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首页> 外文期刊>Powder Metallurgy >Experimental analysis and neural network modelling of the rheological behaviour of powder injection moulding feedstocks formed with bimodal powder mixtures
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Experimental analysis and neural network modelling of the rheological behaviour of powder injection moulding feedstocks formed with bimodal powder mixtures

机译:双峰粉末混合物形成粉末注射成型原料流变行为的实验分析和神经网络建模

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摘要

Feedstock behaviour during powder injection moulding (PIM), has a critical influence on the physical and mechanical properties of the final components. In order to quantify this behaviour, a rheological study has been performed using binary blends of stainless steel powders that exhibit various particle sizes, morphologies, and size distributions. The feedstocks were obtained by mixing the blended powders with a standard binder system, and their rheological properties were investigated using torque and capillary rheometry methods. The resulting data were employed to develop a neural network for advising on the selection of desirable solids loadings for the PIM feedstocks. The system asks the user to input the particle characteristics, blend composition, shear rate, and binder viscosity. By relating these input parameters to the recommended feedstock viscosity, the neural network enables the operator to identify the value of solids loading to be employed for production of optimal quality PIM components.
机译:粉末注射成型(PIM)过程中的原料行为对最终部件的物理和机械性能具有至关重要的影响。为了量化这种行为,已经使用显示出各种粒径,形态和尺寸分布的不锈钢粉末的二元共混物进行了流变学研究。通过将共混粉末与标准粘合剂体系混合获得原料,并使用扭矩和毛细管流变方法研究其流变性。所得数据用于开发神经网络,以建议选择PIM原料所需的固体含量。系统要求用户输入颗粒特性,掺合物组成,剪切速率和粘合剂粘度。通过将这些输入参数与建议的原料粘度相关联,神经网络使操作员能够确定要用于生产最佳质量PIM组件的固体负荷值。

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