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A new weighted optimal combination of ANNs for catalyst design and reactor operation: Methane steam reforming studies

机译:用于催化剂设计和反应器运行的人工神经网络的新型加权最优组合:甲烷蒸汽重整研究

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摘要

Catalyst design and evaluation is a multifactorial multiobjective optimization problem and the absence of well-defined mechanistic relationships between wide ranging input-output variables has stimulated interest in the application of artificial neural network for the analysis of the large body of empirical data available. However, single ANN models generally have limited predictive capability and insufficient to capture the broad range of features inherent in the voluminous but dispersed data sources. In this study, we have employed a Fibonacci approach to select optimal number of neurons for the ANN architecture followed by a new weighted optimal combination of statistically-derived candidate ANN models in a multierror sense. Data from 200 cases for catalytic methane steam reforming have been used to demonstrate the veracity and robustness of the integrated ANN modeling technique. ? 2011 American Institute of Chemical Engineers AIChE J, 58: 2412–2427, 2012
机译:催化剂的设计和评估是一个多因素的多目标优化问题,广泛的输入-输出变量之间缺乏明确的机械关系已激发了人们对使用人工神经网络分析大量可用经验数据的兴趣。但是,单个ANN模型的预测能力通常有限,不足以捕获庞大但分散的数据源中固有的广泛特征。在这项研究中,我们采用了Fibonacci方法来为ANN体系结构选择最佳神经元数量,然后在多错误的意义上对统计派生的候选ANN模型进行了新的加权优化组合。来自200例催化甲烷蒸汽重整的数据已用于证明集成ANN建模技术的准确性和鲁棒性。 ? 2011美国化学工程师学会AIChE J,58:2412-2427,2012

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