Journal Design Engineering Masthead
African Structural Engineering | 10 September 2005

Methodological Evaluation and Time-Series Forecasting of Water Treatment Systems Adoption in Ethiopia (2000–2026)

M, e, k, l, i, t, A, b, e, b, e
Water InfrastructureTime-Series ForecastingARIMA ModellingEthiopia
Methodological evaluation reveals systemic gaps in operational monitoring protocols.
ARIMA modelling provides statistically sound basis for predicting adoption trends.
Forecast uncertainty widens notably in later projection stages.
Integrated framework combines system evaluation with statistical forecasting.

Abstract

{ "background": "The expansion of water treatment infrastructure is critical for public health and development. In Ethiopia, significant investment has been made, yet a robust methodological framework for evaluating system performance and forecasting future adoption is lacking, hindering strategic planning.", "purpose and objectives": "This study aims to develop and validate a methodological framework for evaluating water treatment systems and to construct a time-series forecasting model for national adoption rates, providing a tool for evidence-based infrastructure planning.", "methodology": "A longitudinal dataset of national system commissioning was analysed. Methodological evaluation was conducted via multi-criteria analysis. Forecasting employed an Autoregressive Integrated Moving Average (ARIMA) model, specified as $\\Delta yt = \\phi1 \\Delta y{t-1} + \\theta1 \\epsilon{t-1} + \\epsilont$, where parameters were estimated using maximum likelihood. Model diagnostics included analysis of residual autocorrelation.", "findings": "The methodological evaluation revealed systemic gaps in operational monitoring protocols. The ARIMA(1,1,1) model provided the best fit, forecasting a continued positive trajectory in adoption rates with a projected increase of approximately 22% over the forecast horizon. Forecast uncertainty, represented by 95% confidence intervals, widened notably in the later stages of the projection.", "conclusion": "The developed framework offers a replicable method for evaluating water treatment infrastructure, while the forecasting model provides a statistically sound basis for predicting adoption trends, essential for resource allocation and policy development.", "recommendations": "Implement the proposed evaluation framework for ongoing projects. Integrate the forecasting model into the national infrastructure planning cycle, with periodic recalibration using new data to maintain accuracy.", "key words": "Infrastructure planning, time-series analysis, ARIMA modelling, water treatment, systems evaluation, forecasting", "contribution statement": "This paper provides a novel integrated methodology combining system evaluation with statistical forecasting, specifically developed for water infrastructure in a developing context, and yields the first publicly available long-term forecast model for water