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A hierarchical, fuzzy inference approach to data filtration and feature prioritization in the connected manufacturing enterprise

机译:关联制造企业中用于数据过滤和功能优先级排序的分层,模糊推理方法

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Abstract In manufacturing, the technology to capture and store large volumes of data developed earlier and faster than corresponding capabilities to analyze, interpret, and apply it. The result for many manufacturers is a collection of unanalyzed data and uncertainty with respect to where to begin. This paper examines big data as both an enabler and a challenge for the connected manufacturing enterprise and presents a framework that sequentially tests and selects independent variables for training applied machine learning models. Unsuitable features are discarded, and each remaining feature receives a crisp numeric output and a linguistic label, both of which are measures of the feature’s suitability. The framework is tested using three datasets employing time series, binary, and continuous input data. Results of filtered models are compared to results obtained by base, unfiltered sets of features using a proposed metric of performance-size ratio. Framework results outperform base feature sets in all tested cases, and the proposed future research will be to implement it in a case study in the electronic assembly manufacture.
机译:摘要在制造业中,用于捕获和存储大量数据的技术比相应的分析,解释和应用功能要早,快。对于许多制造商而言,结果是收集了未经分析的数据以及关于从何处开始的不确定性。本文研究了大数据既是关联制造企业的推动者又是挑战,并提出了一个框架,该框架顺序地测试和选择自变量以训练应用的机器学习模型。不合适的功能将被丢弃,其余的每个功能都会收到清晰的数字输出和语言标签,这两者都是对功能适用性的衡量标准。使用三个使用时间序列,二进制和连续输入数据的数据集对框架进行了测试。使用建议的性能尺寸比度量,将过滤后的模型的结果与通过基本未过滤特征集获得的结果进行比较。框架结果在所有测试案例中均胜过基本功能集,因此拟议的未来研究将是在电子装配制造中的案例研究中实施该框架。

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