配电网水质评价的软计算框架

Jyotirmoy Bhardwaj, K. K. Gupta, R. Gupta
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引用次数: 0

摘要

现代技术正在取代传统的水质参数测量方法。利用用户友好的决策支持系统进行持续有效的在线监测是水质监测系统面临的重要挑战之一。为了实现开发用户友好的配电网饮用水监测决策支持系统的目标,本文引入了软计算框架,主要由Python编程框架和模糊集组成。到目前为止,我们已经利用了Python的NumPy和Matplotlib库的属性用于用户界面,模糊集用于决策支持系统。该决策支持系统收集和利用集成多传感器阵列产生的数据点,并通过基于规则的模糊集对得到的数据集进行处理。有效的用户界面和决策是任何决策支持系统的必要前提。因此,我们开发了基于规则的决策支持系统(RBDSS)策略来测量配网中水的可饮用程度。在广泛研究的基础上,考虑了pH、溶解氧(D.O.)、电导率(E.C.)、氧还原电位(O.R.P)和温度五个水质参数来实现决策支持系统。通过对所提出的决策支持系统的可行性研究,验证了该框架在水质配网中的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Soft computing framework for assessment of water quality in distribution network
Modern techniques are replacing traditional methods of water quality parameter measurement systems. Continuous effective online monitoring with user friendly decision support system is one of the essential challenges of water quality monitoring system. To achieve the goal of development of user friendly decision support system for monitoring of potable water in distribution network, this paper introduces soft computing framework, mainly consist of Python programming framework and fuzzy sets. In so far, we have exploited the properties of NumPy and Matplotlib libraries of Python for user interface and fuzzy sets for decision support system. The proposed decision support system collects and utilizes the data points generated from integrated Multi Sensor Array and process the obtained data set through rule based fuzzy sets. Effective user interface and decision making are essential prerequisite of any decision support system. Therefore, we developed Rule Based Decision Support System (RBDSS) strategy to measure the extent of potability of water in distribution network. Based on extensive research, five water quality parameters has been considered to implement decision support system i.e pH, Dissolved Oxygen (D.O.), Electrical Conductivity (E.C.), Oxygen Reduction Potential (O.R.P) and Temperature. The conducted study to test the feasibility of proposed decision support system testify the plausibility of framework in water quality distribution network.
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