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Study on optimization of rake head density of suction hopper dredger based on bat algorithm and extreme learning machine

机译:基于BAT算法和极端学习机的吸料斗挖掘机耙头密度优化研究

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The dredging output of suction dredger mainly comes from the suction density of the rake head. Accurate prediction of suction density is of great significance to improve the dredging output of suction dredger. In order to overcome the shortcomings of low accuracy and poor real-time performance of the current inhalation density prediction methods, a bat algorithm is proposed to optimize the inhalation density prediction method of extreme learning machine. The bat algorithms for optimizing extreme learning machines prediction model is constructed based on the measured construction data of “Xinhaifeng” Yangtze Estuary, and compared with other prediction models. Finally, the bat algorithms for optimizing extreme learning machines model is used to build the output simulator of inhalation density. Compared with the actual construction, the selection of control parameters is analyzed when the output of inhalation density is the best. Experients show that bat algorithms for optimizing extreme learning machines prediction has high accuracy and good stability, and can provide scientific and effective reference for yield prediction and construction guidance.
机译:抽吸挖水器的疏浚输出主要来自耙头的吸入密度。精确预测吸入密度具有重要意义,可以提高吸入挖掘机的疏浚输出。为了克服电流吸入密度预测方法的低精度和实时性能差的缺点,提出了一种蝙蝠算法来优化极端学习机的吸入密度预测方法。用于优化极端学习机预测模型的BAT算法基于“新开逝峰”长江河口的施工数据,与其他预测模型相比。最后,用于优化极端学习机模型的BAT算法用于构建吸入密度的输出模拟器。与实际结构相比,当吸入密度的输出是最好的时,分析了控制参数的选择。实验结果表明,用于优化极端学习机预测的BAT算法具有高精度和良好的稳定性,可为产量预测和施工指导提供科学和有效的参考。

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