Flower Pollination and Elitism Algorithms for Inversion of TDEM Data

IF 0.5 Q4 MULTIDISCIPLINARY SCIENCES Journal of Mathematical and Fundamental Sciences Pub Date : 2022-08-30 DOI:10.5614/j.math.fund.sci.2022.54.1.7
Widodo Widodo, Farkhan Raflesia, Susanti Awaliyah, Setianingsih Setianingsih, D. Santoso, W. Parnadi, F. Fatkhan
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引用次数: 2

Abstract

Hybridization of algorithms can enhance the overall search capabilities to get the optimal solution. The aim of this study was to invert Time Domain Electromagnetic (TDEM) data using the Flower Pollination Algorithm (FPA) as a new inversion scheme technique. FPA was originally inspired by the fertilization process of flowers, in which pollen transfer grains from male flowers to female flowers. The modeling of TDEM data was done by combining the FPA and elitism (eFPA) techniques. The applicability was tested on forward modeling data and observed data in MATLAB 2017a. In testing the algorithm, we used a model from homogeneous half space to a multi-layer model using different parameters (resistivity and thickness). In addition, in the inversion process, we used field data with various starting model approaches. Based on the results of the TDEM data modeling, FPA and eFPA can both be applied as algorithmic techniques for inversion modeling of TDEM data. The eFPA technique gave better results than FPA.
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TDEM数据反演中的花授粉和精英算法
混合算法可以增强整体搜索能力,从而得到最优解。本研究的目的是利用花授粉算法(FPA)作为一种新的反演方案技术对时域电磁(TDEM)数据进行反演。FPA最初的灵感来自于花的受精过程,即花粉粒从雄花转移到雌花。结合FPA和精英化(eFPA)技术对TDEM数据进行建模。在MATLAB 2017a中对正演建模数据和观测数据进行了适用性测试。在测试算法时,我们使用了使用不同参数(电阻率和厚度)从均匀半空间到多层模型的模型。此外,在反演过程中,我们使用了多种启动模型方法的现场数据。基于TDEM数据建模的结果,FPA和eFPA都可以作为TDEM数据反演建模的算法技术。eFPA技术优于FPA技术。
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CiteScore
1.30
自引率
0.00%
发文量
0
审稿时长
24 weeks
期刊介绍: Journal of Mathematical and Fundamental Sciences welcomes full research articles in the area of Mathematics and Natural Sciences from the following subject areas: Astronomy, Chemistry, Earth Sciences (Geodesy, Geology, Geophysics, Oceanography, Meteorology), Life Sciences (Agriculture, Biochemistry, Biology, Health Sciences, Medical Sciences, Pharmacy), Mathematics, Physics, and Statistics. New submissions of mathematics articles starting in January 2020 are required to focus on applied mathematics with real relevance to the field of natural sciences. Authors are invited to submit articles that have not been published previously and are not under consideration elsewhere.
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