big 10 & friends: data-driven buildings

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Don Hill System Operations Manager UMD Facility Performance Group Data-Driven Buildings Manage Your Energy Intelligently Drew DePriest Regional Sales Manager Automated Logic

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  • Don HillSystem Operations Manager

    UMD Facility Performance Group

    Data-Driven BuildingsManage Your Energy In te l l igent ly

    Drew DePriestRegional Sales Manager

    Automated Logic

  • Bursting with data

    Making better decisions

    Real world examples

  • Bursting with data

    Making better decisions

    Real world examples

  • Evolution of BAS

    Control

    Monitor HVAC control Physical I/O

    Equipment meter Dashboards Data from entire

    building

    Enterprise APIs FDD Data from cloud Analytics

    Meter Model & Prompt

    Model, Prompt, Respond

    Auto optimize DR Micro & macro Smart grid

  • Integration!

    integrationtwo-way exchange of data between BAS and some other data source

    BAS Data source

  • How to Speak BAS

  • Open Protocol

    1995: ASHRAE Standard 135

    2000: founding of whats now

    Many vendors capable

  • Data: Equipment

  • Seamless interface

  • Next step: Web appsAPIAPI

    BAS

  • Weather

    Demand Response, real-time pricing

    Enterprise systems

    Data & The Cloud

  • Example: Weather

  • Intelligent Buildings

    Elevators SecurityHVAC Fire

    Weather Utility Pricing

    BAS

  • Bursting with data

    Making better decisions

    Real world examples

  • Technology available

    BAS Data

    Analytics Dashboard Kiosk

  • Analytics

    Technical audience Proactive vs. reactive Finding patterns in data

    Drives: technical decisions

    Predictive Analytics

    Predictive Maintenance

  • Predictive Analytics

    Metering alone Model + Prompt

  • Predictive Analytics

    Trends Weather forecasts Alarm prioritization Energy benchmarks

  • Predictive Maintenance

    PM on Schedule PM on Usage

  • Predictive Maintenance

  • Automatic Work Orders

    BAS

    Failure!

  • Dashboards

    Financial/managerial audience Purely reactive Finding areas for investment

    Drives: business decisions

  • Dashboards in use

  • Dashboards in use

  • Kiosks

    Non-technical audience Marketing/educational tool Interactive = fun!

    Drives: behavioral decisions

  • Tenant energy use

    Direct & indirect impact 60-80 % total energy = tenants* Partnership

    *Source: ENERGY STAR

  • Behavioral impact

    Change habits Reduce consumption Lower costs

  • 1962 episode of Candid Camera

  • Meaning

    1,248 kWhDAILY ELECTRICAL USAGE

  • 1,248 kWh

    YOU

    1,248 kWh

    EVERYONE ELSE?

    Meaning

  • 1,248 kWh

    $

    Make it meaningful

  • Dashboards

  • Beyond the Kiosk

    Kiosk alone ineffective Behavior change is hard! Add programs

    Consumption competitions Data challenges Sustainability campaign

  • Bursting with data

    Making better decisions

    Real world examples

  • Analytics Example: Water Loss

    In two months, tower overflow resulted in $80,000 loss.Challenge:

    Make your metered data work for you.Solution:

  • Analytics Example: Water Loss

  • Dashboard Example: Plant Efficiency

    How do you select the best design for your campus?Challenge:

    Try them all, build a dashboard. Solution:

  • Dashboard Example: VSD Chillers

    Should you retrofit existing chillers with new VSDs?Challenge:

    Yes. Prove it by monitoring, trending, plotting kW & load.Solution:

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    Chill

    er k

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    on

    Total Plant Tons

    Marie Mount Hall, Chillers 1 & 2, Aug 1 Aug 21

    CH1 kW/ton

    CH2 kW/ton

    Dashboard Example: VSD Chillers

    VSD = 21% more efficient than Solid State

  • Dashboard Example: VSD Chillers

    VSD = 24% more efficient than Solid State

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    Chill

    er k

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    Total Plant Tons

    Marie Mount Hall, Chillers 2 & 3, Aug 21 Aug 28

    CH3 kW/ton

    CH2 kW/ton

  • Bursting with data

    Making better decisions

    Real world examples

    [email protected]

    Drew DePriestRegional Sales Manager

    Automated Logic

    Don HillSystem Operations Manager

    UMD Facility Performance Group

    [email protected]

    mailto:[email protected]:[email protected]

    Data-Driven BuildingsSlide Number 2Slide Number 3Evolution of BASIntegration!Slide Number 6Slide Number 7Slide Number 8Slide Number 9Slide Number 10Slide Number 11Slide Number 12Slide Number 13Slide Number 14Slide Number 15Technology availableAnalyticsPredictive AnalyticsPredictive AnalyticsPredictive MaintenancePredictive MaintenanceAutomatic Work OrdersDashboardsDashboards in useDashboards in useKiosksTenant energy useBehavioral impactSlide Number 29MeaningMeaningMake it meaningfulDashboardsSlide Number 34Slide Number 35Beyond the KioskSlide Number 37Analytics Example: Water LossAnalytics Example: Water LossDashboard Example: Plant EfficiencyDashboard Example: VSD ChillersDashboard Example: VSD ChillersDashboard Example: VSD ChillersSlide Number 44