8 results on '"Ginidi, Ahmed R."'
Search Results
2. Parameter identification of solar photovoltaic cell and module models via supply demand optimizer
- Author
-
Shaheen, Abdullah M., El-Seheimy, Ragab A., Xiong, Guojiang, Elattar, Ehab, and Ginidi, Ahmed R.
- Published
- 2022
- Full Text
- View/download PDF
3. A novel improved marine predators algorithm for combined heat and power economic dispatch problem
- Author
-
Shaheen, Abdullah M., Elsayed, Abdallah M., Ginidi, Ahmed R., EL-Sehiemy, Ragab A., Alharthi, Mosleh M., and Ghoneim, Sherif S.M.
- Published
- 2022
- Full Text
- View/download PDF
4. Optimal parameters extraction of photovoltaic triple diode model using an enhanced artificial gorilla troops optimizer.
- Author
-
Shaheen, Abdullah M., Ginidi, Ahmed R., El-Sehiemy, Ragab A., El-Fergany, Attia, and Elsayed, Abdallah M.
- Subjects
- *
GORILLA (Genus) , *SOLAR temperature , *DIODES , *STANDARD deviations , *SEARCH algorithms - Abstract
This paper proposes an advanced intelligent application of Enhanced Artificial Gorilla Troops (EAGT) optimizer for parameters extraction of three different PV modules. The proposed EAGT optimizer is inspired by gorilla group behaviors, in which different methods are replicated, including migration to a new location, migrating to other gorillas, migration toward a designated spot, following the silverback, and competing for adult females. The EAGT is improved by supporting the exploration phase involving a fitness-based crossover (FBC) strategy. Not only that, but also it is by supporting the exploitation phase involving a periodic Tangent Flight (TF) operator. The effectiveness of the proposed EAGT is demonstrated using numerical assessments for the Kyocera KC200GT and STM6-40/36 PV modules using the Triple-Diode Model (TDM). In addition, the proposed EAGT is compared to the results of contemporary algorithms such as jellyfish search optimizer, forensic-based investigation optimizer, heap optimizer, equilibrium optimizer, and marine predator's optimizer. Also, the proposed EAGT is effectively applied on the SP70 PV module subjected to varied levels of sun irradiances and temperatures. The EAGT optimizer's efficacy and superiority are signified by fitness function standard deviations that indicate that TDM are less than 1 × 10−7, and compared to current and reported findings by others. • An Enhanced Artificial Gorilla Troops optimizer for parameters extraction by TDM is proposed. • The proposed method's effectiveness is demonstrated for three different PV modules. • The proposed method is compared to the results of contemporary algorithms. • The proposed method is effectively applied on varied levels of sun irradiances and temperatures. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
5. Optimal economic power and heat dispatch in Cogeneration Systems including wind power.
- Author
-
Shaheen, Abdullah M., Ginidi, Ahmed R., El-Sehiemy, Ragab A., and Elattar, Ehab E.
