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An Artificial Neural Network Approach to Forecast the Environmental Impact of Data Centers

机译:人工神经网络方法预测数据中心的环境影响

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Due to the high demands of new technologies such as social networks, e-commerce and cloud computing, more energy is being consumed in order to store all the data produced and provide the high availability required. Over the years, this increase in energy consumption has brought about a rise in both the environmental impacts and operational costs. Some companies have adopted the concept of a green data center, which is related to electricity consumption and CO 2 emissions, according to the utility power source adopted. In Brazil, almost 70% of electrical power is derived from clean electricity generation, whereas in China 65% of generated electricity comes from coal. In addition, the value per kWh in the US is much lower than in other countries surveyed. In the present work, we conducted an integrated evaluation of costs and CO 2 emissions of the electrical infrastructure in data centers, considering the different energy sources adopted by each country. We used a multi-layered artificial neural network, which could forecast consumption over the following months, based on the energy consumption history of the data center. All these features were supported by a tool, the applicability of which was demonstrated through a case study that computed the CO 2 emissions and operational costs of a data center using the energy mix adopted in Brazil, China, Germany and the US. China presented the highest CO 2 emissions, with 41,445 tons per year in 2014, followed by the US and Germany, with 37,177 and 35,883, respectively. Brazil, with 8459 tons, proved to be the cleanest. Additionally, this study also estimated the operational costs assuming that the same data center consumes energy as if it were in China, Germany and Brazil. China presented the highest kWh/year. Therefore, the best choice according to operational costs, considering the price of energy per kWh, is the US and the worst is China. Considering both operational costs and CO 2 emissions, Brazil would be the best option.
机译:由于对诸如社交网络,电子商务和云计算之类的新技术的高要求,为了存储所有产生的数据并提供所需的高可用性,正在消耗更多的能量。多年来,能源消耗的增加带来了环境影响和运营成本的增加。根据所采用的公用电源,一些公司已经采用了绿色数据中心的概念,该概念与电力消耗和CO 2排放有关。在巴西,将近70%的电力来自清洁发电,而在中国,有65%的电力来自煤炭。此外,在美国,每千瓦时的电价远低于其他接受调查的国家。在当前的工作中,我们考虑了每个国家采用的不同能源,对数据中心的电气基础设施的成本和CO 2排放进行了综合评估。我们使用了多层人工神经网络,它可以根据数据中心的能源消耗历史预测未来几个月的能源消耗。所有这些功能都由一个工具支持,该工具的适用性通过案例研究得到了证明,该案例研究使用在巴西,中国,德国和美国采用的能源组合来计算数据中心的CO 2排放量和运营成本。中国的CO 2排放量最高,2014年为每年41,445吨,其次是美国和德国,分别为37,177和35,883。事实证明,巴西是最清洁的国家,产量为8459吨。此外,本研究还假设相同的数据中心消耗的能源就像在中国,德国和巴西一样,估计了运营成本。中国是最高的千瓦时/年。因此,考虑到每千瓦时的能源价格,根据运营成本选择的最佳选择是美国,而最糟糕的选择是中国。考虑到运营成本和CO 2排放,巴西将是最佳选择。

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