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Application of fuzzy T-norms towards a new Artificial Neural Networks' evaluation framework: A case from wood industry

机译:模糊T范数在新的人工神经网络评估框架中的应用:以木材工业为例

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摘要

The development of an Artificial Neural Network requires proper learning and testing procedures that adopt error correction processes and algorithms. Monitoring of processing elements values and overall performance is one of the most critical issues of an Artificial Neural Network development process. This should happen as the network evolves and it is the actual task that enables the developer to make informed decisions about the proper network topology, math functions, training times and learning parameters. This manuscript presents an innovative and flexible error validation framework applying fuzzy logic. It offers an approach capable of viewing the task of performance improvement under several different perspectives. Then the developer has the capacity to decide which performance is most suitable according to his standards. The model has been tested for a specific industrial case study with actual data and a comparison to the existing methods is presented. (c) 2008 Elsevier Inc. All rights reserved.
机译:人工神经网络的发展需要适当的学习和测试程序,这些程序应采用纠错过程和算法。监视处理元件的值和总体性能是人工神经网络开发过程中最关键的问题之一。这应该随着网络的发展而发生,而这正是使开发人员能够做出关于正确的网络拓扑,数学功能,训练时间和学习参数的明智决策的实际任务。该手稿提出了一种创新且灵活的应用模糊逻辑的错误验证框架。它提供了一种能够从多个不同角度查看性能改进任务的方法。然后,开发人员可以根据自己的标准来决定哪种性能最合适。该模型已针对具有实际数据的特定工业案例进行了测试,并与现有方法进行了比较。 (c)2008 Elsevier Inc.保留所有权利。

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