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Load Management with Predictions of Solar Energy Production for Cloud Data Centers

机译:云数据中心的负载管理以及太阳能产量的预测

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Power supply of big infrastructures is today a tremendous operational cost for providers and the expected growth of Internet traffic and services will lead to a further expansion of the computing and networking infrastructures and this, in its turn, raises also concerns in terms of sustainability. In this context, renewable energy generators can help to both reduce costs and alleviate the concerns of sustainability of big infrastructures. In this paper, we consider the case of Data Centers (DCs) composed of a few sites located in different geographical positions and powered with solar energy. Due to the intermittent nature of solar energy, different time zones and price of electricity in different locations, load management strategies are fundamental. We consider predictions of the solar energy production performed through Artificial Neural Networks and we assess the impact of predictions on load management decisions and, ultimately, on the DC performance.
机译:如今,大型基础设施的电源供应商为运营商付出了巨大的运营成本,互联网流量和服务的预期增长将导致计算和网络基础设施的进一步扩展,这反过来也引起了人们对可持续性的关注。在这种情况下,可再生能源生产商可以帮助降低成本并减轻大型基础设施可持续性的担忧。在本文中,我们考虑由几个位于不同地理位置并使用太阳能供电的站点组成的数据中心(DC)的情况。由于太阳能的间歇性,不同时区和不同位置的电价,因此负载管理策略至关重要。我们考虑通过人工神经网络进行的太阳能发电量预测,并评估预测对负荷管理决策的影响,最终对直流性能的影响。

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