The implementation of an optimized neural network in a hybrid system for energy management

Ezzitouni Jarmouni, A. Mouhsen, Mohamed Lamhamdi, Elmehdi Ennajih, Ilias Ennaoui, Ayoub Krari
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Abstract

In the face of increasing global energy demand and volatile energy prices, many countries are searching for solutions to ensure their energy independence. One of the most popular solutions is to incorporate renewable energy sources in their energy systems. While there are many advantages to integrating renewable energy sources, it is important to note that their intermittent operation can present challenges. Energy storage and smart grid management systems are key solutions to overcome these challenges and ensure sustainable, reliable use of renewable energy sources. In this article, we present an intelligent electrical energy management system for hybrid energy systems. This management system is based on a multi-layer neural network that has undergone an architecture optimization phase to improve the accuracy of real-time energy management and simplify its implementation. The management model that was built demonstrated highly good performance across a range of test circumstances.
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在混合能源管理系统中实施优化神经网络
面对日益增长的全球能源需求和波动的能源价格,许多国家都在寻找确保能源独立的解决方案。最受欢迎的解决方案之一就是将可再生能源纳入能源系统。虽然整合可再生能源有很多优势,但必须注意的是,可再生能源的间歇性运行也会带来挑战。储能和智能电网管理系统是克服这些挑战并确保可再生能源可持续、可靠使用的关键解决方案。在本文中,我们将介绍一种用于混合能源系统的智能电能管理系统。该管理系统以多层神经网络为基础,经过了架构优化阶段,以提高实时能源管理的准确性并简化其实施。所建立的管理模型在一系列测试环境中都表现出了极佳的性能。
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