Tanos Péter, Kovács József, Kovács Solt, Anda Angéla, Hatvani István Gábor
Department of Meteorology and Water Management, Georgikon Faculty, University of Pannonia, Keszthely, H-8360, Hungary,
Environ Monit Assess. 2015 Sep;187(9):575. doi: 10.1007/s10661-015-4777-y. Epub 2015 Aug 19.
The most essential requirement for water management is efficient and informative monitoring. Operating water quality monitoring networks is a challenge from both the scientific and economic points of view, especially in the case of river sections ranging over hundreds of kilometers. Therefore, spatio-temporal optimization is vital. In the present study, the optimization of the monitoring system of the River Tisza, the second largest river in Central Europe, is presented using a generally applicable and novel method, combined cluster and discriminant analysis (CCDA). This area for the study was chosen because, spatial inhomogeneity of a river's monitoring network can more easily be studied in a mostly natural watershed - as in the case of the River Tisza - since the effects of man-made obstacles: e.g water barrage systems, hydroelectric power plants, artificial lakes, etc. are more pronounced. Furthermore, since the temporal sampling frequency was bi-weekly, the opportunity of optimizing the monitoring system on a temporal (monthly) scale arose. In the research, 15 water quality parameters measured at 14 sampling sites in the Hungarian section of the River Tisza were assessed for the time period 1975-2005. First, four within-year sections ("hydrochemical seasons") were determined, characterized with unequal lengths, namely 2, 4, 2, and 4 months long starting with spring. Homogeneous groups of sampling sites were determined in space for every season, with the main separating factors being the tributaries and man-made obstacles. Similarly, an overall pattern of homogeneity was determined. As an overall result, the 14 sampling sites could be grouped into 11 homogeneous groups leading to the possibility of reducing the number of sampling locations and thus making the monitoring system more cost-efficient.
水资源管理的最基本要求是进行高效且信息丰富的监测。从科学和经济角度来看,运营水质监测网络都是一项挑战,尤其是对于绵延数百公里的河段而言。因此,时空优化至关重要。在本研究中,运用一种通用且新颖的方法——组合聚类与判别分析(CCDA),对中欧第二大河流蒂萨河的监测系统进行了优化。选择该研究区域是因为,在像蒂萨河这样大多为自然流域的地区,河流监测网络的空间不均匀性更容易被研究,这是由于人为障碍物(如水坝系统、水力发电厂、人工湖等)的影响更为显著。此外,由于时间采样频率为两周一次,便出现了在时间(月度)尺度上优化监测系统的机会。在这项研究中,对1975 - 2005年期间在蒂萨河匈牙利段的14个采样点测量的15个水质参数进行了评估。首先,确定了四个年内时段(“水化学季节”),其长度不等,从春季开始分别为2个月、4个月、2个月和4个月。针对每个季节在空间上确定了采样点的同质组,主要的区分因素是支流和人为障碍物。同样,确定了整体的同质模式。总体而言,14个采样点可被分为11个同质组,从而有可能减少采样地点的数量,进而提高监测系统的成本效益。