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Neural management for heat and power cogeneration plants

机译:热电联产电厂的神经管理

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This paper deals with the problem of finding the optimum load allocation on machines and apparatuses in complex Cogeneration Heat and Power (CHP) plants. A methodology based on Neural Networks (NN) has been developed. A database has been populated by using a real plant simulator. Two kinds of plant neural models have been trained, the first consists in an Identification Neural Model (INM) that provides a "picture" of the actual plant status by using monitoring data as input; the second consists in an Optimum Load Allocation Neural Model (OLANM) whose inputs are boundary conditions and outputs the Degrees of Freedom corresponding to the optimum operation set points. To reduce the relevant computational effort required to populate the training databases a sequential chain of neural models has been arranged. The methodology has been applied to a typical industrial cogeneration plant installed in Turin (Italy). Results are presented and discussed.
机译:本文研究的问题是在复杂的热电联产(CHP)发电厂中的机器和设备上找到最佳负荷分配。已经开发了基于神经网络(NN)的方法。通过使用真实的工厂模拟器来填充数据库。已经训练了两种植物神经模型,第一种是识别神经模型(INM),该模型通过使用监视数据作为输入来提供实际植物状态的“图片”。第二种是最佳负荷分配神经模型(OLANM),其输入为边界条件,并输出与最佳运行设定点相对应的自由度。为了减少填充训练数据库所需的相关计算工作,已安排了神经模型的顺序链。该方法已应用于意大利都灵安装的典型工业热电联产厂。结果介绍和讨论。

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