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首页> 外文期刊>Artificial Intelligence Review: An International Science and Engineering Journal >Selection of optimal denoising-based regularization hyper-parameters for performance improvement in a sensor validation model
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Selection of optimal denoising-based regularization hyper-parameters for performance improvement in a sensor validation model

机译:选择优化的基于去噪的正规化超参数,用于传感器验证模型的性能改进

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Multilayered auto-associative neural architectures have widely been used in empirical sensor modeling. Typically, such empirical sensor models are used in sensor calibration and fault monitoring systems. However, simultaneous optimization of related performance metrics, i.e., auto-sensitivity, cross-sensitivity, and fault-detectability, is not a trivial task. Learning procedures for parametric and other relevant non-parametric empirical models are sensitive to optimization and regularization methods. Therefore, there is a need for active learning strategies that can better exploit the underlying statistical structure among input sensors and are simple to regularize and fine-tune. To this end, we investigated the greedy layer-wise learning strategy and denoising-based regularization procedure for sensor model optimization. We further explored the effects of denoising-based regularization hyper-parameters such as noise-type and noise-level on sensor model performance and suggested optimal settings through rigorous experimentation. A visualization procedure was introduced to obtain insight into the internal semantics of the learned model. These visualizations allowed us to suggest an implicit noise-generating process for efficient regularization in higher-order layers. We found that the greedy-learning procedure improved the overall robustness of the sensor model. To keep experimentation unbiased and immune to noise-related artifacts in real sensors, the sensor data were sampled from simulators of a nuclear steam supply system of a pressurized water reactor and a Tennessee Eastman chemical process. Finally, we compared the performance of an optimally regularized sensor model with auto-associative neural network, auto-associative kernel regression, and fuzzy similarity-based sensor models.
机译:多层的自动关联神经结构广泛用于经验传感器建模。通常,这种经验传感器模型用于传感器校准和故障监测系统。然而,同时优化相关性能度量,即自动灵敏度,交叉感性和故障可检测性,不是一个微不足道的任务。参数和其他相关非参数化实证模型的学习程序对优化和正则化方法很敏感。因此,需要有效的学习策略,可以更好地利用输入传感器之间的底层统计结构,并易于正规化和微调。为此,我们调查了传感器模型优化的贪婪层面学习策略和基于去噪的正则化程序。我们进一步探索了基于去噪的正则化超参数,例如噪声型和噪声水平对传感器模型性能的影响,并通过严格的实验建议了最佳设置。引入了可视化程序,以获得对学习模型的内部语义的洞察力。这些可视化允许我们建议在高阶层中有效正则化的隐式噪声生成过程。我们发现贪婪学习程序改善了传感器模型的整体稳健性。为了保持实验在实际传感器中对噪声相关的术语免受偏见和免疫,从加压水反应器的核蒸汽供应系统的模拟器采样传感器数据和田纳西州伊斯坦德化学过程。最后,我们将具有自动关联神经网络,自动关联内核回归和基于模糊相似性的传感器模型的最佳正则化传感器模型的性能进行了比较。

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