Abstract
{ "background": "The sustainable management of industrial machinery fleets is critical for national infrastructure development, yet a persistent gap exists in robust, data-driven methodologies for forecasting long-term yield in emerging economies. Existing approaches often lack the temporal granularity and contextual adaptation required for accurate planning in such settings.", "purpose and objectives": "This article presents a novel methodological framework for time-series forecasting of industrial machinery fleet yield. Its primary objective is to provide a replicable, statistically rigorous model for measuring and projecting yield improvement, thereby supporting strategic asset management and capital investment decisions.", "methodology": "The methodology integrates an autoregressive integrated moving average (ARIMA) model with exogenous variables (ARIMAX) to account for operational and economic factors. The core forecasting equation is $Yt = \\mu + \\sum{i=1}^{p}\\phii Y{t-i} + \\sum{j=1}^{q}\\thetaj \\epsilon{t-j} + \\sum{k=1}^{m}\\betak X{k,t} + \\epsilont$, where $Yt$ is the yield metric. Model parameters are estimated using maximum likelihood, with robust standard errors employed to ensure inference is valid under heteroskedasticity.", "findings": "As a methodology article, this paper presents no empirical results. However, application of the framework to a simulated dataset demonstrates its capability to generate forecasts with a 95% prediction interval. A key illustrative finding from this simulation is a projected positive, non-linear trend in normalised yield over the forecast horizon.", "conclusion": "The proposed ARIMAX-based framework provides a technically sound and adaptable methodology for forecasting machinery fleet performance. It addresses the specific need for contextualised, quantitative tools in industrial asset management within developing economies.", "recommendations": "Practitioners should calibrate the model with high-frequency operational data and regularly update exogenous variable selection to reflect local economic conditions. Further research should validate the framework with longitudinal data from diverse industrial sectors.", "key words": "asset