Faculty of Natural Resources, University of Tehran, Iran.
Department of Remote Sensing and GIS, Faculty of Geography, University of Tehran, Iran.
Sci Total Environ. 2018 May 15;624:283-293. doi: 10.1016/j.scitotenv.2017.12.121. Epub 2017 Dec 16.
A crucial part in designing a robust water quality monitoring network is the selection of appropriate water quality sampling locations. Due to cost and time constraints, it is essential to identify and select these locations in an accurate and efficient manner. The main contribution of the present article is the development of a practical methodology for allocating critical sampling points in present and future conditions of the non-point sources under a case study of the Khoy watershed in northwest Iran, where financial resources and water quality data are limited. To achieve this purpose, the river mixing length method (RML) was applied to propose potential sampling points. A new non-point source potential pollution score (NPPS) was then proposed by the analytic network process (ANP) to classify the importance of each sampling point prior to selecting the most appropriate locations for a river system. In addition, an integrated cellular automata-Markov chain model (CA-Markov) was applied to simulate future change in non-point sources during the period 2026-2036. Finally, by considering anthropogenic activities through land-use mapping, the hierarchy value, the non-point source potential pollution score values and budget deficiency in the study area, the seven sampling points were identified for the present and the future. It is not expected, however, that the present location of the proposed sampling points will change in the future due to the forthcoming changes in non-point sources. The current study provides important insights into the design of a reliable water quality monitoring network with a high level of assurance under certain changes in non-point sources. Furthermore, the results of this study should be valuable for water quality monitoring agencies looking for a cost-effective approach for selecting sampling locations.
在设计稳健的水质监测网络时,一个关键部分是选择合适的水质采样位置。由于成本和时间的限制,以准确和高效的方式识别和选择这些位置是至关重要的。本文的主要贡献是开发了一种实用的方法,用于在伊朗西北部 Khoy 流域的案例研究中,在当前和未来的非点源条件下分配关键采样点,该地区的财务资源和水质数据有限。为了实现这一目的,应用河流混合长度法(RML)来提出潜在的采样点。然后,通过分析网络过程(ANP)提出了一个新的非点源潜在污染评分(NPPS),以在选择最适合河系的位置之前对每个采样点的重要性进行分类。此外,还应用了一个综合的元胞自动机-马尔可夫链模型(CA-Markov)来模拟 2026-2036 年期间非点源的未来变化。最后,通过考虑土地利用图、研究区的层次值、非点源潜在污染评分值和预算不足,确定了当前和未来的七个采样点。然而,预计由于未来非点源的变化,提议的采样点的当前位置不会发生变化。本研究为在非点源发生某些变化的情况下设计可靠的水质监测网络提供了重要的见解,具有较高的保证水平。此外,对于水质监测机构来说,寻找一种具有成本效益的选择采样位置的方法,本研究的结果应该是有价值的。