首页> 外文会议>Asian conference on remote sensing;ACRS >A NEURAL NETWORK-BASED LAND USE REGRESSION MODEL TO ESTIMATE SPATIAL-TEMPORAL VARIABILITY OF NITROGEN DIOXIDE
【24h】

A NEURAL NETWORK-BASED LAND USE REGRESSION MODEL TO ESTIMATE SPATIAL-TEMPORAL VARIABILITY OF NITROGEN DIOXIDE

机译:基于神经网络的土地利用回归模型估算二氧化氮的时空变异性

获取原文

摘要

Nitrogen dioxide (NO_2) is a kind of highly reactive gas and secondary pollutant mainly from burning fossil fuels, which were predominant species in vehicle exhaust. Since traffic volume density is heavy and large number of temples and restaurants were densely distributed in Taiwan. The high concentration of NO_2 may cause adverse effects on respiratory system. To estimate NO_2 concentration more accurately, this study aimed to utilize a neural network-based land use regression model to assess the spatial-temporal variability. Daily average NO_2 data were collected from 70 fixed air quality monitoring stations in Taiwan main island which were established by Taiwan Environment Protective Administration. Totally, around 0.41 million observations were collected for our analysis. Several datasets were collected for obtaining spatial predictor variables, including EPA environmental resources dataset, meteorological dataset, land-use inventory, landmark dataset, digital road network map, DTM, MODIS NDVI dataset, and thermal power plant distribution dataset. To establish the integrated approach, conventional land-use regression (LUR) was first used to identify the important predictors variables. Then a deep neural network (DNN) algorithm was applied to fit the prediction model. 10-fold cross validation and external data verification methods were used to further confirm the robustness of model performance. The results showed that, the developed conventional LUR model captured 60% of NO_2 variation. Of the 11 variables selected by the stepwise variable selection procedure, PM_(10), SO_2, O_3 explained 18%, 7% and 5% NO_2 variation, respectively. After integrating DNN algorithm with conventional LUR method, the model explanatory power was increased to 85%, with a 25% improved in model performance. Consistent findings were obtained from the 10-fold cross validation, while the cross-validated R~2 was increased from 61% to 83%, and root-mean-square error (RMSE) was decreased from 6.56 ppb to 4.34 ppb. This study demonstrates the value of incorporating the conventional LUR model and DNN algorithm in estimating spatial-temporal variability of NO_2 exposure.
机译:二氧化氮(NO_2)是一种高反应性气体和二次污染物,主要来自燃烧化石燃料,而化石燃料是汽车尾气中的主要物质。由于交通量密度很大,台湾的寺庙和饭店很多。高浓度的NO_2可能对呼吸系统造成不利影响。为了更准确地估算NO_2的浓度,本研究旨在利用基于神经网络的土地利用回归模型来评估时空变异性。日平均NO_2数据是从台湾环境保护总署在台湾主岛建立的70个固定空气质量监测站收集的。总共收集了约41万个观测值用于我们的分析。收集了一些数据集以获取空间预测变量,包括EPA环境资源数据集,气象数据集,土地使用清单,地标数据集,数字道路网络图,DTM,MODIS NDVI数据集和火电厂分布数据集。为了建立综合方法,首先使用传统的土地利用回归(LUR)来识别重要的预测变量。然后,将深度神经网络(DNN)算法应用于预测模型。 10倍交叉验证和外部数据验证方法用于进一步确认模型性能的鲁棒性。结果表明,开发的常规LUR模型捕获了60%的NO_2变化。在通过逐步变量选择程序选择的11个变量中,PM_(10),SO_2,O_3分别解释了18%,7%和5%的NO_2变化。将DNN算法与常规LUR方法集成后,模型的解释能力提高到85%,模型性能提高了25%。从10倍交叉验证中获得了一致的发现,而交叉验证的R〜2从61%增加到83%,并且均方根误差(RMSE)从6.56 ppb降低到4.34 ppb。这项研究证明了将常规LUR模型和DNN算法相结合在估算NO_2暴露时空变化方面的价值。

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