AI-enhanced indoor farming takes root at UB – UBNow: News and views for UB faculty and staff

Inside a nondescript UB computer lab, a new tech-savvy style of indoor farming is blossoming.

Lettuce and basil are growing inside a phonebooth-sized greenhouse, all under the unflinching eyes of an artificial intelligence (AI) system designed to identify the faintest signs of sickness and distress among the plants.

The early detection of nutrient deficiencies, pests and other problems — as well as the opportunity to optimize LED lighting programs that indoor farming operations rely upon — are the crux of a new research project at UB’s Institute for Artificial Intelligence and Data Science.

The LED lights have multiple tunable channels to adjust the intensity of lights from different spectrums. Photos: Douglas Levere

“At UB, we’re focused on applying artificial intelligence and other technologies to solve society’s greatest challenges,” says the institute’s director, Jinjun Xiong, SUNY Empire Innovation Professor in the Department of Computer Science and Engineering. “This project, which involves working with a pair of growing industries in Western New York, centers on food insecurity.”

Partners in the project include Ellicottville Greens, which grows vegetables, herbs, greens and other products in indoor vertical farms, and Buffalo-based Starco Lighting, which delivers LED lighting solutions to commercial and industrial customers.

The effort received a $50,000 grant from FuzeHub, a nonprofit organization that supports technology development and commercialization across New York State. The funding comes from its Jeff Lawrence Innovation Fund, which is supported by Empire State Development’s Division of Science, Technology and Innovation.

Proponents of indoor vertical farming highlight how the industry typically uses less water and land than traditional farming. Vegetables and other products can also be grown closer to where they’ll be sold to consumers, including communities where access to fresh, healthy food is lacking. All make for a potentially more sustainable model of agriculture, especially as climate change disrupts outdoor farming.

But the industry still has its challenges, most prominently the cost of monitoring plant health. The project at UB can address this by optimizing the indoor growing environment.

For example, the LED lights have multiple tunable channels to adjust the intensity of lights from different spectrums. By installing multiple cameras on the LEDs to capture plant images under different lighting conditions, Xiong and his team can apply AI algorithms to monitor the plants’ health and growth in ways the human eye might not detect easily.

For example, their algorithms could spot pending trouble on plants, such as fungus, and instruct growers to take preventive actions so that a fungus does not spread from one plant to others. Or the algorithm could identify the best combinations of lighting spectrums, intensity and duration that encourage plants’ faster growth.

“There is so much potential for using AI and computer vision, especially in a controlled environment such as an indoor farm. It’s really a great example of using AI in an innovative way to address societal needs,” says Xiong.

First appeared on www.buffalo.edu

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