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An Economical method for artificial neural network process modeling by the model-modifier approach.

机译:模型调制器方法的人工神经网络过程建模经济方法。

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In this paper we present our model-modifier approach as an economical method for the development models. The model modifier method leverages knowledge from one ANN model to another of a similar type, thus reducing the development effort requried as compared to starting from scratch. The economy afforded by this knowledge-sharing technique was evaluated on a Chemical Vapor Depositon (CVD) reactor. The results show that the model-modifier approach is a valid method for transferring knowledge between similar ANN models and that significant savings in training data accrue from this approach. In our case, a highly accurate ANN model was developed with a mere one-fifth of the data that would have been requried without this approach. Further, we have also shown that an ANN model developed by the model-modifier approach can be easily and reliably utilized for process optimization.
机译:在本文中,我们将我们的模型 - 修饰方法作为开发模型的经济方法。模型修饰方法方法利用一个ANN模型的知识利用了一种类似类型的知识,从而减少了与从头开始时相比的开发努力。通过这种知识共享技术得到的经济评估了化学蒸气沉积物(CVD)反应器。结果表明,模型 - 修饰方法是一种有效的方法,用于转移相似的ANN模型之间的知识,从这种方法训练数据累积的显着节省。在我们的情况下,一个高度准确的ANN模型是开发的,只有在没有这种方法的情况下会在没有这种方法的情况下进行的第五个数据。此外,我们还表明,通过模型 - 调节方法开发的ANN模型可以很容易且可靠地利用用于过程优化。

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