New method can improve explosion detection

Rod Boyce
907-474-7185
July 21, 2022

Computers can be trained to better detect distant nuclear detonations, chemical blasts and volcano eruptions by learning from artificial explosion signals, according to a new method devised by a 汤姆视频 scientist.

The work, led by UAF Geophysical Institute postdoctoral researcher Alex Witsil, was published recently in the journal Geophysical Research Letters. 

Witsil, at the Geophysical Institute鈥檚 Wilson Alaska Technical Center, and colleagues created a library of synthetic infrasound explosion signals to train computers in recognizing the source of an infrasound signal. Infrasound is at a frequency too low to be heard by humans and travels farther than high-frequency audible waves.

Alex Witsil
汤姆视频 photo
Alex Witsil

鈥淲e used modeling software to generate 28,000 synthetic infrasound signals, which, though generated in a computer, could hypothetically be recorded by infrasound microphones deployed hundreds of kilometers from a large explosion,鈥 Witsil said.

The artificial signals reflect variations in atmospheric conditions, which can alter an explosion鈥檚 signal regionally or globally as the sound waves propagate. Those changes can make it difficult to detect an explosion's origin and type from a great distance.

Why create artificial sounds of explosions rather than use real-world examples? Because explosions haven鈥檛 occurred at every location on the planet and the atmosphere constantly changes, there aren鈥檛 enough real-world examples to train generalized machine-learning detection algorithms.  

鈥淲e decided to use synthetics because we can model a number of different types of atmospheres through which signals can propagate,鈥 Witsil said. 鈥淪o even though we don't have access to any explosions that happened in North Carolina, for example, I can use my computer to model North Carolina explosions and build a machine-learning algorithm to detect explosion signals there.鈥

Today, detection algorithms generally rely on infrasound arrays consisting of multiple microphones close to each other. For example, the international Comprehensive Test Ban Treaty Organization, which monitors nuclear explosions, has infrasound arrays deployed worldwide. 

鈥淭hat's expensive, it's hard to maintain, and a lot more things can break,鈥 Witsil said.

Witsil鈥檚 method improves detection by making use of hundreds of single-element infrasound microphones already in place around the world.  That makes detection more cost-effective.

The machine-learning method broadens the usefulness of single-element infrasound microphones by making them capable of detecting more subtle explosion signals in near real-time. Single-element microphones currently are useful only for retroactively analyzing known and typically high-amplitude signals, as they did with January鈥檚 massive eruption of the Tonga volcano. 

Witsil鈥檚 method could be deployed in an operational setting for national defense or natural hazards mitigation.

This work was funded by the Defense Threat Reduction Agency.

ADDITIONAL CONTACT: Alex Witsil, ajwitsil@alaska.edu.

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