65 results on '"Saeed D. Manshadi"'
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2. Impact of Transportation Electrification on the Electricity Grid—A Review
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Reza Bayani, Arash F. Soofi, Muhammad Waseem, and Saeed D. Manshadi
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transportation electrification ,distribution system ,electric vehicle (EV) ,energy storage ,vehicle-to-grid (V2G) ,vehicle-to-vehicle (V2V) ,Mechanical engineering and machinery ,TJ1-1570 ,Machine design and drawing ,TJ227-240 ,Motor vehicles. Aeronautics. Astronautics ,TL1-4050 - Abstract
Transportation electrification is a pivotal factor in accelerating the transition to sustainable energy. Electric vehicles (EVs) can operate either as loads or distributed power resources in vehicle-to-grid (V2G) or vehicle-to-vehicle (V2V) linkage. This paper reviews the status quo and the implications of transportation electrification in regard to environmental benefits, consumer side impacts, battery technologies, sustainability of batteries, technology trends, utility side impacts, self-driving technologies, and socio-economic benefits. These are crucial subject matters that have not received appropriate research focus in the relevant literature and this review paper aims to explore them. Our findings suggest that transitioning toward cleaner sources of electricity generation should be considered along with transportation electrification. In addition, the lower cost of EV ownership is correlated with higher EV adoption and increased social justice. It is also found that EVs suffer from a higher mile-per-hour charging rate than conventional vehicles, which is an open technological challenge. Literature indicates that electric vehicle penetration will not affect the power grid in short term but charging management is required for higher vehicle penetration in the long-term scenario. The bi-directional power flow in a V2G linkage enhances the efficiency, security, reliability, scalability, and sustainability of the electricity grid. Vehicle-to-Vehicle (V2V) charging/discharging has also been found to be effective to offload the distribution system in presence of high EV loads.
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- 2022
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3. Autonomous Charging of Electric Vehicle Fleets to Enhance Renewable Generation Dispatchability
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Reza Bayani, Saeed D. Manshadi, Guangyi Liu, Yawei Wang, and Renchang Dai
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Technology ,Physics ,QC1-999 - Published
- 2022
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4. Zero-Carbon AC/DC Microgrid Planning by Leveraging Vehicle-to-Grid Technologies
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Anuja Gagangras, Saeed D. Manshadi, and Arash Farokhi Soofi
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microgrid ,decarbonization ,renewables ,vehicle-to-grid ,electric vehicles ,Technology - Abstract
This paper explores the strategic planning required for a zero-carbon-emission AC/DC microgrid, which integrates renewable energy sources and electric vehicles (EVs) within its framework. It considers the rapidly growing adoption of EVs and the advent of vehicle-to-grid (V2G) technology, which allows EVs to return energy to the grid during peak demand. The study aims to apply optimization techniques to minimize the installation cost associated with various microgrid components. In the case of microgrids, there are decision-making scenarios where multiple alternatives are present; optimization is a valuable technique for efficiently planning and designing microgrids. This work showcases case studies and sensitivity analysis plots, illustrating how output power fluctuates due to uncertainty in renewable energy sources and the absence of EVs. The findings show how V2G contributes to the demand when renewable generation is low. The sensitivity analysis also provides insights into how the unit cost is affected by demand fluctuations. In summary, the principal contribution of this study is developing a comprehensive planning framework for AC/DC microgrids. This framework considers the escalating adoption of EVs and offers practical solutions for future microgrid designs.
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- 2023
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5. Strategic Bidding in Distribution Network Electricity Market Focusing on Competition Modeling and Uncertainties
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Mehrdad Mallaki, Mehdi S. Naderi, Mehrdad Abedi, Saeed D. Manshadi, and Gevork B. Gharehpetian
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Competition modeling ,bidding strategy ,distribution network electricity market ,microgrid ,uncertainty ,robust optimization ,Production of electric energy or power. Powerplants. Central stations ,TK1001-1841 ,Renewable energy sources ,TJ807-830 - Abstract
Developing the electricity market at the distribution level can facilitate the energy transactions in distribution networks with a high penetration level of distributed energy resources (DERs) and microgrids (MGs). However, the lack of comprehensive information about the marginal production cost of competitors leads to uncertainties in the optimal bidding strategy of participants. The electricity demand within the network and the price in the wholesale electricity market are two other sources of the uncertainties. In this paper, a day-ahead-market-based framework for managing the energy transactions among MGs and other participants in distribution networks is introduced. A game-theory-based method is presented to model the competition and determine the optimal bidding strategy of participants in the market. Robust optimization technique is employed to capture the uncertainties in the marginal cost of competitors. Additionally, the uncertainties in demand are modeled using a scenario-based stochastic approach. The results obtained from case studies reveal the merit of considering competition modeling and uncertainties.
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- 2021
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6. A convex relaxation approach for power flow problem
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Saeed D. Manshadi, Guangyi Liu, Mohammad E. Khodayar, Jianhui Wang, and Renchang Dai
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Convex relaxation ,Ill-conditioned power flow ,Power flow ,Network reconfiguration ,Production of electric energy or power. Powerplants. Central stations ,TK1001-1841 ,Renewable energy sources ,TJ807-830 - Abstract
A solution to the power flow problem is imperative for many power system applications and several iterative approaches are employed to achieve this objective. However, the chance of finding a solution is dependent on the choice of the initial point because of the non- convex feasibility region of this problem. In this paper, a non-iterative approach that leverages a convexified relaxed power flow problem is employed to verify the existence of a feasible solution. To ensure the scalability of the proposed convex relaxation, the problem is formulated as a sparse semi-definite programming problem. The variables associated with each maximal clique within the network form several positive semidefinite matrices. Perturbation and network reconfiguration schemes are employed to improve the tightness of the proposed convex relaxation in order to validate the existence of a feasible solution for the original non-convex problem. Multiple case studies including an ill-conditioned power flow problem are examined to show the effectiveness of the proposed approach to find a feasible solution.
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- 2019
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7. Preventive reinforcement under uncertainty for islanded microgrids with electricity and natural gas networks
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Saeed D. MANSHADI and Mohammad E. KHODAYAR
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Microgrid ,Reinforcement ,Natural gas ,Electricity ,Deliberate disruption ,Uncertainty ,Production of electric energy or power. Powerplants. Central stations ,TK1001-1841 ,Renewable energy sources ,TJ807-830 - Abstract
Abstract This paper presents an approach to determine the vulnerable components in the electricity and natural gas networks of an islanded microgrid that is exposed to deliberate disruptions. The vulnerable components in the microgrid are identified by solving a bi-level optimization problem. The objective of the upper-level problem (the attacker’s objective) is to maximize the expected operation cost of microgrid by capturing the penalties associated with the curtailed electricity and heat demands as a result of the disruption. In the lower-level problem, the adverse effects of disruptions and outages in the electricity and natural gas networks are mitigated by leveraging the available resources in the microgrid (the defender’s objective). The uncertainties in the electricity and heat demand profiles were captured by introducing scenarios with certain probabilities. The formulated bi-level optimization problem provides effective guidelines for the microgrid operator to adopt the reinforcement strategies in the interdependent natural gas and electricity distribution networks and improve the resilience of energy supply. The presented case study shows that as more components are reinforced in the interdependent energy networks, the reinforcement cost is increased and the expected operation cost as a result of disruption is decreased.
