Estimating the data reliability of magnetotelluric measurements

Defended 1 June, 2017. Examiner: Knútur Árnason, Chief Geophysicist, ÍSOR An overview of risk in geothermal drilling and value of information analysis is presented with a description of state-of-the art inversion methods used to process geophysical data. Assumptions about the treatment of error and...

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Bibliographic Details
Main Author: David Keith Smithson 1986-
Other Authors: Háskólinn í Reykjavík
Format: Thesis
Language:English
Published: 2017
Subjects:
Online Access:http://hdl.handle.net/1946/28728
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record_format openpolar
spelling ftskemman:oai:skemman.is:1946/28728 2023-05-15T16:51:01+02:00 Estimating the data reliability of magnetotelluric measurements David Keith Smithson 1986- Háskólinn í Reykjavík 2017-06 application/pdf http://hdl.handle.net/1946/28728 en eng http://hdl.handle.net/1946/28728 Orkuverkfræði Jarðhiti Meistaraprófsritgerðir Tækni- og verkfræðideild Sustainable Energy Engineering School of Science and Engineering Thesis Master's 2017 ftskemman 2022-12-11T06:58:02Z Defended 1 June, 2017. Examiner: Knútur Árnason, Chief Geophysicist, ÍSOR An overview of risk in geothermal drilling and value of information analysis is presented with a description of state-of-the art inversion methods used to process geophysical data. Assumptions about the treatment of error and correlation between fitness and likelihood are challenged. Iterative Complexity Addition (ICA) is a novel algorithm proposed to test the hypothesis of these assumptions and provide information about the data reliability of solutions returned from an underdetermined inverse problem. The algorithm is applied to the inversion of magnetotelluric (MT) data from four synthetic models and existing data from the Þeistareykir geothermal field in Northeast Iceland. The results indicate that there is not a strong correlation between fitness and likelihood. Taking the best-fit model as a solution yields an average likelihood of 48.49% while ICA’s selection of most-likely solution yields an average likelihood of 63.59% when considering the total depth of the model. When limiting the scope of interest to a typically drilling range of 3km depth, the best-fit likelihood is shown to be 53.77% while ICA’s most-likely solution has a data reliability of 68.71%. An improvement in data reliability can be manifested as improvement in drilling success rates. The algorithm design is described with a discussion of algorithm strengths, weaknesses, and potential improvements. Thesis Iceland Skemman (Iceland) Þeistareykir ENVELOPE(-16.951,-16.951,65.880,65.880)
institution Open Polar
collection Skemman (Iceland)
op_collection_id ftskemman
language English
topic Orkuverkfræði
Jarðhiti
Meistaraprófsritgerðir
Tækni- og verkfræðideild
Sustainable Energy Engineering
School of Science and Engineering
spellingShingle Orkuverkfræði
Jarðhiti
Meistaraprófsritgerðir
Tækni- og verkfræðideild
Sustainable Energy Engineering
School of Science and Engineering
David Keith Smithson 1986-
Estimating the data reliability of magnetotelluric measurements
topic_facet Orkuverkfræði
Jarðhiti
Meistaraprófsritgerðir
Tækni- og verkfræðideild
Sustainable Energy Engineering
School of Science and Engineering
description Defended 1 June, 2017. Examiner: Knútur Árnason, Chief Geophysicist, ÍSOR An overview of risk in geothermal drilling and value of information analysis is presented with a description of state-of-the art inversion methods used to process geophysical data. Assumptions about the treatment of error and correlation between fitness and likelihood are challenged. Iterative Complexity Addition (ICA) is a novel algorithm proposed to test the hypothesis of these assumptions and provide information about the data reliability of solutions returned from an underdetermined inverse problem. The algorithm is applied to the inversion of magnetotelluric (MT) data from four synthetic models and existing data from the Þeistareykir geothermal field in Northeast Iceland. The results indicate that there is not a strong correlation between fitness and likelihood. Taking the best-fit model as a solution yields an average likelihood of 48.49% while ICA’s selection of most-likely solution yields an average likelihood of 63.59% when considering the total depth of the model. When limiting the scope of interest to a typically drilling range of 3km depth, the best-fit likelihood is shown to be 53.77% while ICA’s most-likely solution has a data reliability of 68.71%. An improvement in data reliability can be manifested as improvement in drilling success rates. The algorithm design is described with a discussion of algorithm strengths, weaknesses, and potential improvements.
author2 Háskólinn í Reykjavík
format Thesis
author David Keith Smithson 1986-
author_facet David Keith Smithson 1986-
author_sort David Keith Smithson 1986-
title Estimating the data reliability of magnetotelluric measurements
title_short Estimating the data reliability of magnetotelluric measurements
title_full Estimating the data reliability of magnetotelluric measurements
title_fullStr Estimating the data reliability of magnetotelluric measurements
title_full_unstemmed Estimating the data reliability of magnetotelluric measurements
title_sort estimating the data reliability of magnetotelluric measurements
publishDate 2017
url http://hdl.handle.net/1946/28728
long_lat ENVELOPE(-16.951,-16.951,65.880,65.880)
geographic Þeistareykir
geographic_facet Þeistareykir
genre Iceland
genre_facet Iceland
op_relation http://hdl.handle.net/1946/28728
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