- Subjects
- *
WIND power , *COGENERATION of electric power & heat , *MOBULIDAE , *MATHEMATICAL optimization , *FUEL costs , *TEST systems , *HEATING load - Abstract
Economic Dispatch in Cogeneration Systems (EDCS) provides the optimal scheduling of heat and power of generation units. This can be achieved by minimizing the total cost of fuel (TCF) of the cogeneration units taking into consideration their operational limits. A manta ray foraging MRF optimizer, in this paper, is developed to solve the EDCS problem including the valve point impacts, and wind power. MRF optimizer is designed with adaptive penalty functions for acquiring the most feasible and best operational points for the EDCS problem. Infeasible solutions are handled with various degrees and penalized depending on their remoteness from the closest possible point. The overall power and heat loading are completely achieved by the equality constraints. Also, the cogeneration units' dynamic operating limits are not adversely affected since its concerning limitations of heat-only and power-only units are fulfilled. Two test systems of small 5 and large 96-units, are analyzed. In addition to this, an assessment of the recent optimization techniques, which are applied on to EDCS, has been developed and discussed. The applications are carried out for two scenarios at peak and daily variation in the power and heat loading condition. The wind power inclusion is assessed for each scenario in terms of the overall reduction in the total fuel costs. It was proven also; the inclusion of wind power achieves more economical solution at different scenarios with reduction up to 8%. It is crystal clear that the outputs obtained illustrate MRF optimizer efficiency, feasibility, and capability to obtain better solutions in minimizing the fuel cost compared to other optimization techniques at acceptable convergence rates. Moreover, the solutions demonstrate the ability of MRF optimizer application on the large-scale 96-unit systems. • A manta ray foraging (MRF) optimizer is developed to solve the EDCS problem. • The EDCS problem involves the valve point impacts, and wind power inclusion. • MRFO is designed with adaptive penalty for acquiring the best EDCS points. • Two scenarios at peak and daily variation in the power and heat loads. • Inclusion of wind power achieves economical solutions for different scenarios. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
6. An improved heap optimization algorithm for efficient energy management based optimal power flow model.
- Author
-
Shaheen, Abdullah M., El-Sehiemy, Ragab A., Hasanien, Hany M., and Ginidi, Ahmed R.
- Subjects
- *
ELECTRICAL load , *MATHEMATICAL optimization , *ENERGY management , *LARGE scale systems , *HEAP leaching , *OPERATING costs - Abstract
The optimal power flow is considered as a crucial tool in the power systems' operation and planning. To demonstrate, it aims at minimizing the operational costs of energy production and transmission by adjusting control variables with maintaining economic, operational, and environmental constraints. This article proposes and scrutinizes an Improved Heap-based Optimization Algorithm as a novel technique that successfully enhances the performance of a recently algorithm, namely Heap-based Optimization algorithm to address the optimal power flow problem. In the improved optimizer, an effective exploitation feature is emerged with the conventional version to improve its performance by enhancing the searching around the leader position. This enhancement can avoid being trapped in a local optimum and increase its global search capabilities. For the sake of practicality, the optimizers are developed with diverse objectives of the optimal power flow problem with minimization of fuel cost, emission amount, and transmission power losses with additional restrictions in real power systems that include valve-point effect and security constraints. A proposed multi-objective, improved heap optimization algorithm is investigated to solve multiobjective cases studied. The proposed multi-objective is developed based on the Pareto concept. Three standard systems: IEEE 57-bus system, a large scale 118-bus system, and a practical System are utilized to reveal the suitability and performance of the proposed technique in solving the optimal power flow problem. To illustrate the effectiveness of the proposed optimizer in handling non-convex and diverse scale optimization problems, a comparative analysis has been illustrated with those in the literature. • An Improved Heap-based Optimization Algorithm addresses the OPF problem. • A proposed multi-objective improved heap optimization algorithm is investigated. • Three standard systems are utilized to reveal the suitability and performance of the proposed. • The effectiveness of the proposed optimizer has been illustrated compared with others. • Significant reductions, in the technical economic point of views for single and multiobjective frameworks. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
7. An Amalgamated Heap and Jellyfish Optimizer for economic dispatch in Combined heat and power systems including N-1 Unit outages.
- Author
-
Shaheen, Abdullah M., El-Sehiemy, Ragab A., Elattar, Ehab, and Ginidi, Ahmed R.
