Bde sc3 2nd_workshop_2016_10_04_p10_maja_skrjanc
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Transcript of Bde sc3 2nd_workshop_2016_10_04_p10_maja_skrjanc
Energy efficiency - big data challenges fromcase studies
Jozef Stefan Institute Maja Skrjanc [email protected]
BDE 2sd Workshop for Energy, Brussels 4/10/201616/6/2015
CompanyLogo
4-oct.-16www.big-data-europe.eu
Big data in energy:o Going green, Cutting back, Energy preservation
Energy efficiency case studies (NRG4Cast, SUNSEED):o Districts, buildings, households (monitor, analyze, test,
predict, optimize)
o Measurements (consumption, grid)
Outline
Big Data & Energy
One of the hottest topics today is energy:o consumption, discovery and implementation
o renewable, reusable and affordable energy, both at an individual and business level
Energy saving – standard of living (e.g. 2000W society):o right energy-efficiency measures, districts can reduce energy use and costs,
and shrink buildings’ environmental footprint.
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Energy perservation Cutting-back:
o energy consumption - monitored and improved, companies can improve efficiency and reduce expenditures.
Going green:
o real-time and batch processing analytical tools evaluate: current green strategies and
assess if those strategies are actually working and other areas that they can change to green
o With increasing penetration of Distributed Energy Resources (DER) the smart grid needs more & deeper monitoring and control to maintain stable operation
4-oct.-16www.big-data-europe.eu
Analysis of Environmental domain
Common challenges:
o Different data sources (structural data, sensor measurements, annotations)
o Loads od data (history, on-line sensor measurments, various prediction models, various forecasts, etc)
Modern technology available:o Amount of data is too large to be stored: new evidence from the incoming data is
incorporated into the model without storing the data
NRG4Cast project NRG4Cast - real-time management, analytics and forecasting software pipe-line
for energy distribution networks :
o using information from network devices, energy demand and consumption, environmental data and energy prices data.
generic framework able to control, manage, analyze and predict behavior in an extensible manner on other energy networks:
o gas distribution, heat water distribution and alternative energy distribution networks.
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Current and Expected impact
Economic/Socialo Energy consumption savings up to 20%
o Dynamic energy tariffs – new jobs
o Lower energy bills for consumers up to 10%
o Saving in operational and maintain costs up to 15%
Environmentalo Reduced CO2 emission up to 20%
o Saves on energy production up to 10%
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Three pillars of NRG4Cast
Monitoring & Prediction
of Consumption
and Production
Monitoring & Prediction
of Consumption
and Production
Prediction of electricityprices
Prediction of electricityprices Textual pipelineTextual pipeline
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Prediction of various impacts on the energy networks (accurate models)
Prediction of energy production of Renewable energy sources
Data fusion and requirements synergy
Achievements I NRG4CAST Ltd
Final NRG4Cast Prototype (6 diverse pilots, 1 integrated pilot) – validation on mass instalation
Analytics:o Prediction and stream modelling pipeline – semi-automatic
o Route Cause Analysis (RCA) module – novel approach to understand complex multi-level multi-sensor system
o Framework for energy managements systems - MSDA (Multimodal Stream Data Analytics). Hybrid approach by combining knowledge-driven and data-driven elements
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Achievements II Data Access and Integration (DAI) platform (cca 800 data streams):
o DAI platform has evolved into a completely new system, that provides reliable accessto the pilot data at all times and is able to re-stream this data to other componentsin the NRG4CAST platform
Textual pillar:o Although the practical value of achievements in the field of textual data analysis has
not been significant, the NRG4CAST project proposed an innovative way to handlefact extraction from the textual stream
Numerous SW testings (different components, different maturity levels)
Stream modeling pipeline - integration of many different heterogeneous data sources
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Challenges Technical Challenges:
o Data integration: Integration of real-time and static data - design the schema for the metadata database
Integration of real-time data coming from hundreds of sensors (time-aligmenent)
Variety of data interfaces for multimodal data
o Stream modeling pipeline - integration of many different heterogeneous data sources
o HW installation
o How to reach TLR7 level of SW maturity
o Numerous SW testings (different SW components, different maturity levels)
o Defining appropriate features for prediction models10/4/2016
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Lessons learned
Domain knowledge is the key (also in solving tech challenges)
Input from business perspective necessary to push and drive product development:o market analysis,
o bussines plans
Cyclic technical development (one prototype each year) turned out to be winning combination
Intensive dissemination activities are necessary
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SUNSEED project
enable end-user to actively participate in dynamic market
to allow an operator to have complete control over the smart grid
SUNSEED main objectives
Establish practical, converged DSO-telecom, secure communications
network
Develop advanced measurement &control sensor node
WAMS
Use intelligent analytical and visualisation tools to manage
smart distribution grid resources
Large scale field trial~ 1000 nodes
New business models of converged DSO-telecom
infrastructure
SUNSEED project - Motivation
Changing nature of the Consumers (households or industry) -> Prosumerso energy generators from renewable sources (photovoltaics, wind, cogeneration)
o manageable loads
Utilities are „blind“ in LV distribution grido real-time monitoring is needed
Motivation (cont.)
Manage risks related with network operation o voltage violations, congestions, …
Increasing hosting capacity of additional DER into existing grid without additional reinforcements
Offering new services for customers
More efficient network operation o increasing network observability, controllability and management
Monitoring & Analytics & Control
State estimation of distribution smart grids
Forecasting
Prediction of failures
Active Network Management
State estimation of dist. smart grids Key enabler of advanced services
WLS with Gauss-Newton iteration scheme
Linear Bayesian estimation
Short Term Load Forecasting
Load forecasts - on various nodes of DSO in the grid (end users, transf. stations), for various forecasting horizons (1h – 24h).
Data sources - load measurements, load estimations, weather status and forecasts, static data (working hours, holidays, …)
Short term wind gener. forecasting
propose an efficient SVM based multi-stage forecasting technique incorporating pattern matching for data pre-processing.
Fault Detection in Telco’s data Spatio-temporal model
• To detect and localize potential faults in telco and DSO network
Outcomes• Usual methods (plotting upload and
download speed matrix over time, analysing histograms, probability distributions) do not show enough structure
• Multidimensional scaling embeddings shows more structure
Challenges
Various communication protocols
HW development
HW elements are expensive, communication as well
Minimal set of measurement nodes at locations to maintain whole grid observability
Integration of different security levels
Huge potential – where to start with monetarization ? (various stakeholders)
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Business models
Utility & telecom operator CO OP business models for communication nets in distribution smart grids
Summary
Wide range of opportunities:o Environmental data, Behaviour data (grid, consumers), Social & Economy
o Knowledge discovery (monitor, understand, predict, optimize)
o Business models
Technical challenges:o Multimodal data integration, Data models
o Maturity of SW components, integration, support & maintenance
4-oct.-16www.big-data-europe.eu
Thank you!
https://sunseed-fp7.eu/
http://www.nrg4cast.org/
4-oct.-16www.big-data-europe.eu