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A systematic study on shaping the future of solar prosumage using deep learning

机译:一项有关使用深度学习来塑造太阳能未来的系统研究

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One of the core necessities for development in the modern world is a clear access to energy. Therefore, places that lack access to energy face serious challenges on their ability to progress effectively. In the bid to progress, nations have utilized conventional energy sources for decades leading to plummeting natural oil levels and increasing global temperatures, not to mention climate change. Energy transitions have begun to catch up but the world is far from creating a decisive decline in global emissions. Next to transportation, electricity generation burns the highest amount of fossil fuels today. The losses incurred during transmission and distribution exacerbate existing problems. One viable solution is to interlink local sustainable energy generation plants to existing grids. As of 2019, 583.5 GW of operation photovoltaic energy supplies our demands. Solar prosumage development promises to boost this rise in PV usage. However, it is difficult as it is to manage conventional grids let alone interlinked smart grids. Unlike classical approaches to developing electrical grid lines, modern systems demand much more in terms of tangible resources, statistical analysis and computational techniques. This level of complexity has inspired engineers to develop Artificial Intelligence techniques that can develop deep neural networks that grow robustly, while maintaining flexibility in handling non-linear complex relationships within large sets of data. In this paper, we provide a systematic study of existing AI solutions for smart solar grids and discuss the possible challenges associated with implementing this technology in near future.
机译:现代世界发展的核心必需品之一是清晰获得能源的机会。因此,缺乏能源的地方面临着他们有效进步的能力面临的严重挑战。为了进步,国家已经利用了常规能源数十年来,导致天然石油水平下降并增加了全球温度,更不用说气候变化了。能源过渡已经开始赶上,但世界并没有使全球排放的决定性下降。在运输旁边,电力发电燃烧了当今最高的化石燃料。传输和分配期间造成的损失加剧了现有问题。一种可行的解决方案是将本地可持续能源生成工厂链接到现有网格。截至2019年,光伏能源运营的583.5 GW提供了我们的需求。太阳能开发有望提高光伏使用的这种增长。但是,很难管理传统的网格,更不用说相互链接的智能电网了。与开发电网线的经典方法不同,现代系统在有形资源,统计分析和计算技术方面需要更多。这种复杂性的水平激发了工程师开发的人工智能技术,这些技术可以开发出深厚的神经网络,从而在大量数据中保持非线性复杂关系的灵活性,同时保持灵活性。在本文中,我们对现有的智能太阳网格的现有AI解决方案进行了系统的研究,并讨论了在不久的将来实施这项技术的可能挑战。

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