首页> 外文会议>Chemical and Biological Sensing VIII; Proceedings of SPIE-The International Society for Optical Engineering; vol.6554 >Bayesian Probabilistic Approach for Inverse Source Determination From Limited and Noisy Chemical or Biological Sensor Concentration Measurements
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Bayesian Probabilistic Approach for Inverse Source Determination From Limited and Noisy Chemical or Biological Sensor Concentration Measurements

机译:贝叶斯概率方法用于有限和嘈杂的化学或生物传感器浓度测量的逆源测定

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摘要

Although a great deal of research effort has been focused on the forward prediction of the dispersion of contaminants (e.g., chemical and biological warfare agents) released into the turbulent atmosphere, much less work has been directed toward the inverse prediction of agent source location and strength from the measured concentration, even though the importance of this problem for a number of practical applications is obvious. In general, the inverse problem of source reconstruction is ill-posed and unsolvable without additional information. It is demonstrated that a Bayesian probabilistic inferential framework provides a natural and logically consistent method for source reconstruction from a limited number of noisy concentration data. In particular, the Bayesian approach permits one to incorporate prior knowledge about the source as well as additional information regarding both model and data errors. The latter enables a rigorous determination of the uncertainty in the inference of the source parameters (e.g., spatial location, emission rate, release time, etc.), hence extending the potential of the methodology as a tool for quantitative source reconstruction. A model (or, source-receptor relationship) that relates the source distribution to the concentration data measured by a number of sensors is formulated, and Bayesian probability theory is used to derive the posterior probability density function of the source parameters. A computationally efficient methodology for determination of the likelihood function for the problem, based on an adjoint representation of the source-receptor relationship, is described. Furthermore, we describe the application of efficient stochastic algorithms based on Markov chain Monte Carlo (MCMC) for sampling from the posterior distribution of the source parameters, the latter of which is required to undertake the Bayesian computation. The Bayesian inferential methodology for source reconstruction is validated against real dispersion data for two cases involving contaminant dispersion in highly disturbed flows over urban and complex environments where the idealizations of horizontal homogeneity and/or temporal stationarity in the flow cannot be applied to simplify the problem. Furthermore, the methodology is applied to the case of reconstruction of multiple sources.
机译:尽管大量研究工作集中在对进入湍流大气中的污染物(例如化学和生物战剂)的分散性进行前瞻性预测,但针对剂源位置和强度的逆向预测工作却少得多。从测得的浓度来看,即使这个问题在许多实际应用中的重要性是显而易见的。通常,如果没有其他信息,源重构的反问题是不适当的,无法解决。结果表明,贝叶斯概率推论框架为有限数量的噪声浓度数据的源重构提供了自然和逻辑上一致的方法。特别地,贝叶斯方法允许人们结合关于源的先验知识以及关于模型和数据误差的附加信息。后者使得能够严格确定源参数(例如,空间位置,发射速率,释放时间等)的推论中的不确定性,从而扩展了该方法作为用于定量源重构的工具的潜力。建立了将源分布与多个传感器测得的浓度数据相关联的模型(或源-受体关系),并使用贝叶斯概率理论推导了源参数的后验概率密度函数。描述了一种基于源-受体关系的伴随表示来确定问题的似然函数的计算有效方法。此外,我们描述了基于马尔可夫链蒙特卡洛(MCMC)的高效随机算法从源参数的后验分布进行采样的应用,后者需要进行贝叶斯计算。针对两种情况下涉及真实扩散数据的贝叶斯推论方法进行了验证,涉及两种情况,其中涉及污染物在城市和复杂环境中的高度扰动流中的扩散,其中无法应用流中水平均匀性和/或时间平稳性的理想化来简化问题。此外,该方法适用于重建多个来源的情况。

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