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首页> 外文期刊>Journal of Wind Engineering and Industrial Aerodynamics: The Journal of the International Association for Wind Engineering >Knowledge-enhanced deep learning for simulation of tropical cyclone boundary-layer winds
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Knowledge-enhanced deep learning for simulation of tropical cyclone boundary-layer winds

机译:知识增强深度学习,用于仿真热带气旋边界层风

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Accurate and efficient modeling of the wind field is critical to effective mitigation of losses due to the tropical cyclone-related hazards. To this end, a knowledge-enhanced deep learning algorithm was developed in this study to simulate the wind field inside tropical cyclone boundary-layer. More specifically, the machine-readable knowledge in terms of both physics-based equations and/or semi-empirical formulas was leveraged to enhance the regularization mechanism during the training of deep networks for dynamics of tropical cyclone boundary-layer winds. To comprehensively appreciate the high effectiveness of knowledge-enhanced deep learning to capture the complex dynamics using small datasets, two nonlinear flow systems governed respectively by 1D and 2D Navier-Stokes equations were first revisited. Then, a knowledge-enhanced deep network was developed to simulate tropical cyclone boundary-layer winds using the storm parameters (e.g., spatial coordinates, storm size and intensity) as inputs. The reduced 3D Navier-Stokes equations based on several state-of-the-art semi-empirical formulas were employed in the construction of deep networks. Due to the effective utilization of the prior knowledge on the tropical cyclone boundary-layer winds, only a relatively small number of training datasets (either from field measurements or high-fidelity numerical simulations) are needed. With the trained knowledge-enhanced deep network, it has been demonstrated that the boundary-layer winds associated with various tropical cyclones can be accurately and efficiently predicted.
机译:由于热带气旋相关的危害,对风场的准确和有效的风景造型至关重要。为此,本研究开发了一种知识增强的深度学习算法,以模拟热带气旋边界层内的风场。更具体地,利用基于物理的方程和/或半经验公式的机器可读知识,以增强热带气旋边界层风力的深度网络的训练期间的正则化机制。为了全面欣赏知识增强的深度学习的高效力,使用小型数据集捕获复杂动态,首先重新讨论分别由1D和2D Navier-Stokes方程管理的两个非线性流量系统。然后,开发了一种知识增强的深网络以使用风暴参数(例如,空间坐标,风暴尺寸和强度)来模拟热带旋风边界层风作为输入。基于多个最先进的半经验公式的减少的3D Navier-Stokes方程在深网络建设中采用。由于有效利用热带气旋边界层风的先前知识,需要仅需要相对较少的训练数据集(来自现场测量或高保真数值模拟)。通过训练有素的知识增强的深网络,已经证明了与各种热带气旋相关的边界层风可以准确上预测。

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