论文标题
将先验知识集成到预后健康监测的高斯过程中
On Integrating Prior Knowledge into Gaussian Processes for Prognostic Health Monitoring
论文作者
论文摘要
高斯流程回归是一种基于给定数据预测状态的强大方法。它已成功地用于结构系统的概率预测,以量化机械结构的裂纹生长。通常,采用预定义的平均值和协方差函数来构建高斯过程模型。然后,在操作过程中使用当前数据更新模型,而基于先前数据的先验信息将被忽略。但是,没有事先信息的预先定义的平均值和协方差函数降低了高斯过程的潜力。本文提出了一种改善高斯过程的预测能力的方法。我们通过从先前数据中得出平均值和协方差函数来整合先验知识。更具体地说,我们首先通过基础函数的加权总和来近似先前的数据,然后直接从估计的权重系数中得出平均值和协方差函数。基本功能可以估计或从特定于问题的管理方程式中得出,以合并物理信息。该方法的适用性和有效性被证明用于疲劳裂纹生长,激光降解和铣床磨损数据。我们表明,像以前的数据一样,精心挑选的平均值和协方差函数大大增加了看起来的时间和准确性。使用物理基础功能进一步提高了准确性。此外,训练的计算工作大大减少。
Gaussian process regression is a powerful method for predicting states based on given data. It has been successfully applied for probabilistic predictions of structural systems to quantify, for example, the crack growth in mechanical structures. Typically, predefined mean and covariance functions are employed to construct the Gaussian process model. Then, the model is updated using current data during operation while prior information based on previous data is ignored. However, predefined mean and covariance functions without prior information reduce the potential of Gaussian processes. This paper proposes a method to improve the predictive capabilities of Gaussian processes. We integrate prior knowledge by deriving the mean and covariance functions from previous data. More specifically, we first approximate previous data by a weighted sum of basis functions and then derive the mean and covariance functions directly from the estimated weight coefficients. Basis functions may be either estimated or derived from problem-specific governing equations to incorporate physical information. The applicability and effectiveness of this approach are demonstrated for fatigue crack growth, laser degradation, and milling machine wear data. We show that well-chosen mean and covariance functions, like those based on previous data, significantly increase look-ahead time and accuracy. Using physical basis functions further improves accuracy. In addition, computation effort for training is significantly reduced.