The novel non-isothermal Hot Forming and cold die Quenching (HFQ) process can enable the cost-effective production of complex shaped, high strength aluminium alloy panel components. However, the unfamiliarity of designing for the new process prevents its widescale adoption in industrial settings. Recent research efforts focus on the development of advanced material models for finite element simulations, used to assess the feasibility of new component designs for the HFQ process. However, FE simulations take place late in design processes, require forming process expertise and are unsuitable for early-stage design explorations. To address these limitations, this study presents a novel application of a Convolutional Neural Network (CNN) based surrogate as a means of rapid manufacturing feasibility assessment for components to be formed using the HFQ process. A diverse dataset containing variations in component geometry, blank shapes, and processing parameters, together with corresponding physical fields is generated and used to train the model. The results show that near indistinguishable full field predictions are obtained in real time from the model when compared with HFQ simulations. This technique provides an invaluable tool to aid component design and decision making at the onset of a design process for complex-shaped components formed under HFQ conditions.
翻译:新的非热热热形成和冷死热热热热热热热热冷热热热热热热热热热热热热热热热热热热热热热热新工艺工艺,能够以具有成本效益的方式生产复杂的高强度铝合金板组件。然而,由于新工艺的设计不熟悉,因此无法在工业环境中广泛采用新工艺。最近的研究重点是开发用于有限元素模拟的先进材料模型,用于评估HFQ工艺的新部件设计的可行性。然而,FE模拟在设计过程过迟时才进行,需要形成过程专门知识,并且不适合早期的设计探索。为克服这些局限性,本研究提出了以革命神经网络为基础的新应用,作为快速制造可行性评估手段,用于利用HFQ工艺对拟形成的部件进行制造。一个包含部件几何、空白形状和处理参数变化的多样化数据集,连同相应的物理场用于培训模型。结果显示,与HFQ模拟相比,在实时从模型中获得了几乎无法分辨的全场预测。这一技术为在设计过程中设计一个复杂结构设计阶段设计设计过程和决定提供了宝贵的工具。