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A method for the analysis of the MDTF data using neural networks.

机译:一种使用神经网络分析MDTF数据的方法。

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摘要

Numerical simulation techniques are widely used to investigate the behavior of submarines during the design stage. The accuracy of these techniques depend upon the accurate determination of the hydrodynamic coefficients for the model.; The Marine Dynamic Test Facility (MDTF) is a new-six-degree-of-freedom forced motion testing rig. The rig has the ability to test underwater vehicles in a manner that makes it possible to determine the hydrodynamic coefficients in the equations of motion. Multi-variant linear regression is used to obtain the hydrodynamic coefficients from the experimental data.; In this study a neural network technique to identify the hydrodynamic model from experimental data is investigated. The technique uses the model trajectory (motion history) to predict the hydrodynamic coefficients of the model. A single MDTF generated maneuver was used to train the network. The trained network was then tested using different maneuvers and the network predictions were compared to the actual MDTF measured forces and moments.; Results obtained from the neural network technique indicate that the technique can be used to predict the hydrodynamic model of underwater vehicles. The use of this technique can dramatically cut the running costs to conduct experiments on new models.
机译:数值模拟技术被广泛用于研究潜艇在设计阶段的行为。这些技术的准确性取决于对模型的流体力学系数的准确确定。海洋动态测试设施(MDTF)是新的六自由度强制运动测试装置。该钻机具有测试水下车辆的能力,该方式使得可以确定运动方程中的流体动力系数。多变量线性回归用于从实验数据中获得流体动力系数。在这项研究中,研究了一种从实验数据中识别水动力模型的神经网络技术。该技术使用模型轨迹(运动历史)来预测模型的流体力学系数。一个MDTF生成的演习用于训练网络。然后,使用不同的操作对经过训练的网络进行测试,并将网络预测与实际的MDTF测量的力和力矩进行比较。从神经网络技术获得的结果表明,该技术可用于预测水下航行器的水动力模型。使用该技术可以大大降低在新模型上进行实验的运行成本。

著录项

  • 作者

    Mohamed, Ibrahim.;

  • 作者单位

    Memorial University of Newfoundland (Canada).;

  • 授予单位 Memorial University of Newfoundland (Canada).;
  • 学科 Engineering Marine and Ocean.; Artificial Intelligence.
  • 学位 M.Eng.
  • 年度 2000
  • 页码 129 p.
  • 总页数 129
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 海洋工程;人工智能理论;
  • 关键词

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