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System Identification of a Vertical Riser Model with Echo State Networks

机译:回声状态网络垂直提升机模型的系统识别

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System identification of highly nonlinear dynamical systems, important for reducing time complexity in long simulations, is not trivial using more traditional methods such as recurrent neural networks (RNNs) trained with back-propagation through time. The recently introduced Reservoir Computing (RC) * approach to training RNNs is a viable and powerful alternative which renders fast training and high performance. In this work, a single Echo State Network (ESN), a flavor of RC, is employed for system identification of a vertical riser model which has stationary and oscillatory signal behaviors depending of the production choke opening input variable. It is shown experimentally that these different behaviors are learned by constraining the high-dimensional reservoir states to attractor subspaces in which the specific behavior is represented. Further experiments show the stability of the identified system.
机译:高度非线性动力系统的系统识别,用于在长时间模拟中减少时间复杂性的重要性,使用更传统的方法(如经常性神经网络(RNN)训练的时间)并不易于推广。最近引入的储层计算(RC)*培训方法是一种可行且强大的替代方案,使培训快速培训和高性能。在这项工作中,采用单个回声状态网络(ESN),RC的风味用于垂直提升机模型的系统识别,其具有静止和振荡信号行为,这取决于生产扼流圈打开输入变量。通过实验示出了通过将高维库状态限制为吸引子空间来了解这些不同的行为,其中表示特定行为的吸引子空间。进一步的实验表明了所识别的系统的稳定性。

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