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Multi-similarity measurement driven ensemble just-in-time learning for soft sensing of industrial processes

机译:多相相似度测量驱动集合立即学习工业流程的软感应

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摘要

Just-in-time learning (JITL) technique has been widely used for adaptive soft sensing of nonlinear processes. It builds online local model with the most relevant samples from historical dataset whenever a query sample comes. Hence, the prediction performance greatly depends on the similarity measurement for relevant sample selection. Different similarity measurements have been developed for sample selection in the past decades. However, each method only focuses on one aspect of sample similarity and has its own limitations. Moreover, it is difficult to obtain the similarity mechanism of real process data. A single similarity measurement does not always provide satisfactory prediction performance. To deal with this problem, a novel ensemble just-in-time learning (E-JITL) framework is proposed in this paper. In E-JITL, different similarity measurements are adopted for sample selection. Then, local prediction models are constructed and trained to estimate the output of the query data with different groups of relevant samples corresponding to the similarity measurements. At last, a final prediction can be obtained by an ensemble strategy on each local model. The effectiveness of the E-JITL is validated on two industrial applications.
机译:实时学习(JITL)技术已广泛应用于非线性过程的自适应软测量。每当查询样本出现时,它都会使用历史数据集中最相关的样本构建在线局部模型。因此,预测性能在很大程度上取决于相关样本选择的相似性度量。在过去的几十年里,不同的相似性度量被用于样本选择。然而,每种方法只关注样本相似性的一个方面,并且有其自身的局限性。此外,很难获得真实过程数据的相似机制。单一的相似性度量并不总能提供令人满意的预测性能。为了解决这个问题,本文提出了一种新的集成即时学习(E-JITL)框架。在E-JITL中,样本选择采用了不同的相似性度量。然后,构建并训练局部预测模型,用与相似性度量相对应的不同组相关样本估计查询数据的输出。最后,对每个局部模型采用集合策略进行最终预测。在两个工业应用中验证了E-JITL的有效性。

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