首页> 外文会议>International Mechanical Engineering Congress and Exposition >A HYBRID SUPERVISED DEEP LEARNING AND NONLINEAR FINITE ELEMENT FRAMEWORK FOR EFFICIENT FATIGUE LIFE PREDICTIONS OF ROTARY SHOULDERED THREADED CONNECTIONS
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A HYBRID SUPERVISED DEEP LEARNING AND NONLINEAR FINITE ELEMENT FRAMEWORK FOR EFFICIENT FATIGUE LIFE PREDICTIONS OF ROTARY SHOULDERED THREADED CONNECTIONS

机译:一种混合监督的深度学习和非线性有限元框架,可实现旋转肩螺纹连接的高效疲劳寿命预测

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In this paper, a hybrid computational framework that combines the state-of-the art machine learning algorithm (i.e., deep neural network) and nonlinear finite element analysis for efficient and accurate fatigue life prediction of rotary shouldered threaded connections is presented. Specifically, a large set of simulation data from nonlinear FEA, along with a small set of experimental data from full-scale fatigue tests, constitutes the dataset required for training and testing of a fast-loop predictive model that could cover most commonly used rotary shouldered connections. Feature engineering was first performed to explore the compressed feature space to be used to represent the data. An ensemble deep learning algorithm was then developed to learn the underlying pattern, and hyperparameter tuning techniques were employed to select the learning model that provides the best mapping, between the features and the fatigue strength of the connections. The resulting fatigue life predictions were found to agree favorably well with the experimental results from full-scale bending fatigue tests and field operational data. This newly developed hybrid modeling framework paves a new way to realtime predicting the remaining useful life of rotary shouldered threaded connections for prognostic health management of the drilling equipment.
机译:本文提出了一种混合计算框架,其结合了最先进的机器学习算法(即,深神经网络)和非线性有限元分析,以实现旋转肩螺纹连接的有效和准确的疲劳寿命预测。具体而言,来自非线性FEA的大量模拟数据以及来自全规模疲劳测试的一小组实验数据,构成了培训和测试的基本集,可以覆盖最常用的旋转肩部的快速循环预测模型所需的数据集连接。首先进行特征工程以探索要用于表示数据的压缩特征空间。然后开发了一个集合深度学习算法来学习潜在的模式,采用超开局调谐技术来选择提供最佳映射的学习模型,在连接的特征和疲劳强度之间。由此产生的疲劳寿命预测被发现与全尺度弯曲疲劳试验和现场操作数据的实验结果相加。这种新开发的混合型框架铺设了一种新的途径来预测旋转肩螺纹连接的剩余使用寿命,用于钻井设备的预后健康管理。

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