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Adaptively changed winning number LVQ for constructing an accurate control model from enormous and low quality plant data

机译:自适应地改变赢取号码LVQ,用于构建来自巨大和低质量的植物数据的准确控制模型

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Construction or tuning of control models is often done using data obtained from an actually working plant. We discuss how to improve these plant data from the viewpoints of decreasing their size to a manageable number without losing their statistical property, excluding ill-suited ones, and dissolving the partial distribution to obtain an accurate control model. We call our procedure plant data purification. First, the learning vector quantization (LVQ) is improved to obtain the desired number of purified data, where, under quantization, the number of winning quantization vectors is changed adaptively and abnormal data determined by similarity with their nearest quantization vector are excluded out of a set of quantized plant data. Then the developed method is further improved to dissolve the partial distribution of data to obtain a uniform distribution. Finally, the proposed method is applied to the construction of a control model used in a continuous galvanizing plant and its effectiveness is demonstrated.
机译:控制模型的施工或调整通常使用从实际工作厂获得的数据进行。我们讨论如何从将其尺寸减少到可管理数量的观点来讨论如何改进这些工厂数据,而不会丢失其统计属性,不包括不适合的统计属性,并将部分分布溶解以获得准确的控制模型。我们称我们的程序植物数据净化。首先,改进了学习矢量量化(LVQ)以获得所需数量的净化数据,在量化中,在量化中,获胜量化向量的数量被自适应地改变,并且由与最近的量化矢量相似度确定的异常数据被排除在a之外量化植物数据一套。然后进一步改善开发的方法以溶解数据的部分分布以获得均匀分布。最后,将所提出的方法应用于连续镀锌植物中使用的控制模型的结构,并且证明了其有效性。

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