Physicochemical-Neural Fusion for Semi-Closed-Circuit Respiratory Autonomy in Extreme Environments
Phillip Kingston, Nicholas Johnston

TL;DR
This paper presents a physicochemical and AI-controlled semi-closed-circuit breathing system for extreme environments, demonstrating significant endurance improvements in simulations.
Contribution
It develops a novel physicochemical model combined with an advanced AI control architecture for optimized respiratory autonomy.
Findings
Achieved 18-34% endurance improvement over PID baselines in simulations.
Developed an 18-state nonlinear model using only practical sensors.
Integrated MPC, RL, and safety filters for robust control.
Abstract
This paper introduces Galactic Bioware's Life Support System, a semi-closed-circuit breathing apparatus designed for integration into a positive-pressure firefighting suit and governed by an AI control system. The breathing loop incorporates a soda lime CO2 scrubber, a silica gel dehumidifier, and pure O2 replenishment with finite consumables. One-way exhaust valves maintain positive pressure while creating a semi-closed system in which outward venting gradually depletes the gas inventory. Part I develops the physicochemical foundations from first principles, including state-consistent thermochemistry, stoichiometric capacity limits, adsorption isotherms, and oxygen-management constraints arising from both fire safety and toxicity. Part II introduces an AI control architecture that fuses three sensor tiers, external environmental sensing, internal suit atmosphere sensing (with…
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