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USF assistant professor Ankur Mali is using machine learning to turn microearthquakes into a roadmap for geothermal energy.

USF assistant professor Ankur Mali is using machine learning to turn microearthquakes into a roadmap for geothermal energy. 

New study shows how microearthquakes can help unlock geothermal power

The use of machine learning to analyze microearthquakes in the Earth鈥檚 crust is opening the possibility of a new path for the future of geothermal energy exploration, according to from Ankur Mali, an assistant professor with USF鈥檚 Bellini College of Artificial Intelligence, Cybersecurity and Computing.

The new approach focused on the link between small seismic events and rock permeability, which is the capacity of subsurface rock to allow fluids to move. That鈥檚 a critical factor in determining whether geothermal heat can be efficiently extracted.

Ankur Mali

Rather than taking massive amounts of data and fitting an algorithm to it, the team took physics that researchers and industry professionals had already been using and trained the neural network to understand thousands of data points.

The work could have far reaching impacts on the future of a new, renewable energy resources.

Mali鈥檚 work on the research team, which was co-authored by Penn State engineering professors and graduate students, was published in Nature Communications earlier this year and recognized with the Rock Mechanics Research Award from the American Rock Mechanics Association. The association is an international engineering society that promotes collaboration among specialists, practitioners, scholars and educators in rock mechanics and geomechanics.

鈥淭here鈥檚 excitement among the team that our work is getting recognized, and that our methods can be used in diverse fields and benefit them,鈥 Mali said. 鈥淚t's not just one domain. It's benefiting multiple domains with a very wide applicability. We can potentially grasp those renewable energy sources, which are more eco-friendly, and reduce the reliability on fossil fuels.鈥

The research team received funding from the U.S. Department of Energy, National Science Foundation, European Research Council Advanced and European Union Next-Generation EU鈥疓rant.

Beginning with curiosity

Mali鈥檚 involvement in the research project began with a discussion with his civil engineering and geoscientist colleagues at Penn State.

At the time, the U.S. Department of Energy also had an increased interest in in geothermal energy and using that to create more sustainable energy sources.

Given Mali鈥檚 background in machine learning theory and strong foundations in mathematics and physics, his colleagues sought his perspective on formalizing and interpreting the underlying physical models.

鈥淭he problems themselves were grounded in well-understood physical principles,鈥 he explained. 鈥淲ith a good foundation in physics, you can interpret the governing principles in the problem. The critical step where my expertise is required is to transition this into neural network language. Thus, learning how to approximate those equations effectively鈥攁nd then encode that structure into a neural network.鈥

The research has been years in the making and led to several published articles as the team progresses with its findings. Several others are pending publication.

The group鈥檚 earlier published work in Nature Communications applied physics-inspired neural networks to laboratory earthquake simulations. That research laid the groundwork for applying similar techniques to real-world geothermal systems.

鈥淭he model is now physics guided,鈥 he said. 鈥淚t's not like a black box system. It is governed by physical situation. So, it follows that trajectory.鈥

That led to the research question: 鈥淐an we design a system that is more trustworthy and explainable, and can it be used in real world settings where we can understand the dynamics of the nature much more efficiently?鈥

Layering research

Mali鈥檚 work in the recent article builds on the team鈥檚 previous research.

The team鈥檚 current research not only determines how to more efficiently hydrofracture the rock by using microearthquakes as a metric, but to make that knowledge transferable and allow the same algorithm to be used worldwide.

Most deep rocks are naturally very dense, so researchers use high-pressure water to open or enlarge fractures, a process often called hydrofracturing or fracking. This method is a common method in geothermal research to improve heat extraction, and related techniques are used in some oil and gas operations.

Each pressure pulse triggered micro-earthquakes that acted like sonar pings and mapped where fractures connect. Until this research, there was limited knowledge to convert the seismic chatter into a real-time read-out of permeability.

That could increase energy production, decrease associated costs and provide a greater availability. They can also use the same system to fine tune the algorithm to avoid triggering microearthquakes.

鈥淵ou don't have to drill at each location, we can analyze the seismic activity and then, based on the pattern of these rocks, you can understand where the energy is concentrated,鈥 Mali said. 鈥淲e can say, 鈥極K, this is where we think the geothermal extraction point would be.鈥欌

Mali and the team took a different approach that took physics data that researchers and industry professionals had already been using and trained the neural network to understand data.

鈥淚t's not like millions and billions of data points because now you're optimizing on the physics of the model,鈥 Mali said. 鈥淥ur dataset included a few thousand data points, which is more than sufficient to understand these things.鈥

That combination of physics and AI is essential for making the model both trustworthy and usable in the field.

鈥淲hen you're deploying the system, or when you're trying to work on real-world problems, it's important that you trust your model,鈥 Mali said. 鈥淭hat's where the physics comes into the picture by saying, 鈥極K, we understand this concept. This is the physics which will help derive this. Now, use this physics to make an efficient approximation, and couple that with the neural network.鈥 That will give you a physics-inspired new network.鈥

Potential impact on renewable energy

Moving forward, testing on real-world data sets is needed, Mali said. 鈥淲e need to gather more data to test how applicable or transferrable this approach is and what modification we would need at different places.鈥

Additional development is needed, along with much-needed funding from various governmental and private sources. Mali estimates it will still be another decade before a working prototype for harnessing the energy would be possible.

Although this research will be years in the making, it could have far reaching impact on the future of a new, renewable energy resources by accelerating the transition away from fossil fuels that we depend upon to clean energy systems that are economically competitive. The gravity of that impact isn鈥檛 lost on Mali, who keeps perspective on the project.

鈥淚 want to see the big picture of how this is going to be used, how we are going to benefit from these tools; not just developing something new, but what benefit it offers to society,鈥 he said. 鈥淭hat's where this project started from, and this is where we are moving forward - one step at a time.鈥

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Established in 2024, the Bellini College of AI, Cybersecurity and Computing is the first of its kind in Florida and one of the pioneers in the nation to bring together the disciplines of artificial intelligence, cybersecurity and computing into a dedicated college. We aim to position Florida as a global leader and economic engine in AI, cybersecurity and computing education and research. We foster interdisciplinary innovation and ethical technology development through strong industry and government partnerships.