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2021 | OriginalPaper | Chapter

The Identification and Selection of Good Quality Data Using Pedigree Matrix

Authors : Xiaobo Chen, Jacquetta Lee

Published in: Sustainable Design and Manufacturing 2020

Publisher: Springer Singapore

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Abstract

Most data-based studies require significant amounts of data to support their decision-making process. Apart from increasing data quantity, scientists tend to be aware of the quality of data that influences the robustness of the results. A Pedigree matrix method is presented to characterize the data quality aspects and quantify the quality rating. Five quality aspects (reliability, completeness, temporal, geographical and technological representativeness) are defined as the characteristics to describe how well the reference data is fit for the underlying study. Reference rules are made subjectively for allocating the quality rating, which enable the computer to select appropriate data effectively from among different data sources. The overall data quality rating is calculated reflecting the quality level and converted to the four-parameter Beta probability distribution for uncertainty quantification. This is complemented by the Monte Carlo simulation that identifies uncertainty hotspots, to further improve the quality of identified data. This study provides an effective way to identify the data of good quality through the definition of reference rules. Making such rules can help the users to effectively capture the descriptive information regarding the data quality, further assess the quality levels consistently. The four-parameter Beta distribution is used for quantitative transformation, since it is appropriate to represent expert judgement. Therefore, the definition of distribution parameters is flexible depending on the expert understanding of uncertainty. This strength extends the application of the method to different data systems. Further research can focus on the development of reference rules for different quality aspects, as well the integration of the Pedigree matrix in various data systems.