- Subjects
- *
JELLYFISHES , *ELECTRICAL load , *PROBLEM solving , *ELECTRIC power failures - Abstract
One of the critical optimization issues in the economic management of power and heat systems is the Combined heat and power economic dispatch (CHPED). The valve-point effects of thermal units as well as the interdependency of CHP outputs make the nonlinearity and non-convexity in optimization and dispatch models. A novel Amalgamated Heap-based and JellyFish Optimizer (AHJFO) is proposed, in this paper, to improve the efficiency of two newly developed techniques, Heap-based Optimizer (HO) and Jellyfish Optimizer (JFO). The proposed AHJFO incorporates an adjustment strategy function (ASF) to increase the explorative characteristic at the beginning of iterations by upgrading the produced solutions using HO. Further, as iterations go, it improves the exploitative characteristic by expanding the created solutions using JFO. The proposed AHJFO provides higher effectiveness compared to HO and JFO to obtain the solution of CHPED problem for medium 24 and large 96-unit systems. The simulation results show that the proposed AHJFO based on ASF aids in the avoidance of premature convergence and improves solution accuracy. Besides, the proposed AHJFO is successfully applied to the CHPED issue involving (N-1) unit outages. A re-dispatch strategy based on AHJFO is presented and the impact of outages of all units is analyzed after (N-1) unit outages. Also, further applications of the proposed AHJFO for ED problem are carried out with/without additional constraint models of power flow considering the IEEE 30-bus system. The simulation results show the superiority of the proposed AHJFO compared to HO, JFO and other algorithms for solving the CHPED and ED issues. Moreover, feasibility study is demonstrated of the solutions obtained for the CHPED and ED issues with additional constraint models. • Combined heat and power economic dispatch problem is solved by AHJFO Optimizer. • The AHJFO provides higher effectiveness for medium 24 and large 96-unit systems. • The simulation results are applied to the CHPED issue involving (N-1) outages. • Applications of the AHJFO for ED problem are carried out with/without additional constraint models. • Feasibility study is demonstrated of the solutions obtained for the CHPED and ED issues. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
8. Multi-objective jellyfish search optimizer for efficient power system operation based on multi-dimensional OPF framework.
- Author
-
Shaheen, Abdullah M., El-Sehiemy, Ragab A., Alharthi, Mosleh M., Ghoneim, Sherif S.M., and Ginidi, Ahmed R.
- Subjects
- *
ELECTRICAL load , *LARGE scale systems , *JELLYFISHES , *FUEL costs , *INFORMATION sharing - Abstract
An enhanced multi-objective Quasi-Reflected Jellyfish Search Optimizer (MOQRJFS) is presented in this article for solving multi-dimensional Optimal Power Flow (MDOPF) issue with diverse objectives which display the minimization of economic fuel cost, total emissions, and the active power loss with satisfying operational constraints. Despite the simple structure of JFS with control of exploitation and exploration, searching capability of the JFS requires more support. Hence, two modifications are performed on the standard JFS algorithm. The first modification is that a cluster with a random size has been proposed which illustrates the social community that can share the data in the cluster and are dissimilar from one to another. The second modification is that a quasi-opposition-based learning is emerged in JFS to support the exploration phase. As selection criteria for the best solutions, a fuzzy decision-making strategy is joint into MOQRJFS optimizer. Additionally, the Pareto optimality concept is added to extract the non-dominated solutions. The superiority of the MOQRJFS is proved throughout application on IEEE 30-bus system, IEEE 57-bus system, the West Delta Region System of 52 bus (WDRS-52) in Egypt, and a large scale 118-bus system. Thirteen cases with economic, environmental, and technical objectives of MDOPF are included in this study. The outcomes of the proposed MOQRJFS have been compared with the conventional MOJFS and the reported techniques in the literature. It is clearly observed that the MOQRJFS give the minimum values compared with these techniques which reveals its robustness, effectiveness, and superiority when handling MDOPF among other techniques. • An enhanced multi-objective Quasi-Reflected Jellyfish Search Optimizer is presented. • Two modifications are performed on the standard JFS algorithm. • The superiority is proved on four test systems. • Thirteen cases with economic, environmental, and technical objectives are considered. • The outcomes of the proposed optimizer have been compared with others. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
Catalog
Discovery Service for Jio Institute Digital Library
For full access to our library's resources, please sign in.