Search
Use the search bar or filters below to find any TAPPI product or publication.
Filters
Content Type
Publications
Level of Knowledge
Collections
Journal articles
Magazine articles
SetPoint: A Refreshing Perspective, Paper360 May/June 2019
SetPoint: A Refreshing Perspective, Paper360 May/June 2019
Journal articles
Magazine articles
Incorporating KPIs into Your Safety Management System, Paper360 May/June 2019
Incorporating KPIs into Your Safety Management System, Paper360 May/June 2019
Journal articles
Magazine articles
Fastmarkets RISI’s 2019 Asian CEO of the Year: Susumu Yajima, Oji Holdings Corporation, Paper360 May/June 2019
Fastmarkets RISI’s 2019 Asian CEO of the Year: Susumu Yajima, Oji Holdings Corporation, Paper360 May/June 2019
Journal articles
Magazine articles
Safety Meets Efficiency for AVRE Operators, Paper360 May/June 2019
Safety Meets Efficiency for AVRE Operators, Paper360 May/June 2019
Journal articles
Magazine articles
TAPPI Journal Summaries, Paper360 May/June 2019
TAPPI Journal Summaries, Paper360 May/June 2019
Journal articles
Magazine articles
ASPI News, Paper360 May/June 2019
ASPI News, Paper360 May/June 2019
Journal articles
Magazine articles
Creating adaptive predictions for packaging-critical quality parameters using advanced analytics and machine learning, TAPPI Journal November 2019
ABSTRACT: Packaging manufacturers are challenged to achieve consistent strength targets and maximize pro-duction while reducing costs through smarter fiber utilization, chemical optimization, energy reduction, and more. With innovative instrumentation readily accessible, mills are collecting vast amounts of data that provide them with ever increasing visibility into their processes. Turning this visibility into actionable insight is key to successfully exceeding customer expectations and reducing costs. Predictive analytics supported by machine learning can provide real-time quality measures that remain robust and accurate in the face of changing machine conditions. These adaptive quality “soft sensors” allow for more informed, on-the-fly process changes; fast change detection; and process control optimization without requiring periodic model tuning.The use of predictive modeling in the paper industry has increased in recent years; however, little attention has been given to packaging finished quality. The use of machine learning to maintain prediction relevancy under ever-changing machine conditions is novel. In this paper, we demonstrate the process of establishing real-time, adaptive quality predictions in an industry focused on reel-to-reel quality control, and we discuss the value created through the availability and use of real-time critical quality.
Journal articles
Magazine articles
Over the Wire, Paper360º November/December 2019
Over the Wire, Paper360º November/December 2019
Journal articles
Magazine articles
Which Safety Conversations Have the Most Impact?, Paper360º November/December 2019
Which Safety Conversations Have the Most Impact?, Paper360º November/December 2019