Department of Civil Engineering, University of Toledo, 2801 W. Bancroft Street, Toledo, OH 43606, USA.
J Air Waste Manag Assoc. 2013 Feb;63(2):205-18. doi: 10.1080/10962247.2012.741054.
The present study developed a novel approach to modeling indoor air quality (IAQ) of a public transportation bus by the development of hybrid genetic-algorithm-based neural networks (also known as evolutionary neural networks) with input variables optimized from using the regression trees, referred as the GART approach. This study validated the applicability of the GART modeling approach in solving complex nonlinear systems by accurately predicting the monitored contaminants of carbon dioxide (CO2), carbon monoxide (CO), nitric oxide (NO), sulfur dioxide (SO2), 0.3-0.4 microm sized particle numbers, 0.4-0.5 microm sized particle numbers, particulate matter (PM) concentrations less than 1.0 microm (PM10), and PM concentrations less than 2.5 microm (PM2.5) inside a public transportation bus operating on 20% grade biodiesel in Toledo, OH. First, the important variables affecting each monitored in-bus contaminant were determined using regression trees. Second, the analysis of variance was used as a complimentary sensitivity analysis to the regression tree results to determine a subset of statistically significant variables affecting each monitored in-bus contaminant. Finally, the identified subsets of statistically significant variables were used as inputs to develop three artificial neural network (ANN) models. The models developed were regression tree-based back-propagation network (BPN-RT), regression tree-based radial basis function network (RBFN-RT), and GART models. Performance measures were used to validate the predictive capacity of the developed IAQ models. The results from this approach were compared with the results obtained from using a theoretical approach and a generalized practicable approach to modeling IAQ that included the consideration of additional independent variables when developing the aforementioned ANN models. The hybrid GART models were able to capture majority of the variance in the monitored in-bus contaminants. The genetic-algorithm-based neural network IAQ models outperformed the traditional ANN methods of the back-propagation and the radial basis function networks.
The novelty of this research is the development of a novel approach to modeling vehicular indoor air quality by integration of the advanced methods of genetic algorithms, regression trees, and the analysis of variance for the monitored in-vehicle gaseous and particulate matter contaminants, and comparing the results obtained from using the developed approach with conventional artificial intelligence techniques of back propagation networks and radial basis function networks. This study validated the newly developed approach using holdout and threefold cross-validation methods. These results are of great interest to scientists, researchers, and the public in understanding the various aspects of modeling an indoor microenvironment. This methodology can easily be extended to other fields of study also.
本研究通过开发混合遗传算法的神经网络(也称为进化神经网络),开发了一种新颖的方法来对公共交通巴士的室内空气质量(IAQ)进行建模,该神经网络的输入变量经过回归树优化,简称 GART 方法。本研究通过准确预测监测的二氧化碳(CO2)、一氧化碳(CO)、二氧化氮(NO)、二氧化硫(SO2)、0.3-0.4 微米大小颗粒数、0.4-0.5 微米大小颗粒数、小于 1.0 微米(PM10)的颗粒物浓度和小于 2.5 微米(PM2.5)的颗粒物浓度等污染物,验证了 GART 建模方法在解决复杂非线性系统方面的适用性,这些污染物是在俄亥俄州托莱多使用 20%生物柴油的公共交通巴士内监测到的。首先,使用回归树确定了影响每个车内污染物的重要变量。其次,方差分析用作回归树结果的补充灵敏度分析,以确定影响每个车内污染物的一组具有统计学意义的重要变量。最后,确定了具有统计学意义的变量子集作为开发三个人工神经网络(ANN)模型的输入。开发的模型是基于回归树的反向传播网络(BPN-RT)、基于回归树的径向基函数网络(RBFN-RT)和 GART 模型。使用性能指标来验证所开发的室内空气质量模型的预测能力。将该方法的结果与使用理论方法和广义可行方法建模室内空气质量的结果进行了比较,在开发上述 ANN 模型时,考虑了更多的独立变量。基于遗传算法的神经网络室内空气质量模型能够捕获大部分车内污染物的方差。基于遗传算法的神经网络模型优于反向传播和径向基函数网络的传统 ANN 方法。
本研究的新颖之处在于,通过集成遗传算法、回归树和方差分析等先进方法,开发了一种新颖的车辆室内空气质量建模方法,用于监测车内气态和颗粒物污染物,并将使用所开发方法获得的结果与传统人工智能技术的反向传播网络和径向基函数网络的结果进行比较。本研究使用保留和三倍交叉验证方法验证了新开发的方法。这些结果对科学家、研究人员和公众了解室内微环境建模的各个方面非常感兴趣。该方法也可以轻松扩展到其他研究领域。