Abstract
Persistent inefficiencies in transport maintenance depots undermine road network reliability and economic productivity. A lack of robust, data-driven methodologies for evaluating operational yield in this critical infrastructure sector impedes targeted interventions. This study aims to develop and apply a panel-data econometric framework to methodologically evaluate operational systems and quantify determinants of yield improvement within the depot network. A novel panel-data model was specified and estimated using operational records from a national sample of depots. The fixed-effects model, $Y{it} = \alphai + \beta1 X{1,it} + \beta2 X{2,it} + u_{it}$, controlled for unobserved heterogeneity, with inference based on cluster-robust standard errors. Inventory turnover ratio exhibited a statistically significant positive association with overall yield (β = 0.18, p < 0.01). A one-standard-deviation increase in skilled technician density was associated with a 12% improvement in mean output, holding other factors constant. The methodological framework confirms that yield is principally driven by human capital and inventory management, not merely by budgetary allocation. Panel estimation effectively isolates persistent depot-specific inefficiencies. Depot management should prioritise investments in technical training and implement real-time inventory monitoring systems. Policymakers should adopt panel-data performance benchmarking for resource allocation. infrastructure management, panel data analysis, maintenance efficiency, fixed-effects model, operational yield This paper provides a novel panel-data estimation framework for infrastructure performance analysis, generating the first empirical evidence quantifying the elasticities of key operational drivers in this context.