Detecting Defects in Sequential Inputs to Digital Twins Using Machine Learning

Nathaniel Brown;Steven Simske
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Abstract

This article presents a method for detecting defects in sequential data inputs for digital twins (DTs) during simulations, emphasizing the importance of input validation for ensuring the accuracy and reliability of the simulation results. By thoroughly validating input data, researchers and practitioners can have confidence in the validity of their models, ultimately leading to better decision-making processes and outcomes that are more successful. As DTs continue to expand in complexity, there are an increasing number of mechanisms that may produce undesirable output. An external data stream is just one such potential source of faulty DT behavior and must be analyzed during simulation execution. The proposed framework for validating inputs in real time offers a way to improve the quality and credibility of DTs, guiding future research in the evolving field of modeling and simulation. The case study described in this article involves using second-order polynomial regression to detect defects in rocket trajectory data streams, highlighting the effectiveness of validation techniques. This method shows promise, as it successfully identified defects in trajectories in real time using only historical data without knowledge of the future of the data stream. The novelties in this article include using machine learning to validate DT inputs, and performing this validation on sequential data in real time to protect modeled results. This research contributes valuable insights to the field, emphasizing the significance of input validation for enhancing the quality and accuracy of simulation models.
利用机器学习检测数字双胞胎顺序输入中的缺陷
本文介绍了一种在仿真过程中检测数字孪生(DT)顺序数据输入缺陷的方法,强调了输入验证对于确保仿真结果准确性和可靠性的重要性。通过对输入数据进行彻底验证,研究人员和从业人员可以对模型的有效性充满信心,最终实现更好的决策过程和更成功的结果。随着 DT 的复杂性不断增加,可能产生不良输出的机制也越来越多。外部数据流只是 DT 错误行为的潜在来源之一,必须在仿真执行期间进行分析。所提出的实时验证输入的框架为提高 DT 的质量和可信度提供了一种方法,为建模和仿真领域不断发展的未来研究提供了指导。本文描述的案例研究涉及使用二阶多项式回归检测火箭轨迹数据流中的缺陷,突出了验证技术的有效性。该方法仅使用历史数据而不了解数据流的未来,因此成功地实时识别出了轨迹中的缺陷,显示出了良好的前景。本文的新颖之处包括使用机器学习验证 DT 输入,并实时对连续数据进行验证,以保护建模结果。这项研究为该领域提供了宝贵的见解,强调了输入验证对于提高仿真模型质量和准确性的重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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