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Incorporating Prior Model Into Gaussian Processes Regression For Wedm Process Modeling

机译:将先验模型纳入高斯过程回归以进行Wedm过程建模

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摘要

Sufficient sampling is usually time-consuming and expensive but also is indispensable for supporting high precise data-driven modeling of wire-cut electrical discharge machining (WEDM) process. Considering the natural way to describe the behavior of a WEDM process by IF-THEN rules drawn from the field experts, engineering knowledge and experimental work, in this paper, the fuzzy logic model is chosen as prior knowledge to leverage the predictive performance. Focusing on th: fusion between rough fuzzy system and very scarce noisy samples, a simple but effective re-sampling algorithm based on piecewise relational transfer interpolation is presented and it is integrated with Gaussian processes regression (CPR) for WEDM process modeling. First, by using re-sampling algorithm encoded derivative regularization, the prior model is translated into a pseudo training dataset, and then the dataset is trained by the Gaussian processes. An empirical study on two benchmark datasets intuitively demonstrates the feasibility and effectiveness of this approach. Experiments on high-speed WEDM (DK7725B) are conducted for validation of nonlinear relationship between the design variables (i.e., workpiece thickness, peak current, on-time and off-time) and the responses (i.e., material removal rate and surface roughness). The experimental result shows that combining very rough fuzzy prior model with training examples still significantly improves the predictive performance of WEDM process modeling, even with very limited training data-set. That is, given the generalized prior model, the samples needed by GPR model could be reduced greatly meanwhile keeping precise.
机译:足够的采样通常是耗时且昂贵的,但是对于支持线切割放电加工(WEDM)过程的高精度数据驱动的建模也是必不可少的。考虑到通过现场专家,工程知识和实验工作得出的IF-THEN规则描述WEDM过程行为的自然方式,本文选择模糊逻辑模型作为先验知识,以利用预测性能。针对粗糙模糊系统与噪声极少的样本之间的融合问题,提出了一种基于分段关系转移插值的简单有效的重采样算法,并将其与高斯过程回归(CPR)集成在一起用于WEDM过程建模。首先,通过使用重采样算法编码的导数正则化,将先验模型转换为伪训练数据集,然后通过高斯过程对数据集进行训练。对两个基准数据集的实证研究直观地证明了这种方法的可行性和有效性。进行了高速WEDM(DK7725B)实验,以验证设计变量(即,工件厚度,峰值电流,接通时间和断开时间)与响应(即,材料去除率和表面粗糙度)之间的非线性关系。 。实验结果表明,即使使用非常有限的训练数据集,将非常粗糙的模糊先验模型与训练示例结合起来仍可以显着提高WEDM过程建模的预测性能。也就是说,给定广义先验模型,可以在保持精度的同时大大减少GPR模型所需的样本。

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