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摘要

如今,教育机构由于其新的活动和占用模式,成为电力消耗最高的部门之一。这所大学的巨大能源消耗需要付出巨大的努力来减少。智能电网是实现节能、平衡供需的有效解决方案之一。出于同样的目的,El Jadida-Morocco国家应用科学学院希望利用智能电网来维持能源生产和消费之间的平衡。尽管这种智能电网解决方案为学校带来了所有附加价值,但它存在管理能源生产过剩的问题,因为它不能将其注入摩洛哥的电力基础设施,也不能使用存储设备存储。因此,为了克服这一挑战,系统需要预测电力消耗,从而能够产生完全相同的值。近年来,大数据在分析用电数据方面发挥了重要作用,使用了许多工具和先进的技术。它处理、解释和分析大量数据,使其更有利可图,更有价值。因此,学校将借助大数据技术,通过分析所有影响电能使用的因素,实施一个定制系统来预测电能消耗。在本文中,我们提出了该领域主要大数据架构的基准,该架构将涵盖从数据收集,数据存储,数据分析和数据可视化的所有电能数据处理。该基准的目的是在容错、资源管理、数据存储和数据建模方面选择最优的架构来预测教育机构的用电量。
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Big Data Architectures Benchmark for Forecasting Electricity Consumption
Now a day, educational institutions present one of the highest power consuming sector due to their new activities and occupancy pattern. This enormous amount of energy consumption at the university need a huge effort to reduce it. Smart grid is among the efficient solution to save energy and balance supply and demand. For the same purpose, the National School of Applied Sciences of El Jadida-Morocco wants take advantage from smart grid to maintain the balance between energy production and consumption. Despite of all added value of this smart grid solution for the school, it has the issue of managing energy production surplus, because it cannot inject it into Moroccan electrical infrastructure neither store it using storage devices. So, to overcome this challenge the system need to predict electrical consumption to be able to produce exactly the same value. Recently, Big Data contributed very well in analysing electrical consumption data using many tools and advanced techniques. It process, interprets and analyzes huge quantity of data to make it more profitable and valuable. For that reason, the school will take refuge in Big data technology to implement a custom system to predict electrical energy consumption by analyze all factors that influence electrical energy use. In this paper, we propose a benchmark of the main Big Data architectures in the field and that will cover all electrical energy data processing from data collection, data storage, data analytic and data visualization. The aim of this benchmark is to choose the optimal architecture in term of fault tolerance, resource management, data storage and data modelling to forecast electricity consumption in educational institutions.
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