"background": "Municipal infrastructure asset management in Nigeria faces systemic challenges, including a lack of robust, data-driven methodologies for forecasting performance and yield. Existing approaches often rely on static assessments, failing to account for temporal dynamics and degradation patterns, which impedes effective long-term planning and investment. ", "purpose and objectives": "This paper aims to methodologically evaluate current municipal infrastructure asset systems and to develop a predictive time-series forecasting model for measuring and projecting asset yield improvement within the engineering domain. ", "methodology": "A methodological evaluation of asset management frameworks was conducted, followed by the development of an autoregressive integrated moving average (ARIMA) model for yield forecasting. The model, specified as Yt = \ + \1 Y{t-1 + \1 -1 + \, was calibrated using historical national infrastructure performance data. Forecast robustness was assessed using rolling-origin evaluation. ", "findings": "The methodological evaluation identified critical gaps in data standardisation and lifecycle costing. The ARIMA (1, 1, 1) model forecasts a moderate but sustained improvement in aggregate municipal infrastructure yield, with a projected increase of approximately 18% over the forecast horizon. The 95% confidence interval for the final forecast period indicates the estimate's precision is within ±3. 2 percentage points. ", "conclusion": "The developed time-series model provides a statistically sound tool for forecasting infrastructure yield, offering a significant advancement over descriptive, non-predictive methods currently prevalent. The methodological critique underscores the need for systemic reform in asset management practices. ", "recommendations": "Adoption of the proposed forecasting model by municipal authorities for medium-term planning is recommended. Furthermore, institutional capacity for continuous data collection and model updating must be strengthened to ensure forecast relevance. ", "key words": "Infrastructure asset management, time-series forecasting, ARIMA modelling, municipal engineering, asset yield, Nigeria", "contribution statement": "This paper presents a novel application of ARIMA modelling to forecast municipal
Chinweike Okonkwo (Thu,) studied this question.
Synapse has enriched 5 closely related papers on similar clinical questions. Consider them for comparative context: