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Assessing the reliability of MFA results: The cases of rhenium, gallium, and germanium in the US economy Grégoire Meylan, Barbara K. Reck, Helmut Rechberger, Thomas E. Graedel, and Oliver Schwab Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.7b03086 • Publication Date (Web): 18 Sep 2017 Downloaded from http://pubs.acs.org on September 22, 2017
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Assessing the reliability of MFA results: The cases of rhenium, gallium, and germanium in the US economy
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Grégoire Meylan1,2,*, Barbara K. Reck3, Helmut Rechberger4, Thomas E. Graedel3, Oliver
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Schwab4
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1
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Zurich, Switzerland
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2
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ETH Zurich, 8093 Zurich, Switzerland
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3
Transdisciplinarity Lab, Department of Environmental Systems Science, ETH Zurich, 8092
Safety and Environmental Technology Group, Institute for Chemical and Bioengineering,
Center for Industrial Ecology, Yale School of Forestry and Environmental Studies, Yale
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University, New Haven 06511, USA
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4
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Austria
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*Corresponding author: ETH Zurich, USYS TdLab, CHN K 76.2, Universitaetstrasse 22,
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8092 Zurich, Switzerland,
[email protected] Institute for Water Quality, Resource and Waste Management, TU Wien, 1040 Vienna,
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Table of Contents (TOC)/Abstract Art A priori information Missing information
Information by balancing
Ge Ga Re 0
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100
200
300
Informational units
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Abstract
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Decision-makers traditionally expect “hard facts” from scientific inquiry, an expectation the
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results of Material Flow Analyses (MFAs) can hardly meet. MFA limitations are attributable
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to incompleteness of flowcharts, limited data quality, and model assumptions. Moreover,
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MFA results are mostly less based on empirical observation and rather on social knowledge
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construction processes. Developing, applying, and improving means for evaluating and
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communicating reliability of MFA results is imperative. We apply two recently proposed
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approaches for making quantitative statements on MFA reliability to national minor metals
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systems: rhenium, gallium, and germanium in the US in 2012. We discuss the reliability
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results in policy and management contexts. The first approach consists in assessing data
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quality based on systematic characterization of MFA data and associated meta-information
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and quantifying the “information content” of MFAs. The second is a quantification of data
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inconsistencies indicated by the “degree of data reconciliation” between data and model.
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Increasing information content and decreasing degree of reconciliation indicate reliable or
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certain MFA results. This article contributes to reliability and uncertainty discourses in MFA,
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exemplifying the usefulness of the approaches in policy and management, and to raw material
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supply discussions by providing country-level information on three important minor metals
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often considered as critical.
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Keywords: Material Flow Analysis, data quality, uncertainty, information content, data
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reconciliation, minor metals, decision making, rhenium, gallium, germanium
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Introduction
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Material Flow Analysis (MFA) can be applied as a means for modeling scenarios, for
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comparing systems of alternative design, and for making forecasts regarding natural or
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anthropogenic material flow systems. Such applications of MFA provide relevant information
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for supporting decision-making processes for example regarding the management of resource 3 ACS Paragon Plus Environment
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systems. Other than that, MFA is widespread as a reference procedure facilitating material
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accounting activities. The goal of such activities is to map physical realities as flowcharts of
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arbitrary level of detail visualizing flows between processes in regions and system imports
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and exports. Such representations of real-world systems follow a quasi-standardized three-
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step procedure. In the first step, a qualitative system is designed. Its structure reflects all
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relevant flows and processes of the associated real-world system. In the second step, data (or
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a priori information) for quantifying this qualitative system are collected. In the third step, the
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data are balanced in order to satisfy mass balance constraints, to erase discrepancies and to
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close data gaps, and thus to create new information (a posteriori information - after
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application of the MFA procedures) on a material flow system.
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Decision-makers typically expect “hard facts” from scientific inquiry1. However, MFA results
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are only partly based on empirical observation but rather on collective knowledge
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construction processes put forward by MFA communities. Consequently, a characteristic
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especially typical of accounting MFAs is that they entail certain degrees of subjectivity and
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arbitrariness, which may arise in all three of the above mentioned steps of the analysis
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procedure: It concerns the design of system structure (step one, cf. Klinglmair, et al. 2), the
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collection, integration, and evaluation of data (step two, cf. Laner, et al. 3), and also the
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treatment of data in the balancing model which contains possibly strong assumptions (step
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three, cf. Cencic 4). As a consequence, MFA findings may not satisfy the initial expectation of
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decision-makers to face “hard facts”.
