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Using the artificial neural network to control the steam turbine heating process

机译:使用人工神经网络控制汽轮机加热过程

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Due to the significant share of renewable energy sources (RES) - wind farms in particular - in the power sector of many countries, power generation systems become sensitive to variable weather conditions. Under unfavourable changes in weather, ensuring required energy supplies involves hasty start-ups of conventional steam power units whose operation should be characterized by higher and higher flexibility. Controlling the process of power engineering machinery operation requires fast predictive models that will make it possible to analyse many parallel scenarios and select the most favourable one. This approach is employed by the algorithm for the inverse neural network control presented in this paper. Based on the current thermal state of the turbine casing, the algorithm controls the steam temperature at the turbine inlet to keep both the start-up rate and the safety of the machine at the allowable level. The method used herein is based on two artificial neural networks (ANN) working in series. (C) 2016 Elsevier Ltd. All rights reserved.
机译:由于在许多国家的电力部门中,可再生能源(RES)(尤其是风力发电场)所占的比重很大,因此发电系统对变化的天气条件变得敏感。在不利的天气变化下,确保所需的能源供应涉及常规蒸汽动力装置的急速启动,其运行应具有越来越高的灵活性。控制动力工程机械的运行过程需要快速的预测模型,这将使​​分析许多并行方案并选择最有利的方案成为可能。本文提出的算法用于逆神经网络控制。基于涡轮机壳体的当前热状态,该算法控制涡轮机入口处的蒸汽温度,以将启动速度和机器安全性都保持在允许的水平上。本文使用的方法基于两个串联的人工神经网络(ANN)。 (C)2016 Elsevier Ltd.保留所有权利。

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