How statistical modeling and machine learning could help in the calibration of numerical simulation and fluid mechanics models? Application to the calibration of models reproducing the vibratory behavior of an overhead line conductor

IF 2.3 Q2 COMPUTER SCIENCE, THEORY & METHODS
Array Pub Date : 2022-09-01 DOI:10.1016/j.array.2022.100187
Hamdi Amroun , Fikri Hafid , Ammi Mehdi
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引用次数: 0

Abstract

The world of fluid mechanics is increasingly generating a large amount of data, thanks to the use of numerical simulation techniques. This offers interesting opportunities for incorporating machine learning methods to solve data-related problems such as model calibration. One of the applications that machine learning can offer to the world of Engineering and Fluid Mechanics in particular is the calibration of models making it possible to approximate a phenomenon. Indeed, the computational cost generated by some models of fluid mechanics pushes scientists to use other models close to the original models but less computationally intensive in order to facilitate their handling. Among the different approaches used: machine learning coupled with some optimization methods and algorithms in order to reduce the computation cost induced. In this paper, we propose a framework which is a new flexible, optimized and improved method, to calibrate a physical model, called the wake oscillator (WO), which simulates the vibratory behaviors of overhead line conductors. an approximation of a heavy and complex model called the strip theory (ST) model. OPTI-ENS is composed of an ensemble machine learning algorithm (ENS) and an optimization algorithm of the WO model so that the WO model can generate the adequate training data as input to the ENS model. ENS model will therefore take as input the data from the WO model and output the data from the ST model. As a benchmark, a series of Machine learning models have been implemented and tested. The OPTI-ENS algorithm was retained with a best Coefficient of determination (R2 Score) of almost 0.7 and a Root mean square error (RMSE) of 7.57e−09. In addition, this model is approximately 170 times faster (in terms of calculation time) than an ENS model without optimization of the generation of training data by the WO model. This type of approach therefore makes it possible to calibrate the WO model so that simulations of the behavior of overhead line conductors are carried out only with the WO model.

统计建模和机器学习如何帮助校准数值模拟和流体力学模型?应用于模拟架空线路导体振动特性的模型校正
由于数值模拟技术的使用,流体力学的世界正日益产生大量的数据。这为结合机器学习方法来解决数据相关问题(如模型校准)提供了有趣的机会。机器学习可以为工程和流体力学领域提供的应用之一是模型的校准,这使得近似现象成为可能。事实上,一些流体力学模型产生的计算成本促使科学家使用其他接近原始模型但计算强度较低的模型,以方便他们的处理。其中采用的不同方法有:机器学习与一些优化方法和算法相结合,以减少所引起的计算成本。在本文中,我们提出了一个框架,这是一个新的灵活的,优化和改进的方法,校准一个物理模型,称为尾流振荡器(WO),模拟架空线路导体的振动行为。它近似于一种重而复杂的模型,即条形理论(ST)模型。OPTI-ENS由集成机器学习算法(ENS)和WO模型的优化算法组成,使WO模型能够生成足够的训练数据作为ENS模型的输入。因此,ENS模型将采用WO模型的数据作为输入,并输出ST模型的数据。作为一个基准,一系列的机器学习模型已经被实现和测试。OPTI-ENS算法的最佳决定系数(R2 Score)接近0.7,均方根误差(RMSE)为7.57e−09。此外,该模型比没有优化WO模型生成训练数据的ENS模型大约快170倍(在计算时间方面)。因此,这种方法使校准WO模型成为可能,以便仅使用WO模型对架空线路导体的行为进行模拟。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Array
Array Computer Science-General Computer Science
CiteScore
4.40
自引率
0.00%
发文量
93
审稿时长
45 days
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