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Dive into the research topics where Kushabhau D. Teke is active.

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Featured researches published by Kushabhau D. Teke.


SPE/EAGE European Unconventional Resources Conference and Exhibition | 2014

Modeling of Shale-erosion Behavior in Aqueous Drilling Fluids

Shadaab Syed Maghrabi; Dhanashree Gajanan Kulkarni; Kushabhau D. Teke; Sandeep D. Kulkarni; Dale E. Jamison

Abstract Numerous shale-stability issues can occur while drilling with water-based muds (WBMs), including shale sloughing and cutting disintegration. These issues can be detrimental to the formation and pose difficulties with respect to rheology control, possibly reducing the rate of penetration (ROP). A “shale-erosion test” is a well-known laboratory test used to characterize the erosion of cuttings in WBMs. This paper documents a mathematical modeling tool known as an artificial neural network (ANN) used to model the erosion behavior of shale cutting in WBM. The ANN model establishes complex relationships between a set of inputs and an output based on computational modeling. For ANN modeling of shale-erosion behavior, the shale mineralogy and fluid composition constitute a set of inputs, while experimentally obtained “% erosion or % recovery” of the cuttings from the shale-erosion test represent the output. Experimental data for building the ANN model was obtained by performing approximately 150 standard shale-erosion tests using five different shales with varying mineralogy and WBMs with varying salt concentrations/types, shale stabilizers, and mud weights. For every test conducted, the input data (shale and fluid characteristics) and the output data (% recovery) was incorporated into the ANN model. The ANN model was then run to establish relationships between inputs and the output, which exhibited excellent correlation with R2 ≈ 0.85–0.90. The ANN model was successfully validated for an independent set of shale-fluid interactions. With the novel ANN model in place, erosion behavior of cuttings could be predicted in advance, thereby reducing the number of trials necessary in technical service labs. Mud engineers can use this model on a real-time basis as the shale chemistry varies with the depth of the formation drilling. The model could provide convenient measurement of fluid performance, enabling fluid optimization necessary to obtain desired shale behavior in advance, thereby minimizing drilling risks and costs associated with these oftentimes unpredictable shales.


Archive | 2011

Invert drilling fluids having enhanced rheology and methods of drilling boreholes

Shadaab Syed Maghrabi; Vikrant Bhavanishankar Wagle; Kushabhau D. Teke; Dhanashree Gajanan Kulkarni; Kunai Sharad Kulkarni


SPE Oil and Gas India Conference and Exhibition | 2012

Making Good HPHT Invert Emulsion Fluids Great

Vikrant Bhavanishankar Wagle; Shadaab Syed Maghrabi; Kushabhau D. Teke; Anita Gantepla


Archive | 2013

Drilling a well with predicting sagged fluid composition and mud weight

Sandeep D. Kulkarni; Kushabhau D. Teke; Sharath Savari; Dale E. Jamison


SPE Deepwater Drilling and Completions Conference | 2014

Managing Suspension Characteristics of Lost-circulation Materials in a Drilling Fluid

Sandeep D. Kulkarni; Dale E. Jamison; Kushabhau D. Teke


Archive | 2013

Methods for predicting dynamic sag using viscometer/rheometer data

Sandeep D. Kulkarni; Sharath Savari; Kushabhau D. Teke; Dale E. Jamison; Robert J. Murphy; Anita Gantepla


Archive | 2014

Methods of Designing a Drilling Fluid Having Suspendable Loss Circulation Material

Sandeep D. Kulkarni; Kushabhau D. Teke; Sharath Savari; Dale E. Jamison; Don Whitfill


Archive | 2013

Compositions and method for treating out hydrogen sulfide and preventing settling of precipitate in an environmentally responsible drilling and packer fluid

John Adrian Hall; Kushabhau D. Teke; Pramod Dadasaheb Nikam


Archive | 2012

METHODS AND APPARATUSES FOR MODELING SHALE CHARACTERISTICS IN WELLBORE SERVICING FLUIDS USING AN ARTIFICIAL NEURAL NETWORK

Dale E. Jamison; Shadaab Syed Maghrabi; Dhanashree Gajanan Kulkarni; Kushabhau D. Teke; Sandeep D. Kulkarni


Archive | 2014

Modelling Suspension of Lost Circulation Materials in a Drilling Fluid

Sandeep D. Kulkarni; Kushabhau D. Teke; Sharath Savari; Dale E. Jamison; Donald L. Whitfill

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