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首页> 外文期刊>Chemical Engineering Research & Design: Transactions of the Institution of Chemical Engineers >Efficient hybrid modeling of CO2 absorption in aqueous solution of piperazine: Applications to energy and environment
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Efficient hybrid modeling of CO2 absorption in aqueous solution of piperazine: Applications to energy and environment

机译:哌嗪水溶液中CO2吸收的高效杂种杂交型:能源与环境的应用

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Carbon dioxide (CO2) considerably contributes to the greenhouse effects and consequently, to the global warming. Thus, reduction of CO2 emissions/concentration in the atmosphere is an important goal for various industrial and environmental sectors. In this research work, we study CO2 capture by its absorption in mixtures of water and piperazine (PZ). Experimental techniques to obtain the equilibrium data are usually costly and time consuming. Thermodynamic modeling by Equations of State (E0Ss) and connectionist tools leads to more reliable and accurate results, compared to the empirical models and analytical modeling strategies. This research work utilizes Genetic Programming (GP) and Genetic Algorithm Adaptive Neuro Fuzzy Inference System (GA-ANFIS) to estimate the solubility of CO2 in mixtures of water and piperazine (PZ). In both methods, the input parameters are temperature, partial pressure of CO2, and concentration of PZ in the solution. A total number of 390 data points is collected from the literature and used to develop GP and GA-ANFIS models. Assessing the models by the statistical methods, both models are found to acceptably predict the CO2 solubility in water/PZ mixtures. However, the GP exhibits a superior performance, compared to GA-ANFIS; the values of Average Absolute Relative Error (AARD) are 5.3213% and 9.7143% for the GP and GA-ANFIS models, respectively. Such reliable predictive tools can assist engineers and researchers to effectively determine the key thermodynamic properties (e.g., solubility, vapor pressure, and compressibility factor) which are central to design and operation of the carbon capture processes in a variety of chemical plants such as power plants and refineries. (C) 2019 Institution of Chemical Engineers. Published by Elsevier B.V. All rights reserved.
机译:二氧化碳(CO2)大大有助于温室效应,因此促进了全球变暖。因此,减少了大气中的二氧化碳排放/浓度是各种工业和环境部门的重要目标。在这项研究中,我们通过在水和哌嗪的混合物中吸收(PZ)来研究CO2捕获。获得均衡数据的实验技术通常是昂贵且耗时的。与经验模型和分析建模策略相比,状态(E0SS)和连接主动工具等方程的热力学建模导致更可靠和准确的结果。该研究工作利用遗传编程(GP)和遗传算法自适应神经模糊推理系统(GA-ANFIS)来估算CO2在水和哌嗪(PZ)的混合物中的溶解度。在这两种方法中,输入参数是CO 2的温度,分压和溶液中PZ的浓度。从文献中收集390个数据点的总数,并用于开发GP和GA-ANFIS模型。通过统计方法评估模型,发现两种模型可接受地预测水/ Pz混合物中的CO2溶解度。然而,与GA-ANFIS相比,GP表现出卓越的性能;对于GP和GA-ANFIS模型,平均绝对相对误差(AARD)的值分别为5.3213%和9.7143%。这种可靠的预测工具可以帮助工程师和研究人员,有效地确定是碳捕获过程中的各种化学植物如发电厂的碳捕获过程的核心的关键热力学性质(例如,溶解度,蒸汽压力和可压缩因子)和炼油厂。 (c)2019化学工程师机构。 elsevier b.v出版。保留所有权利。

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