skip to main content
10.1145/3366194.3366305acmotherconferencesArticle/Chapter ViewAbstractPublication PagesricaiConference Proceedingsconference-collections
research-article

Study on the Optimum Design of Pneumatic Conveying System Based on DNN

Authors Info & Claims
Published:20 September 2019Publication History

ABSTRACT

Aiming at the problem that the traditional formula method is very complicated to calculate the pipeline pressure loss in the design process of pneumatic conveying system, the paper proposes a prediction model of pipeline pressure loss based on deep neural network (DNN). By supervising and analyzing the signals of flow parameters in the process of conveying, it can effectively extract the characteristics of signal by self-adaptive learning. The advantage of this prediction model is that it does not need to extract the characteristics of flow parameters signal in advance, and directly realizes the prediction of pipeline pressure loss end-to-end. This model avoids the complexity and signal loss in the process of artificially extracting parameter features, has higher stability and better prediction effect.

References

  1. HINTON G.E.l., Osindero S., and Teh Y. W. (2006). A fast learning algorithm for deep belief nets. Neural Computation, 18(7): 1527--1554.Google ScholarGoogle ScholarDigital LibraryDigital Library
  2. WATANABE K. (1995). Transport of solid by pipelines with spiral tube. ASME, 234(Complete):57--64.Google ScholarGoogle Scholar
  3. Rinoshika A, Suzuki M. (2009). An experimental study of energy-saving pneumatic conveying system in a horizontal pipeline with dune mode. Powder Technology, 198(1):49--55.Google ScholarGoogle ScholarCross RefCross Ref
  4. Fei Yan, Rinoshika A. (2013). Particle fluctuation velocity of a horizontal self-excited pneumatic conveying near the minimum pressure drop. Powder Technology, 241(Complete):115--125.Google ScholarGoogle ScholarCross RefCross Ref
  5. LiHui Wang, Chunsheng Luo (2019). Experimental study on the energy-saving effect of self-excited flow. Journal of Jiangsu University of Science and Technology (Natural Science Edition), 33(03):49--54.Google ScholarGoogle Scholar
  6. Yong Li, Haiping Wang (2010). Energy-saving experiment of carbon black dense phase pneumatic conveying. Design of Sulphur and Phosphorus and Powder Engineering, 29(01):8--11+56.Google ScholarGoogle Scholar
  7. LiLi Gong (2009). Design and experimental study of silica pneumatic conveying system. Shandong: Qingdao University of Science and Technology.Google ScholarGoogle Scholar
  8. Dong Yu, Li Deng (2018). Deep learning speech recognition application book. Electronic Industry Press, Beijing.Google ScholarGoogle Scholar
  9. HINTON G.E. (2007). Learning multiple layers of representation. Trends in Cognitive Sciences, 11(10): 429--433.Google ScholarGoogle ScholarCross RefCross Ref
  10. HINTON G.E. (2010). A Practical Guide to Training Restricted Boltzmann Machines. Momentum, 9(1): 926--947.Google ScholarGoogle Scholar

Index Terms

  1. Study on the Optimum Design of Pneumatic Conveying System Based on DNN

        Recommendations

        Comments

        Login options

        Check if you have access through your login credentials or your institution to get full access on this article.

        Sign in
        • Published in

          cover image ACM Other conferences
          RICAI '19: Proceedings of the 2019 International Conference on Robotics, Intelligent Control and Artificial Intelligence
          September 2019
          803 pages
          ISBN:9781450372985
          DOI:10.1145/3366194

          Copyright © 2019 ACM

          Permission to make digital or hard copies of all or part of this work for personal or classroom use is granted without fee provided that copies are not made or distributed for profit or commercial advantage and that copies bear this notice and the full citation on the first page. Copyrights for components of this work owned by others than ACM must be honored. Abstracting with credit is permitted. To copy otherwise, or republish, to post on servers or to redistribute to lists, requires prior specific permission and/or a fee. Request permissions from [email protected]

          Publisher

          Association for Computing Machinery

          New York, NY, United States

          Publication History

          • Published: 20 September 2019

          Permissions

          Request permissions about this article.

          Request Permissions

          Check for updates

          Qualifiers

          • research-article
          • Research
          • Refereed limited

          Acceptance Rates

          RICAI '19 Paper Acceptance Rate140of294submissions,48%Overall Acceptance Rate140of294submissions,48%
        • Article Metrics

          • Downloads (Last 12 months)5
          • Downloads (Last 6 weeks)0

          Other Metrics

        PDF Format

        View or Download as a PDF file.

        PDF

        eReader

        View online with eReader.

        eReader