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A Hybrid Heat Rate Forecasting Model Using Optimized LSSVM Based on Improved GSA

机译:基于改进GSA的优化LSSVM混合热量预测模型

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摘要

Heat rate value is considered as one of the most important thermal economic indicators, which determines the economic, efficient and safe operation of steam turbine unit. At the same time, an accurate heat rate forecasting is core task in the optimal operation of steam turbine unit. Recently, least squares support vector machine (LSSVM) is being proved an effective machine learning technique for solving nonlinear regression problem with a small sample set. However, it has also been proved that the prediction precision of LSSVM is highly dependent on its parameters, which are hardly choosing for the LSSVM. In the paper, an improved gravitational search algorithm (AC-GSA) is presented to further enhance optimal performance of GSA, and it is employed to serve as an approach for pre-selecting LSSVM parameters. Then, a novel soft computing method, based on LSSVM and AC-GSA, is therefore proposed to forecast heat rate of a 600 MW supercritical steam turbine unit. It combines the merits of the high accuracy of LSSVM and the fast convergence of GSA in order to build heat rate prediction model and obtain a well-generalized model. Results indicate that the developed AC-GSA-LSSVM model demonstrates better regression precision and generalization capability.
机译:热率值被认为是最重要的热经济指标之一,它决定了蒸汽轮机机组的经济,高效和安全运行。同时,准确的热量预测是汽轮机机组最佳运行的核心任务。最近,最小二乘支持向量机(LSSVM)被证明是解决小样本集非线性回归问题的有效机器学习技术。然而,也已经证明,LSSVM的预测精度高度依赖于其参数,而LSSVM几乎不选择这些参数。本文提出了一种改进的重力搜索算法(AC-GSA),以进一步提高GSA的最佳性能,并将其用作预先选择LSSVM参数的方法。然后,提出了一种基于LSSVM和AC-GSA的新型软计算方法来预测600 MW超临界汽轮机机组的热效率。它结合了LSSVM的高精度和GSA的快速收敛性的优点,以建立热量预测模型并获得一个通用的模型。结果表明,开发的AC-GSA-LSSVM模型具有更好的回归精度和泛化能力。

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