In the petroleum industry, drilling optimization
involves the selection of operating conditions for achieving
the desired depth with the minimum expenditure
while requirements of personal safety, environment protection,
adequate information of penetrated formations
and productivity are fulfilled. Since drilling optimization
is highly dependent on the rate of penetration (ROP), estimation
of this parameter is of great importance during
well planning. In this research, a novel approach called
‘optimized support vector regression’ is employed for making
a formulation between input variables and ROP. Algorithms
used for optimizing the support vector regression
are the genetic algorithm (GA) and the cuckoo search algorithm
(CS). Optimization implementation improved the
support vector regression performance by virtue of selecting
proper values for its parameters. In order to evaluate
the ability of optimization algorithms in enhancing SVR
performance, their results were compared to the hybrid
of pattern search and grid search (HPG) which is conventionally
employed for optimizing SVR. The results demonstrated
that the CS algorithm achieved further improvement
on prediction accuracy of SVR compared to the GA
and HPG as well. Moreover, the predictive model derived
from back propagation neural network (BPNN), which is
the traditional approach for estimating ROP, is selected
for comparisons with CSSVR. The comparative results revealed
the superiority of CSSVR. This study inferred that
CSSVR is a viable option for precise estimation of ROP.
Deposition of the wax is one of the thorny issues in the petroleum industry, invoking costly problems during the transportation and production of crude oil. Owing to its devastating impacts on oil companies' economy, it is essential to develop a simple and robust strategy for the quantitative estimation of wax deposition. In this paper, support vector regression (SVR) is first proposed to estimate the amount of wax deposition. Subsequently, an artificial neural network (ANN) is developed for wax deposition prediction. Eventually, a sophisticated committee machine (CM) is constructed for combining the results of the SVR and ANN models. Optimal contribution of each model in final prediction of the wax deposit is determined through genetic algorithm in CM. Statistical error analysis shows that the CM model performs better than the individual models performing alone.
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