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Ameliorated moth-flame algorithm and its application for modeling of silicon content in liquid iron of blast furnace based fast learning network

机译:基于快速学习网络的高炉液铁硅含量建模的改善蛾算法及其应用

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摘要

Moth-Flame Optimization (MFO) algorithm is a widely used nature-inspired optimization algorithm. However, for some complex optimization problems, such as high dimensional and multimodal problems, the MFO may fall into the local optimal solution. Hence, in this paper an ameliorated Moth-Flame Optimization (AMFO) algorithm is presented to improve the solution quality and global optimization capability. The key features of the proposed algorithm are the Gaussian mutation produce flames and the modified position updating mechanism of moths, which can improve the ability of MFO to jump out of local optimum solutions. In addition, opposition-based learning is adopted to initialize the population. The AMFO algorithm is compared with 9 state-of-the-art algorithms (such as Levy Moth-Flame Optimization (LMFO), Grey Wolf Optimization (GWO), Sine Cosine Algorithm (SCA), Heterogeneous Comprehensive Learning Particle Swarm Optimization (HCLPSO)) on 23 classical benchmark functions. The comparative results show that the AMFO is effective and has good performance in terms of jumping out of local optimum, balancing exploitation ability and exploration ability. Furthermore, the AMFO is adopted to optimize the parameters of fast learning network (FLN) to build the prediction model of silicon content in liquid iron for blast furnace, and simulation experiment results from field data show that the root mean square error of the AMFO-FLN model is 0.0542, hit ratio is 91 and the relative error is relatively stable, the main fluctuation is between-0.1 and 0.1; compared with other ten silicon content in liquid iron models, the AMFO-FLN model has better predictive performance. (C) 2020 The Author(s). Published by Elsevier B.V.
机译:蛾火焰优化(MFO)算法是一种广泛使用的自然启发优化算法。然而,对于一些复杂的优化问题,例如高维和多模式问题,MFO可能落入本地最佳解决方案。因此,在本文中,提出了一种改进的蛾火焰优化(AMFO)算法以提高解决方案质量和全局优化能力。所提出的算法的关键特征是高斯突变产生火焰和蛾的修改位置更新机制,可以提高MFO跳出局部最佳解决方案的能力。此外,采用基于反对派的学习才能初始化人口。 AMFO算法与9型最新算法(如征收飞蛾优化(LMFO),灰狼优化(GWO),正均匀综合学习粒子群优化(HCLPSO)(HCLPSO)进行比较)在23个古典基准函数。比较结果表明,AMFO有效,在跳出局部最佳,平衡剥削能力和勘探能力方面具有良好的表现。此外,采用AMFO来优化快速学习网络(FLN)的参数,以构建高炉液铁中硅含量的预测模型,仿真实验结果来自现场数据表明AMFO的根均方误差FLN模型为0.0542,命中比率为91,相对误差相对稳定,主波动在0.1和0.1之间;与液体铁模型中的其他十个硅含量相比,AMFO-FLN模型具有更好的预测性能。 (c)2020提交人。 elsevier b.v出版。

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