IEEE Trans Cybern. 2021 Jul;51(7):3417-3428. doi: 10.1109/TCYB.2020.2989465. Epub 2021 Jun 23.
Many real-world optimization problems involve multiple objectives, constraints, and parameters that may change over time. These problems are often called dynamic multiobjective optimization problems (DMOPs). The difficulty in solving DMOPs is the need to track the changing Pareto-optimal front efficiently and accurately. It is known that transfer learning (TL)-based methods have the advantage of reusing experiences obtained from past computational processes to improve the quality of current solutions. However, existing TL-based methods are generally computationally intensive and thus time consuming. This article proposes a new memory-driven manifold TL-based evolutionary algorithm for dynamic multiobjective optimization (MMTL-DMOEA). The method combines the mechanism of memory to preserve the best individuals from the past with the feature of manifold TL to predict the optimal individuals at the new instance during the evolution. The elites of these individuals obtained from both past experience and future prediction will then constitute as the initial population in the optimization process. This strategy significantly improves the quality of solutions at the initial stage and reduces the computational cost required in existing methods. Different benchmark problems are used to validate the proposed algorithm and the simulation results are compared with state-of-the-art dynamic multiobjective optimization algorithms (DMOAs). The results show that our approach is capable of improving the computational speed by two orders of magnitude while achieving a better quality of solutions than existing methods.
许多实际的优化问题都涉及多个目标、约束和参数,这些参数可能随时间变化。这些问题通常被称为动态多目标优化问题(DMOPs)。解决 DMOPs 的难点在于需要有效地、准确地跟踪不断变化的 Pareto 最优前沿。众所周知,基于迁移学习(TL)的方法具有利用过去计算过程中获得的经验来提高当前解决方案质量的优势。然而,现有的基于 TL 的方法通常计算密集,因此耗时。本文提出了一种新的基于记忆的流形 TL 进化算法,用于动态多目标优化(MMTL-DMOEA)。该方法结合了记忆机制,以保留过去的最佳个体,以及流形 TL 的特征,以在新实例中预测新个体的最优个体。从过去的经验和未来的预测中获得的这些个体的精英,然后将作为优化过程中的初始种群。该策略显著提高了初始阶段的解决方案的质量,并降低了现有方法所需的计算成本。不同的基准问题用于验证所提出的算法,并且将仿真结果与最先进的动态多目标优化算法(DMOAs)进行比较。结果表明,我们的方法能够将计算速度提高两个数量级,同时获得比现有方法更好的解决方案质量。