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Acknowledging the necessity to evaluate and communicate the reliability of MFA results in
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policy and management, we address the impact of the incompleteness of balance entries or the
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inaccuracy of utilized information (i.e., step 2) in the field of minor metal MFAs. The latter is
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receiving increasing scrutiny in the context of critical material debates5-7. Lack of information
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and unclear reliability of results are long-known issues in MFA. Nevertheless, systematic 4 ACS Paragon Plus Environment
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procedures for their evaluation and communication which acknowledge the specific nature of
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given information are rather recent. As a contribution to developments in this regard, the goal
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of the study is two-fold. First, we demonstrate the feasibility of two approaches for reliability
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assessment in this particular field and suggest recommendations for application and
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improvement. Second, we compare both approaches and identify comparative advantages of
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each approach for minor metal MFAs. The impact of information shortcomings will be
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addressed in this article regarding three case studies of minor metals in the US economy,
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which are introduced in the following.
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Materials and Methods
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Minor metals in the US
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Minor metals are metals not traded on the London Metal Exchange and often mined as co- or
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by-products of major metals, the latter then also called “host metals”8, 9. Minor metals are
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vital to developed and emerging economies not only with regard to emerging environmental
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technologies, but also more conventional application fields10,
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rhenium are often considered as critical metals5, 6, explained by their importance in modern
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technology12-14 in combination with a somewhat inflexible supply, a result of them being
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primarily mined as by-products8, 15. While gallium and germanium are important mainly to
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information technology and communication, rhenium is a key element in superalloys utilized
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in the aerospace industry. Both these sectors are of key importance to modern economies. In
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addition to air transportation, space exploration relies on nickel-based superalloys containing
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rhenium to increase the heat resistance of launchers16. These are just some instances of
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important technological applications of minor metals.
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In the Supporting Information SI1, the life cycle stages Production, Fabrication &
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Manufacturing, Use, and Waste Management & Recycling of the three metals, including
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stocks and flows, are described in more detail based on information from the U.S. Geological 5 ACS Paragon Plus Environment
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. Gallium, germanium, and
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Survey, scientific reports and expert estimations. We also present corresponding qualitative
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MFA systems of these metals. The differences in level of detail and in the quality of databases
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result in varying degrees of knowledge on the analyzed systems. While practitioners
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composing MFAs may have a good intuitive understanding of the quality of their analysis
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results, it is not clear how this should be systematically evaluated in a transparent,
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reproducible way and how this information should be communicated in an accessible way to
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decision-makers. Approaches to this shortcoming are addressed in the following.
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Assessing and comparing the reliability of MFA results
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Both the design of qualitative MFAs and the quality of MFA data are factors potentially
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limiting the reliability of MFA results. The evaluation and representation of system
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uncertainty arising from the MFA practitioner’s knowledge gaps in flowchart design is a
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typically intricate task. Flowchart design is based on the best knowledge available to the
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composing agent who consequently could improve the chosen system design only after better
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information becomes available. Analytical approaches for identifying possible design
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problems are confined to the comparison of systems to reference systems with presumably
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similar structures (possibilities for formal quantitative evaluation of system structures in MFA
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and related methods have been proposed, for example, by Navarrete-Gutiérrez, et al.
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Layton, et al. 18 and Schwab and Rechberger 19). System uncertainty arising from ignorance in
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system design is not addressed in this article but is considered elsewhere2.
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System uncertainty arising from data quality limitations and its effect on the reliability of
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MFA results dominate the discourse on uncertainty in MFA3,
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uncertainty in indium, gallium and germanium systems has been discussed qualitatively, see
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e.g., Licht, et al.
