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基于MCMC方法的城区有毒气体扩散源反演
郭少冬 ; 杨锐 ; 翁文国 ; GUO Shaodong ; YANG Rui ; WENG Wenguo
2010-06-10 ; 2010-06-10
关键词有毒气体泄漏 反演 Bayes推断 似然函数 后验概率 toxic gas release inversion Bayesian inference likelihood function posterior probability X928
其他题名Source inversion of toxic gas dispersion in urban areas based on the MCMC method
中文摘要城区中有毒气体突发性泄漏时,需要快速对泄漏源进行定位和识别,以便科学预测气体的蔓延及其影响范围。利用基于Bayes推断理论的MCMC(Markov chain Monte Carlo)抽样方法,根据城市中分布的传感器测量信息和气体扩散数值计算模型,构造似然函数,对泄漏源的位置、强度进行反演。计算了这些参数和空间各点浓度的相关统计量,表明反演结果与泄漏源的真实参数十分吻合。此外,还讨论了传感器测量误差的概率分布对结果的影响。结果表明,误差概率会显著影响计算效果,概率分布越平坦,泄漏源反演信息的不确定度越大。; When toxic gas accidentally releases in the urban environment,accurately and rapidly locating and identifying the source is an important issue to predict and confirm the gas dispersion and the affected areas.With the observations of the sensors distributed over the urban areas and the concentrations predicted by an atmospheric dispersion model,a likelihood function was assigned,with which Markov chain Monte Carlo(MCMC)sampling based on Bayesian inference was used to invert the parameters,including the source location and the dispersion strength.The probability distributions of the parameters were then calculated which agreed well with the actual results.Analyses show that the probability distribution of the sensor error significantly affects the calculational results and that flatter and broader probability distribution of the sensor error leads to source inversion with larger uncertainty.
语种中文 ; 中文
内容类型期刊论文
源URL[http://hdl.handle.net/123456789/63595]  
专题清华大学
推荐引用方式
GB/T 7714
郭少冬,杨锐,翁文国,等. 基于MCMC方法的城区有毒气体扩散源反演[J],2010, 2010.
APA 郭少冬,杨锐,翁文国,GUO Shaodong,YANG Rui,&WENG Wenguo.(2010).基于MCMC方法的城区有毒气体扩散源反演..
MLA 郭少冬,et al."基于MCMC方法的城区有毒气体扩散源反演".(2010).
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