金属粉末生产的生命周期评估:基于贝叶斯随机克里金模型的自主估算

Haibo Xiao, Baoyun Gao, Shoukang Yu, Bin Liu, Sheng Cao, Shitong Peng
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引用次数: 0

摘要

金属粉末在很大程度上加重了增材制造(AM)的环境负担。目前对金属粉末进行的生命周期评估(LCA)显示,由于工艺不同、空间异质性或时间波动,生命周期环境清单存在相当大的差异。最重要的是,有关金属粉末的生命周期评估研究数量有限,而且主要局限于部分材料类型。为此,本研究根据从一家金属粉末供应商处获得的数据,分别对通过电感应和真空感应熔化气体雾化法生产的钛合金和镍合金进行了生命周期评估。鉴于能耗在粉末生产的环境负担中占主导地位,且受金属材料物理性质的影响,我们提出了贝叶斯随机克里金模型来估算气体雾化过程中的能耗。该模型考虑了训练数据固有的不确定性,并在获得新的气体雾化环境数据时对相关参数进行自适应更新。有了特定粉末的预测能源使用信息,就可以结合其他调查的粉末生产阶段,进一步自主估算相应的生命周期环境影响。结果表明,钛合金粉末的环境影响略高于镍合金粉末,其生命周期碳排放量约为 20 千克二氧化碳当量。与传统克里金模型和随机克里金模型相比,所提出的贝叶斯随机克里金模型对能耗的预测更为准确。根据粉末材料的物理性质和生产技术,这项研究可以对气体雾化过程中的能耗进行数据推算。
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Life cycle assessment of metal powder production: a Bayesian stochastic Kriging model-based autonomous estimation

Metal powder contributes to the environmental burdens of additive manufacturing (AM) substantially. Current life cycle assessments (LCAs) of metal powders present considerable variations of lifecycle environmental inventory due to process divergence, spatial heterogeneity, or temporal fluctuation. Most importantly, the amounts of LCA studies on metal powder are limited and primarily confined to partial material types. To this end, based on the data surveyed from a metal powder supplier, this study conducted an LCA of titanium and nickel alloy produced by electrode-inducted and vacuum-inducted melting gas atomization, respectively. Given that energy consumption dominates the environmental burden of powder production and is influenced by metal materials’ physical properties, we proposed a Bayesian stochastic Kriging model to estimate the energy consumption during the gas atomization process. This model considered the inherent uncertainties of training data and adaptively updated the parameters of interest when new environmental data on gas atomization were available. With the predicted energy use information of specific powder, the corresponding lifecycle environmental impacts can be further autonomously estimated in conjunction with the other surveyed powder production stages. Results indicated the environmental impact of titanium alloy powder is slightly higher than that of nickel alloy powder and their lifecycle carbon emissions are around 20 kg CO2 equivalency. The proposed Bayesian stochastic Kriging model showed more accurate predictions of energy consumption compared with conventional Kriging and stochastic Kriging models. This study enables data imputation of energy consumption during gas atomization given the physical properties and producing technique of powder materials.

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