STOCK MONITORING SYSTEM DESIGN AND IMPLEMENTATION USING LOAD CELL

Adhie Prayogo, Curie Habiba

Sari


This study aims to investigate the possibility of implementing the load cell to automatically monitor the inventory stock level. The study involved accuracy, repeatability and linearity testing of the sensor in measuring the weight of the loaded items which then translated into the number. Results shows that the model successfully counts the dynamic stock level loaded onto the shelf and record the timestamps of stock changes during a period of time. On the aspect of weight measurement, there are slight error observed during the experiment, ranging from 1% to 7%. However, the error number is not merely enough for consideration, especially that the nature light weight of the object, that is only 5.5 grams. This study presents a new approach to test the system by presenting the accuracy, repeatability and linearity test. Besides, the system is meant to be attached on the shelf for calculating the actual inventory level, unlike the other study which use the loadcell for frontline stock measurement mechanism. Furthermore, this study successfully provides a real-time inventory system which able to record the timestamp everytime there is a change on the stock level, unlike the other study which only informs during minimum or maximum limit. With those findings, the study enrich the discussion of using this IoT system for stock monitoring.

Kata Kunci


inventory, automation, load cell

Teks Lengkap:

PDF

Referensi


Akpan, I. J., Soopramanien, D., & Kwak, D.-H. (Austin). (2021). Cutting-edge technologies for small business and innovation in the era of COVID-19 global health pandemic. Journal of Small Business & Entrepreneurship, 33(6).

Akpan, I. J., Udoh, E. A. P., & Adebisi, B. (2022). Small business awareness and adoption of state-of-the-art technologies in emerging and developing markets, and lessons from the COVID-19 pandemic. Journal of Small Business & Entrepreneurship, 34(2).

Ang Lou, Schiemer, N., & Schmücker, M. (2024). RFID-Technologies in Warehousing: State of the Art and Future Prospectives. 5th African International Conference on Industrial Engineering and Operations Management.

Guliti, M., Das, D. P., & Ghadai, S. K. (2019). The Effect of Integrated Warehouse Operation Efficiency on Organizations Performance. International Journal of Recent Technology and Engineering (IJRTE), 8(2).

Hendrawan, S. A., Chatra, A., Iman, N., Hidayatullah, S., & Suprayitno, D. (2024). Digital Transformation in MSMEs: Challenges and Opportunities in Technology Management. Jurnal Informasi & Teknologi, 6(2).

Johari, S., & Aziz, W. A. (2023). Design and Development of IoT Based Inventory Management System for Small Business. Borneo Engineering & Advanced Multidisciplinary International Journal(BEAM), 2(1), 33–36.

Jumahat, S., Sidhu, M. S., & Shah, S. M. (2022). Pick-by-vision of Augmented Reality in Warehouse Picking Process Optimization – A Review. IEEE International Conference on Artificial Intelligence in Engineering and Technology (IICAIET).

Khalique, M., Isa, A. H. M., & Shaari, J. A. N. (2011). Challenges for Pakistani SMEs in a Knowledge-Based Economy. Indus Journal of Management & Social Sciences, 5(2), 74–80.

Khamdi, N., Arrahman, R., & Akhyan, A. (2024). Stock of Nuts/Bolts System With A Load Cell Sensor of Digital Scale As An Iot-Based. Jurnal Nasional Teknik Elektro, 13(3).

Kittisak, A. (2023). Challenges and Strategies for Inventory Management in Small and Medium-Sized Cosmetic Enterprises: A Review. International Journal of Information Technology and Computer Science Applications (IJITCSA), 1(2), 71–77.

Koster, R. B. M. de. (2018). Automated and Robotic Warehouses: Developments and Research Opportunities. Logistics and Transport , 38(2), 33–40.

Kwon, K., Yoon, Y. U., Ryu, J., Sohn, J., & Chung, I.-J. (2008). Warehouse Management in the Small and Medium Enterprises based on Manufacturing Industry. https://api.semanticscholar.org/CorpusID:198987667

Liu, H., Wang, F., Zhao, J., Yang, J., Tan, C., & Zhou, L. (2022). Performance Analysis of Picking Path Strategies in Chevron Layout Warehouse. Mathematics, 10(3).

Maheshwari, P., Kamble, S., Pundir, A., Belhadi, A., Ndubisi, N. O., & Tiwari, S. (2021). Internet of things for perishable inventory management systems: an application and managerial insights for micro, small and medium enterprises. Annals of Operations Research, 1–29. https://doi.org/https://doi.org/10.1007/s10479-021-04277-9

Mansor, M. N., Talib, N. A. A., Saidi, S. A., Mustafa, W. A., & Zamri, N. F. (2023). Arduino IOT Based Inventory Management System Using Load Cell and NodeMCU. Journal of Advanced Research in Applied Sciences and Engineering Technology, 32(3), 12–25.

Mishra, R. P., Kodali, R. B., Gupta, G., & Mundra, N. (2015). Development of a framework for world-class maintenance systems. Procedia CIRP, 26, 424–429.

Odeyinka, O. F., & Omoegun, O. G. (2024). Warehouse Operations: An Examination of Traditional and Automated Approaches in Supply Chain Management. In Operations Management - Recent Advances and New Perspectives.

Pajić, V., & Andrejić, M. (2024). Strategic Warehouse Location Selection in Business Logistics: A Novel Approach Using IMF SWARA–MARCOS—A Case Study of a Serbian Logistics Service Provider. Mathematics, 12(5), 776.

Renaud, J., & Ruiz, A. (2007). Improving product location and order picking activities in a distribution centre. Journal of the Operational Research Society, 59(12).

Rymarczyk, P., Bogacki, S., Figura, C., Rutkowski, M., & Staliński, P. (2024). Optimizing order picking processes in warehouses: strategies for efficient routing and clustering. Journal of Modern Science, 57, 467–484.

Sapry, H. R. M., Alfiah, S. N., & Yusof, M. (2019). The Performance of Challenges Faced by SME in Managing Real-Time Information in the Inventory Management Process. International Journal of Innovative Technology and Exploring Engineering (IJITEE), 8(12).

Savsar, M., Bulak, M. E., Kozanoglu, O., & Chebli, M. A. (2023). Analysis of a Warehouse System Using Dedicated Storage Assignment and a Simulation Model. Innovations in Intelligent Systems and Applications Conference (ASYU).

Setiawan, A., Triayudi, A., & Iskandar, A. (2024). Inventory Management System for MSMEs. SAGA: Journal of Technology and Information Systems, 2(1), 190–199.

Tamsir, A., & Hadisantoso, F. S. (2020). Development of Automatic Storage Retrieval System for Variable Loads. Jurnal Sains Dan Teknologi, 18(1), 99–103.

Wang, J., Li, P., Luo, L., & Sun, H. (2023). Design and Development of Intelligent Inventory System for Small and Micro Enterprise Warehousing. International Conference on Computer, Big Data and Artificial Intelligence (ICCBD+AI).

Zhou, L., Sun, L., Li, Z., Li, W., Cao, N., & Higgs, R. (2020). Study on a storage location strategy based on clustering and association algorithms. Soft Computing, 24, 5499–5516.




DOI: https://doi.org/10.24176/jointech.v5i2.15123

Creative Commons License
This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.

Publisher: Lembaga Penelitian dan Pengabdian kepada Masyarakat (LPPM), Universitas Muria Kudus
Jl. Lingkar Utara UMK, Gondangmanis, Bae, Kudus, 59327 - Central Java, Indonesia
Website: https://lppm.umk.ac.id