Optimization of MLP neural network for modeling effects of electric fields on bubble growth in pool boiling

IF 1.7 4区 工程技术 Q3 MECHANICS
Mahyar Ghazvini, Seyyed Mojtaba Varedi-Koulaei, Mohammad Hossein Ahmadi, Myeongsub Kim
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Abstract

In this paper, a multilayer perceptron (MLP)-type artificial neural network model with a back-propagation training algorithm is utilized to model the bubble growth and bubble dynamics parameters in nucleate boiling with a non-uniform electric field. The influences of the electric field on different parameters that describe bubble’s behaviors including bubble waiting time, bubble departure frequency, bubble growth time, and bubble departure diameter are considered. This study models single bubble dynamic behaviors of R113 created on a heater in an inconsistent electric field by utilizing a MLP neural network optimized by four different swarm-based optimization algorithms, namely: Salp Swarm Algorithm (SSA), Grey Wolf Optimizer (GWO), Artificial Bee Colony (ABC) algorithm, and Particle Swarm Optimization (PSO). For evaluating the model effectiveness, the MSE value (Mean-Square Error) of the artificial neural network model with various optimization algorithms is measured and compared. The results suggest that the optimal networks in the two-hidden layer and three-hidden layer models for the bubble departure diameter improve MSE by 33.85% and 35.27%, respectively, when compared with the best response in the one-hidden layer model. Additionally, for bubble growth time, the networks with two hidden layers and three hidden layers have the 44.51% and 45.85% reduction in error, when compared with the network with one hidden layer, respectively. For the departure frequency, the error reduction in the two-layer and three-layer networks is 46.85% and 62.32%, respectively. For bubble waiting time, the best networks in the two hidden-layer and three hidden-layer models improve MSE by 52.44% and 62.27% compared with the best 1HL model response, respectively. Also, the two algorithms of SSA and GWO are able to compete well (comparable MSE) with the PSO and ABC algorithms.

Abstract Image

电场对池沸腾气泡生长影响的MLP神经网络优化
本文利用多层感知器(MLP)型人工神经网络模型和反向传播训练算法,对非均匀电场条件下的核沸腾过程中的气泡生长和气泡动力学参数进行了建模。考虑了电场对表征气泡行为的参数的影响,包括气泡等待时间、气泡离开频率、气泡生长时间和气泡离开直径。本研究采用Salp Swarm Algorithm (SSA)、灰狼优化器(GWO)、人工蜂群(ABC)算法和粒子群优化(PSO)算法优化的MLP神经网络,对不一致电场条件下R113在加热器上产生的单泡动态行为进行了建模。为了评估模型的有效性,测量并比较了采用各种优化算法的人工神经网络模型的均方误差(MSE)值。结果表明,气泡偏离直径两隐层和三隐层模型下的最优网络比单隐层模型下的最优网络分别提高了33.85%和35.27%的MSE。此外,对于气泡生长时间,两层和三层隐藏网络的误差分别比一层隐藏网络降低44.51%和45.85%。对于出发频率,两层和三层网络的误差降低率分别为46.85%和62.32%。对于气泡等待时间,两层和三层隐藏模型下的最佳网络比最佳1HL模型的MSE分别提高了52.44%和62.27%。此外,SSA和GWO两种算法能够很好地与PSO和ABC算法竞争(MSE相当)。
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
Heat and Mass Transfer
Heat and Mass Transfer 工程技术-力学
CiteScore
4.80
自引率
4.50%
发文量
148
审稿时长
8.0 months
期刊介绍: This journal serves the circulation of new developments in the field of basic research of heat and mass transfer phenomena, as well as related material properties and their measurements. Thereby applications to engineering problems are promoted. The journal is the traditional "Wärme- und Stoffübertragung" which was changed to "Heat and Mass Transfer" back in 1995.
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