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MFA are often hindered by the fact that MFA data are typically isolated values and not
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datasets. Having been identified as a mainly “epistemic” phenomenon (epistemic uncertainty
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,
20, 21
. For example, the
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. Quantitative statistical procedures for assessment of data uncertainty in
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– uncertainty due to lack of knowledge), data uncertainty in MFA appears to be a non-
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stochastic problem and thus evades statistical approaches (cf. Laner, et al. 3). As empirical
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evidence on flow data uncertainty is virtually always absent, the popular application of
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estimated or assumed uncertainty ranges, percentages, and distributions may raise the
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unjustified impression of empirical evidence. Moreover, due to the fact that qualitative
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systems of the same metal, the same year, and the same spatial unit will most likely differ to a
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certain extent because of author choices and the goal and scope of analyses, comparing the
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uncertainty of individual flows is often not possible. Instead of focusing on the uncertainty of
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individual flows, providing uncertainty information for a material flow system as a whole
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opens new perspectives regarding assessability and comparability of MFA results and enables
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answering intriguing research questions. For instance, are MFA results for a given metal and
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spatial focus becoming more reliable over time? Also, it is generally accepted that systems of
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base metals like iron and aluminum are better known than those of minor metals or rare
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earths, the usage of which is more recent and concentrated in a rather small number of firms,
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so that data are often withheld. But how much better are they known? Particularly in light of
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considerably limited information, as holds for the minor metal systems analyzed in this
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article, the need for adequate approaches to evaluate and communicate uncertainty in MFA
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systems is apparent. Two possibilities are introduced in the following.
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Two approaches to evaluate reliability in MFA
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MFA practitioners have possibilities for evaluating, analyzing, and communicating the
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reliability of MFA results at several stages in the analysis process, including the two
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following: First, during the data collection process, they can assign reliability indicators to
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collected data, reflecting their degree of belief that data are true in a given context. A low
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degree of belief suggests the existence of potentially unreliable MFA results. And second,
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MFA practitioners can observe the degree of adjustment the collected data undergo during the 7 ACS Paragon Plus Environment
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reconciliation process. A lower degree of data reconciliation reflects little discrepancies and
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thus hints at higher reliability. These two approaches to evaluate reliability in MFA are
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applied and discussed in this article.
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Degree of belief in MFA data to be true
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Ravetz
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uncertainty in policy-oriented science. Building on this seminal work, Schwab and
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colleagues24 propose a procedure for systematically characterizing MFA data by a set of pre-
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defined criteria, which are later aggregated to quantitative judgments on the accuracy of
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information in given MFA systems. The approach aims at quantifying the “information
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content” of material flow systems and its counterpart, the information missing to fully
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understand a system (uncertainty) of a given structure. As a basis to this evaluation, MFA data
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are, in a first step, systematically characterized by so-called data attributes as documented in a
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data characterization matrix (DCM)24. The DCM allows for a detailed documentation of data
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used in an MFA and associated meta-information. In the second step, data collected to
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quantify flow variables are evaluated based on the data attributes. The attribute scores are
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aggregated to data quality measures designated as „information defects“ (ID, Schwab, et al.
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25
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equal to or in the vicinity of 1) designate data of poor quality. IDs are specific to any flow in
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its particular system context. In the third step, the aforementioned information content of
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MFA systems is calculated as the difference between the system uncertainty U at different
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stages in the modelling process (Uap, Ub, Ub,w see Eq. 1-3 and corresponding description
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below) and the maximum system uncertainty (S, see Eq. 4). The calculation integrates the IDs
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as variables for data quality and takes advantage of mathematical features of the information
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entropy equation for calculating the system information measures. The derivation of Eq. 1-4 is
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provided in Schwab and Rechberger 19.
