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Variational Data Assimilation Method Using Parallel Dual Populations Particle Swarm Optimization Algorithm

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摘要 In recent years,numerical weather forecasting has been increasingly emphasized.Variational data assimilation furnishes precise initial values for numerical forecasting models,constituting an inherently nonlinear optimization challenge.The enormity of the dataset under consideration gives rise to substantial computational burdens,complex modeling,and high hardware requirements.This paper employs the Dual-Population Particle Swarm Optimization(DPSO)algorithm in variational data assimilation to enhance assimilation accuracy.By harnessing parallel computing principles,the paper introduces the Parallel Dual-Population Particle Swarm Optimization(PDPSO)Algorithm to reduce the algorithm processing time.Simulations were carried out using partial differential equations,and comparisons in terms of time and accuracy were made against DPSO,the Dynamic Weight Particle Swarm Algorithm(PSOCIWAC),and the TimeVarying Double Compression Factor Particle Swarm Algorithm(PSOTVCF).Experimental results indicate that the proposed PDPSO outperforms PSOCIWAC and PSOTVCF in convergence accuracy and is comparable to DPSO.Regarding processing time,PDPSO is 40%faster than PSOCIWAC and PSOTVCF and 70%faster than DPSO.
出处 《Wuhan University Journal of Natural Sciences》 CAS CSCD 2024年第1期59-66,共8页 武汉大学学报(自然科学英文版)
基金 Supported by Hubei Provincial Department of Education Teaching Research Project(2016294,2017320) Hubei Provincial Humanities and Social Science Research Project(17D033) College Students Innovation and Entrepreneurship Training Program(National)(20191050013) Hubei Province Natural Science Foundation General Project(2021CFB584) 2023 College Student Innovation and Entrepreneurship Training Program Project(202310500047,202310500049)。
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