Explainable Wastewater Digital Twins: Adaptive Context-Conditioned Structured Simulators with Self-Falsifying Decision Support
Gary Simethy, Daniel Ortiz Arroyo, Petar Durdevic

TL;DR
This paper introduces an explainable, adaptive digital twin for wastewater treatment that enhances safety and efficiency by providing interpretable simulations and self-falsifying decision support with statistical guarantees.
Contribution
It presents a novel context-conditioned structured surrogate model and a self-falsifying decision rule for wastewater process control, validated on real and benchmark data.
Findings
The structured surrogate achieves less than 1% RMSE compared to black-box models.
The adaptive reopen rule reduces regret by 43.6% and prevents unsafe actions.
Temporal witnesses significantly reduce false-safe N2O approvals.
Abstract
Operators of safety-critical industrial processes increasingly rely on digital twins to screen control interventions, but such simulators rarely carry certified safety guarantees. Wastewater treatment plants exemplify the gap: operators face a daily safety-efficiency trade-off where aerating too little risks effluent violations and nitrous-oxide (N2O) spikes, and aerating too much wastes energy. We develop an explainable digital twin for aeration and dosing setpoints. CCSS-IX, the simulator, is a bank of interpretable locally linear state-space "experts" adaptively mixed by a context-aware gating network, building on a continuous-time regime-switching scaffold. A runtime decision layer applies conformal risk control to abstain, reopen, or return a falsifying temporal witness for any operator-proposed action that cannot be statistically certified. The artificial-intelligence contribution…
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