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A Hybrid System with Multivariate Data Validation and Case Base Reasoning for an Efficient and Realistic Product Formulation

机译:一种具有多变量数据验证的混合系统和高效和现实产品配方的案例基础推理

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This applied research paper presents a novel hybrid system, which provides a systematic approach for an efficient and realistic case retrieval, retention and testing of product formulations. The underlying idea is to build a case library of practical and viable product formulations with consistent quality patterns, flexible process attributes and constituent proportions. To avoid the storage of non-representative and unrealistic cases within the case library, a strict multivariate validation method has been imposed on the system. The input formulation, whether it be a single suggestion on product formulation as a query, an optimized case or a collection of tests, is validated against the most similar formulation cluster in the case library determined through the Principal Component Similarity factor and Mahalanobis distance. T~2 and Q-statistics as multivariate data validation methods are employed to determine whether the input formulations match the most similar cluster of datasets in the case library. The synergistic use of univariate control charts and the graphical plot of variable relations between the input formulation and the most similar case provide information on variables, which cause a mismatch. If the value of the culprit variable cannot be rectified to match the dataset in the case library, the new input formulation can only be retained after an empirical validation in the main manufacturing area.
机译:该应用研究论文提出了一种新型混合系统,提供了一种有效和现实案例检索,保留和测试产品配方的系统方法。潜在的想法是建立一种实用和可行的产品配方的案例库,具有一致的质量模式,灵活的过程属性和组成比例。为避免在案例库中存储非代表性和不切实际的情况,系统对系统施加了严格的多变量验证方法。输入配方,是否是产品制剂的单个建议作为查询,优化的情况或测试集合,通过主成分相似因子和Mahalanobis距离确定的情况库中的最相似的制定群集。用于多变量数据验证方法的T〜2和Q统计信息用于确定输入配方是否与案例库中最相似的数据集群集匹配。协同使用单变量控制图和输入配方之间的可变关系的图形曲线和最相似的情况提供了有关变量的信息,导致不匹配。如果无法纠正罪魁祸首变量以匹配案例库中的数据集,则只能在主制造区域的经验验证之后保留新的输入配方。

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