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Employing electricity-consumption monitoring systems and integrative time-series analysis models: A case study in Bogor, Indonesia

机译:使用电力消耗监控系统和综合时间序列分析模型:以印度尼西亚茂物为例

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摘要

The Paris Agreement calls for maintaining a global temperature less than 2°C above the pre-industrial level and pursuing efforts to limit the temperature increase even further to 1.5°C. To realize this objective and promote a low-carbon society, and because energy production and use is the largest source of global greenhouse-gas (GHG) emissions, it is important to efficiently manage energy demand and supply systems. This, in turn, requires theoretical and practical research and innovation in smart energy monitoring technologies, the identification of appropriate methods for detailed time-series analysis, and the application of these technologies at urban and national scales. Further, because developing countries contribute increasing shares of domestic energy consumption, it is important to consider the application of such innovations in these areas. Motivated by the mandates set out in global agreements on climate change and low-carbon societies, this paper focuses on the development of a smart energy monitoring system (SEMS) and its deployment in households and public and commercial sectors in Bogor, Indonesia. An electricity demand prediction model is developed for each device using the Auto-Regression eXogenous model. The real-time SEMS data and time-series clustering to explore similarities in electricity consumption patterns between monitored units, such as residential, public, and commercial buildings, in Bogor is, then, used. These clusters are evaluated using peak demand and Ramadan term characteristics. The resulting energy-prediction models can be used for low-carbon planning.
机译:《巴黎协定》呼吁将全球温度保持在比工业化前水平低2摄氏度以下,并努力将温度升高进一步限制在1.5摄氏度以内。为了实现这一目标并促进低碳社会,并且由于能源生产和使用是全球温室气体(GHG)排放的最大来源,因此有效管理能源需求和供应系统非常重要。反过来,这需要在智能能源监控技术方面进行理论和实践研究与创新,确定用于详细时间序列分析的适当方法,以及在城市和国家范围内应用这些技术。此外,由于发展中国家在国内能源消费中所占份额不断增加,因此重要的是考虑在这些领域中应用此类创新。受全球气候变化和低碳社会协议中规定的任务的激励,本文着重研究智能能源监控系统(SEMS)的开发及其在印度尼西亚茂物的家庭以及公共和商业部门的部署。使用自回归异质模型为每个设备开发了电力需求预测模型。然后,使用实时SEMS数据和时间序列聚类来探索茂物中受监视单元(例如住宅,公共和商业建筑物)之间的用电量模式的相似性。使用峰值需求和斋月术语特征评估这些聚类。由此产生的能源预测模型可用于低碳规划。

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