利用时空流场结构的物理引导机器学习预测漩涡引发的运动

IF 4 3区 工程技术 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Ziming Zhou, Fengnian Zhao, David Hung
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引用次数: 0

摘要

目的通过优化控制直喷(DI)发动机内的非稳态缸内流场,可以提高内燃机的能量转换效率。然而,预测非线性和瞬态气缸内流动运动仍然是一项艰巨的任务,因为它们非常复杂,在空间和时间上都会发生变化。最近,机器学习方法在推断相对简单的时间流场发展方面大有可为。为了实现对非稳定发动机流场的高保真时间序列预测,本研究采用了自动化机器学习框架,其目标如下:(1)将流场结构的时空物理约束转移到机器学习结构中。(2) 有效设计机器学习输入和目标,确保在有限的实验集中实现高模型收敛性。(3) 在自动机器学习框架内,通过集合学习机制优化预测结果。研究结果所提出的数据驱动框架在不同时间段、不同程度的流动动态不稳定性条件下都被证明是有效的,在各种复杂流动模式下,预测流场与目标流场高度相似。在所描述的框架设计中,空间流场结构的利用是对时间序列流场预测过程的最大改进。原创性/价值所提出的流场预测框架可通用于不同曲柄角周期、循环和漩涡比条件,这将极大地促进实时流量控制,并减少对缸内流场测量和诊断的实验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Swirl-induced motion prediction with physics-guided machine learning utilizing spatiotemporal flow field structure

Purpose

Higher energy conversion efficiency of internal combustion engine can be achieved with optimal control of unsteady in-cylinder flow fields inside a direct-injection (DI) engine. However, it remains a daunting task to predict the nonlinear and transient in-cylinder flow motion because they are highly complex which change both in space and time. Recently, machine learning methods have demonstrated great promises to infer relatively simple temporal flow field development. This paper aims to feature a physics-guided machine learning approach to realize high accuracy and generalization prediction for complex swirl-induced flow field motions.

Design/methodology/approach

To achieve high-fidelity time-series prediction of unsteady engine flow fields, this work features an automated machine learning framework with the following objectives: (1) The spatiotemporal physical constraint of the flow field structure is transferred to machine learning structure. (2) The ML inputs and targets are efficiently designed that ensure high model convergence with limited sets of experiments. (3) The prediction results are optimized by ensemble learning mechanism within the automated machine learning framework.

Findings

The proposed data-driven framework is proven effective in different time periods and different extent of unsteadiness of the flow dynamics, and the predicted flow fields are highly similar to the target field under various complex flow patterns. Among the described framework designs, the utilization of spatial flow field structure is the featured improvement to the time-series flow field prediction process.

Originality/value

The proposed flow field prediction framework could be generalized to different crank angle periods, cycles and swirl ratio conditions, which could greatly promote real-time flow control and reduce experiments on in-cylinder flow field measurement and diagnostics.

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来源期刊
CiteScore
9.50
自引率
11.90%
发文量
100
审稿时长
6-12 weeks
期刊介绍: The main objective of this international journal is to provide applied mathematicians, engineers and scientists engaged in computer-aided design and research in computational heat transfer and fluid dynamics, whether in academic institutions of industry, with timely and accessible information on the development, refinement and application of computer-based numerical techniques for solving problems in heat and fluid flow. - See more at: http://emeraldgrouppublishing.com/products/journals/journals.htm?id=hff#sthash.Kf80GRt8.dpuf
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