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Adaptive Modeling of Physical Systems Based on Affine Transform and its Application for Machine Learning

机译:基于仿射变换的物理系统自适应建模及其在机器学习中的应用

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We describe the adaptive modeling of a physical system using the affine transform and its application to machine learning. We previously proposed a method to implement machine learning in physical hardware, where we built a simulator based on actual hardware input/output, and used it to optimize a controller. The method decreases stress on hardware because the controller is optimized by software via the simulator. Moreover, it does not require specific physical information on hardware. We also did not need to formulate hardware kinematics. When hardware changes, however, optimization must be redone to build the simulator - a clearly inefficient procedure. We therefore considered using previous optimization results when reoptimizing for new hardware. In the physical system, the aspect of the phase space does not vary much if the system structure remains the same. We applied affine transform to phase space of the physical system, to remodel the simulator for new hardware characteristics triggered by parameter changes. We used the remodeled simulator in machine learning to reoptimize the controller. In experiments, we used the swing-up pendulum problem to evaluate our proposal, comparing our proposal and original methods and finding that our proposal accelerates reoptimization.
机译:我们描述了使用仿射变换的物理系统自适应建模及其在机器学习中的应用。我们之前提出了一种在物理硬件中实现机器学习的方法,其中我们根据实际的硬件输入/输出构建了一个模拟器,并使用它来优化控制器。该方法减少了硬件压力,因为控制器是通过模拟器通过软件进行优化的。而且,它不需要有关硬件的特定物理信息。我们也不需要制定硬件运动学。但是,当硬件发生变化时,必须重新进行优化以构建模拟器-这显然是效率低下的过程。因此,我们在重新优化新硬件时考虑使用先前的优化结果。在物理系统中,如果系统结构保持不变,则相空间的方面不会有太大变化。我们将仿射变换应用于物理系统的相空间,以针对由参数更改触发的新硬件特征对模拟器进行重塑。我们在机器学习中使用了重构的模拟器来重新优化控制器。在实验中,我们使用上摆摆问题评估了我们的建议,将我们的建议与原始方法进行了比较,发现我们的建议加速了重新优化。

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