Data-driven modeling for boiling heat transfer: Using deep neural networks and high-fidelity simulation results
暂无分享,去创建一个
[1] Jiyuan Tu,et al. Modeling subcooled flow boiling in vertical channels at low pressures – Part 1: Assessment of empirical correlations , 2014 .
[2] Karthik Duraisamy,et al. A paradigm for data-driven predictive modeling using field inversion and machine learning , 2016, J. Comput. Phys..
[3] D. Drew. Mathematical Modeling of Two-Phase Flow , 1983 .
[4] Shuangquan Shao,et al. Numerical investigation on onset of significant void during water subcooled flow boiling , 2016 .
[5] Jinlong Wu,et al. Physics-informed machine learning approach for reconstructing Reynolds stress modeling discrepancies based on DNS data , 2016, 1606.07987.
[6] Emilio Baglietto,et al. A self-consistent, physics-based boiling heat transfer modeling framework for use in computational fluid dynamics , 2017 .
[7] Demis Hassabis,et al. Mastering the game of Go without human knowledge , 2017, Nature.
[8] J. Nathan Kutz,et al. Deep learning in fluid dynamics , 2017, Journal of Fluid Mechanics.
[9] T. Theofanous,et al. The boiling crisis phenomenon. Part I: nucleation and nucleate boiling heat transfer , 2002 .
[10] Jimmy Ba,et al. Adam: A Method for Stochastic Optimization , 2014, ICLR.
[11] S. Azizi,et al. Prediction of water holdup in vertical and inclined oil–water two-phase flow using artificial neural network , 2016 .
[12] Guanghui Su,et al. Analysis of CHF in saturated forced convective boiling on a heated surface with impinging jets using artificial neural network and genetic algorithm , 2011 .
[13] Ohad Shamir,et al. The Power of Depth for Feedforward Neural Networks , 2015, COLT.
[14] Bojan Niceno,et al. Nucleate pool boiling simulations using the interface tracking method: Boiling regime from discrete bubble to vapor mushroom region , 2017 .
[15] Tomasz Kozlowski,et al. Inverse uncertainty quantification of TRACE physical model parameters using sparse gird stochastic collocation surrogate model , 2017 .
[16] R. Prieler,et al. CFD-based optimization of a transient heating process in a natural gas fired furnace using neural networks and genetic algorithms , 2018, Applied Thermal Engineering.
[17] Yuxin Wu,et al. Modeling of subcooled boiling by extending the RPI wall boiling model to ultra-high pressure conditions , 2017 .
[18] Geoffrey E. Hinton,et al. ImageNet classification with deep convolutional neural networks , 2012, Commun. ACM.
[19] Pietro Poesio,et al. Uncertainty quantification and global sensitivity analysis of mechanistic one-dimensional models and flow pattern transition boundaries predictions for two-phase pipe flows , 2017 .
[20] Mamoru Ishii,et al. Active nucleation site density in boiling systems , 2003 .
[21] T. Yabuki,et al. Heat transfer mechanisms in isolated bubble boiling of water observed with MEMS sensor , 2014 .
[22] Chul-Hwa Song,et al. A bubble dynamics-based model for wall heat flux partitioning during nucleate flow boiling , 2017 .
[23] Yohei Sato,et al. A depletable micro-layer model for nucleate pool boiling , 2015, J. Comput. Phys..
[24] Michael Z. Podowski,et al. MULTIDIMENSIONAL EFFECTS IN FORCED CONVECTION SUBCOOLED BOILING , 1990 .
[25] Dexian Huang,et al. Modelling of a post-combustion CO2 capture process using deep belief network , 2018 .
[26] Geoffrey E. Hinton,et al. Rectified Linear Units Improve Restricted Boltzmann Machines , 2010, ICML.
[27] Andrew R. Barron,et al. Universal approximation bounds for superpositions of a sigmoidal function , 1993, IEEE Trans. Inf. Theory.
[28] G. Kocamustafaogullari,et al. Pressure dependence of bubble departure diameter for water , 1983 .
[29] Behzad Vaferi,et al. Estimation of pool boiling heat transfer coefficient of alumina water-based nanofluids by various artificial intelligence (AI) approaches , 2018 .
[30] N. Dinh,et al. Classification of machine learning frameworks for data-driven thermal fluid models , 2018, International Journal of Thermal Sciences.
[31] Guanghui Su,et al. Applications of ANNs in flow and heat transfer problems in nuclear engineering: A review work , 2013 .
[32] Vijay K. Dhir,et al. Wall Heat Flux Partitioning During Subcooled Flow Boiling: Part 1—Model Development , 2005 .
[33] Samrendra Singh,et al. 1D/3D transient HVAC thermal modeling of an off-highway machinery cabin using CFD-ANN hybrid method , 2018 .
[34] Mohamed A. Habib,et al. Numerical predictions of flow boiling characteristics: Current status, model setup and CFD modeling for different non-uniform heating profiles , 2015 .
[35] Yohei Sato,et al. A sharp-interface phase change model for a mass-conservative interface tracking method , 2013, J. Comput. Phys..
[36] Mehrzad Shams,et al. Optimization of subcooled flow boiling in a vertical pipe by using artificial neural network and multi objective genetic algorithm , 2017 .
[37] Yoshua Bengio,et al. Understanding the difficulty of training deep feedforward neural networks , 2010, AISTATS.
[38] Geoffrey E. Hinton,et al. Learning representations by back-propagating errors , 1986, Nature.
[39] V. Dhir,et al. Effect of Surface Wettability on Active Nucleation Site Density During Pool Boiling of Water on a Ve , 1993 .
[40] Eckart Laurien,et al. Heat transfer prediction of supercritical water with artificial neural networks , 2018 .
[41] J. Templeton,et al. Reynolds averaged turbulence modelling using deep neural networks with embedded invariance , 2016, Journal of Fluid Mechanics.
[42] Luca Antiga,et al. Automatic differentiation in PyTorch , 2017 .
[43] Geoffrey E. Hinton,et al. Deep Learning , 2015, Nature.
[44] Quanshi Zhang,et al. Visual interpretability for deep learning: a survey , 2018, Frontiers of Information Technology & Electronic Engineering.
[45] G. Tryggvason,et al. Using statistical learning to close two-fluid multiphase flow equations for a simple bubbly system , 2015 .
[46] Sepp Hochreiter,et al. Fast and Accurate Deep Network Learning by Exponential Linear Units (ELUs) , 2015, ICLR.
[47] Heng Xiao,et al. Data-Driven, Physics-Based Feature Extraction from Fluid Flow Fields using Convolutional Neural Networks , 2018, Communications in Computational Physics.
[48] D. Colorado,et al. New void fraction equations for two-phase flow in helical heat exchangers using artificial neural networks , 2018 .
[49] Brian Williams,et al. A Bayesian calibration approach to the thermal problem , 2008 .
[50] Tara N. Sainath,et al. Deep Neural Networks for Acoustic Modeling in Speech Recognition: The Shared Views of Four Research Groups , 2012, IEEE Signal Processing Magazine.
[51] Yuanzhi Li,et al. Convergence Analysis of Two-layer Neural Networks with ReLU Activation , 2017, NIPS.
[52] Giancarlo Scalabrin,et al. Modeling flow boiling heat transfer of pure fluids through artificial neural networks , 2006 .
[53] Samy Bengio,et al. Understanding deep learning requires rethinking generalization , 2016, ICLR.
[54] R. Cole. Bubble frequencies and departure volumes at subatmospheric pressures , 1967 .
[55] R. Gaertner. Photographic Study of Nucleate Pool Boiling on a Horizontal Surface , 1965 .