hybrid anfis with ant colony optimization algorithm for prediction of shear wave velocity from a carbonate reservoir in iran
Authors
abstract
shear wave velocity (vs) data are key information for petrophysical, geophysical and geomechanical studies. although compressional wave velocity (vp) measurements exist in almost all wells, shear wave velocity is not recorded for most of elderly wells due to lack of technologic tools. furthermore, measurement of shear wave velocity is to some extent costly. this study proposes a novel methodology to remove aforementioned problems by use of hybrid adaptive neuro fuzzy inference system (anfis) with ant colony optimization algorithm (aco) based on fuzzy c–means clustering (fcm) and subtractive clustering (scm). the aco is combined with two anfis models for determining the optimal value of its user–defined parameters. the optimization implementation by the aco significantly improves the generalization ability of the anfis models. these models are used in this study to formulate conventional well log data into vs in a quick, cheap, and accurate manner. a total of 3030 data points was used for model construction and 833 data points were employed for assessment of anfis models. finally, a comparison among anfis models, and six well–known empirical correlations demonstrated anfis models outperformed other methods. this strategy was successfully applied in the marun reservoir, iran.
similar resources
Hybrid ANFIS with ant colony optimization algorithm for prediction of shear wave velocity from a carbonate reservoir in Iran
Shear wave velocity (Vs) data are key information for petrophysical, geophysical and geomechanical studies. Although compressional wave velocity (Vp) measurements exist in almost all wells, shear wave velocity is not recorded for most of elderly wells due to lack of technologic tools. Furthermore, measurement of shear wave velocity is to some extent costly. This study proposes a novel methodolo...
full textA HYBRID SUPPORT VECTOR REGRESSION WITH ANT COLONY OPTIMIZATION ALGORITHM IN ESTIMATION OF SAFETY FACTOR FOR CIRCULAR FAILURE SLOPE
Slope stability is one of the most complex and essential issues for civil and geotechnical engineers, mainly due to life and high economical losses resulting from these failures. In this paper, a new approach is presented for estimating the Safety Factor (SF) for circular failure slope using hybrid support vector regression (SVR) and Ant Colony Optimization (ACO). The ACO is combined with the S...
full textImproved Ant Colony Optimization Algorithm for Reservoir Operation
In this paper, an improved Ant Colony Optimization (ACO) algorithm is proposed for reservoir operation. Through a collection of cooperative agents called ants, the near-optimum solution to the reservoir operation can be e ectively achieved. To apply the proposed ACO algorithm, the problem is approached by considering a nite horizon with a time series of in ow, classifying the reservoir volume t...
full textA systematic approach for estimation of reservoir rock properties using Ant Colony Optimization
Optimization of reservoir parameters is an important issue in petroleum exploration and production. The Ant Colony Optimization(ACO) is a recent approach to solve discrete and continuous optimization problems. In this paper, the Ant Colony Optimization is usedas an intelligent tool to estimate reservoir rock properties. The methodology is illustrated by using a case study on shear wave velocity...
full textAn Ant Colony Optimization Algorithm for Network Vulnerability Analysis
Intruders often combine exploits against multiple vulnerabilities in order to break into the system. Each attack scenario is a sequence of exploits launched by an intruder that leads to an undesirable state such as access to a database, service disruption, etc. The collection of possible attack scenarios in a computer network can be represented by a directed graph, called network attack gra...
full textA Hybrid Ant Colony Optimization Algorithm for Software Project Scheduling
The extraction of comprehensible knowledge is one of the major challenges in many domains. In this concept, an ant programming (AP) framework, which is capable of mining classification rules easily comprehensible by humans, and, therefore, capable of supporting expert-domain decisions, is presented. The algorithm proposed, called grammar based ant programming (GBAP), is the first AP algorithm d...
full textMy Resources
Save resource for easier access later
Journal title:
international journal of mining and geo-engineeringجلد ۵۰، شماره ۲، صفحات ۲۳۱-۲۳۸
Hosted on Doprax cloud platform doprax.com
copyright © 2015-2023