Dr. Kumar graduated from the R.n.t. Med Coll, Univ of Rajasthan, Udaipur, Rajasthan, India in 1995. He works in Des Moines, IA and specializes in Pediatric Surgery. Dr. Kumar is affiliated with Mercy Medical Center & Childrens Hospital Des Moines.
Asthma & Allergy Center 208 Maccorkle Ave SE, Charleston, WV 25314 (304)3434300 (phone), (304)3435473 (fax)
Education:
Medical School Akademia Medyczna Lublin, Lublin, Poland Graduated: 2003
Languages:
English
Description:
Dr. Kumar graduated from the Akademia Medyczna Lublin, Lublin, Poland in 2003. He works in Charleston, WV and specializes in Allergy & Immunology. Dr. Kumar is affiliated with Charleston Area Medical Center Memorial Hospital.
A sports equipment transporting apparatus is described. The apparatus is designed to be put into a vehicle with a mid- to long-size body length and is housed within a ramp housing. The ramp housing is two-tiered and includes a slide-out ramp located within the upper tier, with the ramp being mounted on a pair of guide tracks. The lower tier includes a storage compartment and a spare tire compartment. The rear entry of the vehicle is modified so that the top door panel becomes a roll-out door panel, with two swinging doors attached that pivot outwards ninety degrees. When the ramp is fully extended from the ramp housing, the ramp angles downward and touches an external ground surface. Once a piece of sports equipment has been placed on top of the ramp housing, a series of tie-downs are utilized to keep the sports equipment in place.
Linepack Delay Measurement In Fluid Delivery Pipeline
Technical solutions are described for predicting linepack delays. An example method includes receiving temporal sensor measurements of a first fluid-delivery pipeline network and generating a causality graph of the first fluid-delivery pipeline network. The method also includes determining a topological network of the stations based on the causality graph, where the topological network identifies a temporal delay between a pair of stations. The method also includes generating a temporal delay prediction model based on the topological network and predicting the linepack delays of a second fluid-delivery pipeline network based on the temporal delay prediction model, where a compressor station of the second fluid-delivery pipeline network compresses fluid based on the predicted linepack delays to maintain a predetermined pressure.
- Armonk NY, US Younghun Kim - White Plains NY, US Tarun Kumar - Mohegan Lake NY, US Wander S. Wadman - New York NY, US Kevin W. Warren - Hopewell Junction NY, US
Historical power output measurements of a wind turbine for a time period immediately preceding a specified past time are received. Historical wind speed micro-forecasts for the wind turbine for a time period immediately preceding the specified past time and for a time period immediately following the specified past time are received. The historical wind speed micro-forecasts are converted to wind power values. Based on the historical power output measurements and the wind power output values, a machine learning model for predicting wind power output is trained. Real-time power output measurements of the wind turbine and real-time wind speed micro-forecasts for the wind turbine are received. The real-time wind speed micro-forecasts are converted to real-time wind power values. Using the machine learning model with the real-time power output measurements and the real-time wind power values, a wind power output forecast for the wind turbine at a future time is outputted.
- ARMONK NY, US Younghun Kim - White Plains NY, US Tarun Kumar - Mohegan Lake NY, US Wander S. Wadman - New York NY, US Kevin W. Warren - Hopewell Junction NY, US
Historical power output measurements of a wind turbine for a time period immediately preceding a specified time are received. Historical wind speed micro-forecasts for the wind turbine for a time periods immediately preceding the specified past time and immediately following the specified past time are received. The historical wind speed micro-forecasts are converted to wind power values. Based on the historical power output measurements and the wind power output values, a machine learning model for predicting wind power output is trained. Real-time power output measurements of the wind turbine and real-time wind speed micro-forecasts for the wind turbine are received. The real-time wind speed micro-forecasts are converted to real-time wind power values. Using the machine learning model with the real-time power output measurements and the real-time wind power values, a wind power output forecast for the wind turbine at a future time is outputted.
- Armonk NY, US Younghun Kim - White Plains NY, US Tarun Kumar - Mohegan Lake NY, US Wander S. Wadman - New York NY, US Kevin W. Warren - Hopewell Junction NY, US
Historical power output measurements of a wind turbine for a time period immediately preceding a specified time are received. Historical wind speed micro-forecasts for the wind turbine for a time periods immediately preceding the specified past time and immediately following the specified past time are received. The historical wind speed micro-forecasts are converted to wind power values. Based on the historical power output measurements and the wind power output values, a machine learning model for predicting wind power output is trained. Real-time power output measurements of the wind turbine and real-time wind speed micro-forecasts for the wind turbine are received. The real-time wind speed micro-forecasts are converted to real-time wind power values. Using the machine learning model with the real-time power output measurements and the real-time wind power values, a wind power output forecast for the wind turbine at a future time is outputted.
