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Multimodal forecasting methodology applied to industrial process monitoring

机译:多模态预测方法应用于工业过程监测

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摘要

IEEE Industrial process modelling represents a key factor to allow the future generation of industrial manufacturing plants. In this regard, accurate models of critical signals need to be designed in order to forecast process deviations. In this work a novel multimodal forecasting methodology based on adaptive dynamics packaging and codification of the process operation is proposed. First, a target signal is decomposed by means of the Empirical Mode Decomposition in order to identify the characteristics intrinsic mode functions. Second, such dynamics are packaged depending on their significance and modelling complexity. Third, the operating condition of the considered process, reflected by available auxiliary signals, is codified by means of a Self-Organizing Map and presented to the modelling structure. The forecasting structure is supported by a set of ensemble ANFIS based models, each one focused on a different set of signal dynamics. The performance and effectiveness of the proposed method is validated experimentally with industrial data from a copper rod manufacturing plant and performance comparison with classical approaches. The proposed method improves performance and generalization versus classical single model approaches.
机译:IEEE工业过程建模代表了允许下一代工业制造工厂使用的关键因素。在这方面,需要设计关键信号的精确模型以预测过程偏差。在这项工作中,提出了一种基于自适应动态包装和过程操作编码的新型多峰预测方法。首先,借助于经验模式分解来分解目标信号,以便识别特征固有模式函数。其次,根据动力学的重要性和建模复杂性对其进行打包。第三,考虑的过程的操作条件(通过可用的辅助信号反映)通过自组织图进行整理,并提供给建模结构。预测结构由一组基于集合ANFIS的模型支持,每个模型集中于一组不同的信号动力学。该方法的性能和有效性已通过铜棒制造厂的工业数据进行了实验验证,并与经典方法进行了性能比较。与经典的单模型方法相比,该方法提高了性能和泛化能力。

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