energy research center (erc)- advanced safety system, improved shutdown system for npps and energy...
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ESCL, Hossam Gaber
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Energy Research Center (ERC)
Lab Director: Professor Hossam Gaber, PhD, P.Eng.
Email: [email protected]
Web: http://faculty.uoit.ca/gaber/
Upcoming event- IEEE SEGE: www.sege-conference.com
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ESCL Mission Our mission is to conduct innovative research and develop novel solutions
in the area of energy safety and control to support industrial and societal
development. Members in ESCL investigate advanced safety and control
methods and technologies and their applications on energy
infrastructures and nuclear facilities.
This includes:
- Resilient Interconnected High Performance Micro Energy Grids, and Gas-Power Grids and
Technologies
- Advanced Safety System, Improved Shutdown System for NPPs and Energy Infrastructures
- Protection and Control of Micro Energy Grids, with Integrated Renewable Energy
Technologies
- Engineering Design, Control, and Protection of Plasma Experimentation for Fusion Energy
Generation and Industrial Applications
- Hybrid Energy and Transportation Infrastructures Planning, with Energy Conservation
Strategies
- Smart Green Buildings, with Energy Conservation Strategies
- Simulation and Experimentation for Energy Process Systems Engineering
- Intelligent Safety and Control, Real Time Fault Diagnosis and Simulation
- Performance Evaluation and Optimization of Energy and Nuclear Facilities, and Integrated
Small Modular Reactors (SMRs)
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Design and Development of Resilient Smart Building Energy
Automation System – SBEA, with Advanced Battery Management
Features
Team: Dr. Ahmed Abdelmaksoud, Peishan Cao
It offers intelligent control, stability, optimization, resiliency, and protection
features, which are suitable for buildings, commercial and industrial facilities.
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Building energy management Building energy management is based on an engineering design
framework and methodology to conserve, generate and optimally utilize
energy within buildings.
To achieve this objective, an Energy Semantic Network (ESN) and knowledgebase for buildings have been developed. ESN generates all
possible energy scenarios that can be implemented, evaluate them and provide multi-objective (cost, reliability, quality, comfortability
and emission) optimal solutions for energy conservation, generation and utilization to a given building. The knowledgebase encodes
available information of building energy technologies such as insulation materials, energy resources, energy conversion, building types,
and characteristics of thermal energy zones. ESN is formed by semantic interconnection between energy classes for different types of
buildings. The structure of ESN provides heterogeneous presentation of the classes with fixable architecture to modify, add, or delete
significant energy classes. In addition, ESN structure is designed to satisfy a minimal framework to avoid non-realistic burden of
computation during simulations and evaluation. The structure and processing algorithm of ESN were successfully created and tested for
medium size house.
The aim of the current and future work is to develop ESN neuro-fuzzy inference mechanism that has the ability to encode both data driven
(machine learning) and knowledge experience of human expertise to share in forming ESN knowledge base. ESN with neuro-fuzzy
inference mechanism would better present uncertainty about weather, load, building structure and building size and provides more
realistic energy scenarios.
Impacts on building energy industry: (1) provide tool to generate
accurate and optimal energy scenarios for buildings, (2) reduce
cost and time (3) requires less experience engineers (4) deploy
different renewable technologies (5) Provides alternative
scenarios with map of level of satisfaction of energy multi-
objectives and (6) reduce risk of failure of selected scenario to
meet the expected performance.
Ener
gy C
on
vert
ers
FurnaceAC/DC
DC/AC
Users and Stockholder Constrains
Building ESN
Inference Mechanism
Parameters of energy
scenarios
Value range of the
parameters
Change step for each
parmeter
Governmental Constrains
Environmental Constrains
Energy Technology
Knowledge Base
Knowledge Engineering
and Encoding
Energy Expertise
Multi-objective Optimization
algorithm
KPI evaluation
Multi-objective Optimal surface
Hou
se c
on
cep
t an
d s
ize
Ener
gy S
our
ces
Load
s
Gas Supply
WT PV
Gas Generato
r
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Regional gas-power grid planning Investment in natural gas-power technologies increases continuously. Using natural gas fuel for
power generation has seen significant growth for many reasons: 1) short construction times and low
initial investment costs which makes it attractive in a deregulated market; and 2) burning natural gas
emits less harmful emissions compared with other fossil fuels such as coal and oil.
