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A machine learning based global simulation data mining approach for efficient design changes

机译:基于机器学习的全局仿真数据挖掘方法,可进行有效的设计更改

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摘要

Historical simulation data reuse is crucial for helping the designer improve the product development process. Currently, simulation data mining has been brought into use to discover the underlying knowledge to support efficient design changes. However, most of the existing simulation data mining methods paid little attention to global performance evaluation, and thus causing it difficult for the designer to browse all the simulation results conveniently and accurately if it is without actual simulation performance verification. In this study, a machine learning based global simulation data mining approach is proposed to discover the interrelations between key design parameters and global performance parameters to realize the accurate prediction of all the simulation results, and thus supporting the decision-making in the development process. Firstly, an intermediate mesh model based cross-parameterization algorithm is adopted to construct global performance evaluation indicators. After that, two feature selection methods for design parameters are applied to select salient single parameter and their combinations to reduce the modeling complexity and improve the prediction accuracy. Finally, a machine learning based simulation data mining approach is developed and improved to realize global performance evaluation accurately and efficiently. Extensive experiments are conducted to demonstrate the feasibility, effectiveness and correctness of the proposed approach.
机译:历史模拟数据的重用对于帮助设计人员改善产品开发过程至关重要。当前,已使用仿真数据挖掘来发现基础知识,以支持有效的设计更改。然而,大多数现有的仿真数据挖掘方法很少关注全局性能评估,因此如果没有实际的仿真性能验证,设计人员将难以方便,准确地浏览所有仿真结果。在这项研究中,提出了一种基于机器学习的全局仿真数据挖掘方法,以发现关键设计参数和全局性能参数之间的相互关系,以实现对所有仿真结果的准确预测,从而支持开发过程中的决策。首先,采用基于中间网格模型的交叉参数化算法构造全局性能评价指标。然后,采用两种设计参数的特征选择方法来选择显着的单个参数及其组合,以降低建模复杂度,提高预测精度。最后,开发并改进了一种基于机器学习的仿真数据挖掘方法,以准确,高效地实现全局性能评估。进行了广泛的实验,以证明该方法的可行性,有效性和正确性。

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