neural networks research group
areas
people
projects
demos
publications
software/data
Optimizing Chlorination in Water Distribution Systems via Surrogate-assisted Neuroevolution (2026)
Rivaaj Monsia
,
Daniel Young
,
Olivier Francon
,
Risto Miikkulainen
Ensuring the microbiological safety of large, heterogeneous water distribution systems (WDS) typically requires managing appropriate levels of disinfectant residuals including chlorine. WDS include complex fluid interactions that are nonlinear and noisy, making such maintenance a challenging problem for traditional control algorithms. This paper proposes an evolutionary framework to this problem based on neuroevolution, multi-objective optimization, and surrogate modeling. Neural networks were evolved with NEAT to inject chlorine at strategic locations in the distribution network at select times. NSGA-II was employed to optimize four objectives: minimizing the total amount of chlorine injected, keeping chlorine concentrations homogeneous across the network, ensuring that maximum concentrations did not exceed safe bounds, and distributing the injections regularly over time. Each network was evaluated against a surrogate model, i.e. a neural network trained to emulate EPANET, an industry-level hydraulic WDS simulator that is accurate but infeasible in terms of computational cost to support machine learning. The evolved controllers produced a diverse range of Pareto-optimal policies that could be implemented in practice, outperforming standard reinforcement learning methods such as PPO. The results thus suggest a pathway toward improving urban water systems, and highlight the potential of using evolution with surrogate modeling to optimize complex real-world systems.
Citation:
arxiv:2602.07299
, 2026.
Bibtex:
@article{monsia:gecco26, title={Optimizing Chlorination in Water Distribution Systems via Surrogate-assisted Neuroevolution}, author={Rivaaj Monsia and Daniel Young and Olivier Francon and Risto Miikkulainen}, journal={arxiv:2602.07299}, month={ }, url="http://nn.cs.utexas.edu/?monsia:arxiv26", year={2026} }
People
Olivier Francon
Collaborator
olivier francon [at] cognizant com
Risto Miikkulainen
Faculty
risto [at] cs utexas edu
Rivaaj Monsia
Undergraduate Student
rivaaj [at] utexas edu
Daniel Young
Ph.D. Student
danyoung [at] utexas edu
Areas of Interest
Evolutionary Computation
Neuroevolution
Multiobjective Optimization
Control