单MEMS储层非线性时间序列预测

M. Hasan, F. Alsaleem
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引用次数: 0

摘要

在这项工作中,我们通过预测10阶非线性自回归移动平均(NARMA10)动力系统的动力学来展示MEMS器件的计算潜力。由于该系统的高度非线性和依赖于其先前的值,因此建模被认为是复杂的。为了对NARMA10系统进行建模,我们使用了一种储层计算方案,该方案利用一个MEMS器件作为储层,由100个虚拟节点相互作用产生。虚拟节点是通过对MEMS器件的输入进行采样并使用随机调制掩模对该输入进行调制来实现的。系统内虚拟节点之间的交互是通过延迟反馈和时间依赖产生的。使用这种方法,MEMS器件能够充分捕获NARMA10响应,训练集和测试集的归一化均方根误差(NRMSE)分别为6.18%和6.43%。在实际应用中,MEMS设备将优于模拟油藏,因为它能够实时执行复杂的计算任务。
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Nonlinear Time-Series Prediction Using a Single MEMS Reservoir
In this work, we show the computational potential of MEMS devices by predicting the dynamics of a 10th order nonlinear auto-regressive moving average (NARMA10) dynamical system. Modeling this system is considered complex due to its high nonlinearity and dependency on its previous values. To model the NARMA10 system, we used a reservoir computing scheme by utilizing one MEMS device as a reservoir, produced by the interaction of 100 virtual nodes. The virtual nodes are attained by sampling the input of the MEMS device and modulating this input using a random modulation mask. The interaction between virtual nodes within the system was produced through delayed feedback and temporal dependence. Using this approach, the MEMS device was capable of adequately capturing the NARMA10 response with a normalized root mean square error (NRMSE) = 6.18% and 6.43% for the training and testing sets, respectively. In practice, the MEMS device would be superior to simulated reservoirs due to its ability to perform this complex computing task in real time.
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