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Summary: Automated Demand Response in Large Facilities

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Presentation on theme: "Summary: Automated Demand Response in Large Facilities"— Presentation transcript:

1 Summary: Automated Demand Response in Large Facilities
Mary Ann Piette, Dave Watson, Naoya Motegi, Building Technologies Dept., LBNL Osman Sezgen, Energy Analysis Dept., LBNL Christine Shockman, Shockman Consulting Ron Hofmann, Project Manager Sponsored by the California Energy Commission January 23, 2004

2 Presentation Overview
Goal & Motivation Methodology Results Summary and Next Steps

3 Goal, Motivation, & Method
Primary Goal Evaluate the technological performance of automated DR hardware and software systems in large buildings Motivations for Demand Response Improve grid reliability Flatter system load shape Lower wholesale and retail electricity costs Method Provide fictitious dynamic XML-based electric prices with 15-minute notification Program building EMCS & EIS to receive signals & respond Document building shed using EMCS & metered data

4 Methodology: Energy Information Systems
Utility Energy Information Systems (Utility EIS) Demand Response Systems (DRS) Enterprise Energy Management (EEM) Web-base Energy Management & Control System (Web-EMCS) Energy Information Systems (EIS) Utility EIS EEM DRS Monitoring and Control Demand Response Web-EMCS

5 Methodology: Recruited Sites
Albertsons – East 9th St. Oakland Engage/eLutions Bank of America – Concord Technology Center Webgen General Services Admin - Oakland Fed. Building BACnet Reader Roche Palo Alto – Office and Cafeteria Tridium Univ. of Calif. Santa Barbara – Library Itron

6 Methodology: Price Server System Architecture from Infotility
15-Minute Price Participants Database Prices Web Services Web Methods Calls (HTTPS) Prices stored to the database Web Server Draw infotility boundard Monitoring data transfer to participants LBNL enters prices LBNL

7 Results: Summary of DR Strategies
Change case lights if incorrect

8 Results: Day-2 Test, November 19 Bottom Up Savings Estimate

9 Results: Day-2 Test UCSB Roche GSA Oakland BofA Albertsons
Whole Building Power [kW] GSA Oakland BofA Albertsons

10 Results: Albertsons Saving Estimation Method
Sales Lightings - Activation: $0.30/kW Baseline - Previous days average Anti-Sweat Door Heaters - Activation: $0.75/kW Baseline Previous 15-minute load DR Savings The DR savings were sum of sales lighting and A/S saving. Just added onto the actual WBP. Whole Building Power [kW]

11 Results: Albertsons Sales Lightings, Anti-Sweat Heater Sales Lightings
Power [kW] Anti-Sweat Heater

12 Results: GSA Oakland Component Analysis: Fans Regression Model
Power [kW] Actual

13 Results: 3 Dimensions of DR Capability
Automation Reduces Costs of DR Response time Cost of initiating & running DR event Customer constraints that involve the timing, pattern and frequency of DR Automated DR facilitates participation in more ISO markets Day-ahead electricity Emergency Ancillary services Balancing markets

14 Summary & Next Steps Findings (forthcoming report: dr.lbl.gov)
Demonstrated feasibility of fully automated shedding XML and related technology effective Minimal shedding during initial test/Minimal loss of service Next Steps: Performance of Current Test Sites In hot weather Participation in DR programs Annual benefits at each site & through enterprise Beyond Test Sites What other strategies offer kW savings & minimal impact? How could automation be scaled up? What are costs for such technology? What is statewide savings potential? What is value of fully automated vs manual DR?

15 Future Directions: Dynamic Building Technology
Underlying technology to support DR Shell & Lights: Dimmable ballasts & Electro-chromic windows HVAC: Real-time-models for optimization and diagnostics System: Connectivity to grid & cost minimization models


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