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COST-EFFECTIVE RETROFIT PLANNING FOR AGEING FLUID PIPELINES: A SIMULATION-DRIVEN STOCHASTIC PROGRAMMING MODEL

By October 28, 2025January 17th, 2026Vol. 11.2

by Fengyang Yuan and V. Ramani Bai

ABSTRACT

Ageing Heating, Ventilation, and Air Conditioning (HVAC) fluid pipeline systems pose significant operational and  economic  challenges  due  to  degradation,  energy  inefficiency, and  high  retrofit  costs.  This  study  aims  to develop  a  simulation-driven,  machine  learning-based  framework  to  accurately  predict  retrofit  costs  and support cost-effective decision-making for ageing pipeline networks. A quantitative research methodology was adopted,  where  synthetic  data  were  generated  via  stochastic  simulation  using  Monte  Carlo  techniques  in Python (NumPy and Pandas). Three supervised machine learning models, Random Forest, eXtreme Gradient Boosting (XGBoost), and Artificial Neural Network (ANN), were implemented and evaluated using RMSE, R², and MAPE as performance metrics. The results showed that XGBoost achieved the best performance with an RMSE  of  221.19,  R² of  0.929,  and  MAPE  of  5.90%,  followed  closely  by  Random  Forest,  while  ANN underperformed with an RMSE of 335.03. XGBoost and Random Forest are closely aligned with actual retrofit costs, indicating strong predictive accuracy. The study concludes that ensemble models trained on simulation-derived data offer a robust solution for proactive retrofit planning. The findings have significant implications for enhancing infrastructure resilience and optimising maintenance investment. However, the study is limited by the use of synthetic data and recommends future  work with real-world datasets and expanded modelling techniques for multi-objective predictions.

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