Abstract

In big data-based analyses, because of hyper-dimensional feature spaces, there has been no previous distinction between machine learning algorithms (MLAs). Therefore, multiple diverse algorithms should be included in the analysis to develop an adequate model for detecting/recognizing patterns exhibited by classes. If multiple classifiers are developed, the next natural step is to determine whether the prediction benchmark set by the top performer can be improved by combining them. In this context, multiple classifier systems (MCSs) are powerful solutions for difficult pattern recognition problems because they usually outperform the best individual classifier, and their diversity tends to improve resilience and robustness to high-dimensional and noisy data. To design an MCS, an appropriate fusion method is required to optimally combine the individual classifiers and determine the final decision. Process monitoring for quality is a Quality 4.0 initiative aimed at defect detection via binary classification. Because most mature organizations have merged traditional quality philosophies, their processes generate only a few defects per million of opportunities. Therefore, manufacturing data sets for binary classification of quality tends to be highly/ultra-unbalanced. Detecting these rare quality events is one of the most relevant intellectual challenges posed to the fourth industrial revolution, Industry 4.0 (I 4.0). A new MCS aimed at analyzing these data structures is presented. It is based on eight well-known MLAs, an ad hoc fitness function, and a novel meta-learning algorithm. For predicting the final quality class, this algorithm considers the prediction from a set of classifiers as input and determines which classifiers are reliable and which are not. Finally, to demonstrate the superiority of the MLAs over extensively used fusion rules, multiple publicly available data sets are analyzed.

Highlights

  • The fourth industrial revolution (I 4.0) is changing the way we work, live, and interact with one another

  • Process monitoring for quality In PMQ, the Big Models (BM) learning paradigm [23] is applied to process data to develop a classifier aimed at defect detection

  • In data set # 2, the benchmark set by the k-nearest neighbors (KNN) (MPCD 1⁄4 0.9736) is higher (MPCD 1⁄4 0.9799) by the multiple classifier systems (MCSs) based on SVM, SVM(RBF), artificial neural network (ANN), and KNN algorithms with a fusion rule of 1

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Summary

Introduction

The fourth industrial revolution (I 4.0) is changing the way we work, live, and interact with one another. PMQ has evolved the traditional quality problem solving strategies (PDCA, DMAIC, IDDOV [12]) into a seven-step approach —(Identify, Acsensorize, Discover, Learn, Predict, Redesign, Relearn: IADLPR2) — to effectively solve pattern classification problems and to guide (Figure 3) [12,13]. A prediction optimization approach, PMQ-O, is presented It is an effective strategy aimed at developing an MCS with the capacity to analyze highly/ultra-unbalanced data. The proposed approach is based on the following: (1) a list of eight diverse MLAs, (2) an ad hoc fitness function, and (3) a new meta-learning algorithm that searches for an optimal solution. These three components address the two optimization.

Process monitoring for quality
Theoretical background
Aggregation methods
List of MLA
Optimizer pseudo-code
Classification optimization
Virtual case study
Real case studies
Findings
Conclusions
Full Text
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