美女精品视频-美女精品一区-美女毛片AV-美女毛片视频-美女毛片网站-美女免费视频网站-美女内射视频网站-美女内射网站

Special Section on Data Driven Control and Learning Systems

日期:2015-09-22 10:24

 

WITH THE DEVELOPMENT OF INFORMATION SCIENCES AND TECHNOLOGIES, practical processes, such as chemical industry, metallurgy, machinery, electronics, transportation, and logistics, pose enormous research and technical challenges for control engineering and management due to their size, distributed and multi-domain nature, safety and quality requirements, complex dynamics and performance evaluation, maintenance and diagnosis. Modeling these processes accurately using ?rst principles or identi?cation is almost impossible although these plants produce and store huge amount of impersonal valuable data on the plant and equipment operations in every moment during production. This challenges the existing control theory and technology, and meanwhile urgently pushes scientists and engineers to develop new data driven control and methodology to solve control and optimization issues for these complex practical plants. The high-tech hard/software and the cloud computing enable us to have ability to perform a complex computation real time, which makes the implementation of data driven control and methodology in practice possible. Thus, it would be very signi?cant if we can learning the systems' behaviors, discovering the correlation relationship of system variables by making full use of those on-line or off-line process data, to directly design controller, predict and assess system states, evaluate performance, make decisions, perform real-time optimization, and conduct fault diagnosis. For this reason, the establishment and development of data-driven control theory and methodology are urgent issues in both the theory and applications.

This Special Section is to provide a forum for researchers and practitioners to exchange their latest achievements and to identify critical points and challenges for future investigation on modeling, control and learning of complex practical systems in a data driven manner. The papers to be published in this issue are expected to provide latest advances of data driven approaches, particularly the novel theoretical-supported ideas and algorithms with practical applications. Topics include, but are not limited to, the following research areas:

- Model-free or data-driven control approaches and applications;

- Data driven learning and control approaches and applications;

- Data driven decisions, performance evaluation, fault diagnosis, etc. and applications;

- Complementary controller design approaches and applications between data driven and model based control methods;

- Data driven learning and control approaches and applications;

- Data driven decisions, performance evaluation, fault diagnosis, etc. and applications;

- Complementary controller design approaches and applications between data driven and model based control methods;

- Data driven modeling approaches for complex industrial processes;

- Data driven optimization methods and applications;

- Robustness on the data driven control;

- Neural network and reinforcement learning control and practical applications in model-free environment.

Manuscript Preparation and Submission

Check carefully the style of the journal described in the guidelines “Information for Authors” in the IEEE- IES web site: http://www.ieee-ies.org/index.php/pubs/ieee-transactions-on-industrial-electronics .

Please submit your manuscript in electronic form through: https://mc.manuscriptcentral.com/tie-ieee/.

On the submitting page, in pop-up menu of manuscript type, select: "SS on Data Driven Control and Learning Systems”, then upload all your manuscript ?les following the instructions given on the screen.

Corresponding Guest Editor

Prof. Zhongsheng Hou

School of Electronic and Information Engineering

Beijing Jiaotong University

Beijing, P. R. China

EMAIL: zhshhou@bjtu.edu.cn

Guest Editor

Prof. Huijun Gao

Research Institute of Intelligent Control and Systems

Harbin Institute of Technology

Harbin, P. R. China

EMAIL: hjgao@hit.edu.cn

Guest Editor

Prof. Frank L. Lewis

UTA Research Institute

University of Texas at Arlington

Arlington, USA

EMAIL: Lewis@uta.edu

 

Special Section email:  SSddcls@ieee-ies.org

Submission management email:  tie-submissions@ieee-ies.org

 

主站蜘蛛池模板: 国精产品一区 | 91免费伊人 | 国产精品色哟哟网站 | 日本一区二区在线 | 日韩丰满 | 国产在线拍偷自 | 国产秘精品入口欧 | 国产后入清纯学 | 91综合网。| 日本一道高清 | 欧美一级大 | 国产精品三级在线 | 中文字幕日韩经典 | 国产99在线 | 91精品国产综合久 | 国产末成年女噜噜 | 国产精品太长太粗太 | 午夜国产短视频 | 国产精品亲子乱子伦 | 日韩欧美精品最新 | 人人鲁免费 | 欧美鲁丝片一区二区 | 成人看片黄a在线 | 人在线观看青青 | 午夜视频福利 | 国自产偷 | 91成人短视频在线 | 福利资源在线 | 91精品国产区 | 国产51社区 | 国产精品美女网站 | 日韩看羞羞在线播放 | 日本α片| 国产精品自在拍在 | 91天堂网| 人人香蕉 | 国产高清在线免 | 91免費黃色 | 国产亚洲欧美日 | 91资源站| 蜜桃视频午夜 |