Monte Carlo Applications in Polymer Science
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The aim of this chapter is to discuss in detail the Monte Carlo algorithms developed to compute the sequence distributions in polymers. Because stereoregular polymers constitute a unique form of copolymer the stereosequence distributions in vinyl homopolymers and the sequence distributions in copolymers can be computed using the same algorithms. Also included is a brief review of probabilistic models (i. e. Bernoulli trials and Markov chains) frequently used to compute the sequence distribtuion. The determination of sequence distributions is important for the under- standing of polymer physical properties to compute the monomer reactivity para- meters and to discriminate among polymerization mechanisms. 2. 2. Short review of analytical models Monte Carlo algorithms and computer programs. l A Bernoullian model was developed by Price. Within this model the probability of a given state of the system is independent of the previous state and does not condition the next state. The Bernoullian behaviour has been shown 24 to describe cls-trans distributions among 1 4 additions in polybutadienes - 5 the comonomer distribution in ethylene-vinyl acetate copolymer and configura- 6 tional distributions in polystyrene poly (vinyl chloride)7 poly (vinyl alcohol)7 Consider the binary copolymerization: 1 J=12 (1) where - MI* I = 12 is an ionic or radical polymeric chain end and M J = 12 J is a monomer. Because the final state (i. e.
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