Decision Making in the Choice of Condition-Based Maintenance Techniques in a Subsidiary of a Petrochemical Company

Author:

Carnero-Moya María Carmen1,Cárcel-Carrasco Francisco Javier2

Affiliation:

1. University of Castilla-La Mancha, Spain & Universidade de Lisboa, Portugal

2. Universitat Politècnica de València, Spain

Abstract

Condition-based maintenance (CBM) may be considered an essential part of the Industry 4.0 environment because it can improve production processes through the use of the latest digital technologies, which allows improvements to products, processes, and business models. Nonetheless, despite this importance, there are no models or methodologies in the literature to assist in choosing predictive techniques and the level of complexity to be used in a given organization. This chapter describes a model for choosing the most suitable CBM technique to be introduced in a subsidiary of a petrochemical plant. The predictive techniques of vibration analysis, lubricant analysis, and a combination of the two were considered at three technological levels. The model was built using the measuring attractiveness by a categorical based evaluation technique (MACBETH) approach. The present model could avoid failures in these programmes when making decisions about the techniques and technologies most suited to the characteristics of the industrial plant.

Publisher

IGI Global

Reference31 articles.

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