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      Invertible Neural Networks for Airfoil Design

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          Abstract

          The airfoil design problem, in which an engineer seeks a shape with desired performance characteristics, is fundamental to aerodynamics. Design workflows traditionally rely on iterative optimization methods using low-fidelity integral boundary-layer methods as higher-fidelity adjoint-based computational fluid dynamics methods are computationally expensive. Surrogate-based approaches can accelerate the design process but still rely on some iterative inverse design procedure. In this work, we leverage emerging invertible neural network (INN) tools to enable the rapid inverse design of airfoil shapes for wind turbines. INNs are specialized deep-learning models with well-defined inverse mappings. When trained appropriately, INN surrogate models are capable of forward prediction of aerodynamic and structural quantities for a given airfoil shape as well as inverse recovery of airfoil shapes with specified aerodynamic and structural characteristics. The INN approach offers a roughly 100 times speed-up compared to adjoint-based methods for inverse design. We demonstrate the INN tool for inverse design on three test cases of 100 airfoils each that satisfy the performance characteristics close to those of airfoils used in wind-turbine blades. All generated shapes satisfy the desired aerodynamic characteristics, demonstrating the success of the INN approach for inverse design of airfoils.

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          Deep Residual Learning for Image Recognition

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            Multilayer feedforward networks are universal approximators

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              Human-level control through deep reinforcement learning.

              The theory of reinforcement learning provides a normative account, deeply rooted in psychological and neuroscientific perspectives on animal behaviour, of how agents may optimize their control of an environment. To use reinforcement learning successfully in situations approaching real-world complexity, however, agents are confronted with a difficult task: they must derive efficient representations of the environment from high-dimensional sensory inputs, and use these to generalize past experience to new situations. Remarkably, humans and other animals seem to solve this problem through a harmonious combination of reinforcement learning and hierarchical sensory processing systems, the former evidenced by a wealth of neural data revealing notable parallels between the phasic signals emitted by dopaminergic neurons and temporal difference reinforcement learning algorithms. While reinforcement learning agents have achieved some successes in a variety of domains, their applicability has previously been limited to domains in which useful features can be handcrafted, or to domains with fully observed, low-dimensional state spaces. Here we use recent advances in training deep neural networks to develop a novel artificial agent, termed a deep Q-network, that can learn successful policies directly from high-dimensional sensory inputs using end-to-end reinforcement learning. We tested this agent on the challenging domain of classic Atari 2600 games. We demonstrate that the deep Q-network agent, receiving only the pixels and the game score as inputs, was able to surpass the performance of all previous algorithms and achieve a level comparable to that of a professional human games tester across a set of 49 games, using the same algorithm, network architecture and hyperparameters. This work bridges the divide between high-dimensional sensory inputs and actions, resulting in the first artificial agent that is capable of learning to excel at a diverse array of challenging tasks.
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                Author and article information

                Contributors
                Journal
                aiaaj
                AIAA Journal
                AIAA Journal
                American Institute of Aeronautics and Astronautics
                1533-385X
                28 February 2022
                May 2022
                : 60
                : 5
                : 3035-3047
                Affiliations
                National Renewable Energy Laboratory , Golden, Colorado 80401
                Author notes
                [*]

                Researcher, Computational Science Center; andrew.glaws@ 123456nrel.gov .

                [†]

                Senior Scientist, Computational Science Center; ryan.king@ 123456nrel.gov .

                [‡]

                Researcher, National Wind Technology Center; ganesh.vijayakumar@ 123456nrel.gov .

                [§]

                Researcher, Computational Science Center; shreyas.ananthan@ 123456nrel.gov .

                Author information
                https://orcid.org/0000-0002-7268-1883
                Article
                J060866 J060866
                10.2514/1.J060866
                3e372e8c-696e-4e81-888d-37c1b8c6095b
                Copyright © 2022 by the American Institute of Aeronautics and Astronautics, Inc. Under the copyright claimed herein, the U.S. Government has a royalty-free license to exercise all rights for Governmental purposes. All other rights are reserved by the copyright owner. All requests for copying and permission to reprint should be submitted to CCC at www.copyright.com; employ the eISSN 1533-385X to initiate your request. See also AIAA Rights and Permissions www.aiaa.org/randp.
                History
                : 30 April 2021
                : 25 October 2021
                : 26 December 2021
                Page count
                Figures: 10, Tables: 3
                Funding
                Funded by: Advanced Research Projects Agency - Energyhttp://dx.doi.org/10.13039/100006133
                Award ID: 19/CJ000/07/03
                Categories
                Regular Articles
                p2263, Fluid Dynamics
                p3282, Computational Fluid Dynamics
                p1804, Aerodynamics
                p1975, Boundary Layers
                p3304, Numerical Analysis
                p20543, Aerodynamic Performance
                p28599, Mesh Generation
                p2057, Finite Element Method
                p3278, Fluid Flow Properties
                p3830, Turbulence Models

                Engineering,Physics,Mechanical engineering,Space Physics
                Generative Adversarial Network,Airfoil,CFD Simulation,Aerodynamic Shape Optimization,Flow Separation,Surrogate Model,Wind Turbine Airfoil,Turbine Blades,Aerodynamic Performance,Inverse Problems

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