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Application of artificial neural networks to predict prevalence of building-related symptoms in office buildings

机译:人工神经网络在办公楼中预测与建筑物相关的症状的发生率

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Artificial neural networks (ANN) were constructed to predict prevalence of building-related symptoms (BRS) of office building occupants. Six indoor air pollutants and four indoor comfort variables were used as input variables to the networks. A symptom metric was used as the measure of BRS prevalence, and employed as the output variable. Pollutant concentration, comfort variable, and occupant symptom data were obtained from the Building Assessment and Survey Evaluation study conducted by the US Environmental Protection Agency, in which all were measured concurrently. Feed-forward networks that employ back-propagation algorithm with momentum term and variable learning rate were used in ANN modeling. Root mean square error and R2 value of the simple linear regression between observed and predicted output were used as performance measures. Among the constructed networks, the best prediction performance was observed in a one-hidden-layered network with an R~2 value of 0.56 for the test set. All constructed networks except one showed a better performance than the multiple linear regression analysis.
机译:构造了人工神经网络(ANN)来预测办公人员的与建筑物相关的症状(BRS)的发生率。六个室内空气污染物和四个室内舒适度变量被用作网络的输入变量。症状量度用作BRS患病率的量度,并用作输出变量。污染物浓度,舒适度变量和乘员症状数据是从美国环境保护署进行的“建筑物评估和调查评估”研究中获得的,所有研究均同时进行。 ANN建模中使用了采用带有动量项和可变学习率的反向传播算法的前馈网络。均方根误差和观测值与预测值之间的简单线性回归的R2值用作性能指标。在所构造的网络中,在一个隐藏的网络中观察到最佳的预测性能,对于测试集,R〜2值为0.56。除一个外,所有构建的网络都比多元线性回归分析显示出更好的性能。

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