Particle swarm optimization (PSO) is a global random search algorithm put forward by simulating the flock foraging in the process of social behavior based on swarm intelligence. Researchers have proved that PSO algorithm is an effective geophysical inversion method, and it does not rely on the initial model. Because the conventional PSO is easy to be stuck in relative extremum, slow convergence speed in the late and the inversion accuracy is not high, this paper presented an improved fully chaotic oscillations particle swarm optimization algorithm based on same conventional PSO theory. It improved the formula of updating speed, made the particles getting the difference between the current global best position quickly, enhanced the learning ability of particles. The paper did a two-dimensional numerical test on ERT data in matlab2012b programming environment,the results show that this algorithm inversion is not dependent on the initial model, increases the search space,and have higher inversion in accuracy than the standard PSO, and the image quality is better than that of Levenberg-Marquardt method.
[1] Shima H, Sakayama T. Resistivity tomography: An approach to 2D resistivity inverse problem[C]//Expanded Abstracts of 57th SEG Annual Meeting. New Orleans: Society of Exploration Geophysicists, 1987:59-61.[2] Shima H.2D and 3D resistivity image reconstruction using crosshole data[J]. Geophysics,1992,57(10):1270-1281.[3] Loke M H,Barker R D.Leastsquares deconvolution of apparent resistivity pseudosections[J].Geophysics, 1995, 60(6):1682-1689.[4] Zohdy A R. A new method for the automatic interpretation of Schlumbeger and Wenner sounding curves[J]. Geophysics, 1989, 54(2): 245-253.[5] Lesur V, Cuer M, Straub A. 2D and 3D interpretation of electrical tomography measurements. Part 2: The inverse problem[J]. Geophysics, 1999, 64(2): 396-402.[6] 徐海浪,吴小平.电阻率二维神经网络反演[J]. 地球物理学报, 2006, 49(2): 584-589.[7] 卢元林,王兴泰,王若,等.电阻率成像反演中的模拟退火方法[J]. 地球物理学报, 1999, 42(S1): 225-233.[8] Madan K J, Kumar S, Chowdhury A.Vertical electrical sounding survey and resistivity inversion using genetic algorithm optimization technique [J].Journal of Hydrology,2008,359(1):71-87.[9] FERNÁNDEZ A J P,FERNÁNDEZ M J L,MENÉNDEZ P C O.Feasibility analysis of the use of binary genetic algorithms as importance samplers application to a 1D DC resistivity inverse problem[J]. Mathematical Geosciences,2008,40(4):375-408.[10] LIU B, LI S C, NIE L C. 3D resistivity inversion using an improved genetic algorithm based on control method of mutation direction[J]. Journal of Applied Geophysics, 2012, 87: 101.[11] Gad E Q,Keisuke U.Inversion of DC resistivity data usingneural network[J]. Geophysical Prospecting, 2001, 49(4): 417-430.[12] Maiti S,Erram V C,Gupta G,et al. ANN based inversion of DC resistivity data for groundwater exploration in hard rock terrain of western Maharashtra (India)[J].Journal of Hydrology,2012,464:294-308.[13] 徐海浪, 吴小平.电阻率二维神经网络反演[J]. 地球物理学报, 2006, 49(2): 584-589.[14] FERNÁNDEZ M J L, ESPERANZA G G. PSO: A powerful algorithm to solve geophysical inverse problems application to a1DDC resistivity case[J]. Journal of Applied Geophysics, 2012,71(1): 13-25.[15] Kim J H. Four dimensional inversion of DC resistivity monitoring data[C]//11th European Meeting of Environmental and Engineering Geophysics. 2005.[16] Kim J H, Yi M J, Park S G, et al. 4-D inversion of DC resistivity monitoring data acquired over a dynamically changing earth model[J]. Journal of Applied Geophysics, 2009, 68(4): 522-532.[17] Karaoulis M, Revil A, Tsourlos P, et al. IP4DI: A software for time-lapse 2D/3D DC resistivity and induced polarization tomography[J]. Computers & Geosciences, 2013, 54: 164-170.[18] Shaw R, Srivastava S. Particle swarm optimization: A new tool to invert geophysical data[J]. Geophysics, 2007, 72(2): F75-F83.[19] 师学明, 肖敏, 范建柯,等.大地电磁阻尼粒子群优化反演法研究[J].地球物理学报,2009(4):1114-1120.[20] Kennedy J, Eberhart R.Particle swarm optimization[C]//IEEE International Conference on Neural Networks. WashingtonDC: IEEE Computer Society, 1995, 4: 1942-1948.[21] Shi Y, Eberhart R. A modified particle swarm optimizer[C]//Evolutionary Computation Proceedings, 1998. IEEE World Congress on Computational Intelligence., The 1998 IEEE International Conference on. IEEE, 1998: 69-73.[22] Eberhart R, Simpson P, Dobbins R. Computational intelligence PC tools[M]. Academic Press Professional, Inc., 1996.