PostBP: A Python']Python library to analyze outputs from wildfire growth models

被引:0
|
作者
Liu, Ning [1 ]
Yemshanov, Denys [1 ]
Parisien, Marc-Andre [2 ]
Stockdale, Chris [2 ]
Moore, Brett [2 ]
Koch, Frank H. [3 ]
机构
[1] Nat Resources Canada, Great Lakes Forestry Ctr, Canadian Forest Serv, 1219 Queen St East, Sault Ste Marie, ON, Canada
[2] Nat Resources Canada, Canadian Forest Serv, Northern Forestry Ctr, 5320 122 St Northwest, Edmonton, AB, Canada
[3] USDA Forest Serv, Eastern Forest Environm Threat Assessment Ctr, Southern Res Stn, 3041 East Cornwallis Rd, Res Triangle Pk, NC 27709 USA
关键词
Fire growth modeling; Wildfires; Fire ignition; Fire perimeter; Fire spread likelihood; Source-sink ratio; Burn-P3; BURN PROBABILITY; EXPOSURE;
D O I
10.1016/j.mex.2024.102816
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Wildfire is an important natural disturbance agent in Canadian forests, but it has also caused significant economic damage nationwide. Spatial fire growth models have emerged as important tools for representing wildfire dynamics across diverse landscapes, enabling the mapping of key wildfire hazard metrics such as location -specific burn probabilities or likelihoods of fire ignition. While these summary metrics have gained popularity, they often fall short in capturing the directional spread of wildfires and their potential spread distances. The metrics depicting the directional spread of wildfire can be derived from raw outputs generated with fire growth models, such as the perimeters and ignition locations of individual fires, but extracting this information requires complex data processing. To address this data gap, we present PostBP, an open -source Python package designed for post -processing the raw outputs of fire growth models - the ignition locations and perimeters of individual fires simulated over multiple stochastic iterations - into a matrix of fire spread likelihoods between all pairs of forest patches in a landscape. The PostBP also generates several other summary outputs, such as the source -sink ratio and the fire spread rose diagram. We provide an overview of PostBP 's capabilities and demonstrate its practical application to a forested landscape. center dot Wildfire growth models generate large amounts of outputs, which are hard to summarize for practical decision -making. center dot The PostBP package calculates the summary metrics characterizing the directional spread of wildfires. center dot The fire risk summaries generated with PostBP can support the assessments of wildfire risk and mitigation measures.
引用
收藏
页数:14
相关论文
共 37 条
  • [1] An Efficient and Extendable Python']Python Library to Analyze Neuronal Morphologies
    Torben-Nielsen, Benjamin
    NEUROINFORMATICS, 2014, 12 (04) : 619 - 622
  • [2] Pixyz: a Python']Python library for developing deep generative models
    Suzuki, Masahiro
    Kaneko, Takaaki
    Matsuo, Yutaka
    ADVANCED ROBOTICS, 2023, 37 (19) : 1221 - 1236
  • [3] NDlib: A Python']Python Library to Model and Analyze Diffusion Processes over Complex Networks
    Rossetti, Giulio
    Milli, Letizia
    Rinzivillo, Salvatore
    ERCIM NEWS, 2021, (124): : 29 - 30
  • [4] NDlib: A Python']Python Library to Model and Analyze Diffusion Processes over Complex Networks
    Rossetti, Giulio
    Milli, Letizia
    Rinzivillo, Salvatore
    COMPANION PROCEEDINGS OF THE WORLD WIDE WEB CONFERENCE 2018 (WWW 2018), 2018, : 183 - 186
  • [5] An Efficient and Extendable Python Library to Analyze Neuronal Morphologies
    Benjamin Torben-Nielsen
    Neuroinformatics, 2014, 12 : 619 - 622
  • [6] Deeptime: a Python']Python library for machine learning dynamical models from time series data
    Hoffmann, Moritz
    Scherer, Martin
    Hempel, Tim
    Mardt, Andreas
    de Silva, Brian
    Husic, Brooke E.
    Klus, Stefan
    Wu, Hao
    Kutz, Nathan
    Brunton, Steven L.
    Noe, Frank
    MACHINE LEARNING-SCIENCE AND TECHNOLOGY, 2022, 3 (01):
  • [7] Oceanobs a Python']Python package to analyze data from marine observatories
    Bardaji, R.
    Piera, J.
    Bartolome, R.
    Danobeitia, J.
    Garcia, O.
    OCEANS 2017 - ANCHORAGE, 2017,
  • [8] medigan: a Python']Python library of pretrained generative models for medical image synthesis
    Osuala, Richard
    Skorupko, Grzegorz
    Lazrak, Noussair
    Garrucho, Lidia
    Garcia, Eloy
    Joshi, Smriti
    Jouide, Socayna
    Rutherford, Michael
    Prior, Fred
    Kushibar, Kaisar
    Diaz, Oliver
    Lekadir, Karim
    JOURNAL OF MEDICAL IMAGING, 2023, 10 (06)
  • [9] APLUS: A Python']Python library for usefulness simulations of machine learning models in healthcare
    Wornow, Michael
    Ross, Elsie Gyang
    Callahan, Alison
    Shah, Nigam H.
    JOURNAL OF BIOMEDICAL INFORMATICS, 2023, 139
  • [10] Highdicom: a Python']Python Library for Standardized Encoding of Image Annotations and Machine Learning Model Outputs in Pathology and Radiology
    Bridge, Christopher P.
    Gorman, Chris
    Pieper, Steven
    Doyle, Sean W.
    Lennerz, Jochen K.
    Kalpathy-Cramer, Jayashree
    Clunie, David A.
    Fedorov, Andriy Y.
    Herrmann, Markus D.
    JOURNAL OF DIGITAL IMAGING, 2022, 35 (06) : 1719 - 1737