“By advancing modeling, mapping and measurement via deep learning models and high-frequency sensors, managers can identify where sources and sinks of nitrogen exist, and they can determine locations where the implementation of conservation practice can provide the best return on investments,” he said.
High-frequency sensors are changing the way scientists monitor and manage water quality, noted Jonathan Duncan, associate professor in ecosystems science and management, who is co-principal investigator on the project. Those sensors, he explained, provide unparalleled insights on the time series of nitrate concentrations, enabling better understanding of fertilizer and manure applications, seasonal and precipitation events, storm event size and intensity.
“Our team will develop a hybrid, integrated modeling framework that includes field data collection, stream sensor data, and machine learning interpretation for understanding the nitrate dynamics of a region and generating continuous daily nitrate concentration data,” Duncan said. “The information it generates can be used for evaluating ecosystem health and designing more effective and targeted watershed management strategies.”
The researchers will make the data publicly available, and results will be presented to local decision makers, watershed planners and conservation district staff through well-developed collaborations with Penn State Extension.
Chaopeng Shen, professor of civil and environmental engineering, also will contribute to the project. The research was initially funded by the Penn State Institute of Energy and the Environment through its seed grant initiative.
Source : psu.edu