模型导向神经网络在系统辨识中的应用

Lei Lu, Y. Tan, D. Oetomo, I. Mareels, Erying Zhao, Shi An
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引用次数: 6

摘要

有许多技术可以训练神经网络来近似复杂的系统,比如深度学习方法。众所周知,尽管它们在过度拟合方面具有鲁棒性,但由于缺少系统的一些基本原理,这种训练模型可能是脆弱的。对于许多工程应用程序,模型类可能派生自第一原理(或基本原理)。在本文中,将两种方法的思想结合起来,得出一个健壮的模型,该模型可以从基本原理中解释,但通过从可用数据中捕获结构而超越了这一点。本文给出了两个例子来说明这些思想。首先使用基于模拟的合成数据集。接下来使用功能磁共振成像(fMRI)的一个众所周知的数据集。在这两个例子中,一些有代表性的神经网络与来自第一性原理的模型信息结合使用。初步结果表明,该框架具有很高的实用价值,具有良好的系统识别保真度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On Model-guided Neural Networks for System Identification
Many techniques exist to train neural networks to approximate a complex systems, such as deep learning methods. It is well known that despite their robustness with respect to over-fitting, such trained models may be brittle as some fundamental principles of the systems are missing. For many engineering applications, the model class may be derived from first principles (or fundamental principles). In this paper, ideas from both methodologies are combined to arrive at a robust model that is interpretable from first principles, but goes beyond this by capturing structure from the available data. The paper presents two examples to illustrate the ideas. First a synthetic data set based on simulations is used. Next a well known data set from functional magnetic resonance imaging (fMRI) is used. In these two examples, a few representative neural networks are used in combination with model information coming from first principles. The preliminary results show that the framework is highly beneficial and yields excellent system identification fidelity.
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