Prediction of the GC-MS Retention Indices for a Diverse Set of Terpenes as Constituent Components of Camu-camu (Myrciaria dubia (HBK) Mc Vaugh) Volatile Oil, Using Particle Swarm Optimization-Multiple Linear Regression (PSO-MLR)
Subject Areas : Journal of Chemical Health Risks
1 - Islamic Azad University, Shahrood Branch, Shahrood, Iran
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Abstract :
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