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المؤلفAbazari, A.
المؤلفSoleymani, M. M.
المؤلفKamwa, I.
المؤلفBabaei, M.
المؤلفGhafouri, M.
المؤلفMuyeen, S. M.
المؤلفFoley, A. M.
تاريخ الإتاحة2022-03-23T08:22:44Z
تاريخ النشر2021
اسم المنشورEnergy Reports
المصدرScopus
المعرّفhttp://dx.doi.org/10.1016/j.egyr.2021.08.196
معرّف المصادر الموحدhttp://hdl.handle.net/10576/28903
الملخصThe use of hybrid systems for electrification of remote areas has been increased dramatically in recent years, and the optimal sizing of these systems is a significant challenge for cost-effectiveness and reliability. This paper aims to propose a predictable planning framework that increases the renewable energy penetration (REP) rate and minimizes the annualized cost of the system (ACS) considering CO2 emission and different loss of power supply probability (LPSP). Due to the unavailability of precise weather data in remote areas, an intelligent weather forecasting scheme is developed using an adaptive neuro-fuzzy process based on fuzzy c-means clustering technique to estimate the solar radiation, wind speed, and ambient temperature. This paper also examines various evolutionary algorithms and compare the collected result of the proposed Multi-Verse Optimizer (MVO) with other meta-heuristic methods in terms of total annualized cost with different LPSP, and REP amounts. Moreover, to assess the impact of wind speed, solar irradiation, the lifespan of battery energy storage systems, and the fuel price of diesel engine generators on optimal sizing problem, a sensitivity analysis is performed for different values of REP and LPSP. The effectiveness of the proposed approach is verified using a realistic case study in the Sistan & Balouchestan province of Iran. Simulation results illustrate that using photovoltaic panels, wind turbine generators, battery energy storage systems, and diesel engine generators (PV/WTG/BESS/DEG) is the most cost-effective strategy resulting in a 96.13% decrease of CO2 emission compared to DEG system at REPmin=97% and LPSPmax=1%. Moreover, the growth of fuel cost causes an increase in the production of renewable energy resources (RESs) and a decrease in the usage of diesel engine generators. Consequently, for LPSPmax=10% and REPmin=91%, and 50% rise in the price of fuel, the number of DEG drops to zero, and the optimal number of PV and BESS increase from 311 and 172 to 411 and 228, respectively.
راعي المشروعAll authors have read and agreed to the published version of the manuscript.
اللغةen
الناشرElsevier Ltd
الموضوعBattery storage
Carbon dioxide
Cost benefit analysis
Cost effectiveness
Costs
Diesel engines
Digital storage
Electric batteries
Fuel storage
Fuels
Heuristic algorithms
Heuristic methods
Meteorology
Optimization
Photovoltaic cells
Renewable energy resources
Sensitivity analysis
Solar radiation
Weather forecasting
Wind
Annualized cost of system
CO 2 emission
Diesel engine-generators
Loss of power supply probability
Meta-heuristics algorithms
Optimal sizing
Planning framework
Remote areas
Renewable energy penetrations
Wind speed
Hybrid systems
العنوانA reliable and cost-effective planning framework of rural area hybrid system considering intelligent weather forecasting
النوعArticle
الصفحات5647-5666
رقم المجلد7


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