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EE392N Intelligent Energy Systems: Big Data and Energy April 2, 2013

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Presentation on theme: "EE392N Intelligent Energy Systems: Big Data and Energy April 2, 2013"— Presentation transcript:

1 EE392N Intelligent Energy Systems: Big Data and Energy April 2, 2013
Seminar Course 392N ● Spring2013 EE392N Intelligent Energy Systems: Big Data and Energy April 2, 2013 Dan O’Neill Dimitry Gorinevsky ee392n - Spring Stanford University Intelligent Energy Systems: Big Data O’Neill and Gorinevsky

2 Intelligent Energy Systems: Big Data O’Neill and Gorinevsky
Today’s Program Class logistics Introductory lecture on Intelligent Energy Systems: Big Data and Energy ee392n - Spring Stanford University Intelligent Energy Systems: Big Data O’Neill and Gorinevsky

3 Intelligent Energy Systems: Big Data O’Neill and Gorinevsky
Instructors Daniel O’Neill, Consulting Professor in EE Network Management and Machine Learning in energy Executive and Startup experience Dimitry Gorinevsky, Consulting Professor in EE Big Data Analytics for energy and aerospace Information Decision and Control Applications in many industries ee392n - Spring Stanford University Intelligent Energy Systems: Big Data O’Neill and Gorinevsky

4 Intelligent Energy Systems: Big Data O’Neill and Gorinevsky
Class Logistics 1 unit graded or CR/NC Attendance Pre-requisites Submitting an one page report on in the end Weekly on Tuesdays The room and time might change! Watch the class website announcements Introductory lecture - today Nine lectures by industry leaders ee392n - Spring Stanford University Intelligent Energy Systems: Big Data O’Neill and Gorinevsky

5 Intelligent Energy Systems: Big Data O’Neill and Gorinevsky
Planned Lectures April 2, Introductory Lecture, Dan ONeill and Dimitry Gorinevsky, Stanford April 9, Feature Discovery in Energy Data, Sachin Adlakha, Ayasdi April 16, The Industrial Internet, Marco Annunziata, GE Energy April 23, Risk Analytics Applications and Vision, Chris Couper, IBM April 30, Power Plant Big Data Optimization, Jim Schmid, GE Energy May 7, Monitoring of T&D Systems, Paul Myrda, EPRI May 14, Energy Insights from Big Data, Drew Hylbert and Jeff Kolesky, OPower May 21, AMI Data Management and Analysis, Aaron DeYonker, eMeter/Siemens May 28, Smart Grid Analytics, Ed Abbo and Houman Behzadi, C3 Energy June 4, Data Center Energy Management, Manish Marwah, HP ee392n - Spring Stanford University Intelligent Energy Systems: Big Data O’Neill and Gorinevsky

6 Intelligent Energy Systems
Analytics: Software Function Computing and Communication Energy System ee392n - Spring Stanford University Intelligent Energy Systems: Big Data O’Neill and Gorinevsky

7 Intelligent Energy Systems: Big Data O’Neill and Gorinevsky
Power systems Physical systems in the focus of the class ee392n - Spring Stanford University Intelligent Energy Systems: Big Data O’Neill and Gorinevsky

8 The Traditional Grid Worlds Largest Machine!
3300 utilities 15,000 generators, 14,000 TX substations 211,000 mi of HV lines (>230kV) SCADA control Mostly unidirectional Capacity constrained graph ee392n - Spring Stanford University Intelligent Energy Systems: Big Data O’Neill and Gorinevsky

9 Intelligent Energy Systems: Big Data O’Neill and Gorinevsky
Interconnect ee392n - Spring Stanford University Intelligent Energy Systems: Big Data O’Neill and Gorinevsky

10 Nearer Term Initiatives
Renewables Demand Response Power Flow Management ee392n - Spring Stanford University Intelligent Energy Systems: Big Data O’Neill and Gorinevsky