Distributed generation (DG) based on gas engines and micro turbines represent a reliable solution generally for countries that have an
access to natural gas. According to Canadian Association of Petroleum Producers, Canada is the world’s fifth-largest producer of natural
gas and has enough natural gas reserves to meet national energy demand for the upcoming 300 years. Therefore, gas-power technologies
are drawing the attention of power system planners, energy policy makers, and researchers to ensure optimum utilization of natural gas for
robust energy supply networks in Ontario, Canada. Canadian government is looking for ways to increase the reliability and sustainability
of power grid; and gas-power technologies may provide a solution.
This project explores the integration of gas and renewable generation technologies to provide a qualified, reliable, and environmentally
friendly power system while satisfying regional energy demands and reducing generation cost. Scenarios are evaluated using four key
performance indicators (KPIs): economic, power quality, reliability, and environmental friendliness. The proposed scenario analysis tool
has three components: 1) Geographic Information System (GIS) for recording transmission and distribution lines and generation sites; 2)
Energy Semantic Network (ESN) knowledgebase to store information; and 3) An algorithm created in MATLAB/Simulink for evaluating
scenarios.
To interact with the scenario analysis tool, a graphical
user interface (GUI) is used where users can define
the desired geographic area, desired generation
percentage via gas technology, and system
parameters. In order to evaluate the effectiveness of
the proposed method, province of Ontario and
Toronto regional zone are used as case studies.
DatabaseSystem data GIS GUI
Simulation/Evaluation/
Optimization Algorithm
User
Physical System
- Region of interest- Desired percentage of power generation by gas and non-gas
- Weightages for KPIs
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Interconnected micro energy grids
(MEGs) MEG can provide reliable, high-quality power and heat to customers at an
economical cost. MEG can operate in a grid-connected mode where energy
resources interact with the main electrical grid, or in an islanded mode
where the MEG feeds local loads without the use of the main electrical
grid.
This project presents an economic generation scheduling algorithm for interconnected-MEGs in order to determine the optimal output
powers of DERs and transferred power among MEGs and between each MEG and the main grid. The performance of MEGs is evaluated
from the economical (total operational cost) and environmental (carbon dioxide emission) viewpoints.
New control design techniques will be investigated with the use of advanced devices Flexible AC Transmission Systems (FACTS) to
support AC/DC circuits by enhancing the quality and controllability of microgrids (MGs). The project will propose intelligent control
designs for integrated FACTS with the target MG, and their implementation in Canadian power grids. FACTS-based MG (WF-PV-
storage) will be modeled, and performance will be optimized by simulations for different operating conditions
Energy Semantic Network (ESN) was proposed as a dynamic and adaptive superstructure to model and simulate energy supply and
production chains. ESN provides means to integrate generation (G), storage (S), and loads (L). Furthermore, ESN is used to integrate
electricity (E), gas (G), and thermal (T) grids. ESN is used to interconnect MEGs with transfer lines.
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ESN includes nodes of energy generation: electricity generation (EG), gas generation (GG), and thermal generation (TG); energy storage: electricity storage (ES), gas storage (GS), and thermal storage (TS); and energy loads: electricity loads (EL), gas loads (GL), and thermal loads (TL). The interconnection between MEGs includes: electricity transfer lines (ET), thermal transfer lines (TT), gas transfer lines (GT), water transfer lines (WT), and transportation transfer lines (RT). ESN static structures are synthesized and dynamically tuned with computational intelligence techniques using real time data and simulation.
Hybrid fuel planning for sustainable transportation systems Transportation represents major energy consumption where fuel is considered as a primary energy source. Recent development in the vehicle technology revealed possible economical improvements when using natural gas as a fuel source instead of traditional gasoline. There are several fuel alternatives such as electricity, which showed potential for future long-term transportation. However, the move from current situation where gasoline vehicle is dominating shows high cost compared to compressed natural gas vehicle. This work presents modeling and simulation methodology to optimize performance of transportation based on quantitative study of the risk-based performance of regional transportation.
