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A novel denitration cost optimization system for power unit boilers

机译:新型机组锅炉脱硝成本优化系统

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Reducing the denitration cost of coal-fired boilers is important to enhance the competitiveness of power generation companies. This study proposes a real operation data-based denitration cost optimization system that guides operators in economically adjusting the operation parameters of boilers. A data-driven least square support vector machine (LSSVM) learning method is utilized to predict the denitration cost of a coal-fired boiler. Back propagation (BP) is used here to select the input variables to simplify the model. With the pre-built BP-LSSVM-based denitration cost model, the genetic algorithm (GA) is then applied to obtain offline optimizations at the typical operating load points, which results in an Offline Optimal Expert Database (OOED). Once a load command is received, fuzzy association rule mining (FARM) is employed to extract the relationship between the operating load point and the optimal adjustable variables (AVs) in the OOED, thereby achieving the online denitration cost optimization of the power plant. For comparison, a single LSSVM method is also employed to build a denitration cost prediction model, and the GA and FARM proposed in this study are compared too. The results show that, compared with the single LSSVM method, the BP-LSSVM method not only predicts more accurately but also lowers the model complexity. In addition, considering the denitration cost, optimization time, and update time, the proposed BP-LSSVM-GA-FARM-based denitration cost optimization system is always better than traditional optimization methods. (C) 2016 Elsevier Ltd. All rights reserved.
机译:降低燃煤锅炉的脱硝成本对于提高发电公司的竞争力至关重要。这项研究提出了一个基于实际运行数据的脱硝成本优化系统,该系统可以指导运营商经济地调整锅炉的运行参数。利用数据驱动的最小二乘支持向量机(LSSVM)学习方法来预测燃煤锅炉的脱硝成本。此处使用反向传播(BP)选择输入变量以简化模型。借助基于BP-LSSVM的预先建立的脱硝成本模型,然后应用遗传算法(GA)在典型的工作负荷点获得脱机优化,从而得到脱机最佳专家数据库(OOED)。一旦接收到负载指令,就可以采用模糊关联规则挖掘(FARM)来提取OOED中运行负载点与最佳可调变量(AVs)之间的关系,从而实现电厂在线脱硝成本的优化。为了进行比较,还使用单个LSSVM方法来建立脱硝成本预测模型,并对本研究中提出的GA和FARM进行了比较。结果表明,与单LSSVM方法相比,BP-LSSVM方法不仅预测更准确,而且降低了模型复杂度。此外,考虑到脱硝成本,优化时间和更新时间,基于BP-LSSVM-GA-FARM的脱硝成本优化系统始终优于传统的优化方法。 (C)2016 Elsevier Ltd.保留所有权利。

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