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Robust Multi-Objective Optimization for Response Surface Models Applied to Direct Low-Value Natural Gas Conversion Processes

机译:响应面模型的鲁棒多目标优化应用于直接低值天然气转换过程

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摘要

The high proportion of CO2/CH4 in low aggregated value natural gas compositions can be used strategically and intelligently to produce more hydrocarbons through oxidative methane coupling (OCM). The main goal of this study was to optimize direct low-value natural gas conversion via CO2-OCM on metal oxide catalysts using robust multi-objective optimization based on an entropic measure to choose the most preferred Pareto optimal point as the problem’s final solution. The responses of CH4 conversion, C2 selectivity, and C2 yield are modeled using the response surface methodology. In this methodology, decision variables, e.g., the CO2/CH4 ratio, reactor temperature, wt.% CaO and wt.% MnO in ceria catalyst, are all employed. The Pareto optimal solution was obtained via the following combination of process parameters: CO2/CH4 ratio = 2.50, reactor temperature = 1179.5 K, wt.% CaO in ceria catalyst = 17.2%, wt.% MnO in ceria catalyst = 6.0%. By using the optimal weighting strategy w1 = 0.2602, w2 = 0.3203, w3 = 0.4295, the simultaneous optimal values for the objective functions were: CH4 conversion = 8.806%, C2 selectivity = 51.468%, C2 yield = 3.275%. Finally, an entropic measure used as a decision-making criterion was found to be useful in mapping the regions of minimal variation among the Pareto optimal responses and the results obtained, and this demonstrates that the optimization weights exert influence on the forecast variation of the obtained response.
机译:CO 2 / CH 4的低聚集值天然气组合物中的高比例可以策略性和智能地用于通过以产生更多的烃氧化甲烷偶联(OCM)。本研究的主要目标是优化在使用基于熵的度量强大的多目标优化来选择最优选的帕累托最优点作为问题的最终解决方案的金属氧化物催化剂通过CO2-OCM直接低值天然气转化。 CH4转化率,C2选择性和产率C2的响应是使用响应面分析法建模。在这种方法中,决策变量,例如,CO 2 / CH 4比,反应器温度,重量%CaO和重量%的MnO中的二氧化铈催化剂,都使用。在二氧化铈催化剂= 17.2%,重量CO 2 / CH 4比= 2.50,反应器温度= 1179.5 K,重量%的CaO%的MnO中的二氧化铈催化剂= 6.0%:通过对工艺参数如下组合而获得Pareto最优解。通过使用最优加权策略W1 = 0.2602,W2 = 0.3203,W3 = 0.4295,对于目标函数的最优同步值是:CH 4转化率= 8.806%,C2选择性= 51.468%,C2产率= 3.275%。最后,用作决策准则的熵度量被发现是在所获得的帕累托最优反应和结果之间映射的变化最小的区域是有用的,并且这证实了优化的权重施加在所获得的预测变化影响回复。

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