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Literature
1.
go back to reference Funtowicz, S.O., Ravetz, J.R.: Science for policy: Uncertainty and quality. In: Uncertainty and quality in science for policy. Springer, Berlin (1990) Funtowicz, S.O., Ravetz, J.R.: Science for policy: Uncertainty and quality. In: Uncertainty and quality in science for policy. Springer, Berlin (1990)
2.
go back to reference Weidema, B., Wesnaes, M.S.: Data quality management for life cycle inventories-an example of using data quality indicators. J. Clean. Prod. 4(3–4), 167–174 (1996)CrossRef Weidema, B., Wesnaes, M.S.: Data quality management for life cycle inventories-an example of using data quality indicators. J. Clean. Prod. 4(3–4), 167–174 (1996)CrossRef
3.
go back to reference van der Sluijs, J., Kloprogge, P., Risbey, J., Ravetz, J.: Towards a synthesis of qualitative and quantitative uncertainty assessment: applications of the numeral, unit, spread, assessment, pedigree (NUSAP) system. In: International Workshop on Uncertainty, Sensitivity and Parameter Estimation 2003, Rockville, USA (2003) van der Sluijs, J., Kloprogge, P., Risbey, J., Ravetz, J.: Towards a synthesis of qualitative and quantitative uncertainty assessment: applications of the numeral, unit, spread, assessment, pedigree (NUSAP) system. In: International Workshop on Uncertainty, Sensitivity and Parameter Estimation 2003, Rockville, USA (2003)
4.
go back to reference May, J.R., Brennan, D.J.: Application of data quality assessment methods to an LCA of electricity generation. Int. J. Life Cycle Assess. 8(4), 215–225 (2003)CrossRef May, J.R., Brennan, D.J.: Application of data quality assessment methods to an LCA of electricity generation. Int. J. Life Cycle Assess. 8(4), 215–225 (2003)CrossRef
5.
go back to reference Ewertowska, A., Pozo, C., Gavalda, J., Jimenez, L., Guillen-Gosalbez, G.: Combined use of life cycle assessment, data envelopment analysis and Monte Carlo simulation for quantifying environmental efficiencies under uncertainty. J. Clean. Prod. 166, 771–783 (2017)CrossRef Ewertowska, A., Pozo, C., Gavalda, J., Jimenez, L., Guillen-Gosalbez, G.: Combined use of life cycle assessment, data envelopment analysis and Monte Carlo simulation for quantifying environmental efficiencies under uncertainty. J. Clean. Prod. 166, 771–783 (2017)CrossRef
6.
go back to reference Miah, J.H., Griffiths, A., McNeill, R., Halvorson, S., Schenker, U., Espinoza-Orias, N., Morse, S., Yang, A.D., Sadhukhan, J.: A framework for increasing the availability of life cycle inventory data based on the role of multinational companies. Int. J. Life Cycle Assess. 23(9), 1744–1760 (2018)CrossRef Miah, J.H., Griffiths, A., McNeill, R., Halvorson, S., Schenker, U., Espinoza-Orias, N., Morse, S., Yang, A.D., Sadhukhan, J.: A framework for increasing the availability of life cycle inventory data based on the role of multinational companies. Int. J. Life Cycle Assess. 23(9), 1744–1760 (2018)CrossRef
7.
go back to reference Weidema, B.P., Bauer, C., Hischier, R., Mutel, C., Nemecek, T., Reinhard, J., Vadenbo, C., Wernet, G.: Overview and Methodology: Data Quality Guideline for the Ecoinvent Database Version 3. Swiss Centre for Life Cycle Inventories (2013) Weidema, B.P., Bauer, C., Hischier, R., Mutel, C., Nemecek, T., Reinhard, J., Vadenbo, C., Wernet, G.: Overview and Methodology: Data Quality Guideline for the Ecoinvent Database Version 3. Swiss Centre for Life Cycle Inventories (2013)
8.
go back to reference Muller, S., Lesage, P., Ciroth, A., Mutel, C., Weidema, B.P., Samson, R.: The application of the pedigree approach to the distributions foreseen in ecoinvent v3. Int. J. Life Cycle Assess. 21(9), 1327–1337 (2016)CrossRef Muller, S., Lesage, P., Ciroth, A., Mutel, C., Weidema, B.P., Samson, R.: The application of the pedigree approach to the distributions foreseen in ecoinvent v3. Int. J. Life Cycle Assess. 21(9), 1327–1337 (2016)CrossRef
9.
go back to reference Ciroth, A., Muller, S., Weidema, B., Lesage, P.: Empirically based uncertainty factors for the pedigree matrix in ecoinvent. Int. J. Life Cycle Assess. 21(9), 1338–1348 (2016)CrossRef Ciroth, A., Muller, S., Weidema, B., Lesage, P.: Empirically based uncertainty factors for the pedigree matrix in ecoinvent. Int. J. Life Cycle Assess. 21(9), 1338–1348 (2016)CrossRef
10.
go back to reference Coulon, R., Camobreco, V., Teulon, H., Besnainou, J.: Data quality and uncertainty in LCI. Int. J. Life Cycle Assess. 2(3), 178 (1997)CrossRef Coulon, R., Camobreco, V., Teulon, H., Besnainou, J.: Data quality and uncertainty in LCI. Int. J. Life Cycle Assess. 2(3), 178 (1997)CrossRef
11.
go back to reference Kennedy, D.J., Montgomery, D.C., Rollier, D.A., Keats, J.B.: Data Quality. Int. J. Life Cycle Assess. 2(4), 229–239 (1997)CrossRef Kennedy, D.J., Montgomery, D.C., Rollier, D.A., Keats, J.B.: Data Quality. Int. J. Life Cycle Assess. 2(4), 229–239 (1997)CrossRef
12.
go back to reference Edelen, A., Ingwersen, W.W.: The creation, management, and use of data quality information for life cycle assessment. Int. J. Life Cycle Assess. 23(4), 759–772 (2018)CrossRef Edelen, A., Ingwersen, W.W.: The creation, management, and use of data quality information for life cycle assessment. Int. J. Life Cycle Assess. 23(4), 759–772 (2018)CrossRef
13.
go back to reference JRC: ILCD handbook. General guide for life cycle assessment—Detailed guidance. European Commission, Joint Research Centre—Institute for Environment and Sustainability, Luxembourg (2010) JRC: ILCD handbook. General guide for life cycle assessment—Detailed guidance. European Commission, Joint Research Centre—Institute for Environment and Sustainability, Luxembourg (2010)
14.
go back to reference Johnson, N.L., Kotz, S., Balakrishnan, N.: Chapter 21: Beta Distributions. In: Continuous Univariate Distributions, 2nd edn. Houghton Mifflin Boston (1970) Johnson, N.L., Kotz, S., Balakrishnan, N.: Chapter 21: Beta Distributions. In: Continuous Univariate Distributions, 2nd edn. Houghton Mifflin Boston (1970)
15.
go back to reference Kennedy, D.J., Montgomery, D.C., Quay, B.H.: Data Quality. Stochastic environmental life cycle assessment modeling. Int. J. Life Cycle Assess. 1(4), 199–207 (1996) Kennedy, D.J., Montgomery, D.C., Quay, B.H.: Data Quality. Stochastic environmental life cycle assessment modeling. Int. J. Life Cycle Assess. 1(4), 199–207 (1996)
16.
go back to reference ISO: ISO 9000:2015 Quality management systems—Fundamentals and vocabulary. International Organization for Standardization, Geneve, Switzerland (2015) ISO: ISO 9000:2015 Quality management systems—Fundamentals and vocabulary. International Organization for Standardization, Geneve, Switzerland (2015)
Metadata
Title
The Identification and Selection of Good Quality Data Using Pedigree Matrix
Authors
Xiaobo Chen
Jacquetta Lee
Copyright Year
2021
Publisher
Springer Singapore
DOI
https://doi.org/10.1007/978-981-15-8131-1_2

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