6 Jun
2018

Should you use IIot to log rejects?

Using an autonomous measuring and logging system for rejects will safe time, materials, money, and improve the overall efficiency of the production process.

Lean Manufacturing
Faut-il utiliser IIot pour enregistrer les rejets ?

While noticing where, when, and how rejects occur are all important considerations to make when trying to improve production efficiency, the tools used to measure and log rejects are just as important.

 

Worximity_TC2_in_hand_machine_monitoring

One method of measuring and logging rejects is with a quality control worker who manually checks the product for quality and records data by hand, with paper or via manual entry in a computer. While this method works, it wastes time, labor, and is costly in the long run.

Measuring the parts via autonomous technology, by sensor or automatic micrometer for example, is a much faster and more accurate quality control check, as it is not subjected to human error. Besides improving accuracy, an autonomous reject system will also improve insight into the problem, potentially taking preventative action before the problem occurs. With this type of system, more “checkpoints” can be created (perhaps even one after every manufacturing process) allowing problems to be found as they arise. Autonomous data entry will also save labor, as an employee no longer has to do it on the clock.

 

While the design of these systems are largely industry and plant specific, converting and using an autonomous measuring and logging system for rejects will safe time, materials, money, and improve the overall efficiency of the production process.

 

Want to learn more?
Download the ebook
Related blog articles

Articles connexes

Retour au blog
Nous vous remercions ! Votre demande a bien été reçue !
Oups ! Un problème s'est produit lors de l'envoi du formulaire.
3
Oct 2019

TRG et les outils analytiques d'usine intelligente - un outil révolutionnaire pour l'industrie manufacturière

French
14
mai 2019

Will You Be Able to Catch Up to Industry Leaders? - Part 3

English
2
Août 2018

Monitoring Throughput—The Most Important of the 12 Manufacturing Metrics

English

Articles connexes

Retour au blog
Nous vous remercions ! Votre demande a bien été reçue !
Oups ! Un problème s'est produit lors de l'envoi du formulaire.
5
Juin 2018

Advanced Deep Learning AI Heatmap

Insight into the areas within specific sectors where deep neural networks can potentially create the most value.

English
2
Mars 2018

Blog Review: How AI Will Change Businesses Decision Making

We review the article from the Supply Chain Game Changer Blog about Artificial Intelligence, AI data-based models for better decision making and augmented intelligence which will eventually spread to manufacturing.

English
12
Avril 2018

Smart Factory Analytics: Creating New Business Opportunities

This post explains how implementing smart factory analytics can change what you previously thought your factory was capable of. Instead of thinking we don’t do that, you can look at your production data and figure out how could we do that?

English