Logo

Using Predictive Analytics to Reduce Equipment Downtime, Improve Product Quality and Decrease Costs in the Age of the Industrial Internet of Things

On-demand webcast:
Aired live: June 28, 2017 02:00 PM EDT

New Industrial Internet of Things (IIoT) solutions are helping manufacturers improve product quality, increase productivity, decrease costs, and make smarter business decisions. Already, manufacturing facilities are becoming “smart factories,” where vast quantities of sensor data are continuously analyzed to increase productivity and efficiency. For example, IIoT sensors might monitor the temperature of a key piece of equipment, if the temperature begins to rise a predictive maintenance solution can take actions to avoid equipment or product damage and notify staff of the problem.

A major challenge is how to implement and deploy this technology as every factory is different, meaning that a predictive maintenance solution has to be customized for each facility. This involves a complicated set of decisions about everything from how data should be gathered to where data should be analyzed — in the cloud or at the edge of the network. Making these choices can be difficult because IIoT solutions require expertise in both information technology (IT) and shop floor operational technology (OT) — and these two disciplines historically have had little in common.

Join our experts from PrismTech, and IBM as they discuss these challenges, review current approaches and their limitations and show how an IIoT-enabled predictive maintenance solution that incorporates factory-optimized hardware, secure data distribution, and advanced analytics is the way forward.

Speakers:
Simon Collins, Senior Product Manager, PrismTech
Lynn Sweetwood, Senior Technical Solutions Specialist, Watson IoT Analytics, IBM

Moderator:
Brandon Lewis, OpenSystems Media
 If you have previously registered for this event, please login below:
 Email
 LOGIN

Registration is required to attend this event. Please register now.
Email*
First Name*
Last Name*
Title*
Company*
Street Address Line 1*
City*
State*
Zip*
Country*
Work Phone*
Click here to subscribe to the Embedded Daily eNewsletter, the industry’s most comprehensive roundup of embedded news, products, and technologies. 
You must have Javascript and Cookies enabled to access this webcast. Click here for Help.

Privacy Policy

 
Please enable Cookies in your browser before registering for the webcast.
 
*Denotes required.