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Training and application of process neural network based on quantum shuffled frog leaping algorithm

机译:基于量子混洗蛙跳跃算法的过程神经网络的培训与应用

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Aiming at the problem that it is difficult for BP algorithm to converge because of more parameters in training of process neural networks based on orthogonal basis expansion, a quantum shuffled frog leaping algorithm is presented which combines the quantum theory and is to train the process neural network. In this algorithm, the individuals are expressed with Bloch spherical coordinates of qubits. The quantum individuals are updated by quantum rotation gates, and the mutation of individuals is achieved with Hadamard gates. For the size and direction of rotation angle of quantum rotation gates, a simple determining method is proposed. Above operations extend the search of the solution space effectively. To predict sunspot as an example to validate the presented algorithm.
机译:针对基于正交基础扩展的过程神经网络训练的更多参数难以收敛的问题,提出了一种组合量子理论的量子播种青蛙跨越算法,并且是培训过程神经网络。在该算法中,个体用Qubits的Bloch球形坐标表示。量子个体由量子旋转门更新,并且通过Hadamard栅极实现个体的突变。对于量子旋转门的旋转角度的尺寸和方向,提出了一种简单的确定方法。上面的操作有效地扩展了解决方案空间的搜索。预测SunSpot作为验证所呈现的算法的示例。

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