On preventive maintenance policies: a selection framework

Research output: Contribution to journalArticlepeer-review

Standard Standard

On preventive maintenance policies: a selection framework. / Alsyouf, Imad; Hamdan, Sadeque; Shamsuzzaman, Mohammad et al.
In: Journal of Quality in Maintenance Engineering, Vol. 27, No. 1, 16.02.2021, p. 225-252.

Research output: Contribution to journalArticlepeer-review

HarvardHarvard

Alsyouf, I, Hamdan, S, Shamsuzzaman, M, Haridy, S & Alawaysheh, I 2021, 'On preventive maintenance policies: a selection framework', Journal of Quality in Maintenance Engineering, vol. 27, no. 1, pp. 225-252. https://doi.org/10.1108/JQME-10-2018-0085

APA

Alsyouf, I., Hamdan, S., Shamsuzzaman, M., Haridy, S., & Alawaysheh, I. (2021). On preventive maintenance policies: a selection framework. Journal of Quality in Maintenance Engineering, 27(1), 225-252. https://doi.org/10.1108/JQME-10-2018-0085

CBE

Alsyouf I, Hamdan S, Shamsuzzaman M, Haridy S, Alawaysheh I. 2021. On preventive maintenance policies: a selection framework. Journal of Quality in Maintenance Engineering. 27(1):225-252. https://doi.org/10.1108/JQME-10-2018-0085

MLA

Alsyouf, Imad et al. "On preventive maintenance policies: a selection framework". Journal of Quality in Maintenance Engineering. 2021, 27(1). 225-252. https://doi.org/10.1108/JQME-10-2018-0085

VancouverVancouver

Alsyouf I, Hamdan S, Shamsuzzaman M, Haridy S, Alawaysheh I. On preventive maintenance policies: a selection framework. Journal of Quality in Maintenance Engineering. 2021 Feb 16;27(1):225-252. Epub 2020 May 14. doi: 10.1108/JQME-10-2018-0085

Author

Alsyouf, Imad ; Hamdan, Sadeque ; Shamsuzzaman, Mohammad et al. / On preventive maintenance policies: a selection framework. In: Journal of Quality in Maintenance Engineering. 2021 ; Vol. 27, No. 1. pp. 225-252.

RIS

TY - JOUR

T1 - On preventive maintenance policies: a selection framework

AU - Alsyouf, Imad

AU - Hamdan, Sadeque

AU - Shamsuzzaman, Mohammad

AU - Haridy, Salah

AU - Alawaysheh, Iyad

PY - 2021/2/16

Y1 - 2021/2/16

N2 - PurposeThis paper develops a framework for selecting the most efficient and effective preventive maintenance policy using multiple-criteria decision making and multi-objective optimization.Design/methodology/approachThe critical component is identified with a list of maintenance policies, and then its failure data are collected and the optimization objective functions are defined. Fuzzy AHP is used to prioritize each objective based on the experts' questionnaire. Weighted comprehensive criterion method is used to solve the multi-objective models for each policy. Finally, the effectiveness and efficiency are calculated to select the best maintenance policy.FindingsFor a fleet of buses in hot climate environment where coolant pump is identified as the most critical component, it was found that block-GAN policy is the most efficient and effective one with a 10.24% of cost saving and 0.34 expected number of failures per cycle compared to age policy and block-BAO policy.Research limitations/implicationsOnly three maintenance policies are compared and studied. Other maintenance policies can also be considered in future.Practical implicationsThe proposed methodology is implemented in UAE for selecting a maintenance scheme for a critical component in a fleet of buses. It can be validated later in other Gulf countries.Originality/valueThis research lays a solid foundation for selecting the most efficient and effective preventive maintenance policy for different applications and sectors using MCDM and multi-objective optimization to improve reliability and avoid economic loss.

AB - PurposeThis paper develops a framework for selecting the most efficient and effective preventive maintenance policy using multiple-criteria decision making and multi-objective optimization.Design/methodology/approachThe critical component is identified with a list of maintenance policies, and then its failure data are collected and the optimization objective functions are defined. Fuzzy AHP is used to prioritize each objective based on the experts' questionnaire. Weighted comprehensive criterion method is used to solve the multi-objective models for each policy. Finally, the effectiveness and efficiency are calculated to select the best maintenance policy.FindingsFor a fleet of buses in hot climate environment where coolant pump is identified as the most critical component, it was found that block-GAN policy is the most efficient and effective one with a 10.24% of cost saving and 0.34 expected number of failures per cycle compared to age policy and block-BAO policy.Research limitations/implicationsOnly three maintenance policies are compared and studied. Other maintenance policies can also be considered in future.Practical implicationsThe proposed methodology is implemented in UAE for selecting a maintenance scheme for a critical component in a fleet of buses. It can be validated later in other Gulf countries.Originality/valueThis research lays a solid foundation for selecting the most efficient and effective preventive maintenance policy for different applications and sectors using MCDM and multi-objective optimization to improve reliability and avoid economic loss.

U2 - 10.1108/JQME-10-2018-0085

DO - 10.1108/JQME-10-2018-0085

M3 - Article

VL - 27

SP - 225

EP - 252

JO - Journal of Quality in Maintenance Engineering

JF - Journal of Quality in Maintenance Engineering

IS - 1

ER -