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- 2018
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8. Training A Deep Reinforcement Learning Agent for Microgrid Control using PSCAD Environment
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Arash Farokhi Soofi, Reza Bayani, Mehrdad Yazdanibiouki, and Saeed D. Manshadi
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- 2023
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9. A SOCP Relaxation for Cycle Constraints in the Optimal Power Flow Problem
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Saeed D. Manshadi, Arash Farokhi Soofi, Renchang Dai, and Guangyi Liu
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Clique ,Mathematical optimization ,021103 operations research ,General Computer Science ,Computer science ,020209 energy ,Feasible region ,0211 other engineering and technologies ,Relaxation (iterative method) ,02 engineering and technology ,AC power ,Electronic mail ,Moment (mathematics) ,Matrix (mathematics) ,0202 electrical engineering, electronic engineering, information engineering ,Sparse matrix - Abstract
This article presented a convex relaxation approach for the optimal power flow problem. The proposed approach leveraged the second-order cone programming (SOCP) relaxation to tackle the non-convexity within the feasible region of the power flow problem. Recovering an optimal solution that is feasible for the original non-convex problem is challenging for networks with cycles. The main challenge is the lack of convex constraints to present the voltage angles within a cycle. This article aims to fill this gap by presenting a convex constraint enforcing the sum of voltage angles over a cycle to be zero. To this end, the higher-order moment relaxation matrix associated with each maximal clique of the network is formed. The elements of this matrix are utilized to form a convex constraint enforcing the voltage angle summation over each cycle. To keep the computation burden of leveraging the higher-order moment relaxation low, a set of second-order cone constraints are applied to relate the elements of the higher-order moment relaxation matrix. The case study presented the merit of this work by comparing the solution procured by the introduced approach with other relaxation schemes.
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- 2021
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10. Strategic Convergence Bidding in Nodal Electricity Markets: Optimal Bid Selection and Market Implications
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Mahdi Kohansal, Hamed Mohsenian-Rad, Saeed D. Manshadi, and Ashkan Sadeghi-Mobarakeh
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business.industry ,020209 energy ,Economic dispatch ,Energy Engineering and Power Technology ,02 engineering and technology ,Bidding ,Profit (economics) ,Supply and demand ,Microeconomics ,Electric power system ,Market mechanism ,Market participant ,0202 electrical engineering, electronic engineering, information engineering ,Economics ,Electricity ,Electrical and Electronic Engineering ,business - Abstract
Convergence bidding (CB), a.k.a., virtual bidding (VB), is a market mechanism facilitated by Independent System Operators (ISOs) in wholesale electricity markets to help lower the gap between the prices in the day-ahead market (DAM) and prices in the real-time market (RTM). In this paper, we seek to answer two questions: 1) how can a strategic market participant maximize its profit when submitting CBs? 2) how can such strategically placed CBs affect the price gaps? Answering these questions is not straightforward but the results are insightful. The bidding problem in this context is a bi-level optimization, where the upper-level is about maximizing the profit for the convergence bidder and the lower-level is the economic dispatch problem. By solving the formulated bidding problem, we investigate the impact of strategic CBs on the DAM and RTM locational marginal prices (LMPs) under various practical scenarios. We demonstrate the scenarios under which a strategic CB, whether on its own, or when it is submitted jointly with a physical demand or physical supply bid, can or cannot work as intended, and result in decreasing or increasing the price gap in nodal electricity markets. We also examine how the performance of strategic CBs can be affected by uncertainty in demand or generation bids as well as physical contingencies in the power system, such as transmission line tripping. Special cases, such as net-zero convergence bidding are studied. The long-term performance of strategic convergence bidding is investigated. The above and other market implications are discussed in multiple case studies.
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- 2021
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11. Strategic Behavior of In-Motion Wireless Charging Aggregators in the Electricity and Transportation Networks
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Saeed D. Manshadi and Mohammad E. Khodayar
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Optimization problem ,Computer Networks and Communications ,business.industry ,Computer science ,Aerospace Engineering ,Environmental economics ,Inductive charging ,Flow network ,Profit (economics) ,Supply and demand ,Hardware_GENERAL ,Automotive Engineering ,Computer Science::Networking and Internet Architecture ,Electricity market ,Wireless ,Electricity ,Electrical and Electronic Engineering ,business - Abstract
This paper presents a framework to determine the strategic bidding of the wireless charging aggregators that operate wireless charging stations to provide in-motion charging services for the electric vehicles. The proposed framework captures the interactions between the electricity and transportation networks through competition among the wireless charging aggregators. Wireless charging aggregators participate in the wholesale electricity market to minimize the cost of gained energy from the bulk electricity network. In the retail wireless charging market, wireless charging aggregators compete to maximize their revenue by offering energy to the electric vehicles that are traveling on the transportation links. The strategic behavior of the wireless charging aggregators highlights the interdependence between the electricity and transportation infrastructure systems. In each system, the strategic behavior of the entities is determined by formulating a bi-level optimization problem which is further transformed into a mathematical problem with equilibrium constraints. The upper-level problem maximizes the profit of the entities while the lower level problem ensures the balance between the demand and supply in each infrastructure system. The demand and supply balance is guaranteed by the optimal power flow in the electricity network and the user equilibrium traffic assignment in the transportation network.
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- 2020
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12. Optimal Switch Placement in Distribution Systems: A High-Accuracy MILP Formulation
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Alireza Fereidunian, Saeed D. Manshadi, and Abbas Shahbazian
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Mathematical optimization ,General Computer Science ,Linear programming ,Computer science ,020209 energy ,Reliability (computer networking) ,020208 electrical & electronic engineering ,Interruption Duration ,Inverse ,02 engineering and technology ,Term (time) ,Global optimal ,Distribution system ,0202 electrical engineering, electronic engineering, information engineering ,Integer (computer science) - Abstract
A new solution method is introduced to the problem of optimally deploying manual and automatic switches in distribution systems, where the product of two continuous variables and the inverse of a continuous variable are reformulated as a linear relation. This leads to a (mixed integer linear problem) MILP power flow formulation too. The objective function includes cost and reliability. The cost term itself includes capital investment, installation, and maintenance costs (MC) as well as customer interruption cost (CIC); while the reliability term is represented by system average interruption duration index (SAIDI). The problem is formulated as a MILP, which guarantees a global optimal solution. The effectiveness of the proposed method is validated through various case studies and sensitivity analyses on the RBTS4, followed by a comprehensive discussion and analysis of results. The proposed MILP formulation prescribes fewer switches while achieving lower SAIDI, compared to that of a previous MINLP formulation.
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- 2020
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13. Assessing the Impact of Spatial Proximity Data on the Solar Insolation Prediction
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Saeed D. Manshadi and Sunghwan Bae
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Insolation ,business.industry ,Computer science ,020208 electrical & electronic engineering ,02 engineering and technology ,Penetration (firestop) ,Solar energy ,computer.software_genre ,Renewable energy ,Component (UML) ,0202 electrical engineering, electronic engineering, information engineering ,Astrophysics::Earth and Planetary Astrophysics ,Data mining ,Electrical and Electronic Engineering ,business ,Instrumentation ,computer - Abstract
Improving the prediction of the availability of solar energy resources became a necessary component in the operation of utilities with a high penetration level of renewable energy resources. In this article, the solar insolation data in spatial proximity is leveraged to investigate the error in the prediction of solar insolation using multiple learning algorithms. Different error measures are utilized to evaluate the accuracy of the presented linear and nonlinear learning algorithms. Essential data preprocessing steps are conducted on the solar insolation data available from multiple meteorological stations in spatial proximity. The impact of utilizing the spatiotemporal data compared with the temporal data is analyzed. A comprehensive analysis based on multiple error measures is presented to compare the prediction error while employing multiple learning algorithms. It is shown that it is possible to identify the particular station and the particular learning algorithm that contribute the most in improving the solar insolation prediction of a specific location.