11 Renewables: The System Problem
National Renewable Energy Laboratory ee392n - Spring Stanford University Intelligent Energy Systems: Big Data O’Neill and Gorinevsky

12 Intelligent Energy Systems: Big Data O’Neill and Gorinevsky
Demand Response Campus and Buildings Home AMI – Advanced Metering Infrastructure EMS – Energy Management System Smart devices ee392n - Spring Stanford University Intelligent Energy Systems: Big Data O’Neill and Gorinevsky

13 Power Flow Management Adjusting supply Routing power flow
Managing demand for aggregated users for commercial buildings ee392n - Spring Stanford University Intelligent Energy Systems: Big Data O’Neill and Gorinevsky

14 Computing and Communications
Source IPS energy subnet Intelligent Power Switch IES Intelligent Energy Network Generation Conventional Internet Transmission Distribution Load Conventional Electric Grid ee392n - Spring Stanford University Intelligent Energy Systems: Big Data O’Neill and Gorinevsky

15 Intelligent Energy Systems: Big Data O’Neill and Gorinevsky
Power and Data Flow Generators ISO Transmission ’s KV Fiber and uWave Substations Limited visibility Distribution 10-20KV to 120V Because of industry structure, peak prices can be very high. Generators are de-regulated and the Cal-ISO maintains a market for D/S of energy. At the margin suppliers can bidup prices to very high levels Promise of AMI Industrial Commercial Business Residential ee392n - Spring Stanford University Intelligent Energy Systems: Big Data O’Neill and Gorinevsky

16 Intelligent Energy Systems: Big Data O’Neill and Gorinevsky
Today… Integrated platforms IBM, Oracle. … GE, Seimens, SAIC,… Itron, Cisco, … But Analytic tools Vertical analytic products Data integration Visualization Analytics Elastic Computing Data Comm. Platform Networking ee392n - Spring Stanford University Intelligent Energy Systems: Big Data O’Neill and Gorinevsky

17 (Intelligent Functions)
Analytics Tablet Smart phone Communications Internet Computer Energy Application Presentation Layer Analytics (Intelligent Functions) Business Logic Database ee392n - Spring Stanford University Intelligent Energy Systems: Big Data O’Neill and Gorinevsky

18 Feedback Control Functions
Closed loop update ee392n - Spring Stanford University Intelligent Energy Systems: Big Data O’Neill and Gorinevsky

19 Monitoring and Decision Support Functions
Open-loop functions Results are presented to an operator ee392n - Spring Stanford University Intelligent Energy Systems: Big Data O’Neill and Gorinevsky

20 Decision Support Applications
Supply Demand Asset Management Power Quality Monitoring Outage Management Risk Management Renewables Integration forecasting Energy Efficiency Monitoring Revenue Protection ee392n - Spring Stanford University Intelligent Energy Systems: Big Data O’Neill and Gorinevsky

21 Monitoring Approaches
Most used approach is Exceedance Monitoring Example: grid frequency deviation from 60Hz Plant/System Data Monitoring Function: Exceedance Detected Anomalies ee392n - Spring Stanford University Intelligent Energy Systems: Big Data O’Neill and Gorinevsky

22 Intelligent Energy Systems: Big Data O’Neill and Gorinevsky
Tens of Tb to Pb range Sequential or parallel processing of data chunks. Each chunk fits into memory Much of earlier work involved ‘soft’ data Energy: Machine-to-Machine (M2M) data Monitoring and decision support applications Data mining ee392n - Spring Stanford University Intelligent Energy Systems: Big Data O’Neill and Gorinevsky

23 Intelligent Energy Systems: Big Data O’Neill and Gorinevsky
Data Mining Functions Data Exploration Performed interactively Model Training Known as system identification in control Model Exploitation Estimation, eg, forecasting Decision support, eg, monitoring Control, eg, embedded optimization ee392n - Spring Stanford University Intelligent Energy Systems: Big Data O’Neill and Gorinevsky


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