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Swarm intelligence application for optimization of CO_2 diffusivity in polystyrene-b-polybutadiene-b-polystyrene (SEBS) foaming

机译:聚苯乙烯-B-聚丁二烯-B-聚苯乙烯(SEBS)发泡中CO_2扩散率优化CO_2扩散性的群体智能应用

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Thermoplastic elastomer SEBS foams were prepared by using carbon dioxide (CO_2) as a blowing agent and the process is classified as physical foaming method. During the foaming process, the diffusivity of CO_2 need to be controlled since it is one of the parameter that will affect the final cellular structure of the foam. Conventionally, the rate of CO_2 diffusion was measured experimentally by using a highly sensitive device called magnetic suspension balance (MSB). Besides, this expensive MSB machine is not easily available and measurement of CO_2 diffusivity is quite complicated as well as time consuming process. Thus, to overcome these limitations, a computational method was introduced. Particle Swarm Optimization (PSO) is a part of Swarm Intelligence system which acts as a beneficial optimization tool where it can solve most of nonlinear complications. PSO model was developed for predicting the optimum foaming temperature and CO_2 diffusion rate in SEBS foam. Results obtained by PSO model are compared with experimental results for CO_2 diffusivity at various foaming temperature. It is shown that predicted optimum foaming temperature at 154.6 °C was not represented the best temperature for foaming as the cellular structure of SEBS foamed at corresponding temperature consisted pores with unstable dimension and the structure was not visibly perceived due to foam shrinkage. The predictions were not agreed well with experimental result when single parameter of CO_2 diffusivity is considered in PSO model because it is not the only factor that affected the controllability of foam shrinkage. The modification on the PSO model by considering CO_2 solubility and rigidity of SEBS as additional parameters needs to be done for obtaining the optimum temperature for SEBS foaming. Hence stable SEBS foam could be prepared.
机译:热塑性弹性体SEBS泡沫通过使用二氧化碳(CO_2)作为发泡剂制备,并且该方法被分类为物理发泡方法。在发泡过程中,需要控制CO_2的扩散性,因为它是影响泡沫最终蜂窝结构的参数之一。通常,通过使用称为磁悬浮平衡(MSB)的高敏感装置实验测量CO_2扩散的速率。此外,这种昂贵的MSB机器不易获得,并且CO_2扩散率的测量非常复杂,并且耗时的过程非常复杂。因此,为了克服这些限制,引入了计算方法。粒子群优化(PSO)是群智能系统的一部分,其作为有益优化工具,可以解决大部分非线性并发症。开发了PSO模型,用于预测SEBS泡沫中的最佳发泡温度和CO_2扩散速率。通过PSO模型获得的结果与各种发泡温度下的CO_2扩散率的实验结果进行比较。结果表明,在154.6℃下预测的最佳发泡温度没有表示用于发泡的最佳温度,因为在相应温度下发泡的SEB的细胞结构将具有不稳定尺寸的孔组成,并且由于泡沫收缩而没有明显地感知该结构。当PSO模型中考虑CO_2扩散率的单个参数时,预测并未达到实验结果,因为它不是影响泡沫收缩可控性的唯一因素。通过考虑SEBBS的CO_2溶解度和刚度作为额外参数的溶解度,需要进行PSO模型的修饰,以获得SEBS发泡的最佳温度。因此可以制备稳定的SEBS泡沫。

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