IEEE Trans Cybern. 2019 May;49(5):1642-1656. doi: 10.1109/TCYB.2018.2809430. Epub 2018 Mar 29.
For expensive constrained optimization problems (ECOPs), the computation of objective function and constraints is very time-consuming. This paper proposes a novel global and local surrogate-assisted differential evolution (DE) for solving ECOPs with inequality constraints. The proposed method consists of two main phases: 1) global surrogate-assisted phase and 2) local surrogate-assisted phase. In the global surrogate-assisted phase, DE serves as the search engine to produce multiple trial vectors. Afterward, the generalized regression neural network is used to evaluate these trial vectors. In order to select the best candidate from these trial vectors, two rules are combined. The first is the feasibility rule, which at first guides the population toward the feasible region, and then toward the optimal solution. In addition, the second rule puts more emphasis on the solution with the highest predicted uncertainty, and thus alleviates the inaccuracy of the surrogates. In the local surrogate-assisted phase, the interior point method coupled with radial basis function is utilized to refine each individual in the population. During the evolution, the global surrogate-assisted phase has the capability to promptly locate the promising region and the local surrogate-assisted phase is able to speed up the convergence. Therefore, by combining these two important elements, the number of fitness evaluations can be reduced remarkably. The proposed method has been tested on numerous benchmark test functions from three test suites and two real-world cases. The experimental results demonstrate that the performance of the proposed method is better than that of other state-of-the-art methods.
对于昂贵的约束优化问题(ECOPs),目标函数和约束的计算非常耗时。本文提出了一种新颖的全局和局部代理辅助差分进化(DE)方法,用于解决具有不等式约束的 ECOPs。该方法由两个主要阶段组成:1)全局代理辅助阶段和 2)局部代理辅助阶段。在全局代理辅助阶段,DE 用作搜索引擎来生成多个试验向量。之后,广义回归神经网络用于评估这些试验向量。为了从这些试验向量中选择最佳候选向量,结合了两个规则。第一个是可行性规则,它首先引导种群进入可行区域,然后进入最优解。此外,第二个规则更注重具有最高预测不确定性的解,从而减轻了代理的不准确性。在局部代理辅助阶段,使用内点法和径向基函数来细化种群中的每个个体。在进化过程中,全局代理辅助阶段能够快速定位有希望的区域,局部代理辅助阶段能够加速收敛。因此,通过结合这两个重要元素,可以显著减少适应度评估的次数。该方法已在三个测试套件和两个实际案例的多个基准测试函数上进行了测试。实验结果表明,所提出的方法的性能优于其他最先进的方法。