Department of Electrical Engineering, National Taipei University of Technology, No. 1, Section 3, Zhongxiao East Road, Taipei, 106, Taiwan, Republic of China.
Department of Electrical Engineering, National Taipei University of Technology, No. 1, Section 3, Zhongxiao East Road, Taipei, 106, Taiwan, Republic of China.
Ecotoxicol Environ Saf. 2019 Oct 30;182:109386. doi: 10.1016/j.ecoenv.2019.109386. Epub 2019 Jun 28.
It is highly significant to develop efficient soft sensors to estimate the concentration of hazardous pollutants in a region to maintain environmental safety. In this paper, an air quality warning system based on a robust PM soft sensor and support vector machine (SVM) classifier is reported. The soft sensor for the estimation of PM concentration is proposed using a novel approach of Bayesian regularized neural network (BRNN) via forward feature selection (FFS). Zuoying district of Taiwan is selected as the region of study for implementation of the estimation system because of the high pollution in the region. Descriptive statistics of various pollutants in Zuoying district is computed as part of the study. Moreover, seasonal variation of particulate matter (PM) concentration is analyzed to evaluate the impact of various seasons on the increased levels of PM in the region. To investigate the linear dependence of concentration of different pollutants to the concentration of PM, Pearson correlation coefficient, Kendall's tau coefficient, and Spearman coefficient are computed. To achieve high performance for the PM estimation, selection of appropriate forward features from the input variables is carried out using FFS technique and Bayesian regularization is incorporated to the neural network system to avoid the overfitting problem. The comparative evaluation of performance of BRNN/FFS estimation system with various other methods shows that our proposed estimation system has the lowest mean square error (MSE), root mean square error (RMSE), and mean absolute error (MAE). Moreover, the coefficient of determination (R-squared) is around 0.95 for the proposed estimation method, which denotes a good fit. Evaluation of the SVM classifier showed good performance indicating that the proposed air quality warning system is efficient.
开发有效的软传感器来估计危险污染物在区域中的浓度以维护环境安全具有重要意义。本文报道了一种基于稳健 PM 软传感器和支持向量机 (SVM) 分类器的空气质量预警系统。通过前向特征选择 (FFS) 提出了用于估计 PM 浓度的软传感器,该软传感器使用贝叶斯正则化神经网络 (BRNN) 的新方法。选择台湾左营区作为研究区域,因为该地区污染严重,实施估计系统。作为研究的一部分,计算了左营区各种污染物的描述性统计数据。此外,分析了颗粒物 (PM) 浓度的季节性变化,以评估不同季节对该地区 PM 浓度升高的影响。为了研究不同污染物浓度与 PM 浓度之间的线性关系,计算了 Pearson 相关系数、Kendall's tau 系数和 Spearman 系数。为了实现 PM 估计的高性能,使用 FFS 技术从输入变量中选择适当的前向特征,并将贝叶斯正则化纳入神经网络系统,以避免过拟合问题。与其他各种方法相比,BRNN/FFS 估计系统的性能比较评估表明,我们提出的估计系统具有最低的均方误差 (MSE)、均方根误差 (RMSE) 和平均绝对误差 (MAE)。此外,所提出的估计方法的确定系数 (R-squared) 约为 0.95,这表示拟合良好。SVM 分类器的评估表明性能良好,表明所提出的空气质量预警系统是有效的。