Estimating wildfire growth from noisy and incomplete incident data using a state space model

被引:0
作者
Harry Podschwit
Peter Guttorp
Narasimhan Larkin
E. Ashley Steel
机构
[1] University of Washington,
[2] Norwegian Computing Center,undefined
[3] Pacific Wildland Fire Sciences Laboratory,undefined
[4] US Forest Service,undefined
来源
Environmental and Ecological Statistics | 2018年 / 25卷
关键词
Data reconciliation; Gibbs sampling; Isotonic regression; Logistic difference equation; Missing data; State space model; Wildfire growth;
D O I
暂无
中图分类号
学科分类号
摘要
Wildfire behaviors are complex and are of interest to fire managers and scientists for a variety of reasons. Many of these important behaviors are directly measured from the cumulative burn area time series of individual wildfires; however, estimating cumulative burn area time series is challenging due to the magnitude of measurement errors and missing entries. To resolve this, we introduce two state space models for reconstructing wildfire burn area using repeated observations from multiple data sources that include different levels of measurement error and temporal gaps. The constant growth parameter model uses a few parameters and assumes a burn area time series that follows a logistic growth curve. The non-constant growth parameter model uses a time-varying logistic growth curve to produce detailed estimates of the burn area time series that permit sudden pauses and pulses of growth. We apply both reconstruction models to burn area data from 13 large wildfire incidents to compare the quality of the burn area time series reconstructions and computational requirements. The constant growth parameter model reconstructs burn area time series with minimal computational requirements, but inadequately fits observed data in most cases. The non-constant growth parameter model better describes burn area time series, but can also be highly computationally demanding. Sensitivity analyses suggest that in a typical application, the reconstructed cumulative burn area time series is fairly robust to minor changes in the prior distributions.
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页码:325 / 340
页数:15
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共 110 条
  • [1] Alexander ME(2003)Wildland fire behavior case studies and analyses: other examples, methods, reporting standards and some practical advice Fire Manag Today 63 4-12
  • [2] Thomas DA(2016)Airborne optical and thermal remote sensing for wildfire detection and monitoring Sensors 16 1310-55
  • [3] Allison RS(2007)Predicting wildfires Sci Am 297 46-868
  • [4] Johnston JM(2004)On impulsive Beverton–Holt difference equations and their applications J Differ Equ Appl 10 851-1129
  • [5] Craig G(2014)Is proportion burned severely related to daily area burned? Environ Res Lett 9 064011-455
  • [6] Jennings S(2014)Santa Ana winds and predictors of wildfire progression in southern California Int J Wildland Fire 23 1119-28
  • [7] Andrews P(1998)General methods for monitoring convergence of iterative simulations J Comput Graph Stat 7 434-2328
  • [8] Finney MA(2016)Historical maps from modern images: using remote sensing to model and map century-long vegetation change in a fire-prone region PLoS ONE 11 e0150808-255
  • [9] Fischetti M(2013)Uncertainty associated with model predictions of surface and crown fire rates of spread Environ Model Softw 47 16-294
  • [10] Berezansky L(2008)The generalized Beverton–Holt equation and the control of populations Appl Math Model 32 2312-207