Design of Intelligent Warehouse Management System Based on MVC


Share / Export Citation / Email / Print / Text size:

International Journal of Advanced Network, Monitoring and Controls

Xi'an Technological University

Subject: Computer Science, Software Engineering


eISSN: 2470-8038






Volume / Issue / page

Related articles

VOLUME 6 , ISSUE 2 (Jul 2021) > List of articles

Design of Intelligent Warehouse Management System Based on MVC

Ping Lu * / Pingping Liu * / Jiangtao Xu *

Keywords : Intelligent Warehousing, Collaborative Filtering Recommendation, MVC, Commodity Recommendation, Warehouse Management System

Citation Information : International Journal of Advanced Network, Monitoring and Controls. Volume 6, Issue 2, Pages 79-87, DOI:

License : (CC-BY-NC-ND 4.0)

Published Online: 12-July-2021



Graphical ABSTRACT

Content not available Share


Figure 1.

MVC development framework pattern.

Figure 2.

Use case diagram of intelligent warehouse management system.

Figure 3.

System E-R diagram.

Figure 4.

System architecture diagram.

Figure 5.

System function module diagram.

Figure 6.

System function flow chart.


  1. Nils Boysen, René de Koster, David Füßler. The forgotten sons:Warehousing systems for brick-and-mortar retail chains [J]. European Journal of Operational Research, 2021, 288(2):361–381.
  2. HE Jiabo, GU Xinjian. Value analysis of shared warehousing system based on Web [J]. Computer Integrated Manufacturing Systems, 2018, 24(09):2322–2328.(in Chinese)
  3. LIN Yi-Shuai, LI Qing-Shan, LU Peng-Hao, et al. Shelf and AGV Path Cooperative Optimization Algorithm Used in Intelligent Warehousing[J]. Journal of Software, 2020, 31(09):2770–2784. (in Chinese)
  4. Zhaokun Huang, Yufang Liang. Research of data mining and web technology in university discipline construction decision support system based on MVC model [J]. Library Hi Tech, 2020, 38(3):610–624.
  5. SHA Min, LIU Guangqi. Design of automatic integration system of electronic archives information in MVC mode [J]. Modern Electronics Technique, 2020, 43(22):90–93. (in Chinese)
  6. Eya Ben Ahmed, Ahlem Nabli, Faïez Gargouri. A Survey of User-Centric Data Warehouses:From Personalization to Recommendation [J]. International Journal of Database Management Systems, 2011, 3(2):59.
  7. LU Hang, SHI Zhibin, LIU Zhongbao. Collaboration Filtering Recommendation Algorithm Based on User Interest and Ratings Difference [J]. Computer Engineering and Applications, 2020, 56(07):24–29. (in Chinese)
  8. WANG Yan, ZHANG Jie, XU He-li. Combining User Interests with Improved Collaborative Filtering Recommendation Algorithm [J]. Journal of Chinese Computer Systems, 2020,41(08):1665–1669. (in Chinese)
  9. Zhenhua Tan, Liangliang He, Danke Wu, et al. Personalized Standard Deviations Improve the Baseline Estimation of Collaborative Filtering Recommendation [J]. Applied Sciences, 2020, 10(14): 4756.
  10. Tero Päivärinta, Kari Smolander. Theorizing about software development practices [J]. Science of Computer Programming, 2015, 101:124–135.
  11. Wei Wang, Jing Yang, Li Huang, et al. Intelligent Storage Location Allocation with Multiple Objectives for Flood Control Materials [J]. Water, 2019, 11(8):1537.
  12. Rafał Kern, Adrianna Kozierkiewicz, Marcin Pietranik. The data richness estimation framework for federated data warehouse integration [J]. Information Sciences, 2020, 513:397–411.
  13. WANG Yong, WANG Song, ZHANG Hongying. Design and Implementation of Network Structure Visualization System Based on B/S Framework [J]. Computer Engineering and Applications, 2020, 56(11):230–237. (in Chinese)
  14. ZHANG Guangyuan, GONG Di, WANG Kun. Virtual simulation experimental teaching of inventory management and automatic warehousing [J]. Experimental Technology and Management, 2020, 37(12):149–154. (in Chinese)
  15. VARUN KRISHNA, JINTOMON JOSE, N N R RANGA SURI. Design and development of a web-enabled data mining system employing JEE technologies [J]. Sadhana, 2014, 39(6):1259–1270.