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首页> 外文期刊>International journal of nonlinear sciences and numerical simulation >Modelling and Optimization of CO2 Absorption in Pneumatic Contactors Using Artificial Neural Networks Developed with Clonal Selection-Based Algorithm
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Modelling and Optimization of CO2 Absorption in Pneumatic Contactors Using Artificial Neural Networks Developed with Clonal Selection-Based Algorithm

机译:基于克隆选择算法的人工神经网络对气动接触器中CO2吸收的建模与优化

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摘要

Our research focuses on the application of airlift contactors (ALRs) for the decontamination of CO2-containing gas streams, such as biogas. To assess the performance of ALRs during CO2 absorption, a complex experimental programme was applied in a laboratory-scale rectangular pneumatic contactor, able to operate either as a bubble column or as an airlift reactor. Using the experimental data, a model based on artificial neural network (ANN) was developed. The algorithm for determining the optimal neural network model and for reactor optimization is clonal selection (CS), belonging to artificial immune system class, which is a new computational intelligence paradigm based on the principles of the vertebrate immune system. To improve its capabilities and the probability for highly suitable models and input combinations, addressing maximum efficiency, a Back-Propagation (BK) algorithm - a supervised learning method based on the delta rule - is used as a local search procedure. It is applied in a greedy manner for the best antibody found in each generation. Since the highest affinity antibodies are cloned in the next generation, the effect of BK on the suitability of the individuals propagates into a large proportion of the population. In parallel with the BK hybridization of the basic CS-ANN combination, a series of normalization procedures are included for improving the overall results provided by the new algorithm called nCS-MBK (normalized Clonal Selection-Multilayer Perceptron Neural Network and Back-Propagation algorithm). The optimization allowed for achieving the optimal reactor configuration, which leads to a maximum amount of CO2 dissolved in water.
机译:我们的研究专注于空运接触器(ALR)在含二氧化碳气体流(如沼气)净化中的应用。为了评估CO2吸收过程中ALR的性能,在实验室规模的矩形气动接触器中应用了一个复杂的实验程序,该接触器既可以用作气泡塔,也可以用作气举反应器。利用实验数据,建立了基于人工神经网络(ANN)的模型。确定最佳神经网络模型和优化反应堆的算法是克隆选择(CS),属于人工免疫系统类别,这是一种基于脊椎动物免疫系统原理的新型计算智能范式。为了提高其功能和适用于非常合适的模型和输入组合的可能性,以解决最大效率,将反向传播(BK)算法(一种基于增量规则的监督学习方法)用作本地搜索过程。它以贪婪的方式应用于每一代中发现的最佳抗体。由于亲和力最高的抗体是在下一代中克隆的,因此BK对个体适应性的影响会传播到大部分人群中。与基本CS-ANN组合的BK杂交同时,还包括一系列归一化程序,以改善称为nCS-MBK的新算法(归一化的克隆选择-多层感知器神经网络和反向传播算法)提供的整体结果。 。该优化允许实现最佳的反应器配置,这导致最大量的CO2溶解在水中。

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