基于参数传递的域自适应软测量

Xudong Shi, Jing Xu, Hanqiu Bao, Qi Kang
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引用次数: 0

摘要

当工作条件或环境因素发生变化时,软测量建模经常会遇到分布差异问题。这一问题导致构建精度回归模型所需的训练数据样本数量不足。此外,针对特定模式构建的软传感器不太可能对其他模式获得可靠的预测结果。针对目标训练样本有限的多模式过程,提出了一种新的基于迁移学习的软测量模型,用于处理带有传递参数的域自适应问题。将源域和目标域之间的差异作为目标函数中的参数化最大平均差异正则化项,在此基础上实现了最小化两域差异和最大化目标域测试样本预测性能之间的权衡。在此基础上,提出了一种交替优化算法,对传递参数和输出权重进行优化。该方法有望同时充分利用有限的目标样本和相关源样本构建自适应目标软传感器。与几种流行的软测量方法进行了比较研究,以证明我们的方法的有效性和优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Domain Adaptation Soft Sensing with Parameter Transferring
Soft sensor modeling often encounters a distribution discrepancy problem, when working conditions or environmental factors change. Such problem leads to an insufficient number of training data samples for an accuracy regression model construction. In addition, a soft sensor constructed for a specific mode is unlikely to obtain reliable prediction results for other modes. This paper presents a new transfer learning-based soft sensor model to handle the domain adaptation issue with a transferring parameter, which is suitable for multi-mode processes with limited target training samples. The difference between the source and target domains is considered as a parameterized maximum mean discrepancy regularization term in the objective function, based on which a trade-off between minimizing the two domains' difference and maximizing the prediction performance on the target domain's testing samples can be realized. Furthermore, an alternating optimization algorithm is formulated to optimize the transferring parameter along with the output weights. The proposed method is expected to fully leverages the limited target samples and the related source ones simultaneously to construct an adaptive target soft sensor. Comparative studies with several popular soft sensing approaches are conducted to demonstrate the effectiveness and advantages of our approach.
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