Control and Automation for Industrial Production Storage Zone: Generation of Optimal Route Using Image Processing
- URL: http://arxiv.org/abs/2403.10054v2
- Date: Mon, 18 Mar 2024 17:42:45 GMT
- Title: Control and Automation for Industrial Production Storage Zone: Generation of Optimal Route Using Image Processing
- Authors: Bejamin A. Huerfano, Fernando Jimenez,
- Abstract summary: This article focuses on developing an industrial automation method for a zone of a production line model using the DIP.
The neo-cascade methodology employed allowed for defining each of the stages in an adequate way, ensuring the inclusion of the relevant methods for its development.
The system was based on the OpenCV library; tool focused on artificial vision, which was implemented on an object-oriented programming (OOP) platform based on Java language.
- Score: 49.1574468325115
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Digital image processing (DIP) is of great importance in validating and guaranteeing parameters that ensure the quality of mass-produced products. Therefore, this article focused on developing an industrial automation method for a zone of a production line model using the DIP. The neo-cascade methodology employed allowed for defining each of the stages in an adequate way, ensuring the inclusion of the relevant methods for its development, which finally incurred in the modeling, design, implementation, and testing of an optimal route generation system for a warehouse area, using DIP with optimization guidelines, in conjunction with an embedded platform and the connection to programmable logic controllers (PLCs) for its execution. The system was based on the OpenCV library; tool focused on artificial vision, which was implemented on an object-oriented programming (OOP) platform based on Java language. It generated the optimal route for the automation of processes in a scale warehouse area, using the segmentation of objects and the optimization of flow in networks as pillars, ending with the connection to PLCs as a method of action, which in case of implementation would eliminate constraints such as process inefficiency, the use of manpower to perform these tasks, inadequate use of resources, among others
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