自适应差分进化的应用综述

Sarah Hazwani Adnan, Shir Li Wang, H. Ibrahim, T. F. Ng
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引用次数: 1

摘要

差分进化(DE)可能是目前最强大的随机实参数优化算法,已被应用于神经网络、物流、调度、建模等多个领域。它的简单性、易实现性和可靠性吸引了许多从业者和科学家在实现算法。由于不同的问题需要不同的参数设置,因此在处理复杂的计算优化问题时实现DE具有很大的挑战性。然而,算法的成功取决于基于手头问题选择正确参数设置的能力。因此,需要额外的注意,以便为每个问题微调完美的参数。引入自适应差分进化(SADE)算法,简化了自适应差分进化算法中参数的查找过程。随着SADE在优化领域的引入,学习策略的选择和参数设置不需要预先定义,参数调优变得不那么混乱。本文旨在概述从SADE实施中受益的重要应用。SADE已应用于电磁学、电力系统、计算机性能、发酵、聚酯工艺等众多学科。与传统DE算法相比,SADE也被证明具有更好的性能。通过收集和分析将SADE应用于解决问题的相关文章,提供SADE应用的重要趋势。
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An Overview on the Application of Self-Adaptive Differential Evolution
Differential Evolution (DE) is possibly the most current powerful stochastic real-parameter optimization algorithm and has been used in multiple diverse area such as neural networks, logistics, scheduling, modelling and others. Its simplicity, ease of implementation and reliability had captures many practitioners and scientists in implementing the algorithm. As different problems require different parameter setting, the implementation of DE in tackling complex computational optimization problem is quite challenging. Nevertheless, success of the algorithm depends on the ability to choose the right parameter setting based on problems in hand. Thus, extra attention is needed in order to fine tune the perfect parameter for each problem. Self-adaptive Differential Evolution (SADE) algorithm had been introduced in order to simplify the search for the right parameter to be used in DE algorithm. With the introduction of SADE in optimization areas, where the choice of learning strategy and parameter setting do not require predefining, parameter tuning has become less confusing. This paper aims at providing an overview on significant application that have benefited from SADE implementation. SADE had been applied in numerous disciplines such as electromagnetics, power system, computer performance, fermentation, polyester process and more. SADE has also proven to achieve better performance compared to conventional DE algorithm. By collecting and analyzing related articles that have implemented SADE in solving problem, a significant trends on the application of SADE will be provided.
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