- Armonk NY, US Younghun Kim - White Plains NY, US Tarun Kumar - Mohegan Lake NY, US Wander S. Wadman - New York NY, US Kevin W. Warren - Hopewell Junction NY, US
Historical power output measurements of a wind turbine for a time period immediately preceding a specified time are received. Historical wind speed micro-forecasts for the wind turbine for a time periods immediately preceding the specified past time and immediately following the specified past time are received. The historical wind speed micro-forecasts are converted to wind power values. Based on the historical power output measurements and the wind power output values, a machine learning model for predicting wind power output is trained. Real-time power output measurements of the wind turbine and real-time wind speed micro-forecasts for the wind turbine are received. The real-time wind speed micro-forecasts are converted to real-time wind power values. Using the machine learning model with the real-time power output measurements and the real-time wind power values, a wind power output forecast for the wind turbine at a future time is outputted.
- Armonk NY, US Younghun Kim - White Plains NY, US Tarun Kumar - Mohegan Lake NY, US Wander S. Wadman - New York NY, US Kevin W. Warren - Hopewell Junction NY, US
International Classification:
F03D 17/00 G06N 3/04
Abstract:
Historical electrical power output measurements of a wind turbine for a time period immediately preceding a specified past time are received. Historical wind speed micro-forecasts for the geographic location of the wind turbine, for a time period immediately preceding the specified past time and for a time period immediately following the specified past time are received. Based on the historical electrical power output measurements and the historical wind speed micro-forecasts, a trained machine learning model for predicting wind power output of the wind turbine is generated. Real-time electrical power output measurements of the wind turbine and real-time wind speed micro-forecasts for the geographic location of the wind turbine are received. Using the trained machine learning model with the real-time electrical power output measurements of the wind turbine and the real-time wind speed micro-forecasts, a wind power output forecast for the wind turbine at a future time is outputted.
- Armonk NY, US Younghun Kim - White Plains NY, US Tarun Kumar - Mohegan Lake NY, US Wander S. Wadman - New York NY, US Kevin W. Warren - Hopewell Junction NY, US
International Classification:
F03D 17/00 G06N 3/04
Abstract:
Historical electrical power output measurements of a wind turbine for a time period immediately preceding a specified past time are received. Historical wind speed micro-forecasts for the geographic location of the wind turbine, for a time period immediately preceding the specified past time and for a time period immediately following the specified past time are received. Based on the historical electrical power output measurements and the historical wind speed micro-forecasts, a trained machine learning model for predicting wind power output of the wind turbine is generated. Real-time electrical power output measurements of the wind turbine and real-time wind speed micro-forecasts for the geographic location of the wind turbine are received. Using the trained machine learning model with the real-time electrical power output measurements of the wind turbine and the real-time wind speed micro-forecasts, a wind power output forecast for the wind turbine at a future time is outputted.
Lovely Professional University 2008 to 2011 B.TECHGovt. Polytechnic Collage Adampur, Haryana, IN 2005 to 2008P.C.S.D.SR.SEC. School Hansi, Haryana 2002Lovely Professional University Computer Science and Engineering
MSME Tool Room Kolkata - Tool And Die Making, Skm10+2 High School Mokama - Mertic
About:
I am Tarun Kumar, I am Enjoyed File
Tagline:
Enjoy life
Bragging Rights:
My Family
Tarun Kumar
Work:
CLASSIC DESIGN - Design Engineer (2010)
Education:
Sasi Institute Of Technology And Engineering - B.Tech (Mechanical), Aditya Jr.College - Inter Mediate (MPC), M.H.School
Tagline:
Design Engineer
Tarun Kumar
Work:
IN OFFICE - Senior Administrator (1990)
Education:
KV Delhi Cantt No 1, IHM,Pusa
Tagline:
Njoi the brimming cup of life; to the full and till the end
Tarun Kumar
Work:
Student - Student
Education:
K.v.no 1 amritsar cantt - Computers
Tagline:
I am so simple but little confused about my self...............
Tarun Kumar
Education:
Adarsh Vidya Mandir - Comrrace, Kurukshetra University - B.com, Institute of Chartered Financial Analysts of India - CPT
Relationship:
Single
Tarun Kumar
Education:
B.M. High School,Tando, Jashipur Collage,Jashipur, North Orissa University
Tarun Kumar
Work:
UnitedHealth Group - Sr. Reporting Analyst (2007) Salient Business Solutions - Process Associate (2006-2007) ICICI Bank Call Centre - Group Leader (2005-2006)