Learning Wildfire Model from Incomplete State Observations

11/28/2021
by   Alissa Chavalithumrong, et al.
0

As wildfires are expected to become more frequent and severe, improved prediction models are vital to mitigating risk and allocating resources. With remote sensing data, valuable spatiotemporal statistical models can be created and used for resource management practices. In this paper, we create a dynamic model for future wildfire predictions of five locations within the western United States through a deep neural network via historical burned area and climate data. The proposed model has distinct features that address the characteristic need in prediction evaluations, including dynamic online estimation and time-series modeling. Between locations, local fire event triggers are not isolated, and there are confounding factors when local data is analyzed due to incomplete state observations. When compared to existing approaches that do not account for incomplete state observation within wildfire time-series data, on average, we are able to achieve higher prediction performances.

READ FULL TEXT

page 2

page 3

page 5

page 6

research
08/20/2020

Reinforcement Learning based dynamic weighing of Ensemble Models for Time Series Forecasting

Ensemble models are powerful model building tools that are developed wit...
research
04/21/2021

A windowed correlation based feature selection method to improve time series prediction of dengue fever cases

The performance of data-driven prediction models depends on the availabi...
research
04/26/2021

A functional autoregressive model based on exogenous hydrometeorological variables for river flow prediction

In this research, a functional time series model was introduced to predi...
research
09/17/2020

Automatic deep learning for trend prediction in time series data

Recently, Deep Neural Network (DNN) algorithms have been explored for pr...
research
08/18/2022

Efficient data-driven gap filling of satellite image time series using deep neural networks with partial convolutions

The abundance of gaps in satellite image time series often complicates t...
research
07/23/2020

Deep Dynamic Factor Models

We propose a novel deep neural net framework - that we refer to as Deep ...
research
08/23/2019

Optimal Heterogeneous Asset Location Modeling for Expected Spatiotemporal Search and Rescue Demands using Historic Event Data

The United States Coast Guard is charged with the coordination of all se...

Please sign up or login with your details

Forgot password? Click here to reset