首页> 外文会议>Proceedings of the ASME international design engineering technical conferences and computers and information in engineering conference 2018 >KNOWLEDGE-BASED OPTIMIZATION OF ARTIFICIAL NEURAL NETWORK TOPOLOGY FOR PROCESS MODELING OF FUSED DEPOSITION MODELING
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KNOWLEDGE-BASED OPTIMIZATION OF ARTIFICIAL NEURAL NETWORK TOPOLOGY FOR PROCESS MODELING OF FUSED DEPOSITION MODELING

机译:基于知识的人工神经网络拓扑优化在熔体沉积过程建模中的应用

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摘要

Additive manufacturing (AM) continues to rise in popularity due to its various advantages over traditional manufacturing processes. AM interests industry, but achieving repeatable production quality remains problematic for many AM technologies. Thus, modeling the influence of process variables on the production quality in AM can be highly beneficial in creating useful knowledge of the process and product. An approach combining dimensional analysis conceptual modeling, mutual information based analysis, experimental sampling, factors selection, and modeling based on Knowledge-Based Artificial Neural Network (KB-ANN) is proposed for Fused Deposition Modeling (FDM) process. KB-ANN reduces the excessive amount of training samples required in traditional neural networks. The developed KB-ANN's topology for FDM, integrates existing literature and expert knowledge of the process. The KB-ANN is compared to conventional ANN using prescribed performance metrics. This research presents a methodology to concurrently perform experiments, classify influential factors, limit the effect of noise in the modeled system, and model using KB-ANN. This research can contribute to the qualification efforts of AM technologies.
机译:增材制造(AM)由于其相对于传统制造工艺的各种优势而继续受欢迎。 AM对行业感兴趣,但是对于许多AM技术而言,实现可重复的生产质量仍然存在问题。因此,在增材制造过程中对过程变量对生产质量的影响进行建模可以非常有益于创建有关过程和产品的有用知识。提出了一种融合尺寸分析概念建模,基于互信息的分析,实验采样,因子选择和基于知识的人工神经网络(KB-ANN)建模的方法,用于融合沉积建模(FDM)过程。 KB-ANN减少了传统神经网络中所需的过多训练样本。为FDM开发的KB-ANN拓扑融合了现有文献和该过程的专业知识。使用规定的性能指标将KB-ANN与常规ANN进行比较。这项研究提出了一种方法,可以同时执行实验,对影响因素进行分类,在建模系统中限制噪声的影响以及使用KB-ANN进行建模。这项研究可以为AM技术的鉴定工作做出贡献。

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