WearGP:浆泵叶轮和壳体的UQ/ML磨损预测框架

A. Tran, Yan Wang, J. Furlan, K. Pagalthivarthi, Mohamed Garman, Aaron Cutright, R. Visintainer
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引用次数: 5

摘要

谨以此纪念约翰·弗兰。磨损预测对设计可靠的浆料机械具有重要意义。它通常依赖于多相计算流体动力学,该方法精确但计算成本高。即使在高性能计算平台上,每次模拟运行也可能需要数小时或数天。在设计优化过程中,高昂的计算成本阻碍了大量的仿真。与基于物理的模拟相比,数据驱动的方法(如机器学习)能够以很小的计算成本提供准确的磨损预测,如果模型得到适当的训练。本文将最近开发的WearGP框架[1]扩展到通过构造高斯过程代理来预测感兴趣的全局磨损量。考察了不同操作条件对其性能的影响。WearGP框架在预测磨损率方面具有精度高、计算成本低的优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
WearGP: A UQ/ML Wear Prediction Framework for Slurry Pump Impellers and Casings
Dedicated to the memory of John Furlan. Wear prediction is important in designing reliable machinery for slurry industry. It usually relies on multi-phase computational fluid dynamics, which is accurate but computationally expensive. Each run of the simulations can take hours or days even on a high-performance computing platform. The high computational cost prohibits a large number of simulations in the process of design optimization. In contrast to physics-based simulations, data-driven approaches such as machine learning are capable of providing accurate wear predictions at a small fraction of computational costs, if the models are trained properly. In this paper, a recently developed WearGP framework [1] is extended to predict the global wear quantities of interest by constructing Gaussian process surrogates. The effects of different operating conditions are investigated. The advantages of the WearGP framework are demonstrated by its high accuracy and low computational cost in predicting wear rates.
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