Abstract
{ "background": "The cost-effectiveness of industrial machinery fleets is a critical determinant of productivity and competitiveness in developing economies. In Kenya, a lack of longitudinal, fleet-level data and robust analytical frameworks has hindered evidence-based asset management and policy formulation.", "purpose and objectives": "This study aims to methodologically evaluate the determinants of cost-effectiveness within Kenya's industrial machinery fleets and to develop a panel-data estimation model for quantifying these relationships over time.", "methodology": "A novel unbalanced panel dataset was constructed from maintenance logs, operational records, and procurement audits for a sample of 127 fleets. Cost-effectiveness was modelled as a function of utilisation, age, and maintenance intensity using a two-way fixed effects estimator: $CE{it} = \\alpha + \\beta1 U{it} + \\beta2 A{it} + \\beta3 M{it} + \\mui + \\lambdat + \\epsilon{it}$, where $CE$ is a composite metric of availability and cost per operational hour. Inference was based on cluster-robust standard errors.", "findings": "The analysis indicates a significant non-linear relationship between machinery age and cost-effectiveness, with a pronounced negative inflection point occurring after approximately seven years of service. A one-year increase in age beyond this threshold is associated with a 12.3% decrease in cost-effectiveness (95% CI: 9.8% to 14.7%).", "conclusion": "The methodological framework confirms that strategic fleet renewal cycles and targeted maintenance interventions are pivotal for sustaining cost-effectiveness in Kenya's industrial sector.", "recommendations": "Fleet managers should adopt panel-data analytics for lifecycle costing. Policymakers are advised to consider fiscal incentives for timely fleet modernisation, focusing on assets exceeding the identified age threshold.", "key words": "asset management, panel data, fixed effects, lifecycle costing, maintenance optimisation, industrial engineering", "contribution statement": "This paper provides the first application of a longitudinal panel-data model to fleet