氯乙烯
增塑剂
材料科学
己内酯
极限抗拉强度
聚氯乙烯
复合材料
压延
延伸率
高分子化学
天然橡胶
化学工程
聚合物
聚合
共聚物
工程类
作者
Andrew Rideout,Kushal Panchal,Milan Marić,Richard L. Leask,Jim A. Nicell
摘要
Abstract Surface defects known as “gas checks” often mar the surfaces of poly(vinyl chloride) (PVC) calendered films. These defects are typically prevented through changes in the calender operating parameters, a costly exercise which also limits the sheet thickness and the production rate. Adding a low concentration of poly(caprolactone) (PCL)‐based star‐shaped compound can eliminate gas check defects in PVC calendering. The effects of a triheptylsuccinate‐terminated PCL with a PCL triol core and number average molecular weight of 540 g/mol (i.e., PCL 540 ‐[(succ)‐C 7 ] 3 ) has been investigated on the material, thermal, and processing properties of PVC blends containing diisononyl phthalate (DINP) as a primary plasticizer and PCL 540 ‐[(succ)‐C 7 ] 3 in low quantities (i.e., 0, 5, or 10 parts per hundred rubber (phr)) as a secondary plasticizer and processing aid. The most significant differences between PVC blends containing PCL 540 ‐[(succ)‐C 7 ] 3 and those without are in the rheological properties of the PVC blends at higher temperatures and lower angular frequencies. Under these conditions, PVC blends containing 10 phr of PCL 540 ‐[(succ)‐C 7 ] 3 have a complex viscosity nearly three times higher than those containing only DINP. PVC/PCL 540 ‐[(succ)‐C 7 ] 3 blends had comparable tensile properties to those containing only DINP, with no significant change in maximum elongation and a small but significant increase of 28% in maximum stress. The addition of PCL 540 ‐[(succ)‐C 7 ] 3 made it possible to produce calendered films without gas checks that were twice as thick as those produced in its absence. In addition to reduced wastage of marred films, the increased calender operating range for PVC films containing PCL 540 ‐[(succ)‐C 7 ] 3 has the potential to significantly reduce energy costs for the calendering of thick PVC films.
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