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首页> 外文期刊>Neural Computing & Applications >Design of an auto-associative neural network by using design of experiments approach
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Design of an auto-associative neural network by using design of experiments approach

机译:利用实验设计方法设计自联想神经网络

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摘要

Advanced monitoring systems enable integration of data-driven algorithms for various tasks, for e.g., control, decision support, fault detection and isolation (FDI), etc. Due to improvement of monitoring systems, statistical or other computational methods can be implemented to real industrial systems. Algorithms which rely on process history data sets are promising for real-time operation especially for online process monitoring tasks, e.g., FDI. However, a reliable FDI system should be robust to uncertainties and small process deviations, thus, false alarms can be avoided. To achieve this, a good model for comparison between process and model is needed and for easier FDI implementation, the model has to be derived directly from process history data. In such cases, model-based FDI approaches are not very practical. In this paper a nonlinear statistical multivariate method (nonlinear principal component analysis) was used for modeling, and realized with auto-associative artificial neural network (AANN). A Taguchi design of experiments (DoE) technique was used and compared with a classic approach, where according to the analysis best AANN model structure was chosen for nonlinear model. Parameters that are important for neural network’s performance have been included into a joint orthogonal array to consider interactions between noise and control process variables. Results are compared to AANN design recommendations by other authors, where obtained nonlinear model was designed for reliable fault detection of very small faults under closed-loop conditions. By using Taguchi DoE robust design on AANN, an improved and reliable FDI scheme was achieved even in case of small faults introduced to the system. The accuracy and performance of AANN and FDI scheme were tested by experiments carried out on a real laboratory hydraulic system, to validate the proposed design for industrial cases.
机译:先进的监控系统能够集成用于各种任务的数据驱动算法,例如控制,决策支持,故障检测和隔离(FDI)等。由于监控系统的改进,可以将统计或其他计算方法应用于实际工业系统。依赖过程历史数据集的算法有望用于实时操作,尤其是对于在线过程监视任务(例如FDI)。但是,可靠的FDI系统应该对不确定性和较小的过程偏差具有鲁棒性,因此可以避免误报。为此,需要一个很好的模型来比较过程和模型,并且为了更容易地进行FDI,必须直接从过程历史数据中得出模型。在这种情况下,基于模型的外国直接投资方法不是很实用。本文使用非线性统计多元方法(非线性主成分分析)进行建模,并通过自动关联人工神经网络(AANN)实现。使用Taguchi设计的实验(DoE)技术,并将其与经典方法进行比较,经典方法根据分析结果选择了最佳的AANN模型结构作为非线性模型。对于神经网络的性能很重要的参数已包含在联合正交数组中,以考虑噪声与控制过程变量之间的相互作用。将结果与其他作者的AANN设计建议进行比较,后者将获得的非线性模型设计为在闭环条件下可靠地检测非常小的故障。通过在AANN上使用Taguchi DoE鲁棒设计,即使在系统中引入小故障的情况下,也可以实现改进且可靠的FDI方案。通过在真实的实验室液压系统上进行的实验来测试AANN和FDI方案的准确性和性能,以验证所提出的工业案例设计。

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