Laboratory of Systems Control and Automation: Profile and...
Transcript of Laboratory of Systems Control and Automation: Profile and...
Laboratory of Systems Control and Automation:Profile and Opportunities to Contribute
EERA ESI meeting, November 2016, DTU
Laboratory of Systems Control and Automation
LABORATORY’S PROFILE
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Major research directionsümathematical modelling of power systems and networks, investigation of theircontrol issues;ümodelling and optimisation research of ICT-based control systems of powersystems.
Laboratory of Systems Control and Automation
VisionTo become one of the major excellence centre in science and technology
carrying out the research related to mathematical modelling of power systemsand solution of control problems relevant for the sustainable operation anddevelopment of power sector.
MissionüTo carry out theoretical and applied research;üTo provide consultancies and problem solutions for power sector deliveringthem to public institutions and industry/business companies;üTo cooperate with Lithuanian higher education institutions contributing to theeducation of specialists for Lithuanian industry and research sectors.
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Laboratory of Systems Control and Automation
OUR VIEWS ON GRIDS’FUTURE
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Laboratory of Systems Control and Automation
Conventional power grid
Smart grid
Smart technologies will be embedded intoelectrical power networks, pursuing efficiencyand reliability targets, including high qualitypower supply to customers at acceptable andcompetitive prices. 5
Future Electric Power Systems
MonitoringControl Equipment
DistributedGeneration
FlexibleElectricity
Market
Laboratory of Systems Control and Automation
ElectricVehicles
New Servicesand
Businesses
EnergyStorageSystems
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Enhanced Functions of Smart Grid
Laboratory of systems control and automation
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Smart Grid Structure
Laboratory of Systems Control and Automation
POWER SYSTEM STABILITYAND RELIABILITY
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Mathematical modelling of electricpower systems, analysis andestimation of parameters
Laboratory of systems control and automation
PSS Sincal
PSS/E
MATLAB/Simulink
PowerWorld
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Stability research of electric powersystems (PSS/E): phase angleoscillations
Laboratory of systems control and automation
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Wind power plant control systems(PSS/E)
Laboratory of systems control and automation
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Laboratory of Systems Control and Automation
LOAD-FREQUENCY CONTROL
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üAnalysis of power system control problems;
üDevelopment of control algorithms for load- frequency control, voltage control.
Laboratory of systems control and automation
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Load – frequency control of electricpower system
Laboratory of systems control and automation
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Laboratory of systems control and automation
Load-frequency secondary control model (MATLAB/Simulink)
Load-frequency control system for pumped hydro (MATLAB/Simulink)
Model of HVDC /B2B station (PSS/E)
Load – frequency control systems
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Laboratory of systems control and automation
The influence of mechanical inertia’s time constant (M=2H) in EPS for frequency deviation processes, when dead band of the primary turbine regulators isa) 10 mHz, b) 200 mHz
The influence of EPS droop for frequency deviation processes, when dead band of the primary turbine regulators are a) 10 mHz, b) 200 mHz(MATLAB/Simulink)
Power system frequency deviation
Laboratory of Systems Control and Automation
PARAMETER IDENTIFICATION
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Parameter identification:Parametric identification
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Autocorrelation function of random component of frequencymeasurements obtained from passive experiment
Frequency variation characteristics: 1 – derived from factual values,2 – derived from identified parameter values
Laboratory of systems control and automation
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Laboratory of systems control and automation
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Parameter identification: Spectral analysis
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Laboratory of Systems Control and Automation
RENEWABLE GENERATIONFORECASTING
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Partner: Laboratory for renewable energy and energy efficiency
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Physical forecasting models
ü Research and modelling of wind flow variation in different regions of Lithuaniaü Development of short term wind power plant prediction system
Partner: Laboratory for renewable energy and energy efficiency
22ü Focus on short term forecasting period
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Physical forecasting models
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Laboratory of systems control and automation
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Statistical / time series forecasting models
ARIMA forecasts ANN forecasts Meteorological forecasts Factual
Laboratory of Systems Control and Automation
LABORATORY’S MAJORRESULTS
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International projects
7FP. Planning for Energy Efficient Cities (PLEEC). Coordinator: EskilstunaEnergi & Miljö AB, SWEDEN. 2013-2016.
7FP. Product and Process Design for Ambient Intelligence SupportedEnergy Efficient Manufacturing Installations (DEMI). Coordinator:TECNALIA, SPAIN. 2010-2013.
H2020-LCE-2016-2017. Keep the Energy at the right place!(EnergyKeeper). Coordinator: Lithuanian Energy Institute, LITHUANIA.2016-2019.
Laboratory of Systems Control and Automation
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Laboratory of Systems Control and Automation
ü National state-funded project Operational planning of smart distribution grid. LithuanianEnergy Institute, 2015-2017.
ü National state-funded project Research of application of small power wind power plantsand solar energy systems and their extension possibilities in Lithuania. LithuanianEnergy Institute, 2013-2014.
ü Analysis of Asynchronous Operation (Swings) in Cross-border Sections. Report ofLithuanian Energy Institute under the contract with TSO Litgrid, 2013-2014.
ü National state-funded project Possibilities of Lithuanian power system synchronousoperation with ENTSO-E taking into account perspective development of generationsources. Lithuanian Energy Institute, 2012-2016.
ü Overview and Comparative Analysis of Lithuanian Power Reserve Market. Report ofLithuanian Energy Institute under the contract with SC LIETUVOS ENERGIJOSGAMYBA, 2012-2013.
ü Analysis of Transmission Network Stability and Voltage Levels after Connection ofLarge Wind Power Park. Report of Lithuanian Energy Institute under the contract withJSC VEVP. 2010-2011.
