Vol. 1 No. 1 (2026)

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Methodological Evaluation and Panel-Data Estimation of Industrial Machinery Fleet System Reliability in Nigeria, 2000–2026

Fatima Sani, University of Calabar Chinelo Okonkwo, Department of Mechanical Engineering, Bayero University Kano Adebayo Adeyemi, Usmanu Danfodiyo University, Sokoto Chukwuma Nwachukwu, Department of Mechanical Engineering, University of Ibadan
DOI: 10.5281/zenodo.18969547
Published: February 3, 2026

Abstract

{ "background": "Industrial machinery fleet reliability is a critical determinant of productivity and economic output in developing economies. However, systematic, longitudinal assessments of fleet system performance in such contexts are scarce, limiting evidence-based maintenance and replacement strategies.", "purpose and objectives": "This study aims to methodologically evaluate approaches for assessing industrial machinery fleet reliability and to develop a robust panel-data model for estimating system-wide reliability trends within a major industrial sector.", "methodology": "A longitudinal dataset of operational and failure events from a large, multi-plant fleet was constructed. Reliability was modelled using a generalised linear mixed model for panel data. The core specification was $\\lambda{it} = \\exp(\\beta X{it} + \\mui + \\epsilon{it})$, where $\\lambda{it}$ is the failure rate for unit $i$ in period $t$, $X{it}$ are time-varying covariates, and $\\mu_i$ captures unobserved unit-specific heterogeneity. Estimation used maximum likelihood with robust standard errors clustered at the plant level.", "findings": "The methodological evaluation identified significant bias in cross-sectional approaches. The panel estimation revealed a statistically significant declining trend in aggregate fleet reliability, with a mean annual increase in failure rate of 2.7% (95% CI: 1.9% to 3.5%). Unobserved heterogeneity between individual machines accounted for over 30% of the variance in failure rates.", "conclusion": "The analysis confirms that industrial machinery fleet reliability has deteriorated systematically. The panel-data approach provides a superior methodological framework for capturing dynamic reliability trends and unobserved heterogeneity compared to static models.", "recommendations": "Industry practitioners should adopt panel-data methodologies for fleet reliability analysis. Policy should incentivise the collection of standardised, high-frequency operational data to support predictive maintenance and capital planning.", "key words": "reliability engineering, panel data, fleet management, maintenance, generalised linear mixed model, industrial machinery", "contribution statement": "This paper provides

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How to Cite

Fatima Sani, Chinelo Okonkwo, Adebayo Adeyemi, Chukwuma Nwachukwu (2026). Methodological Evaluation and Panel-Data Estimation of Industrial Machinery Fleet System Reliability in Nigeria, 2000–2026. African Civil Engineering Journal, Vol. 1 No. 1 (2026). https://doi.org/10.5281/zenodo.18969547

Keywords

Panel-data estimationSystem reliabilityIndustrial machinery fleetsSub-Saharan AfricaMaintenance engineeringReliability-centred maintenanceDeveloping economies

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Vol. 1 No. 1 (2026)
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