基于人工免疫算法的建筑节能性能分类

J. P. Alves, J. N. Fidalgo
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引用次数: 2

摘要

建筑行业占欧洲能源消耗的很大一部分。建筑热行为建模是实现欧盟能源效率目标的关键因素。此外,它还可用于负荷预测应用,用于建筑物总能耗的预测。本工作的第一阶段是将人工免疫系统(AIS)应用于具有相似物理特性和相似热效率的群集建筑。第二阶段采用人工神经网络对建筑冷热负荷进行估算。最后进行敏感性测试,以确定哪些建筑特征对加热和冷却负荷的影响最大。第一阶段得到的结果显示出非常明显的集群原型,这证明了AIS的判别能力。在第二阶段获得的良好估计性能表明,该方法可以集成到能源效率审计中。最后,敏感性分析为行动(或立法指令)提供指示,以促进更高效建筑的设计。
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Classification of Buildings Energetic Performance Using Artificial Immune Algorithms
The building sector is responsible for a large share of Europe's energy consumption. Modelling buildings thermal behavior is a key factor for achieving the EU energy efficiency goals. Moreover, it can be used in load forecasting applications, for the prediction of buildings total energy consumption. The first phase of this work is the application of Artificial Immune Systems (AIS) for clustering buildings with similar physical characteristics and similar thermal efficiency. In the second phase, Artificial Neural Networks (ANN) are used to estimate the buildings heating and cooling loads. A final sensitivity test is performed to identify which building features have the most impact on the heating and cooling loads. The results obtained in the first phase revealed very distinct cluster prototypes, which demonstrates the AIS discriminating ability. The good estimation performance obtained in the second phase showed that this approach can be integrated in energy efficiency audits. Finally, the sensitivity analysis provided indications for actions (or legislation directives) in order to promote the design of more efficient buildings.
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