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首页> 外文期刊>Computers & geosciences >Hybrid homotopy-PSO global searching approach with multi-kernel extreme learning machine for efficient source identification of DNAPL-polluted aquifer
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Hybrid homotopy-PSO global searching approach with multi-kernel extreme learning machine for efficient source identification of DNAPL-polluted aquifer

机译:混合同源式PSO与多核极端学习机的全球搜索方法,用于DNAPL污染含水层的有效源识别

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摘要

Groundwater pollution source identification (GPSI), which is critical for taking effective measures to protect groundwater resources, assess risks, and design remediation strategies, typically involves the solution of a nonlinear and ill-posed inverse problem. Regarding the inversion of dense non-aqueous phase liquid (DNAPL) sources, the special characteristics of pollutants render related research more complex. In the present study, homotopy-based optimization inverse theory and multi-kernel extreme learning machine (MK-ELM) were combined for efficiently solving GPSI problem while estimating aquifer parameters at a DNAPL-polluted site. The extreme learning machine incorporating multi kernels and whose parameters are obtained by means of a genetic algorithm (GA) was embedded in an optimization model for GPSI to replace the multiphase flow simulation model and to mitigate the considerable computational burdens of inversion iteration. The hybrid homotopyparticle swarm optimization (PSO) algorithm was constructed as a more efficient method for segmentally searching the global optimum in wide areas with low dependence on initial values. Results showed that the application of GA-based MK-ELM and hybrid homotopy-PSO effectively accomplish the simultaneous identification of source characteristics and aquifer parameters. The MK-ELM approximate the outputs of multiphase flow simulation model sufficiently with the certainty coefficient (R2) increased to 0.9982, whereas the mean relative error was limited to 1.5168%. Compared to the widely used PSO algorithm, the hybrid homotopy-PSO algorithm significantly reduced the mean relative error of identification results from 6.77% to 2.89%.
机译:地下水污染源识别(GPSI),对采取有效措施来保护地下水资源,评估风险和设计修复策略至关重要,通常涉及非线性和不良反问题的解决方案。关于致密非水相液(DNAPL)来源的反转,污染物的特殊特征使相关的研究更加复杂。在本研究中,组合了同型优化逆理论和多核极限学习机(MK-ELM)以在估计DNAPL污染部位的含水层参数时有效解决GPSI问题。通过遗传算法(GA)获得包含多核的极端学习机,其参数是通过遗传算法(GA)获得的,用于GPSI的优化模型,以替换多相流模拟模型,并减轻反转迭代的相当大的计算负担。混合同型百分比群优化(PSO)算法被构造为更有效的方法,用于在宽依赖性依赖性的宽区域中进行分段地搜索全局最佳的方法。结果表明,基于GA的MK-ELM和杂交同源PSO的应用有效地实现了源特征和含水层参数的同时识别。 MK-ELM近似与确定性系数(R2)充分增加的多相流动仿真模型的输出增加到0.9982,而平均相对误差限制为1.5168%。与广泛使用的PSO算法相比,混合同源性-PSO算法显着降低了6.77%至2.89%的鉴定结果的平均相对误差。

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