Prediction of hourly indoor Carbon Monoxide concentrations in semiarid regions using Regression and feedforward backpropagation as a hybrid model

M. Elbayoumi
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Abstract

Abstract Accurate site-specific forecasting of indoor hourly carbon monoxide (CO) concentrations in school microenvironments is a key issue in air quality research nowadays due to its impact on children’s health. This paper investigated the improvement prediction of multiple linear regression (MLR) and feed forward back propagation (FFBP) by combining them with principal component analysis (PCA) for predicting indoor CO concentration in Gaza Strip, Palestine. Measurements were carried in 12 schools from October 2012 to May 2013 (one academic year). The results suggested that the selected models are effective forecasting tools and hence can be applicable for short-term forecasting of indoor CO level. The predicted indoor CO concentration values agree strongly well with the measured data with high coefficients of determination (R2) 0.869, 0.870, 0.885 and 0.915 for MLR, PCA-MLR, FFBP and PCA-FFBP, respectively. Overall, results showed that PCA models combined with MLR and PCA with FFBP improved MLR and FFBP models of predicting indoor CO concentration, with reduced errors by as much as 7.14% (PCA-MLR) and 56.6% (PCA-FFBP). Moreover, PCA improved the accuracy of the FFBP model by as much as by 3.3%. Keywords: Natural Ventilation; Children; Indoor Air Quality; Feed forward back propagation; Principal component analysis.
利用回归和前馈反向传播混合模型预测半干旱区室内一氧化碳小时浓度
摘要学校微环境室内每小时一氧化碳浓度的准确预测是当前空气质量研究的一个关键问题,因为它影响着儿童的健康。本文研究了多元线性回归(MLR)和前馈反馈传播(FFBP)结合主成分分析(PCA)预测巴勒斯坦加沙地带室内CO浓度的改进预测效果。在2012年10月至2013年5月(一个学年)对12所学校进行了测量。结果表明,所选模型是有效的预测工具,可用于室内CO水平的短期预测。室内CO浓度预测值与实测值吻合较好,MLR、PCA-MLR、FFBP和PCA-FFBP的决定系数(R2)分别为0.869、0.870、0.885和0.915。总体而言,PCA模型与MLR和PCA与FFBP联合预测室内CO浓度均优于MLR和FFBP模型,PCA-MLR和PCA-FFBP的预测误差分别降低了7.14%和56.6%。此外,PCA将FFBP模型的准确率提高了3.3%。关键词:自然通风;孩子;室内空气质量;前馈-反向传播;主成分分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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