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DATA-BASED APPROACH TO OPTIMIZING THE OCEAN WAVE ENERGY CARPET USING DEEP NEURAL NETWORK

机译:基于数据的探讨了利用深神经网络优化海浪能量地毯的方法

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In this paper, we present the Neural Network-based Optimization Method, applied to optimizing the wave energy converter "wave carpet". The proposed method can be applied to optimizing the computationally expensive objective function that other sequential optimization approaches fail to do. The results show that, in the simple case of single-frequency unidirectional incoming waves, this optimization method achieves the optimal carpet shape that can absorb 2.18 times more energy than the baseline circular shape, and in its best performance the neural network can optimize the carpet shape that absorbs 7 times more energy than the baseline, after being trained on a medium data set. Thus, the proposed method can be considered an effective approach to solving the optimization problems involving computationally expensive objective functions.
机译:本文介绍了神经网络的优化方法,应用于优化波能量转换器“波形地毯”。可以应用所提出的方法,以优化其他连续优化方法无法执行的计算昂贵的目标函数。结果表明,在单频单向进入波的简单情况下,这种优化方法实现了最佳地毯形状,可以吸收比基线圆形更高的能量的2.18倍,并且在最佳性能中,神经网络可以优化地毯在培训的介质数据集上培训之后,造型比基线吸收7倍。因此,所提出的方法可以被认为是解决涉及计算昂贵的客观函数的优化问题的有效方法。

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