利用基于知识的技术开发三步建模策略

M.Simsek Murat Simsek
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引用次数: 6

摘要

人工神经网络已成为工程设计建模和优化的重要技术。本文提出了基于知识的三步建模策略,以开发新的高效建模方法来代替传统的人工神经网络(ANN)建模。基于知识的人工神经网络是将现有的经验公式、等效电路模型和半解析方程等知识整合到神经网络结构中来构建的。在这种新技术中,在第一步中创建所需的知识,并在第二步中作为粗模型使用。因此,每个模型都比前一个模型表现出更好的性能。该策略采用常规人工神经网络、先验知识输入和差分先验知识输入,不仅提高了建模精度,而且减少了建模耗时。在Branin函数建模应用中,论证了三步建模的优越性。
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Developing 3-step modeling strategy exploiting knowledge based techniques
Artificial neural networks have been used as an important technique in modeling and optimization for engineering design. In this work, 3-step modeling strategy based on knowledge based techniques is proposed to develop new efficient modeling instead of conventional artificial neural network (ANN) modeling. The knowledge based artificial neural networks are constructed by incorporating the existing knowledge such as empirical formulas, equivalent circuit models and semi-analytical equations in neural network structures. In this new technique, required knowledge is created in the first step and used in the second step as a coarse model. Therefore each model shows better performance than former. In this strategy, conventional ANN, prior knowledge input and prior knowledge input with difference techniques are utilized not only to improve modeling accuracy but also to reduce time consumption during modeling. The advantages of using 3-step modeling are demonstrated on Branin function modeling application.
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