智能互联装备网络协同制造/运维集成技术与平台研发

项目来源

国家重点研发计划(NKRD)

项目主持人

洪开荣

项目受资助机构

中铁工程装备集团有限公司

项目编号

2020YFB1712102

立项年度

2020

立项时间

未公开

项目级别

国家级

研究期限

未知 / 未知

受资助金额

324.00万元

学科

网络协同制造和智能工厂

学科代码

未公开

基金类别

“网络协同制造和智能工厂”重点专项

关键词

数字化数据库 ; 选型规则库 ; 一站式技术服务 ; 协同制造资源 ; Digital database ; Selection rule base ; One stop technical service ; Collaborative manufacturing resources

参与者

赵新合;马琳

参与机构

湖南大学;南京工业大学

项目标书摘要:针对跨域装备互通难、系统应用部署难的问题,分析了云平台业务需求和业务之间的交互关系,基于分布式分层集群理念,进行了平台架构研究,采用HADOOP分布式集群,搭建装备制造/运维数据中心。经过分析目前隧道掘进机制造运维的状况,梳理了隧道掘进机制造协同业务流程、成套装备运维需求及流程、成套运维/群组制造互馈信息及模式,进行了制造/运维集成平台服务应用系统应用场景设计。进行地下交通工程装备制造/运维协同标准大纲及内容的策划,为平台的建设提供了标准支撑。

Application Abstract: Aiming at the problems of cross domain equipment interoperability and system application deployment,this paper analyzes the business requirements of cloud platform and the interaction relationship between businesses,studies the platform architecture based on the concept of distributed hierarchical cluster,and uses Hadoop distributed cluster to build the equipment manufacturing/operation and maintenance data center.After analyzing the current situation of TBM manufacturing and operation and maintenance,this paper combs the TBM manufacturing collaborative business process,complete equipment operation and maintenance requirements and processes,complete equipment operation and maintenance/group manufacturing mutual feed information and mode,and designs the application scene of manufacturing/operation and maintenance integrated platform service application system.Plan the outline and contents of equipment manufacturing/operation and maintenance coordination standards for underground transportation engineering,which provides standard support for the construction of the platform.

项目受资助省

河南省

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  • 1.Failure analysis and coping suggestions for TBM tools under complicated geological conditions

    • 关键词:
    • Compressive strength;Condition monitoring;Cutting tools;Efficiency;Failure (mechanical);Wear of materials;Complicated geological conditions;Complicated geology;Construction costs;Cost controls;Hob;TBM;Tool failures;Tool wear;Tunneling efficiency;Tunneling parameter
    • Feng, Huan Huan;Wang, Shu Ying;Yang, Lu Wei;Yang, Yan Dong
    • 《ITA-AITES World Tunnel Congress, WTC 2024》
    • 2024年
    • April 19, 2024 - April 25, 2024
    • Shenzhen, China
    • 会议

    The complicated geological conditions and unreasonable tunneling parameters will cause the abnormalities or damage of the TBM tools and increase the tool consumption, which are adverse to the tunneling efficiency of TBM and the construction cost control. Based on the systematic description of the common failure modes of the TBM tool, we have studied and analyzed such tunneling parameters as total thrust, cutterhead speed and tool penetration, such geological parameters of different surrounding rocks as uniaxial compressive strength and quartz content, as well as the influence rule for the wear, abnormalities or damage of the tool. Taking Zhongtianshan Tunnel as an example, we have made statistics for and analyzed the tool consumption and failure modes, and proposed the specific optimization methods in terms of tool selection, inspection and maintenance. Finally, we have proposed that the configuration technology for the tools with adjustable clearance shall be further developed, to ensure the rock-breaking efficiency of tools under different geological conditions. In the meantime, we will intensify the R&D and application of the new tool condition monitoring system strongly adaptive to the work environment of TBM. © 2024 The Author(s).

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  • 2.Research and application of key technologies for the TBM tunnel construction under extremely complex geological conditions

    • 关键词:
    • Boring machines (machine tools);Faulting;Flood control;Jamming;Railroad tunnels;River diversion;Rocks;Diversion tunnel;Fault;Geological conditions;Jamming;River water;Standard registration;TBM construction;TBM transformation;Water diversions;Weak and broken
    • Feng, Huan Huan;Hong, Kai Rong
    • 《ITA-AITES World Tunnel Congress, WTC 2024》
    • 2024年
    • April 19, 2024 - April 25, 2024
    • Shenzhen, China
    • 会议

