Engineer’s Guide to Efficient Changeovers

Inefficient changeovers slow down the entire production line, and waste both time and money. But there's no single way to go about making changeovers more efficient.

Automating Changeovers

Automation is crucial in the effort to reduce changeover times and minimize errors. Below are a few different methods of automating changeovers for the packaging industry.

Robotic Changeover Systems

Robotic systems can be programmed to perform tasks like tooling changeouts, adjustments, and setup procedures. Automating these otherwise manual processes can significantly reduce changeover time and the chance of human error. Robotic changeover systems can also be integrated with sensors and vision systems to ensure accurate positioning and alignment, to further enhance reliability and reduce the need for human oversight.

Computerized Control Systems

Advanced control systems, such as supervisory control and data acquisition (SCADA) systems, offer an extremely reliable method of automating changeovers. These systems enable operators to acquire, store and analyze performance data of connected sensors and network devices. With this data, abnormal performance can be detected early and preventative maintenance can be performed. This helps entirely avoid unplanned downtime and significantly reduce the total amount of downtime for a given packaging line.

Fill out the information below to download the resource.

By downloading this content, I agree to receive the DE 24/7 Newswire, a twice weekly free email newsletter (you may choose to opt-out in the newsletter).

Latest News

Hexagon Launches HxGN Alix
Company says new AI-powered assistant to assist industrial enterprises in digitally transforming heavy asset operations.

Siemens Releases AI-Augmented Electronic Systems Design Software
Latest release combines Xpedition, Hyperlynx and PADS Professional software via unified user experience with cloud connectivity and collaboration, company reports.

Siemens and Microsoft Deliver AI-Boosted NX X to Azure
Collaboration designed to deliver AI-based natural language assistance to NX X to automate design tasks for experienced users and bring...

EOS Debuts New Alloys for Metal Additive
Nickel-based superalloys target turbomachinery, chemical, maritime and space applications.

HP Partners with ArcelorMittal on Additive Manufacturing Plans
By combining HP’s expertise in printing with ArcelorMittal’s leadership in sustainable steel solutions, the collaboration aims to promote...

A GPU Revolution in Discrete Element Method Applications
Learn about the impact of GPU acceleration on DEM simulations from real-world users at the ATCx Discrete Element Method event....

All posts