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- 2020
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14. A Distributed Convex Relaxation Approach to Solve the Power Flow Problem
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Guangyi Liu, Mohammad E. Khodayar, Saeed D. Manshadi, Jianhui Wang, and Renchang Dai
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Mathematical optimization ,021103 operations research ,Hierarchy (mathematics) ,Computer Networks and Communications ,Computer science ,Iterative method ,0211 other engineering and technologies ,02 engineering and technology ,AC power ,Computer Science Applications ,Moment (mathematics) ,Electric power system ,Quadratic equation ,Control and Systems Engineering ,Scalability ,Convergence (routing) ,Electrical and Electronic Engineering ,Information Systems - Abstract
Power flow is a fundamental problem for analyzing the power system. It is to solve a set of equations with quadratic terms. Procuring a reliable solution methodology for this problem is challenging as the feasibility region for this problem is nonconvex. Iterative approaches were employed to solve the problem, which may fail to provide a solution under certain circumstances such as bad initial point. In this paper, a solution methodology that is capable of providing a reliable solution to the power flow problem is presented. First, by exploiting sparsity in the power network, a convex relaxation for the problem is presented using the first order of the Lasserre hierarchy of moment relaxations. Then, a distributed approach using Jacobi-proximal alternating directions method of multipliers (JP-ADMM) is implemented to efficiently solve the power flow problem. To solve the sub-problems within JP-ADMM approach, the second order of the Lasserre hierarchy of moment relaxations is employed. To illustrate the effectiveness of the proposed approach, several case studies are presented.
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- 2020
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15. A Decision Support System to Enhance Electricity Grid Resilience against Flooding Disasters
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Michael Violante, Hassan Davani, and Saeed D. Manshadi
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decision support system ,flood control ,utility poles ,mathematical programming ,power system ,resilience ,Geography, Planning and Development ,Aquatic Science ,Biochemistry ,Water Science and Technology - Abstract
In different areas across the U.S., there are utility poles and other critical infrastructure that are vulnerable to flooding damage. The goal of this multidisciplinary research is to assess and minimize the probability of utility pole failure through conventional hydrological, hydrostatic, and geotechnical calculations embedded to a unique mixed-integer linear programming (MILP) optimization framework. Once the flow rates that cause utility pole overturn are determined, the most cost-efficient subterranean pipe network configuration can be created that will allow for flood waters to be redirected from vulnerable infrastructure elements. The optimization framework was simulated using the Julia scientific programming language, for which the JuMP interface and Gurobi solver package were employed to solve a minimum cost network flow objective function given the numerous decision variables and constraints across the network. We implemented our optimization framework in three different watersheds across the U.S. These watersheds are located near Whittier, NC; Leadville, CO; and London, AR. The implementation of a minimum cost network flow optimization model within these watersheds produced results demonstrating that the necessary amount of flood waters could be conveyed away from utility poles to prevent failure by flooding.
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- 2022
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16. Natural Gas Short-Term Operation Problem with Dynamics: A Rank Minimization Approach
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Saeed D. Manshadi and Reza Bayani
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General Computer Science ,FOS: Electrical engineering, electronic engineering, information engineering ,Systems and Control (eess.SY) ,Electrical Engineering and Systems Science - Systems and Control - Abstract
Natural gas-fired generation units can hedge against the volatility in the uncertain renewable generation, which may occur during very short periods. It is crucial to utilize models capable of correctly capturing the natural gas network dynamics induced by the volatile demand of gas-fired units. The Weymouth equation is commonly implemented in literature to avoid dealing with the mathematical complications of solving the original governing differential equations of the natural gas dynamics. However, it is shown in this paper that this approach is not reliable in the short-term operation problem. Here, the merit of the non-convex transient model is compared with the simplified Weymouth equation, and the drawbacks of employing the Weymouth equation are illustrated. The results demonstrate how changes in the natural gas demand are met by adjustment in the pressure within pipelines rather than the output of natural gas suppliers. This work presents a convex relaxation scheme for the original non-linear and non-convex natural gas flow equations with dynamics, utilizing a rank minimization approach to ensure the tightness. The proposed method renders a computationally efficient framework that can accurately solve the non-convex non-linear gas operation problem and accurately capture its dynamics. Also, the results suggest that the proposed model improves the solution optimality and solution time compared to the original non-linear non-convex model. Finally, the scalability of the proposed approach is verified in the case study.
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- 2022
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17. Resilient Expansion Planning of Electricity Grid under Prolonged Wildfire Risk
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Reza Bayani and Saeed D. Manshadi
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General Computer Science - Published
- 2023
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18. Quantifying the Risk of Wildfire Ignition by Power Lines under Extreme Weather Conditions
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Reza Bayani, Muhammad Waseem, Saeed D. Manshadi, and Hassan Davani
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FOS: Computer and information sciences ,Control and Systems Engineering ,Computer Networks and Communications ,FOS: Electrical engineering, electronic engineering, information engineering ,Applications (stat.AP) ,Systems and Control (eess.SY) ,Electrical and Electronic Engineering ,Statistics - Applications ,Electrical Engineering and Systems Science - Systems and Control ,Computer Science Applications ,Information Systems - Abstract
Utilities in California conduct Public Safety Power Shut-offs (PSPSs) to eliminate the elevated chances of wildfire ignitions caused by power lines during extreme weather conditions. We propose Wildfire Risk Aware operation planning Problem (WRAP), which enables system operators to pinpoint the segments of the network that should be de-energized. Sustained wind and wind gust can lead to conductor clashing, which could ignite surrounding vegetation. The 3D non-linear vibration equations of power lines are employed to generate a dataset that considers physical, structural, and meteorological parameters. With the help of machine learning techniques, a surrogate model is obtained which quantifies the risk of wildfire ignition by individual power lines under extreme weather conditions. The cases illustrate the superior performance of WRAP under extreme weather conditions in mitigating wildfire risk and serving customers compared to the naive PSPS approach and another method in the literature. Cases are also designated to sensitivity analysis of WRAP to critical load-serving control parameters in different weather conditions. Finally, a discussion is provided to explore our wildfire risk monetization approach and its implications for WRAP decisions.
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- 2021
19. Decomposing convexified <scp>security‐constrained</scp> AC optimal power flow problem with automatic generation control reformulation
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Saeed D. Manshadi and Muhammad Waseem
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Mathematical optimization ,Power flow ,Automatic Generation Control ,Computer science ,Modeling and Simulation ,Energy Engineering and Power Technology ,Electrical and Electronic Engineering ,Benders' decomposition - Published
- 2021
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20. Coordinated Scheduling of Electric Vehicles Within Zero Carbon Emission Hybrid AC/DC Microgrids
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Reza Bayani, Arash Farokhi Soofi, and Saeed D. Manshadi
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Computer science ,business.industry ,Scheduling (production processes) ,Systems and Control (eess.SY) ,Electrical Engineering and Systems Science - Systems and Control ,Automotive engineering ,Energy storage ,Power (physics) ,System requirements ,Peak demand ,Computer data storage ,FOS: Electrical engineering, electronic engineering, information engineering ,Inverter ,Microgrid ,business - Abstract
Microgrids with AC/DC architecture benefit from advantages of both AC and DC power. In this paper, daily operation problem for a zero-carbon AC/DC microgrid in presence of electric vehicles (EVs) is considered. In this framework, EVs' batteries are mobile energy storage systems, which allow desirable operation of the microgrid during peak demand hours. This study shows in absence of storage system, EVs' batteries can be properly managed to satisfy the system requirements. In the case studies, several sensitivity analyses based on variations in battery degradation costs, solar irradiance, and inverter capacity are investigated., Comment: ITEC 2021
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- 2021
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21. A convex relaxation approach for power flow problem
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Jianhui Wang, Saeed D. Manshadi, Renchang Dai, Guangyi Liu, and Mohammad E. Khodayar
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Convex relaxation ,TK1001-1841 ,Mathematical optimization ,Network reconfiguration ,Renewable Energy, Sustainability and the Environment ,Computer science ,Power flow ,020209 energy ,020208 electrical & electronic engineering ,TJ807-830 ,Energy Engineering and Power Technology ,Perturbation (astronomy) ,02 engineering and technology ,Positive-definite matrix ,Renewable energy sources ,Electric power system ,Production of electric energy or power. Powerplants. Central stations ,Scalability ,0202 electrical engineering, electronic engineering, information engineering ,Ill-conditioned power flow ,Initial point - Abstract
A solution to the power flow problem is imperative for many power system applications and several iterative approaches are employed to achieve this objective. However, the chance of finding a solution is dependent on the choice of the initial point because of the non- convex feasibility region of this problem. In this paper, a non-iterative approach that leverages a convexified relaxed power flow problem is employed to verify the existence of a feasible solution. To ensure the scalability of the proposed convex relaxation, the problem is formulated as a sparse semi-definite programming problem. The variables associated with each maximal clique within the network form several positive semidefinite matrices. Perturbation and network reconfiguration schemes are employed to improve the tightness of the proposed convex relaxation in order to validate the existence of a feasible solution for the original non-convex problem. Multiple case studies including an ill-conditioned power flow problem are examined to show the effectiveness of the proposed approach to find a feasible solution.
