首页> 外文期刊>The Science of the Total Environment >A hybrid air quality early-warning framework: An hourly forecasting model with online sequential extreme learning machines and empirical mode decomposition algorithms
【24h】

A hybrid air quality early-warning framework: An hourly forecasting model with online sequential extreme learning machines and empirical mode decomposition algorithms

机译:混合空气质量预警框架:在线连续极限学习机和经验模式分解算法的每小时预报模型

获取原文
获取原文并翻译 | 示例
           

摘要

Modelling air quality with a practical tool that produces real-time forecasts to mitigate risk to public health continues to face significant challenges considering the chaotic, non-linear and high dimensional nature of air quality predictor variables. The novelty of this research is to propose a hybrid early-warning artificial intelligence (AI) framework that can emulate hourly air quality variables (i.e., Particulate Matter 2.5, PM_(2.5); Particulate Matter 10, PM_(10) and lower atmospheric visibility, VIS), the atmospheric variables associated with increased respiratory induced mortality and recurrent health-care cost. Firstly, hourly air quality data series (January-2015 to December-2017) are demarcated into their respective intrinsic mode functions (IMFs) and a residual sub-series that reveal patterns and resolve data complexity characteristics, followed by partial autocorrelation function applied to each IMF and residual sub-series to unveil historical changes in air quality. To design the prescribed hybrid model, the data is partitioned into training (70%), validation (15%) and testing (15%) sub-sets. The online sequential-extreme learning machine (OS-ELM) algorithm integrated with improved complete ensemble empirical mode decomposition with adaptive noise (ICEEMDAN) is designed as a data pre-processing system to robustly extract predictive patterns and fine-tune the model generalization to a near-optimal global solution, which represents modelled air quality at hourly forecast horizons. The resulting early warning AI-based framework denoted as ICEEMDAN-OS-ELM model, is individually constructed by forecasting each IMF and residual sub-series, with hourly PM_(2.5), PM_(10), and VIS obtained by the aggregated sum of forecasted IMFs and residual sub-series. The results are benchmarked with many competing predictive approaches; e.g., hybrid ICEEMDAN-multiple-linear regression (MLR), ICEEMDAN-M5 model tree and standalone versions: OS-ELM, MLR, M5 model tree. Statistical metrics including the root-mean-square error (RMSE), mean absolute error (MAE), Willmott's Index (WI), Legates & McCabe's Index (E_(LM)) and Nash-Sutcliffe coefficients (E_(NS)) are used to evaluate the model's accuracy. Both visual and statistical results show that the proposed ICEEMDAN-OS-ELM model registers superior results, outperforming alternative comparison approaches. For instance, for PM_(2.5), E_(LM) values ranged from 0.65-0.82 vs. 0.59-0.77 for ICEEMDAN-M5 tree. 0.59-0.74 for ICEEMDAN-MLR, 0.28-0.54 for OS-ELM, 0.27-0.54 for M5 tree and 0.25-0.53 for the MLR model. For remaining air quality variables (i.e., PM_(10) & VIS), the objective model (ICEEMDAN-OS-ELM) outperformed the comparative models. In particular, ICEEMDAN-OS-ELM registered relatively low RMSE/MAE, ranging from approximately 0.7-1.03 μg/m~3 (MAE), 1.01-1.47μg/m~3 (RMSE) for PM_(2.5) whereas for PM_(10), these metrics registered a value of 129-3.84 μg/m~3 (MAE), 3.01-7.04 μg/m~3 (RMSE) and for Visibility, they were 0.01-3.72 μg/m~3 (MAE (Mm~(-1))), 0.04-5.98 μg/m~3 (RMSE (Mm~(-1))). Visual analysis of forecasted and observed air quality through a Taylor diagram illustrates the objective model's preciseness, confirming the versatility of early warning AI-model in generating air quality forecasts. The excellent performance ascertains the hybrid model's potential utility for air quality monitoring and subsequent public health risk mitigation.
机译:考虑到空气质量预测变量的混乱,非线性和高维度性质,使用产生实时预测以减轻对公共卫生风险的实用工具对空气质量进行建模仍然面临着巨大挑战。这项研究的新颖性在于提出一种混合预警人工智能(AI)框架,该框架可以模拟每小时的空气质量变量(即,颗粒物2.5,PM_(2.5),颗粒物10,PM_(10)和较低的大气能见度) (VIS),与呼吸诱发的死亡率增加和经常性医疗费用相关的大气变量。首先,将每小时空气质量数据系列(2015年1月至2017年12月)划分为各自的固有模式函数(IMF)和显示模式并解决数据复杂性特征的残差子系列,然后将偏自动相关函数应用于每个国际货币基金组织和剩余子系列揭示了空气质量的历史变化。为了设计规定的混合模型,将数据划分为训练(70%),验证(15%)和测试(15%)子集。在线顺序极限学习机(OS-ELM)算法与改进的具有自适应噪声的完整整体经验模式分解(ICEEMDAN)集成在一起,被设计为一种数据预处理系统,可稳健地提取预测模式并将模型概括微调为接近最佳的全局解决方案,它代表每小时预报范围内的模拟空气质量。所得的基于AI的预警AI框架称为ICEEMDAN-OS-ELM模型,是通过预测每个IMF和残差子系列而单独构建的,其中每小时PM_(2.5),PM_(10)和VIS由以下各项的总和得出:预测的基金组织和剩余子系列。通过许多竞争性预测方法对结果进行基准测试;例如,混合ICEEMDAN-多线性回归(MLR),ICEEMDAN-M5模型树和独立版本:OS-ELM,MLR,M5模型树。使用的统计指标包括均方根误差(RMSE),平均绝对误差(MAE),威尔莫特指数(WI),Legates&McCabe指数(E_(LM))和Nash-Sutcliffe系数(E_(NS))评估模型的准确性。视觉和统计结果均表明,所提出的ICEEMDAN-OS-ELM模型具有出色的结果,优于其他比较方法。例如,对于PM_(2.5),E_(LM)值的范围为0.65-0.82,而ICEEMDAN-M5树的值为0.59-0.77。 ICEEMDAN-MLR为0.59-0.74,OS-ELM为0.28-0.54,M5树为0.27-0.54,MLR模型为0.25-0.53。对于剩余的空气质量变量(即PM_(10)和VIS),目标模型(ICEEMDAN-OS-ELM)优于比较模型。特别是,ICEEMDAN-OS-ELM的RMSE / MAE相对较低,对于PM_(2.5)约为0.7-1.03μg/ m〜3(MAE),1.01-1.47μg/ m〜3(RMSE)。 10),这些指标的值分别为129-3.84μg/ m〜3(MAE),3.01-7.04μg/ m〜3(RMSE),可见性为0.01-3.72μg/ m〜3(MAE(Mm 〜(-1))),0.04-5.98μg/ m〜3(RMSE(Mm〜(-1)))。通过泰勒(Taylor)图对预测和观察到的空气质量进行视觉分析,说明了目标模型的准确性,从而确认了预警AI模型在生成空气质量预测中的多功能性。出色的性能确定了混合模型在空气质量监测和随后的公共卫生风险缓解方面的潜在用途。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号