{ "background": "Industrial machinery fleets represent a significant capital and operational expenditure for Kenya's manufacturing and construction sectors. Current maintenance and replacement strategies are often reactive, leading to suboptimal cost-effectiveness and downtime. A rigorous, data-driven forecasting methodology is required to improve asset management. ", "purpose and objectives": "This study aims to develop and evaluate a time-series forecasting model specifically designed to predict the operational costs and failure rates of industrial machinery fleets, with the objective of establishing a predictive framework for cost-effective maintenance scheduling and capital planning. ", "methodology": "A methodological evaluation of fleet management data from multiple industrial sites was conducted. A seasonal autoregressive integrated moving average (SARIMA) model, specified as \ (B) \ (Bˢ) \ᵈ\Ds yt = \ (B) \ (Bˢ) \ₜ, was developed and validated using historical time-series data on maintenance costs, fuel consumption, and utilisation hours. Model performance was assessed using root mean square error (RMSE) and mean absolute percentage error (MAPE). ", "findings": "The SARIMA (1, 1, 1) (0, 1, 1) 12 model provided the most accurate forecasts, with a MAPE of 8. 7% for monthly maintenance costs. Forecasts indicated a strong seasonal pattern, with costs peaking in the quarter following long rains, correlating with a 22% increase in corrective maintenance interventions. Parameter estimates were significant at the 95% confidence level. ", "conclusion": "The developed time-series model offers a robust methodological tool for predicting machinery fleet costs, enabling a shift from reactive to proactive management. Its accuracy demonstrates the viability of data-driven forecasting in this context. ", "recommendations": "Industrial operators should implement similar forecasting models to inform predictive maintenance programmes. Further research should integrate real-time sensor data to enhance model granularity and predictive power. ", "key words": "asset management, predictive maintenance, SARIMA modelling, operational research, capital expenditure", "contribution
Mwangi et al. (Tue,) studied this question.