期刊首页 优先出版 当期阅读 过刊浏览 作者中心 关于期刊 English

《中国工程科学》 >> 2022年 第24卷 第4期 doi: 10.15302/J-SSCAE-2022.04.013

有色金属工业智能模型库构建方法及应用

1. 中南大学自动化学院,长沙 410083;

2. 鹏城实验室,广东深圳 518055

资助项目 :中国工程院咨询项目“流程制造工业软件发展战略研究”(2021-XZ-28);国家自然科学基金项目(61988101) 收稿日期: 2022-05-10 修回日期: 2022-07-05 发布日期: 2022-07-25

下一篇 上一篇

摘要

有色金属工业是我国实体经济的重要基础,在国民经济和国防建设中占有关键地位。工业软件作为有色金属工业高质量发展的核心要素之一,与深入实施国家软件发展战略相关联。本文针对有色金属工业因知识模型缺失而极大限制行业工业软件发展的迫切问题,提出了有色金属工业智能模型库构建方法。从元模型驱动工程出发,定义了有色冶金元模型及其属性特点,提出了基于MODELING架构的元建模方法;设计了基于工业互联网的有色金属智能模型库总体架构、多语言融合的模型集成敏捷开发环境、多场景黑盒复用的元模型封装体系,构建了基于“五层两维”分类标准、领域知识图谱的元模型全生命周期管理平台。立足有色冶金工艺机理、操作经验、智能方法等方面的长期积淀,开发了有色金属工业智能模型库。通过两个有色冶金典型场景的应用案例,展示了有色金属智能模型库在工程应用中对提升智能化水平发挥的良好作用。有色金属工业智能模型库为行业工业软件的发展提供了核心知识支撑,将在提升有色金属工业智能制造水平、加快有色金属强国建设进程方面起到基础支撑作用。

图片

图1

图2

图3

图4

图5

图6

图7

图8

图9

参考文献

[ 1 ] 袁小锋 , 桂卫华 , 陈晓方 , 等 . 人工智能助力有色金属工业转型升级 [J]. 中国工程科学 , 2018 , 20 4 : 59 ‒ 65 .
Yuan X F, Gui W H, Chen X F, et al. Transforming and upgrading nonferrous metal industry with artificial intelligence [J]. Strategic Study of CAE, 2018, 20(4): 59‒65. Chinese.

[ 2 ] Qian F, Zhong W M, Du W L. Fundamental theories and key technologies for smart and optimal manufacturing in the process industry [J]. Engineering, 2017, 3(2): 154‒160.

[ 3 ] 贾明星 . 七十年辉煌历程 新时代砥砺前行——中国有色金属工业发展与展望 [J]. 中国有色金属学报 , 2019 , 29 9 : 1801 ‒ 1808 .
Jia M X. A review of nonferrous metals industry achievements in China (1949—2019) and prospects for the future [J]. The Chinese Journal of Nonferrous Metals, 2019, 29(9): 1801‒1808. Chinese.

[ 4 ] 柴立元 , 王云燕 , 孙竹梅 , 等 . 绿色冶金创新发展战略研究 [J]. 中国工程科学 , 2022 , 24 2 : 10 ‒ 21 .
Chai L Y, Wang Y Y, Sun Z M, et al. Innovative development strategy of green metallurgy [J]. Strategic Study of CAE, 2022, 24(2): 10‒21. Chinese.

[ 5 ] 柴天佑 , 丁进良 . 流程工业智能优化制造 [J]. 中国工程科学 , 2018 , 20 4 : 51 ‒ 58 .
Chai T Y, Ding J L. Smart and optimal manufacturing for process industry [J]. Strategic Study of CAE, 2018, 20(4): 51‒58. Chinese.

[ 6 ] 邵珠峰 , 赵云 , 王晨 , 等 . 新时期我国工业软件产业发展路径研究 [J]. 中国工程科学 , 2022 , 24 2 : 86 ‒ 95 .
Shao Z F, Zhao Y, Wang C, et al. Development path of China’s industrial software industry in the new era [J]. Strategic Study of CAE, 2022, 24(2): 86‒95. Chinese.

[ 7 ] 边缘计算产业联盟 , 工业互联网产业联盟 . 边缘计算与云计算协同白皮书2018年 [R]. 北京 : 边缘计算产业联盟, 工业互联网产业联盟 , 2018 .
Edge Computing Consortium, Alliance of Industrial Internet. Collaborative edge computing and cloud computing white paper (2018) [R]. Beijing: Edge Computing Consortium, Alliance of Industrial Internet, 2018. Chinese.

[ 8 ] 新华网 . 两院院士大会中国科协第十次全国代表大会在京召开 习近平发表重要讲话 [EBOL]. 2021-05-28 ‍[ 2022-06-10 ]. http:www.xinhuanet.compoliticsleaders2021-0528c_1127504936. htm .
Xinhua Net. The academician conference of the Chinese Academy of Sciences and the Chinese Academy of Engineering, and the 10th national congress of the Chinese Association for Scienceand Technology was held in Beijing, and Xi Jinping delivered an important speech [EB/OL]. (2021-05-28) [2022-06-10]. Chinese.

[ 9 ] 桂卫华 , 曾朝晖 , 陈晓方 , 等 . 知识驱动的流程工业智能制造 [J]. 中国科学: 信息科学 , 2020 , 50 9 : 1345 ‒ 1360 .
Gui W H, Zeng Z H, Chen X F, et al. Knowledge-driven process industry smart manufacturing [J]. Scientia Sinica Informationis, 2020, 50(9): 1345‒1360. Chinese.

[10] Botha S, Le Roux J D, Craig I K. Hybrid non-linear model predictive control of a run-of-mine ore grinding mill circuit [J]. Minerals Engineering, 2018, 123: 49‒62.

