Reportability Tool Design: Assessing Grouping Schemes for Strategic Decision Making in Maintenance Planning from a Stochastic Perspective

Viveros, Pablo; Pantoja, Nicolas Cardenas; Kristjanpoller, Fredy; Mena, Rodrigo

Abstract

Featured Application The aim of the following work is to provide a reportability tool designed in Power BI addressing risk and performance of maintenance activity scheduling from a strategic and stochastic perspective. In this article, we report on the design and implementation of a reportability tool using Microsoft Power BI embedded with Python script to assess opportunistic grouping schemes under a preventive maintenance policy. The reportability tool is based on specially developed indicators based on current maintenance standards for better implementation and considers a formerly developed grouping strategy with poor embedded performance indicators as an implementation case for the tool. Performance indicators were carefully developed considering a stochastic perspective when possible; this enables decisions to be influenced by risk assessment under a costs view. Reporting is focused on six maintenance sub-functions, enabling the decision maker to easily assess performance of any maintenance process, thereby improving the quality of decisions. The developed tool is a step forward for grouping (or any scheduling scheme) strategies due to its flexibility to be implemented in almost any case, enabling comparison between different grouping algorithms.

Más información

Título según WOS: Reportability Tool Design: Assessing Grouping Schemes for Strategic Decision Making in Maintenance Planning from a Stochastic Perspective
Título de la Revista: APPLIED SCIENCES-BASEL
Volumen: 12
Número: 11
Editorial: MDPI
Fecha de publicación: 2022
DOI:

10.3390/app12115386

Notas: ISI