Application of data mining algorithm in energy-saving renovation prediction of urban landscape buildings

J. Hu, X. Han
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Abstract

In order to solve the problem of the heavy burden of electricity and energy consumption of urban landscape buildings, a prediction model for energy conservation and reconstruction of urban landscape buildings was established by combining data mining algorithms. Firstly, the energy demand and consumption of urban landscape buildings are analyzed, and the energy consumption of buildings is predicted by relevant mathematical calculation methods. Then, combined with data mining technology, effective information is extracted from the basic building information of urban landscape, daily energy consumption, operation data and other aspects. Finally, the prediction model of building energy conservation transformation based on data mining algorithm is constructed, and the Bayesian energy model is used for parameter correction. Test the performance of the model and find that under the single influence factor of different energy consumption, the change trend of total energy consumption is different. Among them, lighting power density factor has the greatest impact on energy consumption, and its annual energy consumption change rate can reach about 0.35. Applying the prediction model to the energy consumption prediction of 15 urban single buildings, it was found that the total energy consumption of the buildings before the transformation was much higher than the total energy consumption after the transformation, and the energy saving rate of the whole observation sample building group was as high as 18.5%, while the highest energy saving rate of the single buildings reached 30.1%. To sum up, the model has good prediction ability. Applying it to the energy conservation prediction of urban landscape buildings can better complete the energy prediction task and achieve the energy conservation goal.
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数据挖掘算法在城市景观建筑节能改造预测中的应用
为解决城市景观建筑用电和能耗负担大的问题,结合数据挖掘算法,建立了城市景观建筑节能改造预测模型。首先,对城市景观建筑的能源需求和消耗进行了分析,并采用相关的数学计算方法对建筑的能源消耗进行了预测。然后,结合数据挖掘技术,从城市景观基础建筑信息、日常能耗、运行数据等方面提取有效信息。最后,构建了基于数据挖掘算法的建筑节能改造预测模型,并利用贝叶斯能量模型进行参数校正。对模型的性能进行测试,发现在不同能耗的单一影响因素下,总能耗的变化趋势是不同的。其中,照明功率密度因子对能耗影响最大,其年能耗变化率可达0.35左右。将预测模型应用到15座城市单体建筑的能耗预测中,发现改造前建筑的总能耗远高于改造后的总能耗,整个观察样本建筑群的节能率高达18.5%,单体建筑的最高节能率达到30.1%。综上所述,该模型具有较好的预测能力。将其应用于城市景观建筑的节能预测,可以更好地完成节能预测任务,实现节能目标。
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