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</html><description>Luiz Henrique Buzzi , Lucas Weihmann &amp; Pablo Andretta Jaskowiak Abstract: The increasing demand for clean energy presents challenges in energy supply management, largely due to their intermittency. Photovoltaic power generation, in specific, is greatly affected by weather factors, which Read More ...</description><thumbnail_url>https://sbia.org.br/lnlm/wp-content/uploads/sites/4/2020/09/orcid.jpg</thumbnail_url></oembed>