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Emission estimation method is demonstrated and used to optimize transportation strategies based on life cycle costing. Different fuel supply scenarios are synthesized and evaluated, which showed strategic use of natural gas as a fuel supply.
Real time fault diagnosis and safety verification Small and major accidents and near misses are still occurring in nuclear power plants (NPPs). Risk level has increased with the
degradation of NPP equipment and instrumentation. In order to achieve NPP safety, it is important to continuously evaluate risk for all
potential hazard and fault propagation scenarios and map protection layers to fault / failure / hazard propagation scenarios to be able to
evaluate and verify safety level during NPP operation. The main goal of this research is to develop real time safety verification with co-
simulation tool to be integrated with plant operation support systems. Faults are abnormal conditions that occur in plant
equipment/process. This can be caused by various factors including human errors, environmental stresses or material deficiencies.
Effective fault diagnosis and safety verification are important for the operation of nuclear power plants in terms of their safety and cost
effectiveness.
ESCL has been developing computer models that use real-time utility data to simulate problems or faults at nuclear power plants. This
model-based approach can be implemented in parallel with a real plant. It is expected to enhance system performance by improving plant
safety. This will also enable operators like OPG and Bruce Power to actually model the fault as well as the problems in critical equipment
and to identify what is the protection barriers and what is the probability of different faults occurring.
Despite past accomplishments, there is a continuous desire and need
to improve industry’s safety performance, particularly after the
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Fukushima disaster. New methods and improvements to existing
methods are therefore being investigated by ESCL in the areas of
systems analysis, accident causation, human factors, error reduction,
and measurement of safety performance.
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Current / Recent Projects - Intelligent Green Commercial and Industrial Facilities – Smart Green Buildings (IEEE-SMC)
- MHD and MCNP Modeling and Simulation of Intersecting High Current Plasma Beams (HOPE Innovations Inc.)
- Performance Optimization of CHP Systems with Co-Simulation and Intelligent Control Systems (CEM Engineering,
NSERC)
- Design and Operation Support for Building Energy Conservation (QNRF, Qatar University)
- Regional Gas-Power Grid Modeling, Planning, and Optimization (NSERC, OCE, Hydrogenics, Veridian, MaRS,
Intergraph, IESO)
- Intelligent Safety Systems for Green Energy and Production Facilities (NSERC, Bruce Power, OPG)
- Investigative Simulation and Experimentation of High Current Plasma For Clean Fusion Energy (HOPE Innovation
Inc.)
- Development of reactor power transient control module for severe accident scenarios for CANDU nuclear reactors
(Megawatt Solutions Inc., NSERC)
Selected Publications - Hossam A. Gabbar, Daniel Bondarenko, Sayf Elgriw, Anas Abdel Rihem, Evaluation of Potential Designs for High
Performance Fusion Energy Technologies, International Journal of Latest Research in Science and Technology
(IJLRST), volume 4, Issue 3 , 2015.
- Hossam A.Gabbar, Jason Runge, Daniel Bondarenko, Lowell Bower, Devarsh Pandya, Farayi Musharavati, and
Shaligram Pokharel, Performance Evaluation of Gas-Power Strategies for Building Energy Conservation, Energy
Conversion and Management, Volume 93, 15 March 2015, Pages 187-196.
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- Hossam A.Gabbar, Emmanuel Boafo, FSN-based co-simulation for fault propagation analysis in nuclear power
plants, Process Safety Progress, AIChE, (DOI: 10.1002/prs.11725), 8-Dec-2014, Online ISSN: 1547-5913.
- Hossam A.Gabbar, Negar Honarmand, Abdelazeem A. Abdelsalam, Resilient Microgrids for Continuous Production
in Oil & Gas Facilities, Journal of Advances in Robotics and Automation, November 28, 2014, 3:3.
