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Optimizing combustion process by adaptive tuning technology based on Integrated Genetic Algorithm and Computational Fluid Dynamics

机译:基于集成遗传算法和计算流体力学的自适应整定技术优化燃烧过程

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摘要

Low carbon economy and the current dominant role of fossil fuel power plants in serving electricity require the decrease of emission due to carbon dioxide by improving the boiler efficiency. Literature review and industry practice show that neural network based methods are applied to improve the boiler efficiency in a number of power plants. However, slagging and fouling are still serious problems which impair the efficiency of heat transfer and degrade the performance of a boiler in power plant that uses fossil fuels with high fouling tendency. This paper proposes a new strategy which can be applied to optimize the boiler combustion process by an online adaptive tuning technology based on Integrating Genetic Algorithm (GA) with Computational Fluid Dynamics (CFDs). First, a simple heat transfer case with slagging influence consideration is modeled using CFD. Second, an online GA is applied to optimize the complex process in which a fire ball and a slagging layer are simulated. Finally, Simulink programs are created to simulate how to integrate GA with CFD to optimize the heat transfer process where slag deposit is considered. The model results show that the optimized thermal dynamic system obtains higher heat transfer efficiency than one without optimizing.
机译:低碳经济和化石燃料发电厂目前在供电中的主导作用要求通过提高锅炉效率来减少二氧化碳导致的排放。文献综述和行业实践表明,在许多电厂中,基于神经网络的方法被用于提高锅炉效率。然而,结渣和结垢仍然是严重的问题,其损害了传热效率并降低了使用具有高结垢趋势的化石燃料的电厂锅炉的性能。本文提出了一种新的策略,该策略可通过基于遗传算法(GA)和计算流体动力学(CFD)的在线自适应调整技术来优化锅炉燃烧过程。首先,使用CFD对考虑结渣影响的简单传热情况进行建模。其次,应用在线遗传算法优化模拟火球和熔渣层的复杂过程。最后,创建Simulink程序来模拟如何将GA与CFD集成在一起,以优化考虑了矿渣沉积的传热过程。模型结果表明,与未经优化的热力学系统相比,优化的热力学系统具有更高的传热效率。

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