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Optimization of a Coal Fired Boiler Using Artificial Immune System

机译:人工免疫系统优化燃煤锅炉

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On-line optimization of power boilers is a very important and challenging issue in research and implementation, particularly in the context of increasing environmental requirements. Combustion process is a complex MIMO process (Multi-Input-Multi-Output). A large inertia and non-linearity of the combustion combined with frequent changes of disturbance signals like boiler load and fuel quality necessitated the searching for new solutions in the field of control and optimization. There are plenty of algorithms used for combustion optimization, ranging from MPC through neural network etc. Most of the algorithms ae inspired by phenomenon that could be observed in the nature. The newest algorithm, that has been successfully applied in combustion optimization project is artificial immune system. The artificial immune system like real immune system has ability of adaptation. Once a body is infected by a known pathogen (bacteria or virus) the immune response - antibody production is much faster and the illness is less painful to the body, compering to infection by a new pathogen. Artificial immune system is a self-learning algorithm - it searches and remembers most effective solutions for specific process conditions. The advantage of IT system with artificial immune algorithm is ability of fast adaptation to continuously changing conditions with multi-criteria optimization. The artificial immune algorithm has been applied combustion optimization projects in miscellaneous hard coal, lignite, gas and oil fired power boilers with capacity ranging from 300 t/h to 2300 t/h. This paper presets example combustion optimization results.
机译:电力锅炉的在线优化是研究和实施中非常重要且具有挑战性的问题,特别是在环境要求不断提高的情况下。燃烧过程是一个复杂的MIMO过程(多输入多输出)。燃烧的大惯性和非线性以及锅炉负载和燃料质量等干扰信号的频繁变化,使得有必要在控制和优化领域寻找新的解决方案。从MPC到神经网络等,有许多用于燃烧优化的算法。大多数算法的灵感都来自自然界中可以观察到的现象。已经成功应用于燃烧优化项目的最新算法是人工免疫系统。像真实免疫系统这样的人工免疫系统具有适应能力。一旦身体被已知的病原体(细菌或病毒)感染,免疫反应-抗体的产生就会更快,疾病对身体的痛苦也将减少,从而可以抵抗新病原体的感染。人工免疫系统是一种自学习算法-它可以搜索并记住针对特定过程条件的最有效解决方案。带有人工免疫算法的IT系统的优势是能够通过多准则优化快速适应不断变化的条件。人工免疫算法已经应用于容量为300 t / h至2300 t / h的各种硬煤,褐煤,燃气和燃油火力锅炉的燃烧优化项目。本文预设了燃烧优化结果示例。

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