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Stacked Auto-Encoder Modeling of an Ultra-Supercritical Boiler-Turbine System

机译:超超临界锅炉 - 汽轮机系统的堆叠自动编码器建模

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摘要

The ultra-supercritical (USC) coal-fired boiler-turbine unit has been widely used in modern power plants due to its high efficiency and low emissions. Since it is a typical multivariable system with large inertia, severe nonlinearity, and strong coupling, building an accurate model of the system using traditional identification methods are almost impossible. In this paper, a deep neural network framework using stacked auto-encoders (SAEs) is presented as an effective way to model the USC unit. In the training process of SAE, maximum correntropy is chosen as the loss function, since it can effectively alleviate the influence of the outliers existing in USC unit data. The SAE model is trained and validated using the real-time measurement data generated in the USC unit, and then compared with the traditional multilayer perceptron network. The results show that SAE has superiority both in forecasting the dynamic behavior as well as eliminating the influence of outliers. Therefore, it can be applicable for the simulation analysis of a 1000 MW USC unit.
机译:超超临界(USC)燃煤锅炉 - 涡轮机组由于其高效率和低排放而广泛用于现代电厂。由于它是一种具有大惯性,严重非线性和强耦合的典型的多变量系统,因此使用传统识别方法构建系统的精确模型几乎是不可能的。本文使用堆叠的自动编码器(SAES)的深度神经网络框架作为模拟USC单元的有效方法。在SAE的训练过程中,选择最大正轮孔作为损失函数,因为它可以有效地减轻USC单元数据中存在的异常值的影响。使用USC单元中生成的实时测量数据进行培训和验证SAE模型,然后与传统的多层的Perceptron网络进行比较。结果表明,SAE在预测动态行为方面具有优势,以及消除异常值的影响。因此,它可以适用于1000 MW USC单元的仿真分析。

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