Projects
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Laboratory of Systems Control and Automation
Publications included in THOMSON REUTERS WoS
• Augutis J., Žutautaitė I., Radziukynas V., Krikštolaitis R., Kadiša S. Application ofBayesian method for electrical power system transient stability assessment //International journal of electrical power and energy systems. 2012. Vol. 42, p. 465-472.
• Klementavičius A., Radziukynas V., Radziukynienė N., Pukys G. Homogeneousgeneration period method for the analysis of wind generation variation // Energyconversion and management. 2014. Vol. 86, p. 165-174.
• Radziukynas V., Klementavičius A., Radziukynienė N., Kadiša S. Challenges for theBaltic Power System Connecting Synchronously to Continental European Network //Electric Power Systems Research. Vol. 140, November 2016, p. 54-64.
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Laboratory of Systems Control and Automation
Chapters in books published by renowned international publishingcompanies
Klementavičius A., Radziukynas V. Differentiated reliability pricing model forcustomers of distribution grids // Handbook of networks in power systems I.Energy systems / Ed. A. Sorokin et al. Part 1. Berlin Heidelberg: Springer-Verlag,2012, p. 213-239.
Radziukynas V., Radziukynienė N., Klementavičius A., Naujokaitis D. Operator'sinterruption cost-based sectionalization method for 3-feeder radial distributionarchitecture // Optimization and security challenges in smart power grids / Ed.Pappu Vijay, Carvalho Marco, Pardalos Panos. Ser. Energy systems. Springer,2013, p. 1-30.
Radziukynas V., Radziukynienė I. Optimization methods application to optimalpower flow in electric power systems // Optimization in the energy industry / Ed.J.Kallrath, P.M. Pardalos, S. Rebennack, M. Scheidt. Springer, 2009, p. 409-436.
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Laboratory of Systems Control and Automation
EERAESI SP2
“REAL ACTIVITIES” PROPOSALS
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EERA SP2 Forecasting, aggregation and control, WP2
Laboratory of systems control and automation
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Proposed “real activity”:
Coupling the wind and solar electricity generation forecasts in the EU with theexchanges of power generation reserves across the EU transmission networks
(Tasks 2.1, 2.2, 2.3)
Rationale:
It is necessary to evaluate the demand of cross-border balancing power in EUregions caused by large-scale wind&solar electricity integration
EERA SP2 Forecasting, aggregation and control, WP3
Laboratory of systems control and automation
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Proposed “real activity”:Development of integrated smart metering infrastructure (meters, communication, dataconcentrators) for electricity, heat, gas and water supply systems(Tasks 3.1, 3.2, 3.3)
Rationale:Multi-energy meters may be more cost-effective than single-energy meters
Technology:Two-way data communication (network operator to/from meter)
Major output:Infrastructure architecture, synergy evaluation
EERA SP2 Forecasting, aggregation and control, WP3, WP4
Laboratory of systems control and automation
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Proposed “real activity”:Development of innovative demand-side management methods targeted forintegrated DA/real time control of loads in electricity, heat and gas distributionsystems(Tasks 3.1-3.4, 4.1-4.5)
Rationale:The demand-side response could be introduced to heat and gas systems to supportthe demand response in electricity systems, virtual power plants and microgrids
Major output:Demand-side response aggregation models, activation mechanisms, performancemeasurement indicators, synergy evaluation
EERA SP2 Forecasting, aggregation and control, WP4
Laboratory of systems control and automation
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Proposed “real activity”:
Feasibility of integrated outage management system in urban area for electricity,heat, gas and water supply networks enabling remote monitoring of networks,identification of equipment failure site, the joint repair crews, and outage datamanagement system
(Tasks 4.1-4.5)
Rationale:Integrated approach couples different networks thus needing less resources formonitoring, identifying, site-visiting, repair and analysis activities than in case ofindividual networks
Major output:Procedures, methodologies, synergy evaluation
EERA SP2 Forecasting, aggregation and control, WP4
Laboratory of systems control and automation
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Proposed “real activity”:Smart buildings and electricity & heat self-generating buildings interacting withelectricity, gas, and districting heat and cooling networks
(Tasks 3.3, 4.1-4.5)
Rationale:Building energy management systems have a huge energy efficiency potential
Scope:Public and office buildings
Major output:Infrastructure architecture, synergy evaluation
EERA SP2 Forecasting, aggregation and control, WP4
Laboratory of systems control and automation
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Proposed “real activity”:Feasibility of integrated network wear monitoring system in urban area for electricity,heat, gas and water supply networks enabling remote monitoring of equipment wearlevel, calculation of work life resources and predictive scheduling of repairs andreplacements of worn-out equipment
(Task 4.1 )
Rationale:Ageing of networks could be monitored and unexpected outages could beprevented.
Integrated approach suggests less resources than individual network resources
References:European Technology Platform for Smart Grids (2013): strategic research agendafor 2035
Major output:Procedures, monitoring system architecture, synergy evaluation
Laboratory of Systems Control and Automation
EERAESI SP2
DRAFT IDEA FOR INTEGRATEDCONTROL
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Laboratory of systems control and automation
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Who?
Partner B
Partner APartner C
Electricalsystem
Heat syst.
Cooling syst.
Gassyst.
control
control
Integrated control modelling
control
EERA SP2 Forecasting, aggregation and control
Proposed idea: Control for integrated/multi-energy systemProblem: May the integrated control in short term and real time bring benefits and synergy?Major output: 1) Outline of integrated control framework; 2) Control modelling resultsLEI contribution: Control modelling for electrical system and gridsExpectation: Who will by able to couple 4 different energy systems?
Questions?Research associate:Dr. Arturas KlementaviciusLithuanian Energy InstituteTel.: +370 616 48814
Laboratory of Systems Control andAutomation
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