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首页> 外文期刊>Journal of the Institute of Energy >Development of pattern recognition based ANN for energy auditing and inefficiency diagnostics of influential design elements utilising electrical energy data
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Development of pattern recognition based ANN for energy auditing and inefficiency diagnostics of influential design elements utilising electrical energy data

机译:基于模式识别的人工神经网络的开发,用于利用电能数据进行能源审核和有影响力的设计元素的效率低下诊断

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摘要

The objective of this study is to develop a pattern recognition based artificial neural network (ANN) for energy auditing and inefficiency diagnostics of the most influential design elements in buildings. The influential design elements examined include: envelope insulation, glazing insulation, glazing size, infiltration, economiser, building direction and orientation, and daylighting control. For generating the data bank needed for training the ANN, several buildings with different floor areas and known inefficiencies are simulated and their energy performance patterns, in terms of monthly energy demand and consumption, are determined. Monthly energy performance data including energy demand and consumption information for one year as well as building floor area are input. The developed ANN is validated and it is found that the expert auditing tool developed is effective for diagnosing the inefficient design elements. The application of the developed algorithm for real buildings and actual data is recommended for future work.
机译:这项研究的目的是开发一种基于模式识别的人工神经网络(ANN),用于对建筑物中最有影响力的设计元素进行能源审计和效率低下的诊断。所检查的有影响力的设计元素包括:围护结构隔热,玻璃隔热,玻璃尺寸,渗透度,节能器,建筑物方向和方向以及采光控制。为了生成训练ANN所需的数据库,对具有不同建筑面积和已知低效率的几座建筑物进行了模拟,并确定了其能源性能模式(按月能源需求和消耗量)。输入包括一年的能源需求和消耗信息以及建筑面积的每月能源绩效数据。所开发的人工神经网络经过验证,发现所开发的专家审核工具可有效诊断效率低下的设计元素。建议将开发的算法用于实际建筑物和实际数据,以备将来之用。

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