Predictive model of energy consumption for office building by using improved GWO-BP

作者: Ying Tian , Junqi Yu , Anjun Zhao

DOI: 10.1016/J.EGYR.2020.03.003

关键词: Energy consumptionFuzzy logicArtificial neural networkStatisticsMean absolute percentage errorTest dataGeneralizationBackpropagationCluster analysisComputer science

摘要: … GWO-BP neural network after FCM clustering was reduced by about 0.225 compared with the BP model, and was reduced by about 0.135 compared with the GWO-BP … the attack on the …

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