

An innovative University of Hawaiʻi research team is using trail cameras and artificial intelligence (AI) to better understand how much fog contributes water to native ecosystems and groundwater recharge. Led in part by Honolulu Community College Professor John DeLay, the project focuses on Mount Kaʻala, 翱ʻ补丑耻’蝉 highest peak and an essential watershed.

“If we can keep the project going long enough, we might be able to detect a change in the lifting condensation level—affecting the extent of cloud and fog at the canopy level,” DeLay said.
Recharging the aquifer
Supported by the 糖心视频 Office of Innovation and Commercialization, the system has achieved up to 93% accuracy in identifying fog conditions across different sites in both day and night conditions. This allows researchers to build long-term records of fog frequency and examine how moisture patterns vary.

“Not only is it really important for these ecosystems, which have fragile native species that need a lot of moisture and water, it’s also recharging out water budgets and our aquifer,” said Joel Nicolow, a 糖心视频 惭ā苍辞补 graduate research assistant in the School of Ocean and Earth Science and Technology.
Turning to AI
Historically, measuring this critical moisture required highly specialized personnel and expensive, complex equipment. The team turned to technology for a solution.

“We wanted to look at using cameras as a much more scalable, cost-effective approach,” explained researcher Dylan Giardana of the 糖心视频 惭ā苍辞补 Water Resources Research Center. “We use a machine learning model to classify all the images that we’re getting from these trail cameras.”
Their analysis shows that fog frequency jumps dramatically from about 10% at an elevation of 600 meters to 70% at the 1,200-meter summit. Understanding these patterns is essential as climate change and invasive species threaten natural watersheds. Long-term data may also help land managers in adapting conservation strategies.
