A Multi-Modal Wildfire Prediction and Personalized Early-Warning System
Based on a Novel Machine Learning Framework
- URL: http://arxiv.org/abs/2208.09079v1
- Date: Thu, 18 Aug 2022 22:03:32 GMT
- Title: A Multi-Modal Wildfire Prediction and Personalized Early-Warning System
Based on a Novel Machine Learning Framework
- Authors: Rohan Tan Bhowmik
- Abstract summary: California's 2018 wildfire season caused damages of $148.5 billion.
Among millions impacted people, those living with disabilities are disproportionately impacted due to inadequate means of alerts.
In this project, a multi-modal wildfire prediction and personalized early warning system has been developed.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Wildfires are increasingly impacting the environment, human health and
safety. Among the top 20 California wildfires, those in 2020-2021 burned more
acres than the last century combined. California's 2018 wildfire season caused
damages of $148.5 billion. Among millions of impacted people, those living with
disabilities (around 15% of the world population) are disproportionately
impacted due to inadequate means of alerts. In this project, a multi-modal
wildfire prediction and personalized early warning system has been developed
based on an advanced machine learning architecture. Sensor data from the
Environmental Protection Agency and historical wildfire data from 2012 to 2018
have been compiled to establish a comprehensive wildfire database, the largest
of its kind. Next, a novel U-Convolutional-LSTM (Long Short-Term Memory) neural
network was designed with a special architecture for extracting key spatial and
temporal features from contiguous environmental parameters indicative of
impending wildfires. Environmental and meteorological factors were incorporated
into the database and classified as leading indicators and trailing indicators,
correlated to risks of wildfire conception and propagation respectively.
Additionally, geological data was used to provide better wildfire risk
assessment. This novel spatio-temporal neural network achieved >97% accuracy
vs. around 76% using traditional convolutional neural networks, successfully
predicting 2018's five most devastating wildfires 5-14 days in advance.
Finally, a personalized early warning system, tailored to individuals with
sensory disabilities or respiratory exacerbation conditions, was proposed. This
technique would enable fire departments to anticipate and prevent wildfires
before they strike and provide early warnings for at-risk individuals for
better preparation, thereby saving lives and reducing economic damages.
Related papers
- Bushfire Severity Modelling and Future Trend Prediction Across Australia: Integrating Remote Sensing and Machine Learning [0.43012765978447565]
This study presents an in-depth analysis of bushfire severity in Australia over the last twelve years.
By utilizing Landsat imagery and integrating spectral indices like NDVI, NBR, and Burn Index, along with topographical and climatic factors, we developed a robust predictive model.
The model achieved high accuracy, 86.13%, demonstrating its effectiveness in predicting fire severity across diverse Australian ecosystems.
arXiv Detail & Related papers (2024-09-18T04:57:48Z) - Back to the Future: GNN-based NO$_2$ Forecasting via Future Covariates [49.93577170464313]
We deal with air quality observations in a city-wide network of ground monitoring stations.
We propose a conditioning block that embeds past and future covariates into the current observations.
We find that conditioning on future weather information has a greater impact than considering past traffic conditions.
arXiv Detail & Related papers (2024-04-08T09:13:16Z) - FaultGuard: A Generative Approach to Resilient Fault Prediction in Smart Electrical Grids [53.2306792009435]
FaultGuard is the first framework for fault type and zone classification resilient to adversarial attacks.
We propose a low-complexity fault prediction model and an online adversarial training technique to enhance robustness.
Our model outclasses the state-of-the-art for resilient fault prediction benchmarking, with an accuracy of up to 0.958.
arXiv Detail & Related papers (2024-03-26T08:51:23Z) - A Synergistic Approach to Wildfire Prevention and Management Using AI, ML, and 5G Technology in the United States [44.99833362998488]
This research investigates proactive methods for detecting and handling wildfires in the United States.
The specific objective of this research covers proactive detection and prevention of wildfires using advanced technology.
Various methods, such as AI-enabled remote sensing and 5G-based active monitoring, can enhance proactive wildfire detection and management.
arXiv Detail & Related papers (2024-02-27T04:09:30Z) - Modelling wildland fire burn severity in California using a spatial
Super Learner approach [0.04188114563181614]
Given the increasing prevalence of wildland fires in the Western US, there is a critical need to develop tools to understand and accurately predict burn severity.
We develop a machine learning model to predict post-fire burn severity using pre-fire remotely sensed data.
When implemented, this model has the potential to the loss of human life, property, resources, and ecosystems in California.
arXiv Detail & Related papers (2023-11-25T22:09:14Z) - Spain on Fire: A novel wildfire risk assessment model based on image
satellite processing and atmospheric information [1.8377229717030112]
Wildfires destroy larger areas of Spain each year, threatening numerous ecosystems. Humans cause 90% of them (negligence or provoked) and the behaviour of individuals is unpredictable.
In order to mitigate the damage of these events we proposed the novel Wildfire Assessment Model (WAM).
Our aim is to anticipate the economic and ecological impact of a wildfire, assisting managers resource allocation and decision making for dangerous regions in Spain.
arXiv Detail & Related papers (2023-06-08T08:55:16Z) - Image-Based Fire Detection in Industrial Environments with YOLOv4 [53.180678723280145]
This work looks into the potential of AI to detect and recognize fires and reduce detection time using object detection on an image stream.
To our end, we collected and labeled appropriate data from several public sources, which have been used to train and evaluate several models based on the popular YOLOv4 object detector.
arXiv Detail & Related papers (2022-12-09T11:32:36Z) - Neuroevolution-based Classifiers for Deforestation Detection in Tropical
Forests [62.997667081978825]
Millions of hectares of tropical forests are lost every year due to deforestation or degradation.
Monitoring and deforestation detection programs are in use, in addition to public policies for the prevention and punishment of criminals.
This paper proposes the use of pattern classifiers based on neuroevolution technique (NEAT) in tropical forest deforestation detection tasks.
arXiv Detail & Related papers (2022-08-23T16:04:12Z) - Preliminary Wildfire Detection Using State-of-the-art PTZ (Pan, Tilt,
Zoom) Camera Technology and Convolutional Neural Networks [0.0]
Wildfires are uncontrolled fires in the environment that can be caused by humans or nature.
In 2020 alone, wildfires in California have burned 4.2 million acres, damaged 10,500 buildings or structures, and killed more than 31 people.
The objective of the research is to detect forest fires in their earlier stages to prevent them from spreading.
arXiv Detail & Related papers (2021-09-10T19:30:37Z) - Mitigating Greenhouse Gas Emissions Through Generative Adversarial
Networks Based Wildfire Prediction [11.484140660635239]
We develop a deep learning based data augmentation approach for wildfire risk prediction.
By adopting the proposed method, we can take preventive strategies of wildfire mitigation to reduce global GHG emissions.
arXiv Detail & Related papers (2021-08-20T00:36:30Z) - From Static to Dynamic Prediction: Wildfire Risk Assessment Based on
Multiple Environmental Factors [69.9674326582747]
Wildfire is one of the biggest disasters that frequently occurs on the west coast of the United States.
We propose static and dynamic prediction models to analyze and assess the areas with high wildfire risks in California.
arXiv Detail & Related papers (2021-03-14T17:56:17Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.