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Quantum inspired evolutionary algorithm to improve parameters of neural models on example of polish electricity power exchange

机译:量子启发式进化算法,以波兰电力交换为例,改进神经模型的参数

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摘要

Paper contains selected results of theoretical and practical research concerning the possibility of creating evolutionary algorithms inspired by quantum information technology to improve the performance of neural models. Particular focus was on calculating the quantum available for use in quantum evolutionary algorithms. It is noted that the parameters of the artificial neural network, especially the weight matrix can be improved by evolutionary algorithms. It turns out that the introduction of solutions in the field of quantum computing to evolutionary algorithms, including the creation of quantum initial population, quantum operators (crossover and mutation), and quantum selection greatly improves the accuracy of modeling, which has been verified by the examples of figures on the Polish Power Exchange Electricity. New method of creating quantum mixed numbers is also proposed.
机译:该论文包含有关在量子信息技术的启发下开发进化算法以改善神经模型性能的可能性的理论和实践研究的部分成果。特别关注的是计算可用于量子进化算法的量子。值得注意的是,人工神经网络的参数,尤其是权重矩阵可以通过进化算法进行改进。事实证明,将量子计算领域的解决方案引入到进化算法中,包括创建量子初始种群,量子算符(交叉和变异)以及量子选择,极大地提高了建模的准确性,这一点已得到验证。波兰电力交易所电力的数字示例。还提出了创建量子混合数的新方法。

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