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- 2019
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22. A Framework for Expansion Planning of Data Centers in Electricity and Data Networks Under Uncertainty
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Ishfaq Ahmad, Mohammad E. Khodayar, Ali Vafamehr, Jeremy Lin, and Saeed D. Manshadi
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Service (systems architecture) ,Engineering ,Mathematical optimization ,General Computer Science ,Operations research ,business.industry ,020209 energy ,Reliability (computer networking) ,020208 electrical & electronic engineering ,Cloud computing ,Time horizon ,02 engineering and technology ,Electronic mail ,Server ,0202 electrical engineering, electronic engineering, information engineering ,Electricity ,business ,Integer programming - Abstract
This paper presents the expansion planning for data centers and data routes in the data and electricity networks considering the uncertainties in the planning horizon to ensure an acceptable rate of service to the requests received from the end-users in the data network. The objective is to determine the location and capacity of the data centers as well as the required data routes while considering the imposed constraints in the electricity and data networks. The installation cost of data centers and data routes, as well as the expected operation cost of the data centers, are minimized. The proposed problem addressed the uncertainties in the expansion planning of the electricity networks including the availability of renewable generation resources, the variations in electricity demand, the availability of generation and transmission components in the electricity network, and the uncertainties in the number of requests received by the user groups in the data network. The problem is formulated as a mixed integer linear programming problem and Bender decomposition and electricity price signals are used to capture the interaction among the data and electricity networks. The presented case study shows the effectiveness of the proposed approach.
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- 2019
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23. Stochastic Expansion Planning of Various Energy Storage Technologies in Active Power Distribution Networks
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Diba Zia Amirhosseini, Reza Sabzehgar, Poria Fajri, and Saeed D. Manshadi
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Battery (electricity) ,redox flow battery (RFB) ,power optimization ,Test bench ,Computer science ,020209 energy ,Geography, Planning and Development ,TJ807-830 ,02 engineering and technology ,lithium-ion battery ,Management, Monitoring, Policy and Law ,stochastic expansion planning ,TD194-195 ,Energy storage ,Renewable energy sources ,smart distribution network ,second order cone programming (SOCP) ,0202 electrical engineering, electronic engineering, information engineering ,GE1-350 ,Environmental effects of industries and plants ,Renewable Energy, Sustainability and the Environment ,business.industry ,Cost of operation ,Photovoltaic system ,AC power ,021001 nanoscience & nanotechnology ,battery energy storage system (BESS) ,Renewable energy ,Reliability engineering ,Power optimization ,Environmental sciences ,power distribution network ,0210 nano-technology ,business - Abstract
This work aims to minimize the cost of installing renewable energy resources (photovoltaic systems) as well as energy storage systems (batteries), in addition to the cost of operation over a period of 20 years, which will include the cost of operating the power grid and the charging and discharging of the batteries. To this end, we propose a long-term planning optimization and expansion framework for a smart distribution network. A second order cone programming (SOCP) algorithm is utilized in this work to model the power flow equations. The minimization is computed in accordance to the years (y), seasons (s), days of the week (d), time of the day (t), and different scenarios based on the usage of energy and its production (c). An IEEE 33-bus balanced distribution test bench is utilized to evaluate the performance, effectiveness, and reliability of the proposed optimization and forecasting model. The numerical studies are conducted on two of the highest performing batteries in the current market, i.e., Lithium-ion (Li-ion) and redox flow batteries (RFBs). In addition, the pros and cons of distributed Li-ion batteries are compared with centralized RFBs. The results are presented to showcase the economic profits of utilizing these battery technologies.
- Published
- 2021
24. Demand Variation Impact on Tightness of Convex Relaxation Approaches for the ACOPF Problem
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Saeed D. Manshadi and Arash Farokhi-Soofi
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Mathematical optimization ,Computer science ,Convex relaxation ,Relaxation (iterative method) ,Systems and Control (eess.SY) ,Variation (game tree) ,Electrical Engineering and Systems Science - Systems and Control ,Measure (mathematics) ,Power flow ,Electric power system ,Optimization and Control (math.OC) ,FOS: Mathematics ,FOS: Electrical engineering, electronic engineering, information engineering ,Mathematics - Optimization and Control - Abstract
This paper investigates the impact of the changes in the demand of power systems on the quality of the solution procured by the convex relaxation methods for the AC optimal power flow (ACOPF) problem. This investigation needs various measures to evaluate the tightness of the solution procured by the convex relaxation approaches. Therefore, three tightness measures are leveraged to illustrate the performance of convex relaxation methods under different demand scenarios. The main issue of convex relaxation methods is recovering an optimal solution which is not necessarily feasible for the original non-convex problem in networks with cycles. Thus, a cycle measure is introduced to evaluate the performance of relaxation schemes. The presented case study investigates the merit of using various tightness measures to evaluate the performance of various relaxation methods under different circumstances., 6 Pages, 16 Figures, This paper is accepted for the 52nd North American Power Symposium
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- 2021
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25. Short-term Operational Planning Problem of the Multiple-Energy Carrier Hybrid AC/DC Microgrids
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Reza Bayani, Mohammed Bushlaibi, and Saeed D. Manshadi
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FOS: Electrical engineering, electronic engineering, information engineering ,Systems and Control (eess.SY) ,Electrical Engineering and Systems Science - Systems and Control - Abstract
In this paper, the short-term operation problem for a multiple energy carrier hybrid AC/DC microgrid is discussed. The hybrid microgrid consists of AC and DC parts, which are connected by means of inverters as well as natural gas network. The microgrid includes photovoltaic (PV) unit, wind turbine (WT), battery storage unit and gas-fired microturbines. A mixed integer linear programming is formed to minimize the overall cost of the microgrid including cost of natural gas supply, the value of lost load and battery degradation cost. The presented case study explored the importance of inverter characteristics and pipeline capacity.
