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Connecting to Smart Cities: Analyzing Energy Times Series to Visualize Monthly Electricity Peak Load in Residential Buildings

机译:连接到智能城市:分析能源时间系列,以在住宅建筑中可视化每月电力峰值负荷

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Rapidly growing energy consumption rate is considered an alarming threat to economic stability and environmental sustainability. There is an urgent need of proposing novel solutions to mitigate the drastic impact of increased energy demand in urban cities to improve energy efficiency in smart buildings. It is commonly agreed that exploring, analyzing and visualizing energy consumption patterns in residential buildings can help to estimate their energy demands. Moreover, visualizing energy consumption patterns of residential buildings can also help to diagnose if there is any unpredictable increase in energy demand at a certain time period. However, visualizing and inferring energy consumption patterns from typical line graphs, bar charts, scatter plots is obsolete, less informative and do not provide deep and significant insight of the daily domestic demand of energy utilization. Moreover, these methods become less significant when high temporal resolution is required. In this research work, advanced data exploratory and data analytics techniques are applied on energy time series. Data exploration results are presented in the form of heatmap. Heatmap provides a significant insight of energy utilization behavior during different times of the day. Heatmap results are articulated from three analytical perspectives; descriptive analysis, diagnostic analysis and contextual analysis.
机译:快速增长的能源消耗率被认为是对经济稳定和环境可持续性的危剧威胁。迫切需要提出新的解决方案,以减轻城市城市增加能源需求增加的激烈影响,以提高智能建筑中的能源效率。通常商定,探索,分析和可视化住宅建筑中的能量消耗模式可以有助于估计其能源需求。此外,如果在特定时间段内存在任何不可预测的能量需求,则可视化住宅建筑的能量消耗模式也有助于诊断。然而,从典型的线条图,条形图,散点图的可视化和推断能量消耗模式是过时的,不那么丰富,不提供对日常能源利用需求的深层和重要的洞察。此外,当需要高时的分辨率时,这些方法变得不显着。在本研究工作中,高级数据探索和数据分析技术应用于能量时间序列。数据勘探结果以热爱图呈现。 Heatmap在一天中不同时间提供了对能量利用行为的显着洞察力。 Heatmap结果是从三种分析视角下铰接的;描述性分析,诊断分析和上下文分析。

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