Indoor air conditions
Particles, dust, VOCs, carbon dioxide, temperature, humidity, ventilation, and filtration proxies.
Room model
IAQng organizes room health risk through four operating lenses: air, people, service, and context. The model is not a diagnosis. It is a way to explain what changed in a room and help a facility team decide what to do next.
The IAQng model
Indoor air quality gives facilities a necessary vocabulary: particulate matter, VOCs, carbon dioxide, humidity, temperature, ventilation, filtration, and source control. But the same reading can mean different things depending on the room, the people in it, what happened there, and what is happening around the building. 1
The model keeps indoor air signals in view, then adds use, service history, and external context so the next action is explainable.
Particles, dust, VOCs, carbon dioxide, temperature, humidity, ventilation, and filtration proxies.
People count, density, dwell time, activity, talking, respiratory activity, and utilization.
Utilization since last cleaned, verification checks, service records, occupant reports, and recurring issues.
Square footage, room type, capacity, layout, outdoor AQI, weather, wastewater trends, and local signals.
Prioritize cleaning, inspection, filtration, ventilation, targeted service, or continued monitoring.
From context to action
IAQng should not stop at a score. The model is useful only when it helps teams detect what changed, decide what matters, act, verify the result, and learn.
Room context
People release particles when they breathe, talk, cough, and sneeze. Smaller aerosols can stay suspended, build up, and travel with the room's airflow. 7 8 9
Outdoor AQI, wildfire smoke, heat, humidity, wastewater trends, and local respiratory activity can change the posture of the room without being controlled by the room itself. 5 6
Operating loop
Watch room conditions, usage, behavior, service history, and drift.
Normalize the reading to the room, its purpose, and outside signals.
Find where intervention has the highest practical value.
Route cleaning, inspection, filtration, ventilation, or reset work.
Document what changed and whether the driver improved.
Turn every event into better thresholds and better operations.
Applied example
A waiting room is not just square footage. It is people arriving in waves, sitting close together, talking, coughing, waiting, leaving residue, and changing the room's air and service posture over time.
Try the room risk modelDensity and dwell time make the same air reading mean more during peak use.
CO2, particles, VOCs, humidity, and ventilation proxies show whether the room is returning to baseline.
Service records, inspections, occupant reports, and issue persistence change the next best action.
Smoke, heat, outdoor air quality, wastewater trends, and local illness signals can change room strategy.
Model assumptions
IAQng should be honest about what the model knows and what it is still asking the field to improve. The current model borrows its shape from established airborne-risk, ventilation, and filtration frameworks, but the coefficients are still visible assumptions that should improve with evidence.
Wells-Riley style models treat airborne infection risk as a dose problem shaped by source strength, exposure time, breathing, room mixing, and removal. That is why the model accelerates when people, activity, viral context, and weak clean air combine.
Rudnick and Milton's CO2/rebreathed-air work points toward the next version: replacing rough prevalence and occupancy proxies with room-level evidence about shared air.
ASHRAE 241, CDC/NIOSH ventilation guidance, EPA IAQ guidance, and CADR-style thinking all point in the same direction: equivalent clean air, source control, filtration, and outdoor-air constraints have to be operational inputs.
The current slider-to-risk conversions are transparent starting assumptions, not validated coefficients. The point is to make them visible enough for researchers, engineers, operators, and field data to improve them.
Model boundaries
The model describes room conditions and operating context, not individual health status.
Cleaning, inspection, and verification matter, but they do not replace ventilation, filtration, and exposure management.
Wastewater, outdoor air, heat, smoke, and local illness trends should change posture without pretending to predict individual risk.
Next step
The room model explains the four lenses. The risk model and intervention planner make the assumptions visible enough to compare drivers, constraints, and practical next moves.
Try the risk model Plan interventionsSources