22
and Funtowicz and Ravetz
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developed ways to manage, assess, and communicate
). Low IDs (ID equal to or in the vicinity of 0) designate data of good quality, high IDs (ID
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∑
Eq. 1
, ∑ ,
Eq. 2
= − log
= − , log
, = −
, , , log ∑ , ∑ , = − log
1
Eq. 3
Eq. 4
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In Eq. 1-4, nF is the number of flow variables in a system, IDFi is the information defect of
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flow Fi (IDFi,b after balancing) and XFi,b is the quantity of the balanced flow variable Fi. Three
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points of evaluation relate to the system uncertainty after balancing (Ub), which is typically
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lower than the uncertainty of a system with a priori information (Uap) and the maximum
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uncertainty of a system, that is, a system without data (S, for “informational” system size,
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measured in “informational units”). S also defines the potential information content of a
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system in which each flow is known with absolute certainty. Ub and Uap resemble the system
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uncertainty or the “amount of missing information”. The difference between the actual system
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uncertainty (Uap or Ub) and the system size S is referred to as the information content of a
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material flow system. An additional point of evaluation is Ub,w, in which the uncertainty of
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each flow after balancing is additionally weighted by its quantitative relevance in a system
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(∑, ). This is to reflect that, in order to understand a material flow system, knowing
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quantitatively major flows better is more important than knowing quantitatively minor flows.
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Degree of data reconciliation
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In a typical MFA procedure, data is collected to quantify as much flows of a system as
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possible. Diverging data – a priori information – are manipulated so that mass balance
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constraints are fulfilled. The degree to which prior data are manipulated increases with
,
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discrepancies in the system. Zoboli, et al.
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measure for identifying potential errors and for evaluating the reliability of MFA results. This
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approach was discussed and formally specified by Klinglmair, et al. 2. Accordingly, the effect
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of data reconciliation is quantified as the mean relative deviation of the reconciled data
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from the entered value of flow Fi (Eq. 5).
=
∑ |
interpret the degree of data reconciliation as a
− | × 100
Eq. 5
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The higher , the more the available data are inconsistent within the predefined MFA system.
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Decreasing indicate decreasing reconciliation and thus hint at consistent systems and
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consequently on results of increasing reliability.
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These two approaches, the information content as calculated from the degree of belief in MFA
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data and the degree of data reconciliation as calculated from the deviation of balanced data
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from a priori data, are chosen for analysis of reliability and uncertainty. We exemplify the
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usefulness of such global information on the reliability of MFA results for decision-making
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processes in policy and management with the cases of rhenium, gallium, and germanium in
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the US in 2012 introduced earlier.
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Results and Discussion
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Results of the Material Flow Analyses
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We prepared the quantitative flowcharts presented in Figures 1-3 using the software STAN
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(www.stan2web.net27). A documentation of system design and all applied data is provided in
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the appendices SI1 (system design), SI2 (rhenium), SI3 (gallium) and SI4 (germanium).
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Figure 1: Flowchart of the 2012 US rhenium system. Flow quantities (in Mg [metric tons per year]) are rounded to two significant digits (APR: ammonium perrhenate, Dissipated Re: rhenium dissipated by petroleum-reforming catalysts while in use, ENG: Engines, F&Mfg: Fabrication & Manufacturing, MISC: miscellaneous, PETRO: petroleum-reforming catalysts, Re metal: rhenium metal, U: Use, WM&R: Waste Management & Recycling).
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The import of ammonium perrhenate (APR) and rhenium metal to the metal market represents
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the largest flow of the 2012 US rhenium system. This flow also happens to be the largest
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source of rhenium into the system, being more than three times more important than rhenium
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mined in the US or obtained on the scrap market. The largest rhenium sink is found in Use of
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engines, in which most of rhenium entering is added to stock. Such a large addition to stock is
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explained by the recent surge in the use of rhenium in engines. As the aerospace industry is
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increasing its use of rhenium while developing and strengthening the reuse of rhenium-
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containing superalloy scrap, one can assume that in the near future the process of Fabrication
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& Manufacturing of superalloys will overshadow other rhenium applications and that the
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superalloy urban mine will be efficiently exploited.
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Figure 2: Flowchart of the 2012 US gallium system. Flow quantities (in Mg [metric tons per year]) are rounded to two significant digits (F&Mfg: Fabrication & Manufacturing, GaAs: gallium arsenide, GaN: gallium nitride, HPM: high-purity metal, IC: integrated circuits, IW: industrial waste, MISC: miscellaneous, OPTO: optoelectronic devices, U: Use, WM&R: Waste Management & Recycling).
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The largest flow of the 2012 US gallium system is the import of low purity metal into primary
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refining. As in the case of rhenium, imports are also the largest source feeding the system.
