Research Article |
Simulation and Analysis of Optimal Power Injection System Based on Intelligent Controller
Author(s): Abdullah Sami Assaf* and Sefer Kurnaz
Published In : International Journal of Electrical and Electronics Research (IJEER) Volume 12, Issue 1
Publisher : FOREX Publication
Published : 28 march 2024
e-ISSN : 2347-470X
Page(s) : 292-299
Abstract
Many countries are seeing significant improvements in the fields of building, urban planning, technology, network management, and the need for diverse forms of energy and different generating techniques, as well as the necessity for low and middle distributing voltage in all areas. Depending on the needs of the user, starting needs, capacity, intended usage, waste output, and economic efficiency, many methods are used to generate this energy. To solve the problems brought on by the suggested excessive voltage of the provided system, energy collection devices can be used, and they can be used efficiently with smart grid intelligent control systems. A mathematical model was developed with four main components: simulation, correlation, and evaluation following the solar the program was set of photovoltaic panels solar panels, An Adaptive Neuro-Fuzzy Inference System (ANFIS) controller based on Maximum Power Point Tracking (MPPT), as well as 600-volt electric network, in order to examine and analyze the viability of the proposed network collaboration and storage of electricity in private photovoltaic networks based on solar energy. This phase next looks at the output power impact on the network, as well as the influence of network temperature and coincident radiation. An analysis was conducted to ascertain the impact of these basic limitations on actual use. This section covers the computer simulation of the proposed system. The final section contains the created system's block diagram. The system's input light is transformed into electricity that circulates in this system's power. The main electrical system with a 600-volt capacity can use this energy. The suggested system was evaluated using MATLAB simulation tapes and graphing for each system component, and the simulation outcomes of the entire system were considered.
Keywords: Power Injection
, Electrical Distribution
, ANFIS Controller
, Neuro-Fuzzy
, MPPT
, On Grid
.
Abdullah Sami Assaf*, Electrical and Computer Engineering Department/ Engineering College/Altinbaş University /Istanbul, Turkey; Email: abdullah1993sami@gmail.com
Sefer Kurnaz, Electrical and Computer Engineering Department/ Engineering College/Altinbaş University /Istanbul, Turkey; Email: sefer.kurnaz@altinbas.edu.tr
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