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A modified Boltzmann Annealing Differential Evolution algorithm for inversion of directional resistivity logging-while-drilling measurements

机译:用于定向电阻率测井钻探测量的反演的改进的Boltzmann退火差分演化算法

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摘要

Being introduced in the last decade for proactive geosteering, directional resistivity logging-while-drilling (DRLWD) measurements have been used to predict and invert formation boundary, which provides more confidence to geosteering engineers in steering a well towards reservoirs' sweet spots. However, the strong non-uniqueness of the inversion problems in the data processing in the DRLWD measurements requires a robust algorithm having a global optimization capability. We propose a modified Boltzmann Annealing Differential Evolution (BADE) algorithm to optimize the inversion problem in the DRLWD measurements. The algorithm combines a multi-population Differential Evolution (DE) algorithm with an annealing strategy. Controlled by the annealing temperature, a bad solution may be accepted probabilistically to avoid the local minima. Moreover, different differential strategies are employed at different stages of annealing to improve the convergence as well as to save computation time. The proposed algorithm is suitable for parallel implementation and it can be accelerated drastically. Synthetic and field examples are presented to showcase the effectiveness and accuracy of the BADE algorithm. Compared to the standard DE algorithm, the modified algorithm converges faster and finds global optimization easier. Combined with a multi-layer model, the BADE algorithm can be used to predict multiple formation boundaries and to evaluate the anisotropic formation resistivities, which will be of great help for proactive geosteering and well placement.
机译:在过去的十年中推出的主动性地升降,定向电阻率测井(DRLWD)测量已经用于预测和反转形成边界,这对地蹄设备的工程师对朝向水库的甜点的转向来提供更有信心。然而,DRLWD测量中数据处理中的反转问题的强不唯一性需要具有全局优化能力的鲁棒算法。我们提出了一种修改的Boltzmann退火差分演进(Bade)算法,以优化DRLWD测量中的反转问题。该算法将多人差分演进(DE)算法结合起退火策略。由退火温度控制,可以接受不良解决方案,以避免局部最小值。此外,在退火的不同阶段采用不同的差异策略来改善收敛以及节省计算时间。所提出的算法适用于并行实现,它可以急剧加速。提出了合成和现场示​​例以展示Bade算法的有效性和准确性。与标准DE算法相比,修改的算法会聚得更快并更容易地找到全局优化。结合多层模型,BADE算法可用于预测多种形成边界,并评估各向异性的形成电阻,这对于主动性地汇率和井放置有很大的帮助。

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