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Foreign supplies are twice as important as new scrap fed to secondary refining. Exports of
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high purity metal correspond to the largest sink. Generally speaking, processes belonging to
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Production and Fabrication & Manufacturing, together with the scrap market, largely
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dominate the gallium system because of high losses in Fabrication of gallium arsenide and
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gallium nitride.
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Figure 3: Flowchart of the 2012 US germanium system. Flow quantities (in Mg [metric tons per year]) are rounded to two significant digits (ELEC: electrical & electronic products, F&Mfg: Fabrication & Manufacturing, IR: infrared, IW: industrial waste, MISC: miscellaneous, MOC: metal, oxide, chloride, U: Use, WM: Waste Management).
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The largest flow of the 2012 US germanium system is the import of the precursors of
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Fabrication, to be processed into infrared systems, fiber optics, electrical/solar panels, and
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other first uses. These imports consist of metals, dioxides, and tetrachlorides, and represent
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the largest source into the system, albeit closely followed by US zinc mines. Landfills are the
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largest sink, with residues from Recycling being the largest contributor. However, the amount
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exported as concentrates and precursors of Fabrication surpasses the quantity of landfilled
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germanium.
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The first similarity between the three material systems is the same order of magnitude of their
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flows. In all three systems, imports of raw materials or precursors of Fabrication represent the
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largest flows, while imports of semi-fabricated or end-use products are quite small. Raw
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material and precursor imports are also the main sources, while domestic mines and scrap
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markets play different roles depending on the metal considered. The three systems present 13 ACS Paragon Plus Environment
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different pictures in terms of the most important sinks. Yet, it is clear that landfills are still
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important sinks and improvements are required at different levels: the anticipation of
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collection of superalloy scrap in the case of rhenium and efficient end-of-life recycling in the
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cases of gallium and germanium.
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Reliability of the MFA results
260
Beyond the differences and similarities when it comes to material quantities, the three cases
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differ in terms of the number and type of processes and flows, as well as in their databases.
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General characteristics of the systems are provided in Table 1.
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Table 1: General system characteristics of the analyzed rhenium (Re), gallium (Ga), and germanium (Ge) systems analyzed according to Schwab, et al. 24.
Quantity Database characteristic Re
Ga
Ge
No. of flow variables in system
40
42
48
No. of a priori unknown flow variables
7
5
4
number of processes
14
14
16
number of stocks
5
5
5
total no. of information elements
99
261
159
total no. of data elements
99
261
159
average no. of info. elements per flow
3.0
7.1
3.6
average no. of data elements per entity
1
1
1
32
19
21
100
100
100
flows described directly by autonomous data (%) isolated values (%) 266 267
According to Table 1, the systems differ when it comes to the number of data gaps, the share
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of flows that can be described by ready-to-apply data, and the overall data collection effort.
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As to the latter, 261 information elements were collected for quantifying 37 flows in the
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gallium system and 99 information elements were collected for quantifying 33 flows in the
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rhenium system. Information inventories including all data applied in the MFAs and a
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transparent data characterization and data quality evaluation of each individual flow are
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provided in appendices SI2-4. In combination with these data quality evaluations, Eq. 1-4
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yield the results provided in Table 2.
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Table 2: System measures (System size S, system uncertainty U, and degree of data reconciliation D) of the three minor metal systems, analyzed according to Schwab and Rechberger 19 and Klinglmair, et al. 2 and rounded to the nearest integer (rhenium (Re), gallium (Ga) and germanium (Ge)).
278
Re
Ga
Ge
213
227
262
Uap
124
148
126
Ub
90
106
93
Ub.w
73
89
85
11.1
5.5
System size
S Uncertainty
Degree of data reconciliation
(%)
6.2
279 280
The reliability metrics calculated according to Eq. 1-4 are provided in Table 2. The potential
281
uncertainty of the system (S) decreases to Uap after a priori information on flow quantities has
282
been implemented in the model, and to Ub after this information has been balanced. With
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decreasing uncertainty, the information content of the MFAs increases, as illustrated in Figure
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4. For example, in the gallium system the share of a priori information is, in relation to the
285
other two systems, small, and the information gained by balancing exceeds that gained by
286
balancing in the rhenium and germanium systems. Nevertheless, of the three studies, the
287
largest missing information occurs in the gallium system. One can summarize that of the three
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systems the germanium MFA provides the most information, even though there still is a
289
considerable share of uncertainty remaining. Detailed information on each individual flows’
290
contribution to the system uncertainty is provided in appendices SI2-4.
