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青海省典型农作物产区地表水污染物特征及来源分析。

Analysis of Pollution Characteristics and Sources in Surface Water in Typical Crop-Producing Areas of Qinghai Province.

机构信息

Agro-Environmental Protection Institute, Ministry of Agriculture and Rural Affairs, Tianjin 300191, China.

College of Agriculture and Animal Husbandry, Qinghai University, Xining 810016, China.

出版信息

Int J Environ Res Public Health. 2022 Dec 7;19(24):16392. doi: 10.3390/ijerph192416392.

Abstract

Currently used pesticides and organochlorine pesticides (OCPs), nitrogen and phosphorus were analyzed in surface water from 26 sampling sites of agricultural areas in Qinghai Province to elucidate their pollution characteristics and sources. The results showed that most of these currently used pesticides, with the exception of chlorpyrifos, were generally not detected. However, two OCPs were commonly detected in surface water from four typical crop-producing areas. The residual concentrations of hexachlorocyclohexanes (HCHs) and dichlorodiphenyltrichloroethanes (DDTs) measured 01.68 ng/L and 0.412.41 ng/L, respectively, in the water from the four crop-producing areas. The residues of these two OCPs pesticides were much lower than the standard limit of surface water environmental quality. The main forms of HCHs and DDTs were -HCH and -DDE, respectively, indicating that the residues of HCHs and DDTs in the surface water of the four crop-producing areas in Qinghai were mainly derived from historical drugs that had degraded for a long time. The average concentrations of TN, NO-N and NH-N in the surface water of 26 sampling sites of four typical crop areas in Qinghai Province were 2.95, 1.71 and 0.17 mg/L, respectively. According to the national surface water environmental quality standards, TN concentrations in 57.7% of these sampling sites exceeded the Class V water standards. The average concentration of NO-N was more than 70 times that of NH-N. Nonetheless, there were no significant differences in the concentrations of TN, NO-N and NH-N in the four crop-producing areas. The concentrations of NO-N and NO-N in the surface water were positively correlated with the TN concentration ( < 0.05), indicating that the sources of nitrogen in the surface water were relatively consistent. The average value of TP concentrations in the surface water from these sampling sites was 0.034 mg/L, with no significant differences among different producing areas. The N/P values in surface water from the four crop-producing areas of Qinghai Province had a range of 9.2~302. Phosphorus was the limiting factor for the proliferation of plankton in water. Reducing the input of phosphorus in these areas may be the key to preventing the deterioration of water quality. Significant negative and positive correlations exist between HCHs and nitrate nitrogen, and total phosphorus, respectively, which may be attributed to the proliferation of degrading microorganisms caused by the eutrophication of water. The research results will help to identify the characteristics and sources of surface water pollution in the crop-producing areas of Qinghai Province, and provide data support for Qinghai Province to build an export area for green organic agricultural and livestock products.

摘要

目前使用的农药和有机氯农药(OCPs)、氮和磷在青海省 26 个农业区的地表水样本中进行了分析,以阐明其污染特征和来源。结果表明,除毒死蜱外,大多数目前使用的农药通常未被检出。然而,两种 OCP 在四个典型作物产区的地表水中普遍被检出。在这四个作物产区的水中,六氯环己烷(HCHs)和滴滴涕(DDTs)的残留浓度分别为 0-1.68ng/L 和 0.41-2.41ng/L。这两种 OCP 农药的残留量远低于地表水环境质量标准限值。HCHs 和 DDT 的主要形式分别为 -HCH 和 -DDE,表明青海省四个作物产区地表水中 HCHs 和 DDT 的残留主要来自历史上长期降解的药物。青海省四个典型作物区 26 个采样点地表水的 TN、NO-N 和 NH-N 的平均浓度分别为 2.95、1.71 和 0.17mg/L。根据国家地表水环境质量标准,这些采样点中有 57.7%的 TN 浓度超过了 V 类水标准。NO-N 的平均浓度是 NH-N 的 70 多倍。然而,四个作物产区的 TN、NO-N 和 NH-N 浓度没有显著差异。地表水中的 NO-N 和 NO-N 浓度与 TN 浓度呈正相关(<0.05),表明地表水中氮的来源相对一致。这些采样点地表水 TP 浓度的平均值为 0.034mg/L,不同产区之间没有显著差异。青海省四个作物产区地表水的 N/P 值范围为 9.2-302。磷是水中浮游生物繁殖的限制因素。减少这些地区磷的投入可能是防止水质恶化的关键。HCHs 与硝酸盐氮和总磷分别呈显著负相关和正相关,这可能是由于水富营养化导致降解微生物大量繁殖所致。研究结果将有助于识别青海省作物产区地表水的污染特征和来源,为青海省建设绿色有机农牧业产品出口区提供数据支持。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9629/9778881/736d78d32af8/ijerph-19-16392-g001.jpg

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