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Transient electromagnetic inversion based on particle swarm optimization and differential evolution algorithm

Ruiyou Li, Nian Yu, Ruiheng Li, Qiong Zhuang, Huaiqing Zhang

2020Near Surface Geophysics24 citationsDOI

Abstract

ABSTRACT For transient electromagnetic inversion, a gradient‐based algorithm is strongly dependent on the quality of the initial model, while any non‐gradient‐based algorithm often falls too easily into local optima. This paper proposes a joint differential‐evolution–particle‐swarm‐optimization inversion algorithm, which provides a better global optimization. A dual‐population evolution strategy and information exchange mechanism is presented. For verification, this is followed by adoption of a layered inversion model in the transient electromagnetic inversion with a central loop. The results show that the differential‐evolution–particle‐swarm‐optimization joint algorithm can reduce the probability of a premature phenomenon (i.e. falling into local optima) and improve the inversion accuracy, efficiency and stability, with a fast convergence occuring in the early stages. Furthermore, the proposed algorithm has a higher degree of fitting (prediction ability) for data inversion and is feasible for transient electromagnetic inversion.

Topics & Concepts

Inversion (geology)Differential evolutionParticle swarm optimizationLocal optimumAlgorithmMathematical optimizationMulti-swarm optimizationGlobal optimizationComputer scienceMathematicsGeologySeismologyTectonicsSoil Moisture and Remote SensingUnderwater Acoustics ResearchElectromagnetic Simulation and Numerical Methods
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