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High Performance Buildings Research & Implementation Center (HiPer BRIC)

High Performance Buildings Research & Implementation Center (HiPer BRIC). Model-Based Systems Engineering for High Performance Building Simulation & Design. Michael Wetter (LBNL) Clas A. Jacobson (UTRC) Scott A. Bortoff (UTRC) Alberto Sangiovanni Vincentelli (UC Berkeley).

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High Performance Buildings Research & Implementation Center (HiPer BRIC)

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  1. High Performance Buildings Research & Implementation Center (HiPer BRIC) Model-Based Systems Engineering for High Performance Building Simulation & Design Michael Wetter (LBNL) Clas A. Jacobson (UTRC) Scott A. Bortoff (UTRC) Alberto Sangiovanni Vincentelli (UC Berkeley) December 21, 2007

  2. NZEB Challenges: Design & Operation * * New Construction: 4-5X Reduction Retrofits: 30-60% Reduction Challenges: Managing System Interactions Robust Optimal Controls Modeling / Actual Performance Gaps Energy Cost Savings Loop Gain Reduction Sensitivity Increasing

  3. Performance & Complexity Arise from Interactions 50-Story Hotel Thermodynamic Model and Validation • 30% energy increase over benchmark • Poor comfort (100F+ at top floors) Airflow Model Skylight Problems Caused by interactions among • Envelope & Windows • Thermal Mass • Airflow • HVAC Controls • Smoke Controls Ineffective Operational Mitigation Control Strategy Causes Loss of Control

  4. Enabling Technologies Challenges Enabling Technologies Managing System Interactions Object Oriented Encapsulated Modeling Concurrent Design Process Platform Based Design Robust Optimal Controls Model-Based Design Model Validation Data Assimilation with Inverse Models Maintaining Performance Diagnostics

  5. Platform-Based Design Constraints Propagation Performance Abstraction • Glassed Facade • Lightweight • Brick Office Envelope Glassed Facade • VAV • Radiant • … • VRF HVAC VAV • PI • Schedules • Optimizer Pressure Reset Controls PI Communications

  6. Object Oriented Modeling Common Analysis Platform Building + HVAC Executable Model Envelope & Zones HVACControls HIL Verification Hydronic System Control Fan Coil PI Control Software Generation Wall Anti-Wind Up Component Libraries // dT/dt computation cap[1]*der(T[1]) = surInt.Q_flow + q_flow[1]; Interaction  Common Platform Complexity  Encapsulation ASHRAE 140 Verfication

  7. Robust, Optimization Based Controls Peak Reduction Optimizing Algorithms Utility Rate Power Consumption v Power, Comfort, IAQ Measurements y T Dynamic Model Estimator Pre-cooling • Occupancy • Usage • Weather CO2 Target Pre-ventilating Optimizer Time 06 07 08 09 10 11 12 13 14 15 16 17 18 19 Robust Control Design & Implementation: Methods, Process, Tools Functional Design Modeling Realization Robustness Analysis

  8. Heterogeneous Sensors Data Assimilation by Inverse Modeling “We need to develop better benchmarking of buildings based on their actual energy use.” - Kent W. Peterson, ASHRAE President, Presidential Address, 2007. Building Modeling / Performance Gaps Performance Variables Disturbances Controls Measured Variables Disturbance Measurements Forward Model Schedules Certain Parameters Uncertain Parameters Virtual Submetering Calibration Inverse Model • Barriers • Common Data Formats • Immature Methodology • Software Tools • Quantify measurement • effectiveness • Identify Modeling Gaps • Validate Models Residuals

  9. Diagnostics Operational faults waste ~20% energy • HVAC – air distribution • Operations and control • Needs • System-Level FDD • Exploit Dynamics • Enablers • Dynamic Model Library • Remote Monitoring • Data Assimilation Methods & Tools • FDD Methods & Tools e.g. FACTS Power Load Tsp UTRC L-Building BMS • FDD Current State: • Components & Subsystems • Steady-State Vanderbilt FACTS WebCTRL UTRC Library

  10. Backup

  11. Linear Design Process Minimize Loads Equipment Sizing LEED Scoring Lifecycle Costing Schedules CHP Tool: Value Proposition Matlab: Post processing. eQuest: Energy modeling gbXML *.idf GBS: gbXML translation Revit: 3D CAD Model EcoTECT: Lighting analysis *.inp LEED: Scoring

  12. Example: Oberlin College “ZEB” Performance Gaps Actual Design Main Building Air Supply System • “All Electric Building” is second law inefficient. • Electric boiler feeds radiant system at 66°C, mixed with 49°C for radiant floor. • Improperly sized heat pumps caused comfort problems. • EB-2 sent heat to ground in early occupancy. Now off. • In first 2 operating years, not less source energy use than comparable building type. • More recently, 3-17% more efficient than similar buildings. Actual / predicted performance gaps Ineffective use of models. Inefficient Control Algorithms. Pump P1 runs continuously because no linked to control system.

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