Downwind Fire and Smoke Detection during a Controlled Burn—Analyzing the Feasibility and Robustness of Several Downwind Wildfire Sensing Modalities through Real World Applications

Author:

Chwalek Patrick1ORCID,Chen Hall1,Dutta Prabal2,Dimon Joshua3,Singh Sukh3,Chiang Constance3,Azwell Thomas3

Affiliation:

1. Gridware Technologies Inc., Walnut Creek, CA 94597, USA

2. Electrical Engineering and Computer Sciences Department, University of California, Berkeley, CA 94720, USA

3. Disaster Lab, College of Engineering, University of California, Berkeley, CA 94720, USA

Abstract

Wildfires have played an increasing role in wreaking havoc on communities, livelihoods, and ecosystems globally, often starting in remote regions and rapidly spreading into inhabited areas where they become difficult to suppress due to their size and unpredictability. In sparsely populated remote regions where freshly ignited fires can propagate unimpeded, the need for distributed fire detection capabilities has become increasingly urgent. In this work, we evaluate the potential of a multitude of different sensing modalities for integration into a distributed downwind fire detection system, something which does not exist today. We deployed custom sensor-rich data logging units over a multi-day-controlled burn event hosted by the Marin County Fire Department in Marin County, CA. Under the experimental conditions, nearly all sensing modalities exhibited signature behaviors of a nearby active fire, but with varying degrees of sensitivity. We present promising preliminary findings from these field tests but also note that future work is needed to assess more prosaic concerns. Larger scale trials will be needed to determine the practicality of specific sensing modalities in outdoor settings, and additional environmental data and testing will be needed to determine the sensor system lifetime, data delivery performance, and other technical considerations. Crucially, this work provides the preliminary justification underscoring that future work is potentially valuable and worth pursuit.

Publisher

MDPI AG

Subject

Earth and Planetary Sciences (miscellaneous),Safety Research,Environmental Science (miscellaneous),Safety, Risk, Reliability and Quality,Building and Construction,Forestry

Reference54 articles.

1. Bump, P. (2021, August 11). Analysis—Six of California’s Seven Largest Wildfires Have Erupted in the Past Year. Washington Post. Available online: www.washingtonpost.com/politics/2021/08/06/six-californias-seven-largest-wildfires-have-erupted-past-year/.

2. Reyes-Velarde, A. (2023, September 09). California’s Camp Fire Was the Costliest Global Disaster Last Year, Insurance Report Shows. Los Angeles Times. Available online: https://www.latimes.com/local/lanow/la-me-ln-camp-fire-insured-losses-20190111-story.html.

3. U.S. Fire Administration (2021, August 11). What Is the WUI?, Available online: www.usfa.fema.gov/wui/what-is-the-wui.html.

4. Blalack, T., Ellis, D., Long, M., Brown, C., Kemp, R., and Khan, M. (2019, January 11–14). Low-Power Distributed Sensor Network for Wildfire Detection. Proceedings of the 2019 SoutheastCon, Huntsville, AL, USA.

5. (2019, August 01). PurpleAir: PurpleAir Map, Air Quality Map. Available online: http://map.purpleair.org/.

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