Analysis of the Application of UW500 Series Distributed Control System in Pesticide Formulation Automation Production Management

Authors

  • Jun Yang

DOI:

https://doi.org/10.54097/rxn7d509

Keywords:

Pesticide formulation; distributed control system; automation control; process optimization; safety and environmental protection.

Abstract

The pesticide formulation production process requires high precision in control, complex processes, and strict safety and environmental protection standards, making it essential to adopt advanced automation control systems to improve production management. This paper addresses the automation upgrade needs of a pesticide formulation production line, utilizing the UW500 series distributed control system for transformation. By analyzing the system's functional features, a comprehensive process control plan was designed, achieving automation from raw material weighing to finished product packaging. The system's application results indicate significant improvements in key indicators such as product quality, production efficiency, and safety and environmental protection, leading to substantial economic benefits. Practice has shown that the UW500 series distributed control system can effectively meet the automation control needs of pesticide formulation production, providing practical reference for industry intelligent manufacturing upgrades.

Downloads

Download data is not yet available.

References

[1] Kim W S, Lee W S, Kim Y J. A review of the applications of the internet of things (IoT) for agricultural automation[J]. Journal of Biosystems Engineering, 2020, 45: 385-400.

[2] Barnes E, Morgan G, Hake K, et al. Opportunities for robotic systems and automation in cotton production[J]. AgriEngineering, 2021, 3(2): 339-362.

[3] Ragaveena S, Shirly Edward A, Surendran U. Smart controlled environment agriculture methods: A holistic review[J]. Reviews in Environmental Science and Bio/Technology, 2021, 20(4): 887-913.

[4] Padhiary M, Roy P, Dey P, et al. Harnessing AI for Automated Decision-Making in Farm Machinery and Operations: Optimizing Agriculture[M]//Enhancing Automated Decision-Making Through AI. IGI Global Scientific Publishing, 2025: 249-282.

[5] Subeesh A, Mehta C R. Automation and digitization of agriculture using artificial intelligence and internet of things[J]. Artificial Intelligence in Agriculture, 2021, 5: 278-291.

[6] Chen X, Chen R, Yang C. Research and design of fresh agricultural product distribution service model and framework using IoT technology[J]. Journal of Ambient Intelligence and Humanized Computing, 2021: 1-17.

[7] Edan Y, Adamides G, Oberti R. Agriculture automation[J]. Springer handbook of automation, 2023: 1055-1078.

[8] Lowenberg-DeBoer J, Huang I Y, Grigoriadis V, et al. Economics of robots and automation in field crop production[J]. Precision Agriculture, 2020, 21(2): 278-299.

[9] Krishnan A, Swarna S. Robotics, IoT, and AI in the automation of agricultural industry: a review[C]//2020 IEEE Bangalore Humanitarian Technology Conference (B-HTC). IEEE, 2020: 1-6.

[10] Choudhary V, Machavaram R. Need of automation in paddy nurseries for raising paddy seedlings in India: A Review[J]. Journal of Biosystems Engineering, 2022, 47(2): 209-222.

[11] Ma, K. (2024). Relationship Between Return to Experience and Initial Wage Level in United States. Frontiers in Business, Economics and Management, 16(2), 282-286.

[12] Li K, Wang J, Wu X, et al. Optimizing automated picking systems in warehouse robots using machine learning[J]. arXiv preprint arXiv:2408.16633, 2024.

[13] Du W, Ge J, Sun S. Economic forecast of the southern China on BP neural network---Taking Chongqing as an example[C]//Proceedings of the 6th International Conference on Financial Innovation and Economic Development (ICFIED 2021). Atlantis Press, 2021: 614-618.

[14] Wu Y, Yang Y, Xiao J S, et al. Invariant Spatiotemporal Representation Learning for Cross-patient Seizure Classification [C] //The First Workshop on NeuroAI@ NeurIPS2024.

[15] Yang C, Li P, Ding X, et al. Mechanism for the reactivation of the peroxidase activity of human cyclooxygenases: investigation using phenol as a reducing cosubstrate[J]. Scientific Reports, 2020, 10(1): 15187.

[16] Tian Z, Lin Z, Zhao D, Zhao W, Flynn D, Ansari S, Wei C. Evaluating scenario-based decision-making for interactive autonomous driving using rational criteria: a survey[EB/OL]. arXiv:2501.01886, 2025

Downloads

Published

21-02-2025

Issue

Section

Articles

How to Cite

Yang, J. (2025). Analysis of the Application of UW500 Series Distributed Control System in Pesticide Formulation Automation Production Management. Frontiers in Business, Economics and Management, 18(2), 316-322. https://doi.org/10.54097/rxn7d509