生命周期评估的多保真度机器学习框架:铝轧制制造案例研究

Muhammad Umar Farooq , Daniel Cooper
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引用次数: 0

摘要

制造业越来越注重实现可持续发展目标,这推动了基于生命周期评估(LCA)方法和数据库的环境影响模型的发展。然而,这些数据库往往过于笼统,无法确保准确的建模(例如,使用每单位处理的质量的全球或区域平均影响值)。为了提高准确性,公司可以通过实验或模拟生成定制的数据清单,但这些方法通常成本高、耗时长,而且可能会扰乱日常运营。本文介绍了一种基于部分物理的多保真度机器学习方法,用于生成针对特定制造系统的低成本环境影响模型。该框架使用降阶、低保真度、基于物理的模型来捕获过程动态,然后使用少量高保真度(例如实验)数据进行迁移学习。这允许准确的门到门的环境影响预测,而不需要广泛的实验活动。该框架在实验室规模的金属轧机上进行了演示,用于门到门评估中的功率消耗预测。采用简单的板坯分析金属成形模型训练基础学习器,并采用自适应增强方法对实验数据进行迁移学习。该框架取得了卓越的性能,与仅使用实验数据训练的具有相同精度的独立机器学习模型相比,需要的实验数据减少了13%。在数据收集具有挑战性的情况下,由于严格使用标准流程设置或数据收集成本和时间限制,这种方法可以为生成准确的预测模型提供经济有效的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-fidelity machine learning framework for life cycle assessment: a manufacturing case study on aluminum rolling
Manufacturing industries are increasingly focused on achieving sustainability targets, which has driven the development of environmental impact models often based on life cycle assessment (LCA) methods and databases. However, these databases tend to be too generic to ensure accurate modelling (e.g., using global or regional average impact values per unit of mass processed). To improve accuracy, companies can generate customized data inventories through experiments or simulations, but these approaches are typically costly, time-consuming, and may disrupt daily operations. This article introduces a partial physics-based, multi-fidelity machine learning approach to generate low-cost, environmental impact models tailored to specific manufacturing systems. The framework uses reduced-order, low-fidelity, physics-based models to capture the process dynamics, followed by transfer learning with small volumes of high-fidelity (e.g., experimental) data. This allows for accurate gate-to-gate environmental impact predictions without the need for extensive experimental campaigns. The framework is demonstrated on a lab-scale metal rolling mill for predicting power consumption in gate-to-gate assessments. A simple slab analysis metal forming model trains the base learner, and adaptive boosting is used for transfer learning on experimental data. The framework achieved superior performance, requiring 13% less experimental data than a standalone machine learning model of the same accuracy trained solely on experimental data. This approach may offer a cost-effective solution for generating accurate predictive models in scenarios where data collection is challenging, either due to rigid use of standard process settings or data collection cost and time constraints.
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