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Records with Keyword: Algorithms
Showing records 26 to 32 of 32. [First] Page: 1 2 Last
Towards Smart Energy Grids: A Box-Constrained Nonlinear Underdetermined Model for Power System Observability Using Recursive Quadratic Programming
Nikolaos P. Theodorakatos, Miltiadis Lytras, Rohit Babu
March 24, 2023 (v1)
Keywords: Algorithms, optimal PMU placement, smart cities, smart energy grids, smart power transmission system, synchronized measurements, underdetermined nonlinear systems
This paper introduces an underdetermined nonlinear programming model where the equality constraints are fewer than the design variables defined on a compact set for the solution of the optimal Phasor Measurement Unit (PMU) placement. The minimization model is efficiently solved by a recursive quadratic programming (RQP) method. The focus of this work is on applying an RQP to attempt to find guaranteed global minima. The proposed minimization model is conducted on IEEE systems. For all simulation runs, the RQP converges superlinearly towards optimality in a finite number of iterations without to be rejected the full step-length. The simulation results indicate that the RQP finds out the minimal number and the optimal locations of PMUs to make the power system wholly observable.
Study on the Optimal Dispatching Strategy of a Combined Cooling, Heating and Electric Power System Based on Demand Response
Ye Zhao, Zhenhai Dou, Zexu Yu, Ruishuo Xie, Mengmeng Qiao, Yuanyuan Wang, Lianxin Liu
February 28, 2023 (v1)
Keywords: Algorithms, combined cooling, heating and power (CCHP) system, demand response, two-stage optimal dispatch
This paper proposes a combined cooling, heating and electric power (CCHP) system based on demand side response. In order to improve the economy of the system, a two-stage optimal scheduling scheme is proposed with the goal of minimizing the total operating cost of the system and maximizing user satisfaction. The optimal operation of the system was divided into two optimization problems, including the demand side and the supply side. In the first stage, combined with user satisfaction, from the new point of view that users are prone to excessive behavior due to time-of-use electricity prices, the cooling, heating and power load curves are optimized. In the second stage, an economic dispatch model that includes operating costs in terms of energy, maintenance and environment is established. An improved artificial bee colony (IABC) algorithm is used to solve the optimal energy production scheme based on the demand curves optimized in the first stage. Case studies are conducted to verify th... [more]
Flexible Loads Scheduling Algorithms for Renewable Energy Communities
Tiago Fonseca, Luis Lino Ferreira, Jorge Landeck, Lurian Klein, Paulo Sousa, Fayaz Ahmed
February 24, 2023 (v1)
Keywords: Algorithms, energy community, flex-offers, Renewable and Sustainable Energy, Scheduling
Renewable Energy Communities (RECs) are emerging as an effective concept and model to empower the active participation of citizens in the energy transition, not only as energy consumers but also as promoters of environmentally friendly energy generation solutions, particularly through the use of photovoltaic panels. This paper aims to contribute to the management and optimization of individual and community Distributed Energy Resources (DER). The solution follows a price and source-based REC management program, in which consumers’ day-ahead flexible loads (Flex Offers) are shifted according to electricity generation availability, prices, and personal preferences, to balance the grid and incentivize user participation. The heuristic approach used in the proposed algorithms allows for the optimization of energy resources in a distributed edge-and-fog approach with a low computational overhead. The simulations performed using real-world energy consumption and flexibility data of a REC wit... [more]
A Heuristic Approach to Optimal Crowbar Setting and Low Voltage Ride through of a Doubly Fed Induction Generator
Kumeshan Reddy, Akshay Kumar Saha
February 24, 2023 (v1)
Subject: Optimization
Keywords: Algorithms, crowbar, doubly fed induction generator, linear quadratic regulator, optimization methods
