MLLGOct 8, 2021

Big Machinery Data Preprocessing Methodology for Data-Driven Models in Prognostics and Health Management

arXiv:2110.04256v148 citations
Originality Synthesis-oriented
AI Analysis

This addresses a knowledge gap for real-world applications in reliability engineering, though it is incremental as it focuses on improving preprocessing steps rather than introducing new models.

The paper tackles the lack of formal data preprocessing guidelines for data-driven models in prognostics and health management by presenting a step-by-step pipeline, validated through two case studies to create clean labeled datasets for training machinery health classifiers.

Sensor monitoring networks and advances in big data analytics have guided the reliability engineering landscape to a new era of big machinery data. Low-cost sensors, along with the evolution of the internet of things and industry 4.0, have resulted in rich databases that can be analyzed through prognostics and health management (PHM) frameworks. Several da-ta-driven models (DDMs) have been proposed and applied for diagnostics and prognostics purposes in complex systems. However, many of these models are developed using simulated or experimental data sets, and there is still a knowledge gap for applications in real operating systems. Furthermore, little attention has been given to the required data preprocessing steps compared to the training processes of these DDMs. Up to date, research works do not follow a formal and consistent data preprocessing guideline for PHM applications. This paper presents a comprehensive, step-by-step pipeline for the preprocessing of monitoring data from complex systems aimed for DDMs. The importance of expert knowledge is discussed in the context of data selection and label generation. Two case studies are presented for validation, with the end goal of creating clean data sets with healthy and unhealthy labels that are then used to train machinery health state classifiers.

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