论文标题
数据驱动的替代建模和过程设备基准测试
Data-driven surrogate modelling and benchmarking for process equipment
论文作者
论文摘要
在化学过程工程中,复杂系统的替代模型通常是域探索任务,设计参数的敏感性分析和优化所必需的。已经开发并验证了针对化学工艺设备建模的一组计算流体动力学(CFD)模拟,并通过文献的实验结果进行了验证。在功能评估预算有限的限制下,使用这些CFD模拟器在循环中探索了各种基于回归的主动学习策略。具体而言,考虑到四种具有工业意义和不同复杂性的测试案例,比较了五种不同的抽样策略和五种回归技术。观察到高斯过程回归对这些应用的性能始终如一。本定量研究概述了不同可用技术的利弊,并突出了其采用的最佳实践。测试用例和工具具有开源许可证,可确保可重复性并吸引更广泛的研究社区,从而为CFD模型做出贡献,并开发和基准为该领域量身定制的新的改进的算法。
In chemical process engineering, surrogate models of complex systems are often necessary for tasks of domain exploration, sensitivity analysis of the design parameters, and optimization. A suite of computational fluid dynamics (CFD) simulations geared toward chemical process equipment modeling has been developed and validated with experimental results from the literature. Various regression-based active learning strategies are explored with these CFD simulators in-the-loop under the constraints of a limited function evaluation budget. Specifically, five different sampling strategies and five regression techniques are compared, considering a set of four test cases of industrial significance and varying complexity. Gaussian process regression was observed to have a consistently good performance for these applications. The present quantitative study outlines the pros and cons of the different available techniques and highlights the best practices for their adoption. The test cases and tools are available with an open-source license to ensure reproducibility and engage the wider research community in contributing to both the CFD models and developing and benchmarking new improved algorithms tailored to this field.