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抗硫化返原剂并用对NR性能的影响

Special Purpose Rubber Products(2020)

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Abstract
研究了3种抗硫化返原剂多官能丙烯酸酯类化合物(SR534)、有机锌皂类(SL273)、二硫代硫酸钠盐(CSP8008)对NR抗硫化返原性能、硫化特性、力学性能的影响.结果 表明,将抗硫化返原剂并用可大幅提高NR的抗硫化返原性能,且优于单独使用,其中SR534与CSP8008并用后,胶料的返原率(Rt)最低,150℃×60min后才出现硫化返原现象;3种抗硫化返原剂均能延长t90,影响t10和MH-ML,并用添加可减少SR534对胶料MH-ML的影响;3种抗硫化返原剂对胶料的力学性能影响较小,其中SR534与CSP8008并用,NR胶料的综合性能相对较好.
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