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Parallel Cooperative Co-evolution Based Particle Swarm Optimization Algorithm for Solving Conditional Nonlinear Optimal Perturbation

机译:基于并行协同协同进化的粒子群优化算法求解条件非线性最优摄动

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Conditional nonlinear optimal perturbation (CNOP) is proposed to study the predictability of numerical weather and climate prediction. Recent researches show that evolutionary algorithms (EAs) could solve CNOP efficiently, such as SAEP and PCAGA. Both of them use dimension reduction methods with EAs to solve CNOP. But these methods always need large scale data samples and their data information are usually incomplete, which sometimes may cause the result unsatisfactory. Another way is to use cooperative co-evolution (CC) method, it adopts multi populations to change the mode of traditional searching optimum solutions. The CC method is applied in the original solution space which could avoid the defects that dimension reduction method has. In this paper, we propose cooperative co-evolution based particle swarm optimization algorithm (CCPSO) for solving CNOP. In our method, we make improvements on PSO with tabu search algorithm. Then we parallelize our method with MPI (PCCPSO). To demonstrate the validity, we compare our method with adjoint-based method, SAEP and PCAGA in ZC model. Experimental results of CNOP magnitudes and patterns show PCCPSO has the satisfactory results that are approximate to the adjoint-based method and better than SAEP and PCAGA. The time consumption of PCCPSO is about 5 min. It is approximate to the adjoint-based method with 15 initial guess fields and faster than SAEP and PCAGA. Our method can reach the speedup of 7.6 times with 12 CPU cores.
机译:为了研究数值天气和气候预测的可预测性,提出了条件非线性最优摄动(CNOP)。最近的研究表明,进化算法(EA)可以有效地解决CNOP,例如SAEP和PCAGA。他们都使用带有EA的降维方法来解决CNOP。但是这些方法总是需要大规模的数据样本,其数据信息通常不完整,有时可能导致结果不理想。另一种方法是使用合作协同进化(CC)方法,它采用多种群来改变传统搜索最优解的模式。 CC方法应用于原始解空间,可以避免降维方法所存在的缺陷。在本文中,我们提出了基于协同协进化的粒子群优化算法(CCPSO)来求解CNOP。在我们的方法中,我们使用禁忌搜索算法对PSO进行了改进。然后,我们将我们的方法与MPI(PCCPSO)并行化。为了证明有效性,我们在ZC模型中将我们的方法与基于伴随的方法,SAEP和PCAGA进行了比较。 CNOP量级和模式的实验结果表明,PCCPSO具有令人满意的结果,接近于基于伴随的方法,并且优于SAEP和PCAGA。 PCCPSO的时间消耗约为5分钟。它近似于基于伴随的方法,具有15个初始猜测字段,并且比SAEP和PCAGA更快。我们的方法使用12个CPU内核可以达到7.6倍的加速。

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