Assessing variation in package modeling
Author(s) -
Benjamin Frank,
KYLE KRUGER
Publication year - 2021
Publication title -
tappi journal
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.217
H-Index - 45
ISSN - 0734-1415
DOI - 10.32964/tj20.4.231
Subject(s) - compression (physics) , enhanced data rates for gsm evolution , variation (astronomy) , set (abstract data type) , work (physics) , production (economics) , computer science , engineering , industrial engineering , econometrics , mathematics , mechanical engineering , artificial intelligence , materials science , physics , astrophysics , composite material , programming language , economics , macroeconomics
Predictions from empirical models are affected by variability in the input parameters for the data set used to build the models. For corrugated boxes, the difference between actual and modeled compression strength creates a real cost associated with box production, often resulting in boxes that may need to be over-designed to compensate for a lack of model precision. No work to date has attempted to assess the limitation in these compression estimates due to input parameter testing variability. In this paper we approach that problem, initially for the McKee equation and then conceptually for other box models. For our industry to do a better job at meeting the needs of our corrugated packaging customers, we need to reduce the variation in the tests we all rely on, particularly for evaluating material strength (edge crush test [ECT]) and package compression performance (box compression test [BCT]).
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