Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
6330590 | Science of The Total Environment | 2014 | 9 Pages |
Abstract
Nitrate (NO3â) pollution is a severe problem in aquatic systems in Taihu Lake Basin in China. A dual isotope approach (δ15NNO3â and δ18ONO3â) was applied to identify diffused NO3â inputs in a stream in an agricultural field at the basin in 2013. The site-specific isotopic characteristics of five NO3â sources (atmospheric deposition, AD; NO3â derived from soil organic matter nitrification, NS; NO3â derived from chemical fertilizer nitrification, NF; groundwater, GW; and manure and sewage, M&S) were identified. NO3â concentrations in the stream during the rainy season [mean ± standard deviation (SD) = 2.5 ± 0.4 mg/L] were lower than those during the dry season (mean ± SD = 4.0 ± 0.5 mg/L), whereas the δ18ONO3â values during the rainy season (mean ± SD = + 12.3 ± 3.6â°) were higher than those during the dry season (mean ± SD = + 0.9 ± 1.9â°). Both chemical and isotopic characteristics indicated that mixing with atmospheric NO3â resulted in the high δ18O values during the rainy season, whereas NS and M&S were the dominant NO3â sources during the dry season. A Bayesian model was used to determine the contribution of each NO3â source to total stream NO3â. Results showed that reduced N nitrification in soil zones (including soil organic matter and fertilizer) was the main NO3â source throughout the year. M&S contributed more NO3â during the dry season (22.4%) than during the rainy season (17.8%). AD generated substantial amounts of NO3â in May (18.4%), June (29.8%), and July (24.5%). With the assessment of temporal variation of diffused NO3â sources in agricultural field, improved agricultural management practices can be implemented to protect the water resource and avoid further water quality deterioration in Taihu Lake Basin.
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Authors
Jingtao Ding, Beidou Xi, Rutai Gao, Liansheng He, Hongliang Liu, Xuanli Dai, Yijun Yu,