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Identification of hybrid systems using stable spline kernels

机译:使用稳定的样条核识别混合动力系统

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All the approaches for identification of hybrid systems appeared in the literature assume known the model complexity. Widely used models are e.g. piecewise ARX with a priori fixed orders. In addition, the developed algorithms are typically tested only on quite simple systems, e.g. with ARX subsystems of order 1 or at most 2. This is a significant limitation for real applications. Here, we propose a new regularized technique for identification of piecewise affine systems, which we dub the hybrid stable spline algorithm (HSS). HSS exploits the recently introduced stable spline kernel to model the submodels impulse responses as zero-mean Gaussian processes, embedding information on submodels predictor stability. Using the Bayesian interpretation of regularization, the problem of classifying and distributing the data to the subsystems is cast as marginal likelihood optimization. An approximated optimization is performed by a Markov chain Monte Carlo scheme. Then, the stable spline algorithm is used to reconstruct each subsystem. Numerical experiments show that HSS can identify high-order piecewise affine systems, without having exact information on ARX subsystems order.
机译:在文献中出现识别混合系统的所有方法假设已知模型复杂性。广泛使用的模型是例如分段ARX具有先验的固定订单。此外,显影算法通常仅在相当简单的系统上进行测试,例如,使用ARX子系统1订单1或最多2.这是真实应用的重大限制。在这里,我们提出了一种新的正则化技术,用于识别分段仿射系统,我们将混合稳定的样条算法(HSS)进行配合。 HSS利用最近引入的稳定样条内核以模拟亚模型脉冲响应作为零均值高斯过程,嵌入有关子模型预测器稳定性的信息。使用贝叶斯的正则化解释,将数据分类和分配给子系统的问题作为边际似然优化。由马尔可夫链蒙特卡罗方案执行近似优化。然后,使用稳定的样条算法来重建每个子系统。数值实验表明,HSS可以识别高阶分段仿射系统,而无需对ARX子系统顺序的确切信息。

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