In this paper, a heuristic approach to doubly fed induction generator (DFIG) protection and low voltage ride through (LVRT) is carried out. DFIG-based wind systems are rapidly penetrating the power generation section. Despite their advantages, their direct coupling grid makes them highly sensitive to symmetrical faults. A well-known solution to this is the crowbar method of DFIG protection. This paper provides a method to determine the optimal crowbar resistance value, to ensure a strong trade-off between the rotor current and DC voltage transients. Further, since the crowbar method requires disconnection from the grid, the linear quadratic regulator (LQR) is applied to the system. This is to ensure fault ride through compliance with recent grid code requirements. The well-known PSO, as well as the recently developed African vultures optimization algorithm (AVOA), was applied to the problem. The first set of results show that for severe symmetrical voltage dips, the AVOA provides a goo... [more]
Comparison of Algorithms for the AI-Based Fault Diagnostic of Cable Joints in MV Networks
Virginia Negri, Alessandro Mingotti, Roberto Tinarelli, Lorenzo Peretto
February 24, 2023 (v1)
Keywords: Algorithms, Artificial Intelligence, cable joints, distribution network, fault diagnostic, predictive maintenance
Electrical utilities and system operators (SOs) are constantly looking for solutions to problems in the management and control of the power network. For this purpose, SOs are exploring new research fields, which might bring contributions to the power system environment. A clear example is the field of computer science, within which artificial intelligence (AI) has been developed and is being applied to many fields. In power systems, AI could support the fault prediction of cable joints. Despite the availability of many legacy methods described in the literature, fault prediction is still critical, and it needs new solutions. For this purpose, in this paper, the authors made a further step in the evaluation of machine learning methods (ML) for cable joint health assessment. Six ML algorithms have been compared and assessed on a consolidated test scenario. It simulates a distributed measurement system which collects measurements from medium-voltage (MV) cable joints. Typical metrics have... [more]
A Conceptual Comparison of Six Nature-Inspired Metaheuristic Algorithms in Process Optimization
Shankar Rajendran, Ganesh N., Robert Čep, Narayanan R. C., Subham Pal, Kanak Kalita
February 21, 2023 (v1)
Subject: Optimization
Keywords: Algorithms, non-traditional algorithms, Optimization, process optimization, process parameters
In recent years, several high-performance nature-inspired metaheuristic algorithms have been proposed. It is important to study and compare the convergence, computational burden and statistical significance of these metaheuristics to aid future developments. This study focuses on six recent metaheuristics, namely, ant lion optimization (ALO), arithmetic optimization algorithm (AOA), dragonfly algorithm (DA), grey wolf optimizer (GWO), salp swarm algorithm (SSA) and whale optimization algorithm (WOA). Optimization of an industrial machining application is tackled in this paper. The optimal machining parameters (peak current, duty factor, wire tension and water pressure) of WEDM are predicted using the six aforementioned metaheuristics. The objective functions of the optimization study are to maximize the material removal rate (MRR) and minimize the wear ratio (WR) and surface roughness (SR). All of the current algorithms have been seen to surpass existing results, thereby indicating the... [more]
Hybridized Particle Swarm—Gravitational Search Algorithm for Process Optimization
Rajendran Shankar, Narayanan Ganesh, Robert Čep, Rama Chandran Narayanan, Subham Pal, Kanak Kalita
February 21, 2023 (v1)
Subject: Optimization
Keywords: Algorithms, non-traditional algorithms, Optimization, process optimization, process parameters
The optimization of industrial processes is a critical task for leveraging profitability and sustainability. To ensure the selection of optimum process parameter levels in any industrial process, numerous metaheuristic algorithms have been proposed so far. However, many algorithms are either computationally too expensive or become trapped in the pit of local optima. To counter these challenges, in this paper, a hybrid metaheuristic called PSO-GSA is employed that works by combining the iterative improvement capability of particle swarm optimization (PSO) and gravitational search algorithm (GSA). A binary PSO is also fused with GSA to develop a BPSO-GSA algorithm. Both the hybrid algorithms i.e., PSO-GSA and BPSO-GSA, are compared against traditional algorithms, such as tabu search (TS), genetic algorithm (GA), differential evolution (DE), GSA and PSO algorithms. Moreover, another popular hybrid algorithm DE-GA is also used for comparison. Since earlier works have already studied the pe... [more]
Showing records 26 to 32 of 32. [First] Page: 1 2 Last
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