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Statistical and computational intelligence techniques for inferential model development: a comparative evaluation and a novel proposition for fusion

机译:用于推理模型开发的统计和计算智能技术:比较评估和融合的新命题

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摘要

In industry today many products are sold for their efficacy rather than their chemical composition. Many variables (dependent variables), which characterize the quality of the final product in a manufacturing process, can be difficult to measure in real-time. Measurement difficulties can be due to a variety of reasons, including: (1) Reliability of on-line sensors, (2) Lack of appropriate on-line instrumentation. It is often the case that off-line laboratory tests are the only means of determining product quality measurements. However such laboratory analyses introduce delays in the measurement of key performance indicators. This can result in a significant economic loss if the analysed product fails the quality control test. In such situations an improved monitoring system is therefore required to determine product quality online and minimise commercial wastage. To facilitate this, advanced monitoring and control or optimisation techniques require inferred measurements, generated with correlations from readily available process variables (independent variables). Although inferential models are widely used in industry, only a few techniques for inferential model development are discussed in the open literature. This paper therefore will present a comparative evaluation study of the current inferential measurement techniques. An improved systematic approach for the development of inferential models using intelligent and soft computing systems is also highlighted. The proposed approach is designed to address some of the problems that currently exist in the area of inferential modelling through the fusion of statistical and computational intelligence models. A novel method of fusion is also proposed and an industrial case study is then presented to demonstrate the methodology by inferring the 'Anchorage' of polymeric-coated substrates (i.e. Tyvek or paper) in the coating industry. The application on which this methodology is demonstrated is unique. No such work in the literature to date has presented any inferential modelling strategies in the area of the coating industry. This strategy developed through the fusion of statistical and artificial modelling to generate a hybrid inferential measurement system has the potential to significantly improve the quality control monitoring system and reduce the economic loss encountered through the production of off-spec material.
机译:在当今的工业中,许多产品的销售都是出于功效而不是化学成分的原因。许多变量(因变量)是制造过程中最终产品质量的特征,可能难以实时测量。测量困难可能是由多种原因引起的,包括:(1)在线传感器的可靠性,(2)缺少适当的在线仪器。通常,脱机实验室测试是确定产品质量测量值的唯一方法。但是,此类实验室分析会延迟关键绩效指标的测量。如果被分析的产品未通过质量控制测试,则可能导致重大的经济损失。因此,在这种情况下,需要一种改进的监控系统来在线确定产品质量并最大程度地减少商业浪费。为此,先进的监视和控制或优化技术需要推断出的测量值,这些测量值是根据容易获得的过程变量(独立变量)的相关性生成的。尽管推论模型已在工业中广泛使用,但开放文献中仅讨论了几种推论模型开发技术。因此,本文将对当前的推论测量技术进行比较评估研究。还着重介绍了使用智能和软计算系统开发推理模型的改进系统方法。所提出的方法旨在通过融合统计和计算智能模型来解决推理模型领域中当前存在的一些问题。还提出了一种新颖的融合方法,然后提出了一个工业案例研究,以通过推断涂料行业中聚合物涂层基材(例如特卫强或纸)的“锚固”来证明该方法。演示此方法的应用程序是唯一的。迄今为止,文献中没有此类工作提出了涂料工业领域中的任何推论建模策略。通过将统计模型和人工模型融合以生成混合推理测量系统而开发的该策略具有显着改善质量控制监视系统并减少因生产不合格材料而遇到的经济损失的潜力。

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