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SDB Demand-Controlled Ventilation: Preliminary Experiments Demand-Controlled Ventilation: Preliminary Experiments Jay Taneja Software Defined Buildings Kickoff January 11 th , 2013

Demand-Controlled Ventilation: Preliminary Experiments

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Demand-Controlled Ventilation: Preliminary Experiments. Demand-Controlled Ventilation: Preliminary Experiments. Jay Taneja Software Defined Buildings Kickoff January 11 th , 2013. Motivation. SDBs can improve comfort Indoor environmental quality is multifaceted - PowerPoint PPT Presentation

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Page 1: Demand-Controlled Ventilation: Preliminary Experiments

SDB

Demand-Controlled Ventilation: Preliminary

Experiments

Demand-Controlled Ventilation: Preliminary

ExperimentsJay Taneja

Software Defined Buildings KickoffJanuary 11th, 2013

Page 2: Demand-Controlled Ventilation: Preliminary Experiments

SDB Motivation

• SDBs can improve comfort• Indoor environmental quality is multifaceted• Buildings are often overventilated• Demand-controlled ventilation (DCV)

• DCV benefits from BOSS Architecture– Incorporates non-BMS sensors and data– Transactions ensure safe system state– Communication throughout buildings

Page 3: Demand-Controlled Ventilation: Preliminary Experiments

SDB DCV: Standards and Sensors

• ASHRAE 62.1 and CA Title 24

• CO2 sensors

• Works best in enclosed spaces

• Target max of 800 ppm CO2

Page 4: Demand-Controlled Ventilation: Preliminary Experiments

SDB Baseline Ventilation

Page 5: Demand-Controlled Ventilation: Preliminary Experiments

SDB Extreme Efficiency Description

• Preliminary control effort to limit ventilation as much as possible

• Combines an occupancy model, outside air damper control sequence, and significant reductions in default airflow levels

Page 6: Demand-Controlled Ventilation: Preliminary Experiments

SDB Extreme Efficiency Ventilation

Page 7: Demand-Controlled Ventilation: Preliminary Experiments

SDB DCV Description

• Incorporate Google Calendar data

• Proportional control (airflow reflects CO2)• Prior to meetings: Increase airflow• During meetings: Modulate minimum to

reflect CO2 concentration• Not during meetings: Only respond if CO2

approaches 800 ppm threshold

Page 8: Demand-Controlled Ventilation: Preliminary Experiments

SDB Demand-Controlled Ventilation

Page 9: Demand-Controlled Ventilation: Preliminary Experiments

SDB Results

Ventilation Strategy Avg. Airflow Avg. Ventilation Power

Time > 800 ppm

Baseline 222.2 cfm 0.1765 kW 6h 3m (3.6%)

Extreme Efficiency 79.8 cfm 0.0616 kW 10h 57m (6.5%)

DCV 40.2 cfm 0.0272 kW 17m (0.2%)

• Caveats– Not all weeks created equal– Could increase airflow to reduce violations

DCV offers a combination of energy savings and increased occupant comfort at minimal cost.

Page 10: Demand-Controlled Ventilation: Preliminary Experiments

SDB Next Steps

• Expansion in SDH– 7/12 rooms with calendar data have sensors– DCF in cleanroom using motion sensors

• Grid potential as a supply-following load– Minimal ability to shed (positive slack)– Substantial ability to sink (negative slack)– Incorporate MPC for balancing objectives

• Integrate with BAS – write once, run anywhere

Page 11: Demand-Controlled Ventilation: Preliminary Experiments

SDB Questions?

Jay Taneja<[email protected]>