Monitoring and measuring forest ecosystems is a complex challenge because of an existing combination of softwares, collection systems and computing environments that require increasing amounts of energy to power. The University of Maine’s Wireless Sensor Networks (WiSe-Net) laboratory has developed a novel method of using artificial intelligence and machine learning to make monitoring soil moisture more energy and cost efficient—one that could be used to make measuring more efficient across the broad forest ecosystems of Maine and beyond.
Artificial intelligence can be used to better monitor Maine's forests, study finds
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