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A novel non-linear programming-based coal blending technology for power plants

机译:一种基于非线性规划的新型电厂配煤技术

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摘要

Coal blending has now attracted much attention in coal industry of China, and has been investigated extensively to meet the often conflicting goals of environmental requirements and reliable and efficient boiler operation in power plants. However, most of the existing blending projects are guided by experience, or linear-programming (LP), whose main assumption is that all the quality parameters of a blend can be approximated as the weighted average of the corresponding indexes of its component coals at any condition. This has been proved incorrect for some blend properties. Now, more and more evidence indicates that a strong non-linearity exists between some quality parameters of a coal blend and those of its component coals. Thus the unreliable assumption impairs the resulting coal-blending scheme. To remedy this situation, a novel coal blending technology for power plants, i.e. using nonlinear programming (NLP) based on neural network models, was proposed, and has now been successfully applied at the Hangzhou Coal Blending Center. The application attests that this new technology is much better than the existing linear-programming coal-blending method. [References: 21]
机译:配煤现已在中国的煤炭工业中引起了广泛关注,并已进行了广泛的研究,以满足环境要求和发电厂可靠,高效的锅炉运行中相互矛盾的目标。但是,大多数现有的混合项目都是由经验或线性规划(LP)指导的,其主要假设是,混合物的所有质量参数都可以近似为其组成煤在任何情况下相应指标的加权平均值。健康)状况。对于某些混合属性,这已被证明是不正确的。现在,越来越多的证据表明,煤掺混物和其成分煤的某些质量参数之间存在很强的非线性。因此,不可靠的假设会损害最终的煤炭掺混方案。为了解决这种情况,提出了一种用于发电厂的新型掺煤技术,即使用基于神经网络模型的非线性规划(NLP),现已在杭州掺煤中心成功应用。应用证明,这项新技术比现有的线性编程煤掺合方法要好得多。 [参考:21]

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