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Constrained and unconstrained Gibbs free energy minimization in reactive systems using genetic algorithm and differential evolution with tabu list

机译:使用遗传算法和带有禁忌表的差分进化,无功系统中有约束和无约束的吉布斯自由能最小化

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Phase equilibrium modeling plays an important role in design, optimization and control of separation processes. The global optimization problem involved in phase equilibrium calculations is very challenging due to the high non-linearity of thermodynamic models especially for multi-component systems subject to chemical reactions. To date, a few attempts have been made in the application of stochastic methods for reactive phase equilibrium calculations compared to those reported for non-reactive systems. In particular, the population-based stochastic methods are known for their good exploration abilities and, when optimal balance between the exploration and exploitation is found, they can be reliable and efficient global optimizers. Genetic algorithms (GAs) and differential evolution with tabu list (DETL) have been very successful for performing phase equilibrium calculations in non-reactive systems. However, there are no previous studies on the performance of both these strategies to solve the Gibbs free energy minimization problem for systems subject to chemical equilibrium. In this study, the constrained and unconstrained Gibbs free energy minimization in reactive systems have been analyzed and used to assess the performance of GA and DETL. Specifically, the numerical performance of these stochastic methods have been tested using both conventional and transformed composition variables as the decision vector for free energy minimization in reactive systems, and their relative strengths are discussed. The results of these strategies are compared with those obtained using SA, which has shown competitive performance in reactive phase equilibrium calculations. To the best of our knowledge, there are no studies in the literature on the comparison of reactive phase equilibrium using both the formulations with stochastic global optimization methods. Our results show that the effectiveness of the stochastic methods tested depends on the stopping criterion, the type of decision variables, and the use of local optimization for intensification stage. Overall, unconstrained Gibbs free energy minimization involving transformed composition variables requires more computational time compared to constrained minimization, and DETL has better performance for both constrained and unconstrained Gibbs free energy minimization in reactive systems.
机译:相平衡建模在分离过程的设计,优化和控制中起着重要作用。由于热力学模型的高度非线性,尤其是对于经受化学反应的多组分系统,相平衡计算中涉及的全局优化问题非常具有挑战性。迄今为止,与非反应性系统所报道的方法相比,在将随机方法应用于反应性相平衡计算方面已经进行了一些尝试。尤其是,基于种群的随机方法以其良好的勘探能力而闻名,当在勘探与开发之间找到最佳平衡时,它们便是可靠且高效的全局优化器。遗传算法(GA)和带有禁忌表的差分进化(DETL)在非反应性系统中执行相平衡计算非常成功。但是,对于解决受化学平衡的系统的吉布斯自由能最小化问题的这两种策略的性能,以前没有进行过研究。在这项研究中,已经分析了无功系统中受约束和不受约束的吉布斯自由能最小化,并将其用于评估GA和DETL的性能。具体而言,已使用常规变量和变换后的成分变量作为反应性系统中自由能最小化的决策向量来测试了这些随机方法的数值性能,并讨论了它们的相对强度。将这些策略的结果与使用SA所获得的结果进行比较,SA在反应性相平衡计算中显示出竞争性能。据我们所知,目前尚无关于使用两种配方和随机全局优化方法比较反应相平衡的文献。我们的结果表明,所测试的随机方法的有效性取决于停止标准,决策变量的类型以及强化阶段的局部优化。总体而言,与约束最小化相比,涉及变换成分变量的无约束Gibbs自由能最小化需要更多的计算时间,并且DETL对于无功系统中的约束和无约束Gibbs自由能最小化具有更好的性能。

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