Publications by authors named "Saeid Razmjooy"

Article Synopsis
  • HRES (Hybrid Renewable Energy Systems) is developed to meet the rising demand for eco-friendly energy, integrating wind power, fuel cells, and solar energy for sustainability.
  • The study introduces an Improved Subtraction-Average-Based Optimizer (ISABO), which enhances traditional optimization methods and results in significant cost reductions, including a 12% decrease in Net Present Cost (NPC) and Levelized Cost of Electricity (LCOE).
  • Findings indicate that ISABO not only offers improved cost-effectiveness at $1,357,018.15 NPC but also maintains system reliability, making hybrid systems more advantageous than single-source options.
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The growing demand for renewable energy systems is driven by climate change concerns, government support, technological advancements, economic viability, and energy security. These factors combine to create a strong momentum towards a clean and sustainable energy future. Governments, governments, and individuals are increasingly aware of the environmental impacts of traditional energy sources and adopting renewable energy solutions.

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Accurate prediction of energy demand is crucial for improving services, reducing costs, and optimizing operations in energy systems. Deep neural networks (DNNs) have emerged as a popular method for energy demand forecasting. However, the performance of DNNs can be affected by data quality and hyperparameter selection.

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