Estimating monthly total nitrogen concentration in streams by using artificial neural network |
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Authors: | Bin He Taikan Oki Fubao Sun Daisuke Komori Shinjiro Kanae Yi Wang Hyungjun Kim Dai Yamazaki |
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Institution: | 1. Center for Promotion of Interdisciplinary Education and Research, Educational Unit for Adaptation and Resilience for a Sustainable Society, Kyoto University, Japan;2. Disaster Prevention Research Institute (DPRI), Kyoto University, Kyoto, Japan;3. Institute of Industrial Science, the University of Tokyo, 4-6-1 Komaba, Meguro-ku, Tokyo 153-8505, Japan;4. Research School of Biology, Australian National University, GPO Box 475, Canberra ACT 2601, Australia;5. Department of Mechanical and Environmental Informatics, Tokyo Institute of Technology, 2-12-1 O-okayama, Meguro-ku, Tokyo 152-8552, Japan;6. Institute for Sustainability and Peace, United Nations University, UNU Centre, 5-53-70, Jingumae, Shibuya-ku, Tokyo 150-8925, Japan |
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Abstract: | Artificial Neural Network (ANN) is a flexible and popular tool for predicting the non-linear behavior in the environmental system. Here, the feed-forward ANN model was used to investigate the relationship among the land use, fertilizer, and hydrometerological conditions in 59 river basins over Japan and then applied to estimate the monthly river total nitrogen concentration (TNC). It was shown by the sensitivity analysis, that precipitation, temperature, river discharge, forest area and urban area have high relationships with TNC. The ANN structure having eight inputs and one hidden layer with seven nodes gives the best estimate of TNC. The 1:1 scatter plots of predicted versus measured TNC were closely aligned and provided coefficients of errors of 0.98 and 0.93 for ANNs calibration and validation, respectively. From the results obtained, the ANN model gave satisfactory predictions of stream TNC and appears to be a useful tool for prediction of TNC in Japanese streams. It indicates that the ANN model was able to provide accurate estimates of nitrogen concentration in streams. Its application to such environmental data will encourage further studies on prediction of stream TNC in ungauged rivers and provide a useful tool for water resource and environment managers to obtain a quick preliminary assessment of TNC variations. |
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Keywords: | Artificial neural network Nitrogen concentration Land use Stream water |
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