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Analysis of Machine Learning algorithms for prediction of Condenser Vacuum in Thermal Power Plant

机译:预测电厂凝汽器真空的机器学习算法分析。

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The demand from the grid requires a flexible operation approach by the generating stations. It requires the generator to vary load as per the requirements of the grid which changes rapidly. One of the parameters crucial for power generation is condenser vacuum. The operator needs to keep a constant watch on condenser pressure for safe and reliable generation. At low load, to save Auxiliary Power Consumption (APC) operator takes several steps and makes a trade off with condenser vacuum. In this context, it becomes essential to have a tool which can assimilate changes in the system and predict condenser vacuum. Parameters on which Condenser Vacuum largely depends upon, is the Cooling Water (CW) inlet temperature, CW Outlet Temperature, CW flow to Condenser, Exhaust Hood Temperature and instant power generated by the unit. A guiding tool can be handy for the operator to switch off CW pumps, Cooling Tower (CT) fans and other auxiliaries which affect Condenser Vacuum in order to save APC. An advance prediction tool can also assist the operator to analyze any unwanted changes in the operating parameters of the unit. In this paper we will be using several regression algorithms on sample plant data to train our predictive model and to adjudge the prediction given by each algorithm for condenser vacuum. The data used for training and testing of model is obtained from the 210 MW Russian Turbine based Thermal Power Station.
机译:来自电网的需求需要由发电站进行灵活的操作方法。它要求发电机根据网格的要求而变化,这迅速变化。发电至关重要的参数之一是冷凝器真空。操作员需要保持恒定的观察冷凝器压力,以获得安全可靠的一代。在低负载下,为了节省辅助功耗(APC)操作员需要几步,并使用冷凝器真空进行折衷。在这种情况下,具有可以吸收系统中的变化并预测冷凝器真空的工具至关重要。冷凝器真空在很大程度上取决于的参数,是冷却水(CW)入口温度,CW出口温度,CW流向冷凝器,排气罩温度和装置产生的即时功率。对于操作者可以方便地帮助操作员关闭CW泵,冷却塔(CT)风扇和其他影响冷凝器真空的辅助器以便保存APC。提前预测工具还可以帮助操作员分析单元的操作参数中的任何不需要的变化。在本文中,我们将在样本工厂数据上使用多元回归算法来训练我们的预测模型并判断每种算法给予冷凝器真空的预测。用于培训和测试模型的数据是从210 MW俄罗斯涡轮机的热电站获得的。

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