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Multi-objective exergy-based optimization of a continuous photobioreactor applied to produce hydrogen using a novel combination of soft computing techniques

机译:使用软计算技术的新颖组合,基于多目标基于火用的连续光生物反应器优化用于生产氢气

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This work was aimed at proposing a flexible and reliable framework based on combination of three soft computing techniques, i.e., artificial neural network, genetic algorithm, and fuzzy systems for multi-objective exergetic optimization of continuous photobiohydrogen production process from syngas by Rhodospirillum rubrum bacterium. To this end, artificial neural network (ANN) coupled with fuzzy clustering method (FCM) to model exergetic outputs on the basis of input variables. The outputs of modeling system were then fed into a novel optimization approach developed by hybridizing additive linear interdependent fuzzy multi-objective optimization (ALIFMO) and the elitist non-dominated sorting genetic algorithm (NSGA-II). The optimization was carried out to minimize the normalized exergy destruction and maximize the rational and process exergetic efficiencies, simultaneously. The solutions of the proposed approach were also compared with conventional fuzzy multi objective optimization procedure with independent objectives. Overall, the modeling system predicted the exergetic parameters of photobioreactor with a coefficient of determination higher than 0.90. Furthermore, the optimization approach suggested syngas flow rate of 13.35 mL/min and agitation speed of 383.34 rpm as the best operational condition by considering the preferences of process exergy efficiency, rational exergy efficiency, and normalized exergy destruction, respectively. This condition could yield the normalized exergy destruction of 1.56, process exergetic efficiency of 21.66%, and rational exergetic efficiency of 85.65%. The obtained results showed the superiority of the proposed approach over the conventional fuzzy method in optimizing the complex biofuel production systems. (C) 2016 Hydrogen Energy Publications LLC. Published by Elsevier Ltd. All rights reserved.
机译:这项工作旨在基于三种软计算技术(即人工神经网络,遗传算法和模糊系统)的组合,提出一种灵活可靠的框架,以用于多红藻红藻细菌连续合成光气连续生产过程的多目标能量优化。为此,将人工神经网络(ANN)与模糊聚类方法(FCM)结合起来,根据输入变量对高能输出进行建模。然后将建模系统的输出输入到一种新的优化方法中,该方法是通过将加性线性相互依赖的模糊多目标优化(ALIFMO)与精英非支配排序遗传算法(NSGA-II)混合而开发的。进行了优化,以最小化归一化的火用破坏,同时最大化理性和过程的火用效率。还将该方法的解决方案与具有独立目标的常规模糊多目标优化程序进行了比较。总体而言,建模系统以确定系数高于0.90的方式预测了光生物反应器的能量参数。此外,优化方法建议分别考虑过程能值效率,合理能值效率和归一化能值破坏的偏好,将合成气流速为13.35 mL / min,搅拌速度为383.34 rpm作为最佳操作条件。该条件可产生1.56的归一化能干破坏,21.56%的过程能效和85.65%的合理能效。获得的结果表明,该方法在优化复杂生物燃料生产系统方面优于传统的模糊方法。 (C)2016氢能出版物有限公司。由Elsevier Ltd.出版。保留所有权利。

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