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Application of DE-Based SVMs for Fouling Prediction on Thermal Power Plant Condensers

机译:基于DE基SVM在热电厂冷凝器污垢预测中的应用

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Unexpected fouling in condensers has always been one of the main operational concerns in thermal power plants. This paper describes an approach to predict fouling deposits in thermal power plant condensers by means of support vector machines (SVMs). The periodic fouling formation process and residual fouling phenomenon are analyzed. To improve the generalization performance of SVMs, an improved differential evolution algorithm is introduced to optimize the SVMs parameters. The prediction model based on optimized SVMs is used in a case study of a 300 MW thermal power station. The experiment results show that the proposed approach has more accurate prediction results and better dynamic self-adaptive ability to the condenser operating conditions change than asymptotic model and T-S fuzzy model.
机译:冷凝器中出现意外的污垢一直是火电厂的主要操作问题之一。本文介绍了一种通过支持向量机(SVM)预测热电厂冷凝器中的污垢沉积物的方法。分析了周期性污染形成过程和残留污染现象。为了提高SVM的泛化性能,引入了一种改进的差分演进算法以优化SVM参数。基于优化的SVM的预测模型用于300 MW热电区的案例研究。实验结果表明,该方法具有比渐近模型和T-S模糊模型更好地具有更准确的预测结果和更好的动态自适应能力,与冷凝器操作条件发生变化。

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