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Hybrid System for fouling control in biomass boilers

机译:用于生物质锅炉结垢控制的混合系统

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Renewable energy sources are essential paths towards sustainable development and CO_2 emission reduction. For example, the European Union has set the target of achieving 22% of electricity generation from renewable sources by 2010. However, the extensive use of this energy source is being avoided by some technical problems as fouling and slagging in the surfaces of boiler heat exchangers. Although these phenomena were extensively studied in the last decades in order to optimize the behaviour of large coal power boilers, a simple, general and effective method for fouling control has not been developed. For biomass boilers, the feedstock variability and the presence of new components in ash chemistry increase the fouling influence in boiler performance. In particular, heat transfer is widely affected and the boiler capacity becomes dramatically reduced. Unfortunately, the classical approach of regular sootblowing cycles becomes clearly insufficient for them. Artificial Intelligence (AI) provides new means to undertake this problem. This paper illustrates a methodology based on Neural Networks (NNs) and Fuzzy-Logic Expert Systems to select the moment for activating sootblowing in an industrial biomass boiler. The main aim is to minimize the boiler energy and efficiency losses with a proper sootblowing activation. Although the NN type used in this work is well-known and the Hybrid Systems had been extensively used in the last decade, the excellent results obtained in the use of AI in industrial biomass boilers control with regard to previous approaches makes this work a novelty.
机译:可再生能源是实现可持续发展和减少CO_2排放的必经之路。例如,欧盟设定了到2010年实现可再生能源发电量达到22%的目标。但是,由于锅炉换热器表面结垢和结渣等技术问题,避免了对该能源的广泛使用。 。尽管在过去的几十年中对这些现象进行了广泛的研究以优化大型燃煤锅炉的性能,但是尚未开发出一种简单,通用且有效的结垢控制方法。对于生物质锅炉,原料的变异性和灰分化学中新成分的存在增加了结垢对锅炉性能的影响。特别是,传热受到很大影响,锅炉容量大大降低。不幸的是,常规的吹灰循环的传统方法显然对他们而言是不够的。人工智能(AI)提供了解决此问题的新方法。本文阐述了一种基于神经网络(NNs)和模糊逻辑专家系统(Fuzzy-Logic Expert Systems)的方法,用于选择激活工业生物质锅炉中吹灰的时刻。主要目的是通过适当的吹灰活化来最小化锅炉的能量和效率损失。尽管在这项工作中使用的NN类型是众所周知的,并且混合系统已在过去十年中得到广泛使用,但是与以前的方法相比,在工业生物质锅炉控制中使用AI所获得的出色结果使这项工作变得新颖。

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