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》 >> 2018年 第20卷 第4期 doi: 10.15302/J-SSCAE-2018.04.009

流程工业智能优化制造

1. 东北大学流程工业综合自动化国家重点实验室,沈阳 110819;

2. 东北大学国家冶金自动化工程技术研究中心,沈阳 110819

资助项目 :中国工程院咨询项目“‘互联网+’行动计划的发展战略研究”(2016-ZD-03);中国工程院咨询项目“新一代人工智能引领下的智能制造研究”(2017-ZD-08-03) 收稿日期: 2018-07-04 修回日期: 2018-08-13

下一篇 上一篇

摘要

本文在分析流程工业的特点、运行现状和国际智能制造发展状况的基础上,提出了我国流程工业智能制造的新模式——智能优化制造。在分析流程企业采用的由企业资源计划、制造执行系统、过程控制系统组成的三层架构和控制与管理信息化系统的发展状况基础上,提出了未来流程企业应采用的智能优化制造的架构和系统愿景功能,分析了实现愿景功能所需要攻克的关键共性技术和对自动化、计算机和通信、数据科学挑战的科学问题,提出了突出流程工业战略地位、实施战略规划与顶层设计等发展流程工业智能优化制造的建议。

图片

图 1

图 2

图 3

图 4

图 5

图 6

图 7

参考文献

[ 1 ] Smart Manufacturing Leadship Coalition. Implementing 21st cen-tury smart manufacturing [R]. Washington DC: Smart Manufactur-ing Leadship Coalition, 2011.

[ 2 ] 德国联邦教育与研究部. 把握德国制造业的未来, 实施“ 工业4.0” 攻略的建议 [R]. 波恩: 德国联邦教育与研究部, 2013.
Federal Ministry of Education and Research–BMBF. Grasp the future of German manufacturing industry and to implement the strategy of “industrial 4.0” [R]. Bonn: Federal Ministry of Education and Research–BMBF, 2013. Chinese.

[ 3 ] Gil Y, Greaves M, Hendler J, et al. Amplify scientific discovery with artificial intelligence [J]. Science, 2014, 346: 171–172.

[ 4 ] 中国工程院, 国家自然科学基金委员会. 大数据与制造流程知识自动化发展战略研究 [R]. 北京: 中国工程院, 国家自然科学基金委员会, 2016.
Chinese Academy of Engineering, National Natural Science Foundation. Research on development strategy of big data and knowledge automation for manufacturing process [R]. Beijing: Chinese Academy of Engineering, National Natural Science Foundation, 2016. Chinese.

[ 5 ] 柴天佑. 生产制造全流程优化控制对控制与优化理论方法的挑战 [J]. 自动化学报, 2009, 35(6): 641–649.
Chai T Y. Challenges of optimal control for plant-wide production processes in terms of control and optimization theories [J]. Acta Automatica Sinica, 2009, 35(6): 641–649. Chinese. 链接1 链接2

[ 6 ] 柴天佑, 金以慧, 任德祥, 等. 基于三层结构的流程工业现代集成制造系统 [J]. 控制工程, 2002, 9(3): 1–6.
Chai T Y, Jin Y H, Ren D X, et al. Contemporary integrated manufacturing system based on three-layer structure in process industry [J]. Control Engineering of China, 2002, 9(3): 1–6. Chinese. 链接1 链接2

[ 7 ] 柴天佑. 工业过程控制系统研究现状与发展方向 [J]. 中国科学: 信息科学, 2016, 46(8): 1003–1015.
Chai T Y. Research status and development direction of the industry process control system [J]. Scientia Sinica (Informationis), 2016, 46(8): 1003–1015. Chinese. 链接1 链接2

[ 8 ] Executive Office of the President. Artificial intelligence, automa-tion and the economy [R]. Washington DC: Executive Office of the President, 2016.

[ 9 ] Executive Office of the President, National Science and Technolo-gy Council, Committee on Technology. Preparing for the future of artificial intelligence [R]. Washington DC: Executive Office of the President, National Science and Technology Council, Committee on Technology, 2016. 链接1 链接2

[10] 柴天佑. 制造流程智能化对人工智能的挑战 [J]. 中国科学基金, 2018 (3): 251–256.
Chai T Y. Challenges for artificial intelligence of manufacturing process intelligentize [J]. Science Fundation of China, 2018 (3): 251–256. Chinese. 链接1

[11] Chai T Y, Qin S J, Wang H. Optimal operational control for com-plex industrial processes [J]. Annual Reviews in Control, 2014, 38(1): 81–92. 链接1 链接2

[12] Chai T Y, Ding J L, Yu G, et al. Integrated optimization for the au-tomation systems of mineral processing [J]. IEEE Transactions on Automation Science and Engineering, 2014, 11(4): 965–982.

[13] McKinsey Global Institute. Disruptive technologies: Advances that will transform life, business, and the global economy [R]. Chicago: McKinsey Global Institute, 2013.

[14] Lamnabhi-Lagarrigue F, Annaswamy A, Engell S, et al. Systems & control for the future of humanity, research agenda: Current and future roles, impact and grand challenges [J]. Annual Reviews in Control, 2017, 43: 1–64. 链接1 链接2

相关研究