- Published
- 2020
26. Autonomous Charging of Electric Vehicle Fleets to Enhance Renewable Generation Dispatchability
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Guangyi Liu, Renchang Dai, Saeed D. Manshadi, Yawei Wang, and Reza Bayani
- Subjects
FOS: Computer and information sciences ,Flexibility (engineering) ,Service (systems architecture) ,Schedule ,Computer Science - Machine Learning ,business.product_category ,business.industry ,Computer science ,Load following power plant ,Systems and Control (eess.SY) ,computer.software_genre ,Electrical Engineering and Systems Science - Systems and Control ,Automotive engineering ,Machine Learning (cs.LG) ,Electronic, Optical and Magnetic Materials ,News aggregator ,General Energy ,Electric vehicle ,FOS: Electrical engineering, electronic engineering, information engineering ,Reinforcement learning ,Electrical and Electronic Engineering ,business ,computer ,Solar power - Abstract
A total 19% of generation capacity in California is offered by PV units and over some months, more than 10% of this energy is curtailed. In this research, a novel approach to reduce renewable generation curtailments and increasing system flexibility by means of electric vehicles' charging coordination is represented. The presented problem is a sequential decision making process, and is solved by fitted Q-iteration algorithm which unlike other reinforcement learning methods, needs fewer episodes of learning. Three case studies are presented to validate the effectiveness of the proposed approach. These cases include aggregator load following, ramp service and utilization of non-deterministic PV generation. The results suggest that through this framework, EVs successfully learn how to adjust their charging schedule in stochastic scenarios where their trip times, as well as solar power generation are unknown beforehand., This project was initially submitted to CSEE Journal of Power and Energy Systems in August 2020. The current version was submitted in December 2020
- Published
- 2020
27. Farm electrification: A road-map to decarbonize the agriculture sector
- Author
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Arash Farokhi Soofi, Saeed D. Manshadi, and Araceli Saucedo
- Subjects
Management of Technology and Innovation ,Business and International Management ,Energy (miscellaneous) - Published
- 2022
- Full Text
- View/download PDF
28. Coordinated Operation of Electricity and Natural Gas Systems: A Convex Relaxation Approach
- Author
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Mohammad E. Khodayar and Saeed D. Manshadi
- Subjects
Semidefinite programming ,Mathematical optimization ,021103 operations research ,General Computer Science ,business.industry ,Computer science ,020209 energy ,Reliability (computer networking) ,0211 other engineering and technologies ,02 engineering and technology ,Nonlinear programming ,Electric power transmission ,Lead (geology) ,Natural gas ,0202 electrical engineering, electronic engineering, information engineering ,Relaxation (approximation) ,Electricity ,business ,Time complexity - Abstract
The variability in the generation dispatch of the natural gas generation units will lead to fluctuation in natural gas demand profile that could further jeopardize the security of the natural gas network. The coordinated operation of electricity and natural gas infrastructure systems would help to improve the security and reliability measures in both infrastructure systems and mitigate the risk of demand curtailment. The electricity and natural gas network operation problems are non-convex mixed-integer nonlinear programming problems that are hard to solve in polynomial time. The non-convex feasible regions are formed by the Weymouth constraint and the introduced binary commitment decision variables in the natural gas and electricity network operation problems, respectively. This paper utilized a sparse semidefinite programming (SDP) relaxation to procure the optimal solution for the coordinated operation of electricity and natural gas networks. The presented algorithm leverages the sparseness of the natural gas network to construct several small matrices of lifting variables that are used to form a tight and traceable SDP relaxation. A set of valid constraints that tighten the relaxation ensures the exactness of the solution procured from the relaxed problem. The effectiveness of the presented approach is shown in case studies.
- Published
- 2020
- Full Text
- View/download PDF
29. Risk-Averse Generation Maintenance Scheduling With Microgrid Aggregators
- Author
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Saeed D. Manshadi and Mohammad E. Khodayar
- Subjects
Marginal cost ,Mathematical optimization ,Engineering ,General Computer Science ,business.industry ,020209 energy ,Scheduling (production processes) ,02 engineering and technology ,Maintenance engineering ,Nameplate capacity ,Electric power system ,Electric power transmission ,0202 electrical engineering, electronic engineering, information engineering ,Microgrid ,business ,Integer programming - Abstract
This paper presents risk-averse long-term generation maintenance scheduling in the power systems with a considerable installed capacity of microgrids. Microgrid aggregators facilitate the participation of microgrids in the wholesale market. In this paper, the effect of microgrids as controllable demand entities on the generation maintenance scheduling practices in the power system is investigated. The uncertainties in the marginal cost of generation in microgrids, the generation capacity installed within the microgrids, and the system electricity demand are captured using respective nominal values and uncertainty intervals. Moreover, the contingencies in transmission network are addressed by introducing additional variables. A two-stage robust optimization problem is formulated to determine a trade-off among the performance and conservativeness of the procured solution in the long-term operation horizon. The problem is formulated as a mixed integer linear programming problem and column-and-constraint generation procedure is used to solve the problem. The master problem minimizes the maintenance cost of the generation units subjected to generation units’ constraints in the long-term operation horizon and the sub-problems determine the worst realization of the uncertainties and generate additional constraints in the master problem. The proposed methodology is applied to two case studies for a 6-bus and IEEE 118-bus power systems.
- Published
- 2018
- Full Text
- View/download PDF
30. Wireless Charging of Electric Vehicles in Electricity and Transportation Networks
- Author
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Halit Üster, Saeed D. Manshadi, Khaled Abdelghany, and Mohammad E. Khodayar
- Subjects
Engineering ,General Computer Science ,business.industry ,020209 energy ,Economic dispatch ,02 engineering and technology ,Flow network ,Inductive charging ,Traffic flow ,7. Clean energy ,Charging station ,Transport engineering ,Stand-alone power system ,Hardware_GENERAL ,0202 electrical engineering, electronic engineering, information engineering ,Wireless ,Electricity ,business - Abstract
Wireless charging station (WCS) enables in-motion charging of the electric vehicles (EVs). This paper presents the short-term operation of WCS by capturing the interdependence among the electricity and transportation networks. In the transportation network, the total travel cost consists of the cost associated with the travel time and the cost of utilized electricity along each path. Each EV takes the path that minimizes its total travel cost. In the electricity network, the changes in WCS demand as a result of changes in the traffic flow pattern impacts the price of electricity. The changes in the price of electricity further affect the charging strategy of the EVs and the associated traffic flow pattern. The coordination between electricity and transportation networks would help mitigate congestion in the electricity network by routing the traffic flow in the transportation network. The presented formulation leverages decentralized optimization to address the economic dispatch in the electricity network as well as the traffic assignment in the transportation network. The presented case studies highlight the merit of the presented model and the developed algorithms for the coordinated operation of WCS in electricity and transportation networks.
- Published
- 2018
- Full Text
- View/download PDF
31. Preventive reinforcement under uncertainty for islanded microgrids with electricity and natural gas networks
- Author
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Mohammad E. Khodayar and Saeed D. Manshadi
- Subjects
TK1001-1841 ,Optimization problem ,Microgrid ,Computer science ,020209 energy ,media_common.quotation_subject ,Deliberate disruption ,0211 other engineering and technologies ,Energy Engineering and Power Technology ,TJ807-830 ,02 engineering and technology ,Renewable energy sources ,Production of electric energy or power. Powerplants. Central stations ,Electricity ,Natural gas ,0202 electrical engineering, electronic engineering, information engineering ,Energy supply ,Resilience (network) ,media_common ,021110 strategic, defence & security studies ,Electric power distribution ,Renewable Energy, Sustainability and the Environment ,business.industry ,Uncertainty ,Reinforcement ,Interdependence ,Risk analysis (engineering) ,business - Abstract
This paper presents an approach to determine the vulnerable components in the electricity and natural gas networks of an islanded microgrid that is exposed to deliberate disruptions. The vulnerable components in the microgrid are identified by solving a bi-level optimization problem. The objective of the upper-level problem (the attacker’s objective) is to maximize the expected operation cost of microgrid by capturing the penalties associated with the curtailed electricity and heat demands as a result of the disruption. In the lower-level problem, the adverse effects of disruptions and outages in the electricity and natural gas networks are mitigated by leveraging the available resources in the microgrid (the defender’s objective). The uncertainties in the electricity and heat demand profiles were captured by introducing scenarios with certain probabilities. The formulated bi-level optimization problem provides effective guidelines for the microgrid operator to adopt the reinforcement strategies in the interdependent natural gas and electricity distribution networks and improve the resilience of energy supply. The presented case study shows that as more components are reinforced in the interdependent energy networks, the reinforcement cost is increased and the expected operation cost as a result of disruption is decreased.
- Published
- 2018
- Full Text
- View/download PDF
32. The short-term operation of microgrids in a transactive energy architecture
- Author
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Ali Vafamehr, Mohammad E. Khodayar, and Saeed D. Manshadi
- Subjects
Soundness ,Engineering ,business.industry ,020209 energy ,Reliability (computer networking) ,Control (management) ,02 engineering and technology ,Power (physics) ,Term (time) ,Management of Technology and Innovation ,Distributed generation ,Sustainability ,0202 electrical engineering, electronic engineering, information engineering ,Systems engineering ,Business and International Management ,Architecture ,business ,Simulation ,Energy (miscellaneous) - Abstract
The transactive energy framework provides value-driven control schemes that facilitate power delivery with higher efficiency, sustainability and economic soundness while ensuring the reliability and security of the energy infrastructure system. This article addresses the challenges and solution frameworks for the short-term operation of distributed energy resources, controllable demands, and microgrids in a transactive energy architecture, with a focus on the distributed energy management of hybrid AC/DC microgrids.
