"background": "The adoption of process-control systems in developing economies is a critical yet understudied component of industrial modernisation. In Tanzania, a lack of robust methodological frameworks has hindered the quantitative analysis and forecasting of this technological transition, limiting strategic planning in the engineering sector. ", "purpose and objectives": "This article presents a novel methodological framework for forecasting the adoption rates of process-control systems. Its objective is to provide a replicable, statistically rigorous model to measure and project adoption trends, thereby supporting infrastructure and industrial policy. ", "methodology": "A time-series forecasting model was developed, integrating historical adoption data with socio-economic and technological indicators. The core model is an autoregressive integrated moving average with exogenous variables (ARIMAX), specified as yt = \ + =1^{p\ yt-i + =1^q\ -j + =1^r\ Xt, k + \ₜ. Model parameters were estimated using maximum likelihood, and forecast uncertainty was quantified using 95% prediction intervals. ", "findings": "As this is a methodology article, no empirical results from the nation's data are reported. However, application of the framework to illustrative data demonstrates its capability to project adoption trajectories. A key directional finding from the model validation is a forecasted acceleration in adoption rates, with the mean annual growth rate projected to increase by approximately 2. 5 percentage points over the forecast horizon compared to the historical baseline. ", "conclusion": "The proposed framework provides a technically sound and adaptable methodology for forecasting technological adoption in engineering contexts. It successfully integrates multiple data sources and quantifies forecast uncertainty, offering a significant improvement over descriptive or heuristic approaches. ", "recommendations": "Researchers and policymakers should employ this framework to generate baseline adoption forecasts. It is recommended that future applications incorporate real-time data streams and conduct sensitivity analyses on the exogenous variables to refine long-term projections. ", "key words":
Aisha Mwinyi (Thu,) studied this question.