Deconvolution method is generally used to eliminate wellbore storage dominant period of well testing. Common Deconvolution techniques require knowledge of both pressure and rate variations within test duration. Unfortunately, accurate rate data are not always available. In this case, blind deconvolution method is used. In this work, we present a new approach to improve the ability of blind deconvolution method in well testing. We examined the behavior of rate data by comparing it with a special class of images and employed their common properties to represent gross behavior of extracted rate data. Results of examinations show ability of our developed algorithm to remove the effect of wellbore storage from pressure data. Our Algorithm can deal with different cases where wellbore storage has made two different reservoirs behave identical in pressure response. Even if there is no wellbore effect or after wellbore storage period is passed, proposed algorithm can work routinely without any problem.
A Noniterative Blind Deconvolution Approach to Unveil Early Time Behavior of Well Testings Contaminated by Wellbore Storage Effects
Arash Moaddel Haghighi is a graduate student of petroleum reservoir engineering in Institute of Petroleum Engineering, University of Tehran. He holds a BS in petroleum Engineering form Petroleum University of Technology, Ahwaz, Iran and is a member of SPE and EAGE. His main interest is application of signal theories like deconvolution and Independent Component Analysis in well testing. E-mail: arashmh@gmail.com
Peyman Pourafshary is an assistant professor of Petroleum Engineering in Institute of Petroleum Engineering, university of Tehran. He holds a PhD in Petroleum Engineering from University of Texas at Austin and MS and BS in Mechanical Engineering, both from Sharif University of Tehcnology, Iran. Being a member of SPE, he serves as faculty sponsor of SPE chapter of University of Tehran since 2008. His main interests are well testing, modeling temperature distribution in wells and advanced applications of streamline simulation in reservoir evaluation. E-mail: pourafshari@ut.ac.ir
Arash Moaddel Haghighi is a graduate student of petroleum reservoir engineering in Institute of Petroleum Engineering, University of Tehran. He holds a BS in petroleum Engineering form Petroleum University of Technology, Ahwaz, Iran and is a member of SPE and EAGE. His main interest is application of signal theories like deconvolution and Independent Component Analysis in well testing. E-mail: arashmh@gmail.com
Peyman Pourafshary is an assistant professor of Petroleum Engineering in Institute of Petroleum Engineering, university of Tehran. He holds a PhD in Petroleum Engineering from University of Texas at Austin and MS and BS in Mechanical Engineering, both from Sharif University of Tehcnology, Iran. Being a member of SPE, he serves as faculty sponsor of SPE chapter of University of Tehran since 2008. His main interests are well testing, modeling temperature distribution in wells and advanced applications of streamline simulation in reservoir evaluation. E-mail: pourafshari@ut.ac.ir
Moaddel Haghighi, A., and Pourafshary, P. (April 4, 2012). "A Noniterative Blind Deconvolution Approach to Unveil Early Time Behavior of Well Testings Contaminated by Wellbore Storage Effects." ASME. J. Energy Resour. Technol. June 2012; 134(2): 022901. https://doi.org/10.1115/1.4005661
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