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Handling Noisy Data in Machine Learning Modeling and Predictive Control of Nonlinear Processes

机译:处理机器学习建模中的嘈杂数据和非线性过程的预测控制

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Long short-term memory (LSTM) networks, as one type of recurrent neural networks, has been widely utilized to model nonlinear dynamic systems from time-series process operational data. This work focuses on LSTM modeling and predictive control of nonlinear processes using a noisy training data set, where the noise can stem from different sources, such as sensor variability and common plant variance. We first consider a dataset with Gaussian noise, and demonstrate that the standard LSTM network is able to capture the underlying (nominal) nonlinear process dynamic behavior. Then, we consider a noisy dataset from industrial operation (i.e., non-Gaussian noisy data), and demonstrate a poor training performance of the standard LSTM network despite its denoising capability for Gaussian noise. Therefore, to train an LSTM more efficiently with noisy data, we propose an LSTM network using Monte Carlo dropout method to reduce the overfitting to noisy data. The proposed dropout LSTM method is applied to a chemical process example with state measurements corrupted by industrial noise to demonstrate its improved prediction accuracy in both open- and closed-loop operation under a Lyapunov-based model predictive controller.
机译:长期内存(LSTM)网络作为一种复发性神经网络,已被广泛用于从时序过程操作数据模拟非线性动态系统。这项工作侧重于使用嘈杂的训练数据集的LSTM建模和预测控制非线性过程,其中噪声可以源于不同的来源,例如传感器变异性和常见的植物方差。我们首先考虑具有高斯噪声的数据集,并证明标准LSTM网络能够捕获底层(标称)非线性过程动态行为。然后,我们考虑来自工业操作的嘈杂数据集(即,非高斯嘈杂数据),并且尽管其去噪能力的能力表现出标准LSTM网络的训练性能差。因此,要使用嘈杂的数据更有效地训练LSTM,我们使用Monte Carlo丢弃方法提出了LSTM网络,以减少对噪声数据的过度装备。所提出的辍学LSTM方法应用于具有工业噪声损坏的状态测量的化学过程示例,以在基于Lyapunov的模型预测控制器下展示其在开放和闭环操作中的提高预测精度。

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