Sequential information gathering schemes for spatial risk and decision analysis applications

被引:0
作者
Jo Eidsvik
Gabriele Martinelli
Debarun Bhattacharjya
机构
[1] NTNU,Department of Mathematical Sciences
[2] Thomson Reuters,undefined
[3] IBM T.J. Watson Research Center,undefined
来源
Stochastic Environmental Research and Risk Assessment | 2018年 / 32卷
关键词
Value of information; Spatial risk analysis; Spatial statistics; Sequential information; Adaptive testing; Bayesian networks; Gaussian processes;
D O I
暂无
中图分类号
学科分类号
摘要
Several risk and decision analysis applications are characterized by spatial elements: there are spatially dependent uncertain variables of interest, decisions are made at spatial locations, and there are opportunities for spatial data acquisition. Spatial dependence implies that the data gathered at one coordinate could inform and assist a decision maker at other locations as well, and one should account for this learning effect when analyzing and comparing information gathering schemes. In this paper, we present concepts and methods for evaluating sequential information gathering schemes in spatial decision situations. Static and sequential information gathering schemes are outlined using the decision theoretic notion of value of information, and we use heuristics for approximating the value of sequential information in large-size spatial applications. We illustrate the concepts using a Bayesian network example motivated from risks associated with CO2 sequestration. We present a case study from mining where there are risks of rock hazard in the tunnels, and information about the spatial distribution of joints in the rocks may lead to a better allocation of resources for choosing rock reinforcement locations. In this application, the spatial variables are modeled by a Gaussian process. In both examples there can be large values associated with adaptive information gathering.
引用
收藏
页码:1163 / 1177
页数:14
相关论文
共 88 条
[1]  
Azzimonti D(2016)Quantifying uncertainties on excursion sets under a Gaussian random field prior SIAM/ASA J Uncertain Quant 4 850-874
[2]  
Bect J(2010)The value of information in spatial decision making Math Geosci 42 141-163
[3]  
Chevalier C(2013)The value of information in portfolio problems with dependent projects Decis Anal 10 341-351
[4]  
Ginsbourger D(2014)Reinforcement learning-based design of sampling policies under cost constraints in Markov random fields: application to weed map reconstruction Comput Stat Data Anal 72 30-44
[5]  
Bhattacharjya D(2009)Value of information in the oil and gas industry: past, present, and future SPE: Reserv Eval Eng 12 630-638
[6]  
Eidsvik J(2013)Optimal sequential exploration: Bandits, clairvoyants, and wildcats Operat Res 60 262-274
[7]  
Mukerji T(2015)Design of optimal ecosystem monitoring networks: hotspot detection and biodiversity patterns Stoch Environ Res Risk Assess 29 1085-1101
[8]  
Bhattacharjya D(2008)Sparse sampling: spatial design for monitoring stream networks Stat Surv 2 113-153
[9]  
Eidsvik J(1979)Measurable multiattribute value functions Operat Res 27 810-822
[10]  
Mukerji T(2008)Value of information of seismic amplitude and CSEM resistivity Geophysics 73 R59-R69