonstrating a feasible method to obtain PF from PLM database.展开更多
Modular technology can effectively support the rapid design of products, and it is one of the key technologies to realize mass customization design. With the application of product lifecycle management(PLM) system in ...Modular technology can effectively support the rapid design of products, and it is one of the key technologies to realize mass customization design. With the application of product lifecycle management(PLM) system in enterprises, the product lifecycle data have been effectively managed. However, these data have not been fully utilized in module division, especially for complex machinery products. To solve this problem, a product module mining method for the PLM database is proposed to improve the effect of module division. Firstly, product data are extracted from the PLM database by data extraction algorithm. Then, data normalization and structure logical inspection are used to preprocess the extracted defective data. The preprocessed product data are analyzed and expressed in a matrix for module mining. Finally, the fuzzy c-means clustering(FCM) algorithm is used to generate product modules, which are stored in product module library after module marking and post-processing. The feasibility and effectiveness of the proposed method are verified by a case study of high pressure valve.展开更多
Engine engineering database system is an oriented C AD applied database management system that has the capability managing distributed data. The paper discusses the security issue of the engine engineering database ma...Engine engineering database system is an oriented C AD applied database management system that has the capability managing distributed data. The paper discusses the security issue of the engine engineering database management system (EDBMS). Through studying and analyzing the database security, to draw a series of securi ty rules, which reach B1, level security standard. Which includes discretionary access control (DAC), mandatory access control (MAC) and audit. The EDBMS implem ents functions of DAC, MAC and multigranularity audit. DAC solves the problems o f role inheritance, right contain, authorization identify and cascade revoke, et c; MAC includes subject and object security setup rule, security modify rule and multilevel relation access operation rule, etc; Audit allows making the sub ject, object or operation type as different audit object to implement flexible a nd multigranularity audit method. The model is designed act as a security agent to access daemon database. At present, the model is implemented which runs on th e Windows 2000 environments.展开更多
目的为提高医院内骨质疏松性骨折(osteoporotic fracture,OF)患者诊疗质量和管理效率,本研究自主构建一种医院内自动抓取相关资料的“骨质疏松性骨折数据库”,数据库内置管理流程相关的智能化功能模块。在此基础上,分析该数据库在实际...目的为提高医院内骨质疏松性骨折(osteoporotic fracture,OF)患者诊疗质量和管理效率,本研究自主构建一种医院内自动抓取相关资料的“骨质疏松性骨折数据库”,数据库内置管理流程相关的智能化功能模块。在此基础上,分析该数据库在实际场景应用的结果和有效性。方法构建院内封闭式多源异构数据整合的专病数据库,数据库接口可后台对接医院的信息系统(hospital information system,HIS)、影像归档和通信系统(picture archiving and communication systems,PACS)、实验室信息系统(laboratory information system,LIS)等固有数据平台,并自动运用自然语言处理(natural language processing,NLP)技术识别及整合OF患者相关信息。运用该数据库纳入2022年6月至2024年6月苏州大学附属第二医院收治的50岁以上、4部位骨折(椎体、髋部、肱骨近端和桡骨远端)的12754例患者,并对患者信息进行智能化管理应用分析。结果该数据库可按照纳入条件自动获得12754例患者数据,并自动收集患者基本资料、病历或影像检查的骨折记录、检验检查结果、实时治疗方案等407个结构化字段信息。数据库可自动完成患者的骨质疏松相关数据识别(骨折部位、骨密度值、骨代谢相关指标、抗骨质疏松药使用)、院内转科及经治医生追踪、院内多次骨折记录检索。当患者确定纳入管理,数据库可实现本次骨折后2年档案构建、辅助宣教、智能随访、院内门诊电脑同屏显示等智能化管理功能。结论“骨质疏松性骨折数据库”拥有便捷的OF患者信息抓取功能,可实时了解相应管理的基础数据,可自动完成规定时间内设定管理的指导及提醒。该数据库有院内多源异构数据整合的专病数据库特点,为OF精准化、智能化、便捷化管理提供新的思路和有效工具。展开更多
文摘Based on the relationship among the geographic events, spatial changes and the database operations, a new automatic (semi-automatic) incremental updating approach of spatio-temporal database (STDB) named as (event-based) incremental updating (E-BIU) is proposed in this paper. At first, the relationship among the events, spatial changes and the database operations is analyzed, then a total architecture of E-BIU implementation is designed, which includes an event queue, three managers and two sets of rules, each component is presented in detail. The process of the E-BIU of master STDB is described successively. An example of building’s incremental updating is given to illustrate this approach at the end. The result shows that E-BIU is an efficient automatic updating approach for master STDB.
