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Improvements on particle swarm optimization algorithm for velocity calibration in microseismic monitoring

机译:微震监测速度标定粒子群算法的改进

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Abstract In this paper, we apply particle swarm optimization (PSO), an artificial intelligence technique, to velocity calibration in microseismic monitoring. We ran simulations with four 1-D layered velocity models and three different initial model ranges. The results using the basic PSO algorithm were reliable and accurate for simple models, but unsuccessful for complex models. We propose the staged shrinkage strategy (SSS) for the PSO algorithm. The SSS-PSO algorithm produced robust inversion results and had a fast convergence rate. We investigated the effects of PSO’s velocity clamping factor in terms of the algorithm reliability and computational efficiency. The velocity clamping factor had little impact on the reliability and efficiency of basic PSO, whereas it had a large effect on the efficiency of SSS-PSO. Reassuringly, SSS-PSO exhibits marginal reliability fluctuations, which suggests that it can be confidently implemented.
机译:摘要本文将人工智能技术粒子群算法(PSO)应用于微震监测中的速度标定。我们使用四个一维分层速度模型和三个不同的初始模型范围进行了仿真。对于简单的模型,使用基本PSO算法的结果是可靠且准确的,而对于复杂的模型,则是不成功的。我们提出了PSO算法的分阶段收缩策略(SSS)。 SSS-PSO算法产生了鲁棒的反演结果,并且具有很快的收敛速度。我们从算法的可靠性和计算效率的角度研究了PSO速度钳位因子的影响。速度钳位因子对基本PSO的可靠性和效率影响不大,而对SSS-PSO的效率影响较大。令人放心的是,SSS-PSO表现出边际可靠性波动,这表明可以放心地实施它。

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