数据驱动分析,有效的能源管理和审计的大型企业

L. Bule, Alan Tanton, Russell Baillie, N. Nair
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引用次数: 0

摘要

能源资源对我们的日常生活非常重要,因此以可持续的方式使用这些资源不仅有利于我们的环境,也有利于我们子孙后代的生计。建筑能源管理对于高效利用能源,特别是大型企业的空间供暖和制冷至关重要。能源报告提供了基线,不规则的消费模式和改进的领域的指示。能源审计和能源报告对于任何组织来说都是昂贵的,比如奥克兰大学(UoA),因为它有大量的建筑设施需要运营和维护。一个时期内的能源消耗与季节和天气密切相关。度日法是一种简单快捷的方法,可识别正常和不正常的制热和制冷需求,从而减少成本和间接环境影响。建筑暖通空调负荷具有使用历史能耗和天气数据生成的能量签名。UoA建筑能源需求是本研究的案例研究主题,旨在展示更新的数据分析如何帮助了解典型大型企业的能源利用情况,这些企业具有多个分布式站点和功能行为。通过统计分析产生“供暖度和制冷度日”的历史能源消耗和天气数据,并与UoA建筑设施管理公司运营的33座建筑物的供暖能力进行了比较,并在本文中进行了报告。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-driven analytics for effective energy management and audits of large enterprise
Energy resources are very important to our daily lives and therefore using these resources in a sustainable way that will not only benefit our environment but also the livelihood of our future generations. Building Energy management is vital for efficient usage of energy resources especially space heating and cooling for large enterprises. Energy report provides an indication of baselines, irregular consumption patterns and areas for improvements. Energy audits and energy reports are costly for any organization such as the University of Auckland (UoA) with a large number of building facilities to operate and maintain. Energy consumption over a period has close correlation with season and the weather. Degree-day method is a simple and quick exercise to identify normal and irregular heating and cooling demand and hence reduce cost and indirect environment impacts. Buildings HVAC load have energy signature generated using historical energy consumption and weather data. The UoA building energy demand is the subject of the case study in this research to display how newer data analytics can help understand better energy utilization in a typical large-scale enterprise, which have several distributed sites and functional behaviors. Historical energy consumption and weather data by statistical analysis to produce ‘Heating Degree and Cooling Degree Days’ and comparisons with heating capacity for 33 buildings operated by UoA Building Facilities Management has been undertaken and reported in this paper.
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