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300 Missing Information Inform. by balancing
93
A priori information
33
106 79
92
137
100
42
34
90
informational units
200
0
291 292 293 294
Re
Ga
Ge
Figure 4: Graphical representation of the information content and the system uncertainty of the rhenium (Re), gallium (Ga), and germanium (Ge) systems. A priori information, information gained by balancing, and missing information are calculated from the values provided in Table 2.
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A further metric indicating that the information basis of the germanium system is possibly the
297
most robust of the three cases is the degree of data reconciliation (Table 2). The results
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indicate that the database of the gallium system is, with a degree of data reconciliation of
299
more than 11%, the least consistent, and that the information basis of the germanium system
300
is the most consistent with a of less than 6%.
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Weighting the uncertainty remaining in the systems by the flow quantities (Ub,w in Table 2,
302
see Eq. 3) and relating the uncertainty to the system size S leads to the following results: the
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rhenium system is known to 65%, the gallium system to 61%, and the germanium system to
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68%. For comparison, according to Schwab and Rechberger 19 an aluminum MFA was found
305
to be known to 85% and a plastics MFA to 70%. This result illustrates that on the way to
306
providing more reliable information on minor metal flows in the US economy there is need
307
for further scientific inquiry and enhanced data provision efforts from authorities,
308
associations, and other involved stakeholders.
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Discussion
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The results of the complete minor metal systems help US industry associations and policy-
311
makers prioritize action for better management of minor, potentially critical metal systems.
312
They highlight the US systems’ dependency on raw materials and precursors of Fabrication,
313
while demonstrating that landfill deposits are accumulating quickly. Increasing end-of-life
314
recycling rates and thereby reducing import reliance will reduce the US’s criticality by
315
addressing its supply risk and its vulnerability to supply restriction, respectively28. It is clear
316
that the development of recycling technologies is not in the hands of single actors like
317
national industry associations or policy-makers, but are the result of complex interactions
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between actor networks and the biophysical world as conceptualized by frameworks such as
319
the Technological Innovation System (TIS) framework29-31. Nonetheless, MFAs as knowledge
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bases can become crucial inputs to TISs and significantly alter their trajectories towards more
321
efficient outcomes thanks to the MFA framework’s holistic perspective. To what extent
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MFAs will make an impact in a TIS will ultimately depend on their reliability. Therefore,
323
policy-oriented MFAs should include an assessment of reliability such as the ones we
324
presented and applied in this article. In the following paragraphs, we discuss the application
325
of the two reliability assessment methods to the minor metal cases, starting with information
326
content and system uncertainty, and identify comparative advantages.
327
Application and recommendations
328
With respect to the system size S indicating the number of flows in the system and thus
329
describing maximum system uncertainty (Table 2), the three minor metal systems are smaller
330
than other MFA systems such as Aluminum (S=483), Plastics (S=568), or Phosphorus
331
(S=846) (see Schwab and Rechberger
332
analyzed minor metals are applied in fewer areas of the analyzed economies than many other
333
materials. However, the system size also depends on the resolution of economic sectors
19
). Certainly a reason for these differences is that the
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adopted in an MFA. In the case of gallium, optoelectronic devices and integrated circuits are
335
groups of various products. More explicit modelling of the product systems would lead to a
336
much larger S. Hence, we recommend using the same resolution of economic activities to
337
ensure the comparability of MFAs of a metal across different regions or time horizons.
338
The systematic analysis of minor metal flows is only of comparatively recent interest in
339
scientific inquiry. Therefore, the understanding of the systems and the available information
340
basis is comparatively limited, which is reflected in the information provided in Table 1. The
341
effort for data acquisition is considerable in all three cases. In new systems or systems that
342
have received little attention thus far like minor metal systems, many information elements
343
must often be combined in order to generate the numerical value of a desired flow. Gallium
344
requires an average of more than seven information elements being necessary for
345
quantification of a flow variable, the highest among the three analyzed minor metals.
