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Research on the Optimization of Building Energy Efficient Measures Based on Incremental Costs

机译:基于增量成本的建筑节能措施优化研究

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Based on the incremental costs analysis,this paper optimizes the energy efficient measures for buildings with the prediction of building energy consumption benefitting from 18 building envelope performance parameters by using artificial neural networks. A BP neural network has been preferred and the data have been presented to network by being normalized. The building energy simulation software DeST was used for the calculations of energy consumption and ANN toolbox of MATLAB is used for predictions. Then five combinations of these materials for the building were obtained by the predictions of building cooling and heating energy consumption with this BP neural network for the purpose of getting the same energy efficient rate. Results show that BP neural network gives satisfactory results with successful prediction rate of over 98% at early design stage and provides a fast method to optimize building energy efficient measures to reduce incremental cost.
机译:在增量成本分析的基础上,利用人工神经网络对建筑物的能耗进行预测,并从18个建筑围护结构性能参数中受益,预测建筑物的能耗。首选的是BP神经网络,并且已通过标准化将数据呈现给网络。建筑能耗模拟软件DeST用于能耗计算,MATLAB的ANN工具箱用于预测。然后,通过该BP神经网络通过预测建筑物的制冷和供暖能耗来获得这些材料的五种组合,以达到相同的能源效率。结果表明,BP神经网络在设计初期就获得了令人满意的结果,成功的预测率超过98%,并为优化建筑节能措施以降低增量成本提供了一种快速方法。

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