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Teaching-Learning-Based Differential Evolution Algorithm for Optimization Problems

机译:基于教学的差分演化算法优化问题

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Differential Evolution (DE) is one of the current best evolutionary algorithms. It becomes the popular research topic in many fields such as evolutionary computing and intelligent optimization. At present, DE has successfully been applied to diverse domains of science and engineering, such as signal processing, neural network optimization, pattern recognition, machine intelligence, chemical engineering and medical science. However, almost all the evolutionary algorithms, including DE, still suffer from the problems of premature convergence, slow convergence rate and difficult parameter setting. To overcome these drawbacks, we propose a novel Teaching-Learning-Based Differential Evolution Algorithm(TLDE), in which the pheromone and the sensitivity model in free search algorithm to replace the traditional roulette wheel selection model, and introduces OBL to present an improved artificial bee colony algorithm. Experimental results confirm the superiority of Teaching-Learning-Based Differential Evolution Algorithm over several state-of-the-art evolutionary optimizers.
机译:差分进化(de)是当前最佳进化算法之一。它成为了许多领域的流行研究主题,如进化计算和智能优化。目前,DE已成功应用于各种科学和工程领域,如信号处理,神经网络优化,模式识别,机器智能,化学工程和医学科学。然而,几乎所有的进化算法包括de,仍然遭受过早收敛,收敛速度和困难参数设置的问题。为了克服这些缺点,我们提出了一种新的教学 - 学习的差分演进算法(TLDE),其中信息素和灵敏模型在自由搜索算法中取代传统的轮盘轮选择模型,并介绍了改进的人工蜜蜂殖民地算法。实验结果证实了教学 - 基于教学的差分演进算法在几种最先进的进化优化器上的优越性。

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