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首页> 外文期刊>Journal of the Japan Petroleum Institute >Optimization of Cu-based Oxide Catalyst for Methanol Synthesis Using a Neural Network Trained by Design of Experiment
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Optimization of Cu-based Oxide Catalyst for Methanol Synthesis Using a Neural Network Trained by Design of Experiment

机译:实验设计的神经网络优化用于合成甲醇的铜基氧化物催化剂

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Cu-Zn oxide catalyst for methanol synthesis was optimized using an activity map by neural network method.The catalyst composition was determined randomly and te training data were measured in a high-pressure HTS reactor using a 96-well microplate system.In this case,the data around the optimum were usually scattered with increasing parameters,despite 95 datasets causing low accuracy of the prediction.To obtain effective datasets for training,design of experiment was employed.After 18 datasets of catalyst composition-activity were designed and measured,a variety of neural networks were constructed.Each maximum was determined by the activity-envelope method and the best neural network was compared with that constructed frm the 94 datasets.Design of experiment combined with the neural network was useful to determine the optimum catayst composition.
机译:使用神经网络方法通过活性图优化用于甲醇合成的Cu-Zn氧化物催化剂,随机确定催化剂的组成,并使用96孔微孔板系统在高压HTS反应器中测量训练数据。尽管有95个数据集导致预测的准确性较低,但最佳参数周围的数据通常会随着参数的增加而散乱。为了获得有效的训练数据集,我们进行了实验设计。设计并测量了18个催化剂组成-活性数据集后,通过活动包络法确定每个最大值,并将最佳神经网络与从94个数据集构建的最佳神经网络进行比较。结合神经网络的实验设计有助于确定最佳催化剂组成。

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