[11] 刘美丽 , 唐朝晖 , 王晓丽 , 等 . 基于多信息融合与可拓理论的锑浮选工况识别方法 [J]. 中南大学学报自然科学版 , 2015 , 46 12 : 4512 ‒ 4519 .
Liu M L, Tang Z H, Wang X L, et al. Performance recognition of antimony flotation based on multi-information fusion and extension theory [J]. Journal of Central South University (Science and Technology), 2015, 46(12): 4512‒4519. Chinese.

[12] 桂卫华 , 阳春华 , 陈晓方 , 等 . 有色冶金过程建模与优化的若干问题及挑战 [J]. 自动化学报 , 2013 , 39 3 : 197 ‒ 207 .
Gui W H, Yang C H, Chen X F, et al. Modeling and optimization problems and challenges arising in nonferrous metallurgical processes [J]. ACTA AUTOMATICA SINICA, 2013, 39(3): 197‒207. Chinese.

[13] Huang K K, Tao S J, Liu Y S, et al. Label propagation dictionary learning based process monitoring method for industrial process with between-mode similarity [J]. Science China Information Sciences, 2022, 65(1): 1‒17.

[14] 阳春华 , 韩洁 , 周晓君 , 等 . 有色冶金过程不确定优化方法探讨 [J]. 控制与决策 , 2018 , 33 5 : 856 ‒ 865 .
Yang C H, Han J, Zhou X J, et al. Discussion on uncertain optimization methods for nonferrous metallurgical processes [J]. Control and Decision, 2018, 33(5): 856‒865. Chinese.

[15] 张健 . 基于动力学控制的钛加工材料成型优化技术 [J]. 世界有色金属 , 2015 10 : 66 ‒ 67 .
Zhang J. Optimization technology of titanium processing material forming based on dynamic control [J]. World Nonferrous Metals, 2015 (10): 66‒67. Chinese.

[16] 王立平 , 张超 , 蔡恩磊 , 等 . 面向自主工业软件的知识提取和知识库构建方法 [J]. 清华大学学报自然科学版 , 2022 , 62 5 : 978 ‒ 986 .
Wang L P, Zhang C, Cai E L, et al. Knowledge extraction and knowledge base construction method from industrial software packages [J]. Journal of Tsinghua University (Science and Technology), 2022, 62(5): 978‒986. Chinese.

[17] 陶永 , 蒋昕昊 , 刘默 , 等 . 智能制造和工业互联网融合发展初探 [J]. 中国工程科学 , 2020 , 22 4 : 24 ‒ 33 .
Tao Y, Jiang X H, Liu M, et al. A preliminary study on the integration of intelligent manufacturing and industrial Internet [J]. Strategic Study of CAE, 2020, 22(4): 24‒33. Chinese.

[18] 中华人民共和国国务院 . 关于深化"互联网+先进制造业"发展工业互联网的指导意见 [EBOL]. 2017-11-27 ‍[ 2022-06-10 ]. http:www.gov.cnxinwen2017-1127content_5242603.htm .
The State Council of the People’s Republic of China. Interpretation of guiding opinions on deepening “Internet + advanced manufacturing” to develop industrial Internet [EB/OL]. (2017-11-27) [2022-06-10]. Chinese.

[19] 工业互联网产业联盟 . 工业互联网体系架构白皮书 [R]. 北京 : 工业互联网产业联盟 , 2020 .
Industrial Internet Alliance. Industrial Internet architecture white paper [R]. Beijing: Industrial Internet Alliance, 2020. Chinese.

[20] Sun B, Dai J T, Huang K K, et al. Smart manufacturing of nonferrous metallurgical processes: Review and perspectives [J]. International Journal of Minerals, Metallurgy and Materials, 2022, 29(4): 611‒625.

[21] Woo M. The rise of no/low code software development: No experience needed? [J]. Engineering, 2020, 6(9): 960‒961.

[22] Yang C H, Sun B. Modeling, optimization, and control of zinc hydrometallurgical purification process [M]. Salt Lake City: American Academic Press, 2021.

[23] 王晨 , 宋亮 , 李少昆 . 工业互联网平台: 发展趋势与挑战 [J]. 中国工程科学 , 2018 , 20 2 : 15 ‒ 19 .
Wang C, Song L, Li S K. The industrial Internet platform: Trend and challenges [J]. Strategic Study of CAE, 2018, 20(2):15‒19. Chinese.

[24] Haji W H. Web-based service optimization with JSON-RPC platform in Java and PHP [C]. Lampung: International Conference on Engineering and Technology Development (ICETD), 2012.

[25] Huang X W, Hsieh C Y, Wu C H, et al. A token-based user authentication mechanism for data exchange in RESTful API [C]. Taipei: The 18th International Conference on Network-Based Information Systems, 2015.

[26] Pechter R. What´s PMML and what´s new in PMML 4.0? [J]. ACM SIGKDD Explorations Newsletter, 2009, 11(1): 19‒25.

[27] Zhong W M, Li C Y, Peng X, et al. A knowledge base system for operation optimization: Design and implementation practice for the polyethylene process [J]. Engineering, 2019, 5(6): 1041‒1048.

[28] Miller J J. Graph database applications and concepts with Neo4j [C]. Atlanta: Proceedings of the Southern Association for Information Systems Conference, 2013.

[29] Liang H P, Yang C H, Huang K K, et al. A hybrid first principles and data-driven process monitoring method for zinc smelting roasting process [J]. IEEE Transactions on Instrumentation and Measurement, 2021, 70: 1‒14.

[30] Liu Y S, Yang C H, Huang K K, et al. Non-ferrous metals price forecasting based on variational mode decomposition and LSTM network [J]. Knowledge-Based Systems, 2020, 188: 1‒15.

相关研究