基金Project(51275362)supported by the National Natural Science Foundation of ChinaProject(2014ZX04015021)supported by National Science and Technology Major Project,China
文摘Product family(PF) is the most important part of product platform. A new method is proposed to mine PF based on multi-space product data in PLM database. Product structure tree(PST) and bill of material(BOM) are used as the data source. A PF can be obtained by mining physics space, logic space and attribute space of product data. In this work, firstly, a PLM database is described, consisting of data organization form, data structure, and data characteristics. Then the PF mining method introduces the sequence alignment techniques used in bio-informatics, which mainly includes data pre-processing, regularization, mining algorithm and cluster analysis. Finally, the feasibility and effectiveness of the proposed method are verified by a case study of high and middle pressure valve, demonstrating a feasible method to obtain PF from PLM database.
基金Project(51275362)supported by the National Natural Science Foundation of ChinaProject(2013M542055)supported by China Postdoctoral Science Foundation Funded
文摘Modular technology can effectively support the rapid design of products, and it is one of the key technologies to realize mass customization design. With the application of product lifecycle management(PLM) system in enterprises, the product lifecycle data have been effectively managed. However, these data have not been fully utilized in module division, especially for complex machinery products. To solve this problem, a product module mining method for the PLM database is proposed to improve the effect of module division. Firstly, product data are extracted from the PLM database by data extraction algorithm. Then, data normalization and structure logical inspection are used to preprocess the extracted defective data. The preprocessed product data are analyzed and expressed in a matrix for module mining. Finally, the fuzzy c-means clustering(FCM) algorithm is used to generate product modules, which are stored in product module library after module marking and post-processing. The feasibility and effectiveness of the proposed method are verified by a case study of high pressure valve.
文摘Engine engineering database system is an oriented C AD applied database management system that has the capability managing distributed data. The paper discusses the security issue of the engine engineering database management system (EDBMS). Through studying and analyzing the database security, to draw a series of securi ty rules, which reach B1, level security standard. Which includes discretionary access control (DAC), mandatory access control (MAC) and audit. The EDBMS implem ents functions of DAC, MAC and multigranularity audit. DAC solves the problems o f role inheritance, right contain, authorization identify and cascade revoke, et c; MAC includes subject and object security setup rule, security modify rule and multilevel relation access operation rule, etc; Audit allows making the sub ject, object or operation type as different audit object to implement flexible a nd multigranularity audit method. The model is designed act as a security agent to access daemon database. At present, the model is implemented which runs on th e Windows 2000 environments.
文摘目的为提高医院内骨质疏松性骨折(osteoporotic fracture,OF)患者诊疗质量和管理效率,本研究自主构建一种医院内自动抓取相关资料的“骨质疏松性骨折数据库”,数据库内置管理流程相关的智能化功能模块。在此基础上,分析该数据库在实际场景应用的结果和有效性。方法构建院内封闭式多源异构数据整合的专病数据库,数据库接口可后台对接医院的信息系统(hospital information system,HIS)、影像归档和通信系统(picture archiving and communication systems,PACS)、实验室信息系统(laboratory information system,LIS)等固有数据平台,并自动运用自然语言处理(natural language processing,NLP)技术识别及整合OF患者相关信息。运用该数据库纳入2022年6月至2024年6月苏州大学附属第二医院收治的50岁以上、4部位骨折(椎体、髋部、肱骨近端和桡骨远端)的12754例患者,并对患者信息进行智能化管理应用分析。结果该数据库可按照纳入条件自动获得12754例患者数据,并自动收集患者基本资料、病历或影像检查的骨折记录、检验检查结果、实时治疗方案等407个结构化字段信息。数据库可自动完成患者的骨质疏松相关数据识别(骨折部位、骨密度值、骨代谢相关指标、抗骨质疏松药使用)、院内转科及经治医生追踪、院内多次骨折记录检索。当患者确定纳入管理,数据库可实现本次骨折后2年档案构建、辅助宣教、智能随访、院内门诊电脑同屏显示等智能化管理功能。结论“骨质疏松性骨折数据库”拥有便捷的OF患者信息抓取功能,可实时了解相应管理的基础数据,可自动完成规定时间内设定管理的指导及提醒。该数据库有院内多源异构数据整合的专病数据库特点,为OF精准化、智能化、便捷化管理提供新的思路和有效工具。