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Qualitative behavior rules for the cold rolling process extracted from trained ANN via the FCANN method

机译:通过FCANN方法从受过训练的ANN中提取的冷轧过程的定性行为规则

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摘要

Nowadays, artificial neural networks (ANN) are being widely used in the representation of different systems and physics processes. In this paper, a neural representation of the cold rolling process will be considered. In general, once trained, the networks are capable of dealing with operational conditions not seen during the training process, keeping acceptable errors in their responses. However, humans cannot assimilate the knowledge kept by those networks, since such knowledge is implicit and difficult to be extracted. For this reason, the neural networks are considered a "black-box".rnIn this work, the FCANN method based on formal concept analysis (FCA) is being used in order to extract and represent knowledge from previously trained ANN. The new FCANN approach permits to obtain a non-redundant canonical base with minimum implications, which qualitatively describes the process. The approach can be used to understand the relationship among the process parameters through implication rules in different operational conditions on the load-curve of the cold rolling process. Metrics for evaluation of the rules extraction process are also proposed, which permit a better analysis of the results obtained.
机译:如今,人工神经网络(ANN)被广泛用于表示不同的系统和物理过程。在本文中,将考虑冷轧过程的神经表示。通常,一旦接受培训,网络便能够处理培训过程中未见的操作条件,并在响应中保持可接受的错误。但是,人类无法吸收这些网络所保存的知识,因为这些知识是隐性的并且难以提取。因此,神经网络被认为是“黑匣子”。在这项工作中,基于形式概念分析(FCA)的FCANN方法被用于从先前训练的ANN中提取和表示知识。新的FCANN方法允许以最小的影响获得非冗余的规范基础,该基础定性地描述了该过程。该方法可用于通过冷轧过程负荷曲线上不同操作条件下的蕴涵规则来理解过程参数之间的关系。还提出了对规则提取过程进行评估的度量,从而可以对获得的结果进行更好的分析。

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