    With the Gaoligong Mountain Tunnel of Dali-Ruili Railway, Qinling Tunnel of Hanjiang to Weihe River Project, Xianglu Mountain Tunnel commenced successively in China, the TBM entrapment in water-rich fragmentation in extreme soft stratum and rockburst in extremely hard rock under high ground stress have been increasingly prominent problems in TBM construction. On the basis of the summary analysis on the cases of partial tunnel collapse and TBM entrapment and their contributory factors in the projects, we conduct systematic investigation of the key technologies for TBM tunneling: (1) For now there is no way to make accurate quantitative forecast of the geological conditions in medium or long distances ahead; for the soft and broken stratums with joint development, carbonaceous slate and fault fracture zone, special measures against machine entrapment must be taken and proper rescue solutions can be devised based on the length of the segment with unfavorable geological conditions; (2) The anomalies in the tunneling parameters are important indicators that reveal the geological conditions ahead of heading face. Before TBM tunneling, proper tunneling parameters should be chosen based on the preliminarily anticipated surrounding rock conditions such as fullsection hard rock and weak and broken rock. In the boring process of TBM, it is necessary to correct the preestimation of geological conditions and take corresponding regulatory measures based on the abnormal changes of boring parameters; (3) Aiming at the situation that the existing TBMs are difficult to adapt to the existing geological conditions, the transformation technology of TBMs is analyzed and discussed with the engineering cases of Tao River Water Diversion Tunnel, Hongyan River to Shitou River Water Diversion Tunnel, and Hanjiang to Weihe River Water Diversion Tunnel. Finally, the new problems of TBM tunnel construction under extremely complex geological conditions and their countermeasures are prospected and discussed. © 2024 The Author(s).

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  • 3.ShapeRef: A Representation Method of Industrial Abnormal Time-Series Waveform Based on Shape Reference

    • 关键词:
    • ;
    • Shi, Lin;Zhang, ChangYou;Yang, Shuai;Wu, WenJia;Bo, Wen;Ma, Ji
    • 《2023 IEEE International Conference on Systems, Man, and Cybernetics, SMC 2023》
    • 2023年
    • October 1, 2023 - October 4, 2023
    • Hybrid, Honolulu, HI, United states
    • 会议

    Time-series waveform data widely exist in various industrial fields, such as equipment monitoring and fault diagnosis. The current time series representation methods have limitations when dealing with industrial abnormal time-series waveforms, such as limited applicability, semantic ambiguity, and time distortion. This work proposes a novel shape reference-based representation method for industrial abnormal time-series waveform (ShapeRef), which takes the shape of the standard waveform as a reference to represent the anomaly deviation. Specifically, ShapeRef first establishes a time-series shape reference frame, then proposes the minimum shape difference-based mapping method to describe the mapping process of coordinates, and finally reduces multi-intersection points in the mapping process to achieve uniform mapping of the abnormal time-series waveform. Experimental results show that ShapeRef can effectively represent abnormal time-series waveforms and outperforms several baseline methods in the clustering task of a real industrial equipment waveform dataset. This work enhances the accuracy and reliability of industrial equipment monitoring and fault diagnosis, which could have significant practical implications. © 2023 IEEE.

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  • 4.Intelligent fault diagnosis of rolling bearing based on a deep transfer learning network

    • 关键词:
    • Deep learning;Fault detection;Learning systems;Roller bearings;Rotating machinery;Temperature;Auxiliary sample;Bidirectional gated recurrent unit;Faults diagnosis;Intelligent fault diagnosis;Joint distribution adaptation;Joint distributions;Learning network;Rolling bearings;Target domain;Transfer learning
    • Wu, Zhenghong;Jiang, Hongkai;Zhang, Sicheng;Wang, Xin;Shao, Haidong;Dou, Haoxuan
    • 《2023 IEEE International Conference on Prognostics and Health Management, ICPHM 2023》
    • 2023年
    • June 5, 2023 - June 7, 2023
    • Montreal, QC, Canada
    • 会议

    Rolling bearing of rotating machinery's key component will inevitably fail due to the complex and changeable operating environment such as variable speed, large disturbance, high and low temperature. It is quite challenging to obtain abundant labeled bearing fault samples because the rotating machinery is typically in a healthy and operational state. For addressing the issue, an intelligent fault diagnosis method based on a deep transfer learning network is proposed. First, a bidirectional gated recurrent unit (Bi-GRU) network is utilized to mine the latent relationship between labeled source domain samples and few labeled target domain samples, the parameters of Bi-GRU are trained to obtain the instance transfer bidirectional gated recurrent unit model (ITBi-GRU), and auxiliary samples are generated based on the ITBi-GRU. Second, as a feature transfer learning method, joint distribution adaptation is used to simultaneously decrease the distribution discrepancies between the generated auxiliary samples and the unlabeled target domain samples. Finally, extensive experiments are employed to evaluate the effectiveness of the proposed method in the case of scarce labeled samples. © 2023 IEEE.

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