- Published
- 2016
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- View/download PDF
33. A Tight Convex Relaxation for the Natural Gas Operation Problem
- Author
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Mohammad E. Khodayar and Saeed D. Manshadi
- Subjects
Semidefinite programming ,Mathematical optimization ,General Computer Science ,Computer science ,business.industry ,020209 energy ,02 engineering and technology ,Investment (macroeconomics) ,Pipeline transport ,Electricity generation ,Natural gas ,0202 electrical engineering, electronic engineering, information engineering ,Electricity ,business ,Sparse matrix ,Integer (computer science) - Abstract
With the increase in the investment in the gas-fired electricity generation technology, capturing the operation constraints of the natural gas network in the electricity and natural gas operation problems becomes more crucial. The non-convexity in the feasibility region formed by natural gas network constraints will impede achieving the global solution for these problems. This letter proposed an algorithm to procure a tight and tractable convex relaxation for the natural gas network constraints that can be leveraged in the electricity and/or natural gas network operation problems. The merit of the proposed algorithm is illustrated using a case study and the efficiency of the proposed formulation is compared with mixed integer linear and semidefinite programming formulations.
- Published
- 2018
- Full Text
- View/download PDF
34. Electricity grid resilience amid various natural disasters: Challenges and solutions
- Author
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Muhammad Waseem and Saeed D. Manshadi
- Subjects
020209 energy ,media_common.quotation_subject ,02 engineering and technology ,010501 environmental sciences ,01 natural sciences ,Electric power system ,Lead (geology) ,Risk analysis (engineering) ,Vulnerability assessment ,Management of Technology and Innovation ,Electricity grid ,0202 electrical engineering, electronic engineering, information engineering ,Psychological resilience ,Business ,Business and International Management ,Natural disaster ,0105 earth and related environmental sciences ,Energy (miscellaneous) ,media_common - Abstract
Electricity grid vulnerabilities can lead to outages with prolonged load interruptions. Research activities on the impact of natural disasters on power system are underway to figure out the outage reasons, identify the ways to prepare for preventive actions, and increase the resiliency for the corrective and preventive actions under such scenarios. This paper presented a review of the methods for the electricity grid vulnerability analysis, pre-disaster recovery planning, and post-disaster restoration models.
- Published
- 2020
- Full Text
- View/download PDF
35. A novel energy-reliability market framework for participation of microgrids in transactive energy system
- Author
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M. S. Naderi, Mehrdad Abedi, Gevork B. Gharehpetian, Saeed D. Manshadi, and Mehrdad Mallaki
- Subjects
Computer science ,020209 energy ,020208 electrical & electronic engineering ,Energy Engineering and Power Technology ,02 engineering and technology ,Secondary market ,AC power ,Reliability engineering ,Competition (economics) ,Market mechanism ,Order (exchange) ,Reputation system ,0202 electrical engineering, electronic engineering, information engineering ,Energy market ,Electrical and Electronic Engineering ,Reliability (statistics) - Abstract
This paper proposes a novel framework for a distribution level transactive energy system in order to facilitate energy transaction among microgrids while improving efficiency and reliability of distribution system. The proposed market mechanism simultaneously considers competition among participants, distribution network reliability and operation conditions. To improve the reliability of supply, a reputation system is proposed, which ranks energy suppliers according to a reputation index based on their long term energy transaction history. A demand-oriented approach is utilized for extracting local energy prices. The local energy pricing scheme is based on combination of reputation scores, loss reduction indices and demand-side offering prices. A secondary market is proposed to use the capacity of energy suppliers for reliability support service in distribution network. The local pricing scheme for the reliability market is based on outage scenarios and customer interruption penalties. It is shown that the proposed model enforces energy suppliers to honor their generation commitments and prevents them from greedy behavior in the market. The energy market mechanism improves the reliability of supply and intensifies competition among participants. This mechanism directly reduces active power losses in distribution network and indirectly improves nodal voltage and branch loading profile. Moreover, utilizing the capacity of microgrids in improving the reliability of network, postpones network reinforcement investments needed for keeping the service continuity indices in acceptable range.
- Published
- 2020
- Full Text
- View/download PDF
36. Decentralized operation framework for hybrid AC/DC microgrid
- Author
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Mohammad E. Khodayar and Saeed D. Manshadi
- Subjects
Operation planning ,Engineering ,Optimization problem ,Decentralized optimization ,business.industry ,020209 energy ,Control engineering ,02 engineering and technology ,AC power ,Converters ,Dc converter ,Scheduling (computing) ,0202 electrical engineering, electronic engineering, information engineering ,Electronic engineering ,Microgrid ,business - Abstract
This paper proposes a methodology to attain the optimal generation scheduling of hybrid AC/DC microgrids. The hybrid microgrid consists of AC and DC networks with respective generation and demand resources that are connected by bi-directional AC/DC converters. The proposed methodology leverages decentralized optimization framework that uses the dispatch of the AC/DC converter to facilitate the coordinated operation of AC and DC networks. The presented framework utilizes an iterative approach to determine the optimal operation schedule for the hybrid AC/DC microgrid using distinct optimization problems. The results illustrate the effectiveness of the presented approach for operation planning of hybrid AC/DC microgrids.
- Published
- 2016
- Full Text
- View/download PDF
37. A hierarchical electricity market structure for the smart grid paradigm
- Author
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Saeed D. Manshadi and Mohammad E. Khodayar
- Subjects
General Computer Science ,Sequential game ,Operations research ,Computer science ,business.industry ,020209 energy ,02 engineering and technology ,Bidding ,Microeconomics ,Market structure ,Smart grid ,Complete information ,0202 electrical engineering, electronic engineering, information engineering ,Electricity market ,Energy market ,Electricity ,business - Abstract
This paper proposed a hierarchical structure for the electricity market to facilitate the coordination of energy markets in distribution and transmission networks. The proposed market structure enables the integration of microgrids, which provide energy and ancillary services in distribution networks. In the proposed hierarchical structure, microgrids participate in the energy market at the distribution networks settled by the distribution network operator (DNO), and load aggregators (LAs) interact with microgrids and generation companies (GENCOs) to import/export energy to/from the distribution network electricity markets from/to the wholesale electricity market. The proposed approach addressed the synergy of energy markets by introducing dynamic game with complete information for GENCOs, microgrids, and LAs. The proposed hierarchical competition is composed of bi-level optimization problems in which the respective upper-level problems maximize the individual market participants’ payoff, and the lower-level problems represent the market settlement accomplished by the DNO or the independent system operator. The bi-level problems are solved by developing sensitivity functions for market participants’ payoff with respect to their bidding strategies. A case study is employed to illustrate the effectiveness of the proposed approach.
- Published
- 2016
- Full Text
- View/download PDF
38. Expansion of Autonomous Microgrids in Active Distribution Networks
- Author
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Mohammad E. Khodayar and Saeed D. Manshadi
- Subjects
Mathematical optimization ,Optimization problem ,General Computer Science ,Distribution networks ,business.industry ,020209 energy ,Reliability (computer networking) ,02 engineering and technology ,Matrix decomposition ,Computer Science::Hardware Architecture ,Graph spectra ,Computer Science::Systems and Control ,Distributed generation ,0202 electrical engineering, electronic engineering, information engineering ,business ,Eigendecomposition of a matrix ,Mathematics - Abstract
This paper presents an approach to transform the active distribution network with distributed energy resources into multiple autonomous microgrids. The distribution network consists of several generation resources and demand entities, that are clustered into autonomous microgrids. The proposed problem is formulated as a bi-level optimization problem that leverages the Eigen decomposition in the graph spectra of the distribution network to determine the boundaries for microgrids and a mixed-integer programming problem that minimizes the expansion cost within microgrids. The presented approach is evaluated in a case study for a distribution network considering the imposed reliability constraints. The outcomes indicate the effectiveness of the proposed algorithm to determine the expansion strategies to form autonomous microgrids in active distribution networks.
