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Machine Learning Techniques for Selforganizing Combustion Control

机译:自动燃烧控制机器学习技术

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This paper presents the overall system of a learning, selforganizing, and adaptive controller used to optimize the combustion process in a hard-coal fired power plant. The system itself identifies relevant channels from the available measurements, classical process data and flame image information, and selects the most suited ones to learn a control strategy based on observed data. Due to the shifting nature of the process, the ability to re-adapt the whole system automatically is essential. The operation in a real power plant demonstrates the impact of this intelligent control system with its ability to increase efficiency and to reduce emissions of greenhouse gases much better then any previous control system.
机译:本文介绍了用于优化硬煤发电厂中的燃烧过程的学习,自动化和自适应控制器的整体系统。系统本身从可用测量,经典处理数据和火焰图像信息中识别相关信道,并选择最适合的,以基于观察到的数据学习控制策略。由于过程的变化性质,自动重新调整整个系统的能力至关重要。实力工厂的操作展示了这种智能控制系统的影响,以提高效率的能力,并更好地减少温室气体排放,然后更好地进行任何先前的控制系统。

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