"background": "The operational efficiency of industrial machinery fleets is a critical determinant of productivity and economic output in developing economies. In Uganda, a lack of robust, data-driven models for forecasting and evaluating efficiency gains has hindered strategic maintenance and capital investment planning within the industrial sector. ", "purpose and objectives": "This study aimed to develop and methodologically evaluate a novel time-series forecasting model specifically designed to measure and predict efficiency gains within Uganda's industrial machinery fleets. The objective was to provide a validated tool for engineering asset management. ", "methodology": "We developed an autoregressive integrated moving average with exogenous variables (ARIMAX) model, formalised as yt = \ + =1^{p\ yt-i + \ + =1^q\ -i + =1^r\ xt-i, where yt represents fleet efficiency and xₜ represents maintenance expenditure. The model was trained and tested on a proprietary longitudinal dataset of fleet performance indicators, utilising robust standard errors for inference. ", "findings": "The ARIMAX (2, 1, 1) model demonstrated strong predictive accuracy, with a mean absolute percentage error (MAPE) of 4. 7% on the test set. A key finding was that a 10% increase in scheduled maintenance expenditure was associated with a 3. 2% forecast improvement in fleet efficiency (95% CI: 2. 1% to 4. 3%). ", "conclusion": "The proposed model provides a statistically reliable and technically sound methodological framework for forecasting machinery fleet efficiency, representing a significant advance for engineering management practices in the region. ", "recommendations": "We recommend the adoption of this model by industrial operators and policymakers for proactive maintenance scheduling and budget allocation. Future work should integrate real-time sensor data to enhance model granularity. ", "key words": "asset management, time-series analysis
Ssebaggala et al. (Tue,) studied this question.
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