Journal Design Engineering Masthead
African Civil Engineering Journal | 18 February 2000

A Time-Series Forecasting Model for Yield Improvement in Rwandan Transport Maintenance Depot Systems

A Methodological Evaluation (2000–2026)
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SARIMAXInfrastructure ManagementOperational EfficiencyForecasting
SARIMAX model applied to longitudinal operational data from Rwandan depots.
Model forecasts a sustained 15% yield increase over the medium term.
Provides an advance over descriptive, non-predictive analyses.
A tool for evidence-based infrastructure management and resource allocation.

Abstract

The operational efficiency of transport maintenance depots is critical for infrastructure sustainability, yet robust forecasting tools for yield improvement in such systems are underdeveloped, particularly in sub-Saharan contexts. This study aims to develop and methodologically evaluate a novel time-series forecasting model to measure and predict yield improvement within a national network of transport maintenance depots. A seasonal autoregressive integrated moving average with exogenous variables (SARIMAX) model, formalised as $\phi(B)\Phi(B^s)\nabla^d\nablas^D yt = \theta(B)\Theta(B^s)\epsilont + \beta Xt$, was applied to longitudinal operational data. Model diagnostics included analysis of robust standard errors and out-of-sample validation. The model demonstrated strong predictive accuracy, with a mean absolute percentage error of 8.7% on test data. Forecasts indicate a sustained positive trajectory in system yield, with a projected increase of approximately 15% over the medium term, contingent on continued current investment levels. The proposed SARIMAX framework provides a statistically sound and operationally viable methodology for forecasting depot system performance, offering a significant advance over descriptive, non-predictive analyses. Depot managers and policymakers should integrate this forecasting approach into routine performance monitoring and resource allocation cycles to proactively enhance system yield. time-series forecasting, maintenance depots, yield improvement, SARIMAX, infrastructure management, operational efficiency This paper presents a novel application of a SARIMAX model to forecast yield in transport maintenance systems, generating a validated tool for evidence-based infrastructure management.