- Published
- 2016
- Full Text
- View/download PDF
39. Smart charging station and energy management by iot.
- Author
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Upadhyay, Anju and Maurya, Sanjay Kumar
- Subjects
ENERGY management ,NATURAL resources ,USER charges ,INTERNET of things ,CELL phones ,ELECTRIC vehicles - Abstract
As electric vehicles have been essential for the operators and for the nation. The availability of coal, petroleum, diesel, ade these vehicles is essential for the nation. Future demands of vehicles are increasing day by day so that the natural resources tooperate. These are increasing day by day. Petrol, diesel rates have become too much raised so normal people cannot afford this hike in the rates of petrol, diesel. So the electric vehicle is becoming important for the operators. The charging station is also required for charging the battery. The user and operator at the charging station have to wait there for charging the battery, they donot know the exact time taken by the charging of the battery. In this research paper, the user and charging station operator willget the intimation of the State of charge of the battery. When the battery is 95% charged then the user and operator will get intimation on the mobile phone. This model has the advanced technology that if the charging is done 100 % then SOC of the battery will be measured and charging will be shut off. The operator does not have to wait at the charging station to get it fully charged, the operator will get the indication in his mobile for the full charging of the battery so that he can go to the charging station at an accurate time. This will help to reduce energy wastage in the consumption of energy. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
40. Zero-Carbon AC/DC Microgrid Planning by Leveraging Vehicle-to-Grid Technologies.
- Author
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Gagangras, Anuja, Manshadi, Saeed D., and Farokhi Soofi, Arash
- Subjects
MICROGRIDS ,RENEWABLE energy sources ,CARBON nanofibers ,MATHEMATICAL optimization - Abstract
This paper explores the strategic planning required for a zero-carbon-emission AC/DC microgrid, which integrates renewable energy sources and electric vehicles (EVs) within its framework. It considers the rapidly growing adoption of EVs and the advent of vehicle-to-grid (V2G) technology, which allows EVs to return energy to the grid during peak demand. The study aims to apply optimization techniques to minimize the installation cost associated with various microgrid components. In the case of microgrids, there are decision-making scenarios where multiple alternatives are present; optimization is a valuable technique for efficiently planning and designing microgrids. This work showcases case studies and sensitivity analysis plots, illustrating how output power fluctuates due to uncertainty in renewable energy sources and the absence of EVs. The findings show how V2G contributes to the demand when renewable generation is low. The sensitivity analysis also provides insights into how the unit cost is affected by demand fluctuations. In summary, the principal contribution of this study is developing a comprehensive planning framework for AC/DC microgrids. This framework considers the escalating adoption of EVs and offers practical solutions for future microgrid designs. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
41. Impact of Transportation Electrification on the Electricity Grid—A Review.
- Author
-
Bayani, Reza, Soofi, Arash F., Waseem, Muhammad, and Manshadi, Saeed D.
- Subjects
ELECTRIFICATION ,ELECTRIC power production ,ELECTRICITY ,RENEWABLE energy transition (Government policy) ,POWER resources ,ELECTRIC automobiles - Abstract
Transportation electrification is a pivotal factor in accelerating the transition to sustainable energy. Electric vehicles (EVs) can operate either as loads or distributed power resources in vehicle-to-grid (V2G) or vehicle-to-vehicle (V2V) linkage. This paper reviews the status quo and the implications of transportation electrification in regard to environmental benefits, consumer side impacts, battery technologies, sustainability of batteries, technology trends, utility side impacts, self-driving technologies, and socio-economic benefits. These are crucial subject matters that have not received appropriate research focus in the relevant literature and this review paper aims to explore them. Our findings suggest that transitioning toward cleaner sources of electricity generation should be considered along with transportation electrification. In addition, the lower cost of EV ownership is correlated with higher EV adoption and increased social justice. It is also found that EVs suffer from a higher mile-per-hour charging rate than conventional vehicles, which is an open technological challenge. Literature indicates that electric vehicle penetration will not affect the power grid in short term but charging management is required for higher vehicle penetration in the long-term scenario. The bi-directional power flow in a V2G linkage enhances the efficiency, security, reliability, scalability, and sustainability of the electricity grid. Vehicle-to-Vehicle (V2V) charging/discharging has also been found to be effective to offload the distribution system in presence of high EV loads. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
42. Natural Gas Short-Term Operation Problem With Dynamics: A Rank Minimization Approach.
- Author
-
Bayani, Reza and Manshadi, Saeed D.
- Abstract
Natural gas-fired generation units can hedge against the volatility in the uncertain renewable generation, which may occur during very short periods. It is crucial to utilize models capable of correctly capturing the natural gas network dynamics induced by the volatile demand of gas-fired units. The Weymouth equation is commonly implemented in literature to avoid dealing with the mathematical complications of solving the original governing differential equations of the natural gas dynamics. However, it is shown in this paper that this approach is not reliable in the short-term operation problem. Here, the merit of the non-convex transient model is compared with the simplified Weymouth equation, and the drawbacks of employing the Weymouth equation are illustrated. The results demonstrate how changes in the natural gas demand are met by adjustment in the pressure within pipelines rather than the output of natural gas suppliers. This work presents a convex relaxation scheme for the original non-linear and non-convex natural gas flow equations with dynamics, utilizing a rank minimization approach to ensure the tightness. The proposed method renders a computationally efficient framework that can accurately solve the non-convex non-linear gas operation problem and accurately capture its dynamics. Also, the results suggest that the proposed model improves the solution optimality and solution time compared to the original non-linear non-convex model. Finally, the scalability of the proposed approach is verified in the case study. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
43. Decomposing convexified security‐constrained AC optimal power flow problem with automatic generation control reformulation.
- Author
-
Waseem, Muhammad and Manshadi, Saeed D.
- Subjects
ELECTRICAL load ,AUTOMATIC control systems ,PARALLEL programming ,PARALLEL processing ,SCALABILITY - Abstract
Summary: This paper presents a reformulation for the automatic generation control (AGC) in a decomposed convex relaxation algorithm. It finds an optimal solution to the AC optimal power flow (ACOPF) problem that is secure against a large set of contingencies. The original ACOPF problem which represents the system without contingency constraints, is convexified by applying the second‐order cone relaxation method. The contingencies are filtered to distinguish those that will be treated with preventive actions from those that will be left for corrective actions. The selected contingencies for preventive action are included in the set of security constraints. Benders decomposition is employed to decompose the convexified Security‐Constrained ACOPF problem into a master problem and several security check subproblems. Subproblems are evaluated in a parallel computing process with enhanced computational efficiency. AGC within each subproblem is modeled by a set of proposed valid constraints, so the procured solution is the physical response of each generation unit during a contingency. Benders optimality cuts are generated for the subproblems having mismatches and the cuts are passed to the master problem to encounter the security‐constraints. The accuracy of the relaxation results is verified using the presented tightness measure. The effectiveness of the presented valid AGC constraints and scalability of the proposed algorithm is demonstrated in several case studies. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
