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Real-time monitoring of power production in modular hydropower plant: most significant parameter approach

机译:模块化水电站电力生产实时监控:最重要的参数方法

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The uncertainty in the water-based renewable energy systems reduces the plant capacity. However, real-time monitoring of hydropower plants ensures optimality and continuous faultless performance from the plant. But the implementation of real-time systems has always increased the overall operation cost of the power plant due to the continuous monitoring, analysis and decision-making (MAD) to assure prolonged and in situ detection and solution of uncertainties. The requirement to observe multiple indicators which represent the plant performance, elevate the cost of managing and impact the economical returns from the power plant. Also the infrastructural adjustments required to enable realtime monitoring of a power plant will also induce increased expenditure. The present study aimed to reduce the cost and infrastructural requirements of a smart system to represent the plant performance for instant mitigation of system failures by replacing the requirement of multi-indicator tracking by single weighted function monitoring. This monitoring upgradation will reduce the process cost of the system, thereby elevating the profitability of the power plant. The functional tracking will also increase the efficiency of the MAD and minimize the memory requirement of the real-time monitoring as single pointer will be required to be analysed and evaluated before taking a decision. In this aspect, an objective multi-criteria decision-making technique was used to find the significance of each indicator in hydropower production such that they can be tracked as per their potential for destabilizing the system. The results show that the new multi-criteria decision-making method which hybridizes with polynomial neural networks can identify uncertainty based on the significance of parameters by a portable and independent platform that can be integrated with supervisory control-based systems to monitor uncertainty in a hydropower system. According to the results, operation and maintenance cost followed by the discharge indicator was found to have the highest significance among the indicators considered in the study. The results depict that the new multi-criteria decision-making method with polynomial neural networks can identify uncertainty based on the significance of parameters with the help of a portable and independent platform that can be integrated in supervisory control systems to monitor uncertainty in a hydropower system at real time.
机译:水性可再生能源系统的不确定性降低了植物能力。然而,水电站的实时监测确保了植物的最佳性和连续性故障性能。但是,由于连续监测,分析和决策(MAD)来确保延长和原位检测和不确定解决,因此实时系统的实施始终增加了电厂的整体运营成本。请遵守代表工厂性能的多个指标的要求提高管理和影响电厂的经济回报的成本。此外,能够进行电厂的实时监测所需的基础设施调整也将引起增加的支出。本研究旨在降低智能系统的成本和基础设施要求,以代表通过单一加权函数监控的多指示跟踪的要求来提高系统故障的植物性能。该监测升级将降低系统的过程成本,从而提高电厂的盈利能力。功能跟踪还将提高MAD的效率,最大限度地减少实时监测的内存要求,因为在采取决定之前将被要求分析和评估单个指针。在这方面,使用客观的多标准决策技术来寻找水电站生产中的每个指示器的重要性,使得它们可以根据其稳定系统稳定的可能性来跟踪它们。结果表明,与多项式神经网络杂交的新多标准决策方法可以基于参数的可用性和独立平台的意义来识别不确定性,这些方法可以与基于监督控制的系统集成,以监测水电中的不确定性系统。根据结果​​,检测和维护成本随之而来,发现该研究中考虑的指标具有最高意义。结果描绘了具有多项式神经网络的新的多标准决策方法可以根据参数的重要性借助于可便携式和独立平台来识别不确定性,这些方法可以集成在监控系统中以监测水电系统中的不确定性实时。

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