- Hossam A. Gabbar, Daniel Bondarenko, Sayf Elgriw, Functional Modeling for the Analysis of High Density Plasma
Experimentation, International Journal of Latest Research in Science and Technology (IJLRST), volume 3, Issue 5
October 2014.
- Hossam A.Gabbar, Ming Xiaoli, Abdelazeem Abdelsalam, Negar Honarmand, Key Performance Indicator Modeling
for Micro Grid Design and Operation Evaluation, International Journal of Distributed Energy Resources and Smart
Grids, Volume 10, Number 4, October – December 2014, ISSN 1614-7138, pp 219-242.
- Hossam A.Gabbar, Daniel Bondarenko, Sajid Hussain, Farayi Musharavati and Shaligram Pokharel, Building Thermal
Energy Modelling with Loss Minimization, Journal of Simulation Modelling Practice and Theory, 49 (2014) 110–121.
- Book Chapter, Hossam A.Gabbar, Adel Sharaf, Ahmed S. Eldessouky, Ahmed Othman, Abdelazeem A.Abdelsalam,
Intelligent Control Systems with Applications on Power Systems, New Approaches in Intelligent Control and Image
Analysis: Techniques, Methodologies and Applications, Book series “Intelligent Systems Reference Library”,
http://www.springer.com/series/8578, Publisher: SPRINGER-VERLAG
- Hossam A. Gabbar, Daniel Bondarenko, Sayf Elgriw, Functional Modeling for the Analysis of High Density Plasma
Experimentation, International Journal of Latest Research in Science and Technology (IJLRST), volume 3, Issue 5
October 2014.
- Achint Rastogi, Hossam A.Gabbar, Fuzzy Logic-Based Safety Verification Framework for Nuclear Power Plants,
Journal of Risk Analysis, 1539-6924, 2012.
- Hossam A.Gabbar, Abdelazeem A. Abdelsalam, Adel Sharaf, PSO-Based Control Optimization of Microgrid with D-
FACTS, International Journal of Power and Energy Conversion (Accepted)
- Hossam A.Gabbar, Manir Isham, Sajid Hussain, Luping Zhang, BBN-Based Reasoning Approach for Safety Verification
Using FSN, Journal of Chemical Engineering of Japan (Accepted)
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- Daniel Bondarenko, Hossam A.Gabbar, Safety Design of Plasma Experiment and Generation System (Submitted)
- Elnara Nasimi, Hossam A.Gabbar, Application of safety instrumented system in older nuclear power plants
(Submitted)
- Aboelsood Zidan, Hossam A.Gabbar, Ahmed Eldessouky, Optimal planning of combined heat and power within
microgrids (Submitted)
- Ahmed S. Eldessouky, Hossam A.Gabbar, Improved Power Grid Stability by applying PID Fuzzy Model Reference
Learning Controller to SVC, (In Submit).
- Harsh Deol, Hossam A.Gabbar, Self-Tuning Fuzzy Logic PID Controller, Applications in Nuclear Power Plants,
International Journal of Intelligent Systems Technologies and Applications (Accepted)
- Sajid Hussain, Hossam A.Gabbar, Farayi Musharavati, Shaligram Pokharel, Comfort-Based Fuzzy Control
Optimization for Energy Conservation in HVAC Systems, Journal of Control Engineering Practice, (2014), pp. 172-
182.
- Abdelazeem A. Abdelsalam, Hossam A. Gabbar, and Adel M. Sharaf, Performance Enhancement of Hybrid AC/DC
Microgrid based D-FACTS, International Journal of Electrical Power and Energy Systems, Volume 63, December
2014, Pages 382-393.
- Razibul Islam, Hossam A.Gabbar, Study of Small Modular Reactors in Modern Microgrids, International Transactions
on Electrical Energy Systems, DOI: 10.1002/etep.1945.
- Abdelazeem Abdelsalam, Hossam A.Gabbar, Farayi Musharavati, Shaligram Pokharel, Dynamic Aggregated Building
Electricity Load Modeling and Simulation, Journal of Modeling and Simulation Theory and Practice, Volume 42,
March 2014, Pages 19–31.