44. A SOCP Relaxation for Cycle Constraints in the Optimal Power Flow Problem.
- Author
-
Soofi, Arash Farokhi, Manshadi, Saeed D., Liu, Guangyi, and Dai, Renchang
- Abstract
This article presented a convex relaxation approach for the optimal power flow problem. The proposed approach leveraged the second-order cone programming (SOCP) relaxation to tackle the non-convexity within the feasible region of the power flow problem. Recovering an optimal solution that is feasible for the original non-convex problem is challenging for networks with cycles. The main challenge is the lack of convex constraints to present the voltage angles within a cycle. This article aims to fill this gap by presenting a convex constraint enforcing the sum of voltage angles over a cycle to be zero. To this end, the higher-order moment relaxation matrix associated with each maximal clique of the network is formed. The elements of this matrix are utilized to form a convex constraint enforcing the voltage angle summation over each cycle. To keep the computation burden of leveraging the higher-order moment relaxation low, a set of second-order cone constraints are applied to relate the elements of the higher-order moment relaxation matrix. The case study presented the merit of this work by comparing the solution procured by the introduced approach with other relaxation schemes. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
45. Strategic Convergence Bidding in Nodal Electricity Markets: Optimal Bid Selection and Market Implications.
- Author
-
Kohansal, Mahdi, Sadeghi-Mobarakeh, Ashkan, Manshadi, Saeed D., and Mohsenian-Rad, Hamed
- Subjects
ELECTRICITY markets ,INDEPENDENT system operators ,MARGINAL pricing ,BILEVEL programming ,ELECTRICITY ,PRICE increases - Abstract
Convergence bidding (CB), a.k.a., virtual bidding (VB), is a market mechanism facilitated by Independent System Operators (ISOs) in wholesale electricity markets to help lower the gap between the prices in the day-ahead market (DAM) and prices in the real-time market (RTM). In this paper, we seek to answer two questions: 1) how can a strategic market participant maximize its profit when submitting CBs? 2) how can such strategically placed CBs affect the price gaps? Answering these questions is not straightforward but the results are insightful. The bidding problem in this context is a bi-level optimization, where the upper-level is about maximizing the profit for the convergence bidder and the lower-level is the economic dispatch problem. By solving the formulated bidding problem, we investigate the impact of strategic CBs on the DAM and RTM locational marginal prices (LMPs) under various practical scenarios. We demonstrate the scenarios under which a strategic CB, whether on its own, or when it is submitted jointly with a physical demand or physical supply bid, can or cannot work as intended, and result in decreasing or increasing the price gap in nodal electricity markets. We also examine how the performance of strategic CBs can be affected by uncertainty in demand or generation bids as well as physical contingencies in the power system, such as transmission line tripping. Special cases, such as net-zero convergence bidding are studied. The long-term performance of strategic convergence bidding is investigated. The above and other market implications are discussed in multiple case studies. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
46. Strategic Behavior of In-Motion Wireless Charging Aggregators in the Electricity and Transportation Networks.
- Author
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Manshadi, Saeed D. and Khodayar, Mohammad E.
- Subjects
WIRELESS power transmission ,ELECTRIC charge ,ELECTRICITY ,INFRASTRUCTURE (Economics) ,TRAFFIC assignment - Abstract
This paper presents a framework to determine the strategic bidding of the wireless charging aggregators that operate wireless charging stations to provide in-motion charging services for the electric vehicles. The proposed framework captures the interactions between the electricity and transportation networks through competition among the wireless charging aggregators. Wireless charging aggregators participate in the wholesale electricity market to minimize the cost of gained energy from the bulk electricity network. In the retail wireless charging market, wireless charging aggregators compete to maximize their revenue by offering energy to the electric vehicles that are traveling on the transportation links. The strategic behavior of the wireless charging aggregators highlights the interdependence between the electricity and transportation infrastructure systems. In each system, the strategic behavior of the entities is determined by formulating a bi-level optimization problem which is further transformed into a mathematical problem with equilibrium constraints. The upper-level problem maximizes the profit of the entities while the lower level problem ensures the balance between the demand and supply in each infrastructure system. The demand and supply balance is guaranteed by the optimal power flow in the electricity network and the user equilibrium traffic assignment in the transportation network. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
47. Data from San Diego State University Provide New Insights into Food and Farming (Carbon-aware Operation of Resilient Vertical Farms In Active Distribution Networks).
- Subjects
VERTICAL farming ,AGRICULTURE ,CARBON nanofibers ,STATE universities & colleges ,AGRICULTURAL technology ,FOOD supply ,ENERGY demand management - Abstract
A recent report from San Diego State University explores the potential of vertical farming as a sustainable solution to enhance food supply resilience and reduce carbon emissions in the agriculture sector. The study suggests that the proximity of food production to consumers can improve food supply resilience, and leveraging renewable resources to power vertical farms can mitigate their carbon emissions. The researchers propose a model to optimize the operation schedule of vertical farms within active distribution networks, considering demand and solar generation uncertainties. The study concludes that the demand response of vertical farms can reduce carbon emissions by up to 70% and decrease the operation cost of the electricity network by 10%. [Extracted from the article]
- Published
- 2024
48. Optimal Switch Placement in Distribution Systems: A High-Accuracy MILP Formulation.
- Author
-
Shahbazian, Abbas, Fereidunian, Alireza, and Manshadi, Saeed D.
- Abstract
A new solution method is introduced to the problem of optimally deploying manual and automatic switches in distribution systems, where the product of two continuous variables and the inverse of a continuous variable are reformulated as a linear relation. This leads to a (mixed integer linear problem) MILP power flow formulation too. The objective function includes cost and reliability. The cost term itself includes capital investment, installation, and maintenance costs (MC) as well as customer interruption cost (CIC); while the reliability term is represented by system average interruption duration index (SAIDI). The problem is formulated as a MILP, which guarantees a global optimal solution. The effectiveness of the proposed method is validated through various case studies and sensitivity analyses on the RBTS4, followed by a comprehensive discussion and analysis of results. The proposed MILP formulation prescribes fewer switches while achieving lower SAIDI, compared to that of a previous MINLP formulation. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
49. Assessing the Impact of Spatial Proximity Data on the Solar Insolation Prediction.
- Author
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Bae, Sunghwan and Manshadi, Saeed D.
- Subjects
FORECASTING ,RENEWABLE energy sources ,SPATIOTEMPORAL processes ,SOLAR energy ,SOLAR radiation ,METEOROLOGICAL stations ,MACHINE learning - Abstract
Improving the prediction of the availability of solar energy resources became a necessary component in the operation of utilities with a high penetration level of renewable energy resources. In this article, the solar insolation data in spatial proximity is leveraged to investigate the error in the prediction of solar insolation using multiple learning algorithms. Different error measures are utilized to evaluate the accuracy of the presented linear and nonlinear learning algorithms. Essential data preprocessing steps are conducted on the solar insolation data available from multiple meteorological stations in spatial proximity. The impact of utilizing the spatiotemporal data compared with the temporal data is analyzed. A comprehensive analysis based on multiple error measures is presented to compare the prediction error while employing multiple learning algorithms. It is shown that it is possible to identify the particular station and the particular learning algorithm that contribute the most in improving the solar insolation prediction of a specific location. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
50. A Distributed Convex Relaxation Approach to Solve the Power Flow Problem.
- Author
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Manshadi, Saeed D., Liu, Guangyi, Khodayar, Mohammad E., Wang, Jianhui, and Dai, Renchang
- Abstract
Power flow is a fundamental problem for analyzing the power system. It is to solve a set of equations with quadratic terms. Procuring a reliable solution methodology for this problem is challenging as the feasibility region for this problem is nonconvex. Iterative approaches were employed to solve the problem, which may fail to provide a solution under certain circumstances such as bad initial point. In this paper, a solution methodology that is capable of providing a reliable solution to the power flow problem is presented. First, by exploiting sparsity in the power network, a convex relaxation for the problem is presented using the first order of the Lasserre hierarchy of moment relaxations. Then, a distributed approach using Jacobi-proximal alternating directions method of multipliers (JP-ADMM) is implemented to efficiently solve the power flow problem. To solve the sub-problems within JP-ADMM approach, the second order of the Lasserre hierarchy of moment relaxations is employed. To illustrate the effectiveness of the proposed approach, several case studies are presented. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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