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Assessment and rationalization of water quality monitoring network: a multivariate statistical approach to the Kabbini River (India)

机译:水质监测网络的评估和合理化:卡比尼河(印度)的多元统计方法

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The establishment of an efficient surface water quality monitoring (WQM) network is a critical component in the assessment, restoration and protection of river water quality. A periodic evaluation of monitoring network is mandatory to ensure effective data collection and possible redesigning of existing network in a river catchment. In this study, the efficacy and appropriateness of existing water quality monitoring network in the Kabbini River basin of Kerala, India is presented. Significant multivariate statistical techniques like principal component analysis (PCA) and principal factor analysis (PEA) have been employed to evaluate the efficiency of the surface water quality monitoring network with monitoring stations as the evaluated variables for the interpretation of complex data matrix of the river basin. The main objective is to identify significant monitoring stations that must essentially be included in assessing annual and seasonal variations of river water quality. Moreover, the significance of seasonal redesign of the monitoring network was also investigated to capture valuable information on water quality from the network. Results identified few monitoring stations as insignificant in explaining the annual variance of the dataset. Moreover, the seasonal redesign of the monitoring network through a multivariate statistical framework was found to capture valuable information from the system, thus making the network more efficient. Cluster analysis (CA) classified the sampling sites into difFerent groups based on similarity in water quality characteristics. The PCA/PFA identified significant latent factors standing for different pollution sources such as organic pollution, industrial pollution, diffuse pollution and faecal contamination. Thus, the present study illustrates that various multivariate statistical techniques can be effectively employed in sustainable management of water resources.
机译:建立有效的地表水质量监测(WQM)网络是评估,恢复和保护河流水质的关键组成部分。必须定期评估监视网络,以确保有效收集数据并可能重新设计河流集水区中的现有网络。在这项研究中,介绍了印度喀拉拉邦卡比尼河流域现有水质监测网络的有效性和适当性。已采用重要的多元统计技术,例如主成分分析(PCA)和主因子分析(PEA)来评估地表水水质监测网络的效率,其中监测站作为评价变量来解释流域复杂数据矩阵。主要目标是确定重要的监测站,这些监测站必须基本包括在评估河流水质的年度和季节变化中。此外,还对监测网络的季节性重新设计的意义进行了研究,以从网络中获取有关水质的宝贵信息。结果表明,很少有监测站对解释数据集的年度差异无关紧要。此外,发现通过多元统计框架对监控网络进行季节性重新设计可以从系统中捕获有价值的信息,从而使网络更加高效。聚类分析(CA)根据水质特征的相似性将采样地点分为不同的组。 PCA / PFA确定了代表不同污染源的重要潜在因素,例如有机污染,工业污染,扩散污染和粪便污染。因此,本研究表明,各种多元统计技术可以有效地用于水资源的可持续管理中。

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