346
Comparatively few flows of the gallium system (eight out of 42) are directly quantified by
347
ready-to-apply data. Applied data in all three case studies stem partly from official and
348
scientific sources, but largely from expert estimations, industry, or assumptions (see SI2-4 for
349
details). In “well-known”, regularly monitored systems, two or three information elements
350
might be sufficient, e.g., a concentration and a flow or a price and a turnover. When facing
351
high numbers of information elements per flow, assessing all data attributes in the DCM can
352
become a daunting task. However, credibility is just as much if not more needed in emerging
353
or fast-changing systems8 than well-known systems. The DCM is most useful here, as it
354
provides a clear scheme for systematic documentation and management of a large amount of
355
data which vary greatly in quality and nature.
356
Evaluations of data attributes and information defects (IDs) are judgments made by those
357
setting up an MFA, especially for attributes regarding the semantics (attribute 202 in the
358
DCM) and complexity (attributes 211 and 212 in the DCM) of an information element. There 19 ACS Paragon Plus Environment
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359
is no miracle recipe for supporting the evaluation of IDs in minor metal MFAs. Moving
360
towards more participatory forms of MFA could help increase the acceptance of ID
361
evaluations and hence the credibility of the whole MFA. We suggest here a participatory
362
process in which stakeholders of the investigated metal flow system evaluate selected IDs
363
with the explicit aim of building consensus on IDs in individual cases32.
364
As long as MFAs cannot be based upon statistically exploitable data, MFA practitioners are
365
limited to using estimations such as the IDs approach applied here. Statistical methods should,
366
of course, be applied whenever the available data are sufficient. Further research and
367
development is required to enable the hybridization of data quality evaluations (such as the
368
IDs) with statistical information. The transition from an approach based fully on data quality
369
evaluations to a statistical method will without doubt be gradual rather than abrupt, and may
370
evolve in parallel to improved data provision practices. In the case of minor metals, statistical
371
information is within reach for some material system stages, for instance for efficiencies of
372
mining and refining in Production. In that case, mines and refiners across the globe could
373
easily provide their efficiencies or a single facility could share repeated measurements of its
374
efficiency, resulting in statistical distributions useful to uncertainty analysis. Such a
375
potentially favorable knowledge situation is in stark contrast to that of Waste Management &
376
Recycling information, particularly in so far as the amounts of discarded metals are
377
concerned.
378
MFA of metals often serve the purpose of cross-case analyses, in which material
379
characteristics are compared across metals and put in contrast. Instances are studies of
380
criticality of metals and metalloids6, in-use dissipation rates33, correlations between economic
381
development and spectra of metals used34, and comparative studies of metals used in identical
382
economic activities, e.g., in clean energy technologies14. Beyond its benefits in the analysis
383
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MFA results in easily accessible ways (see Table 2, Figure 4). As it is impossible to quantify
385
uncertainty in accounting MFAs on an absolute scale (“this is uncertain by plus/minus 100
386
Mg”) without sufficient statistical information and as uncertainty cannot be precisely located
387
in the system without objective information, uncertainty here is understood as a system
388
property that is represented on a systems scale (Figure 4). Such a system property can be
389
compared from metal to metal. By disaggregating the uncertainty assessment to the flow
390
level, MFA practitioners can identify where in a metal system the uncertainty is expected to
391
be the highest – the uncertainty hotspots35 – based on author evaluations of data quality.
392
Examples in this regard are provided in Schwab and Rechberger
393
documentation framework can become instrumental in setting up knowledge management
394
systems36 for the purpose of sharing data among metal MFA practitioners. We strongly
395
believe that cross-case analyses of metal characteristics would greatly benefit from a
396
transparent knowledge management system based on the DCM.
397
We emphasize that the ID approach applied in this article focuses on uncertainty resulting
398
from data quality shortcomings. Further uncertainties arising from assumptions in the model
399
used to process the MFA data (step three, as specified in the Introduction) or to mis-
400
specifications of qualitative MFA systems (step one, see SI1) are not reflected in the measures
401
illustrated in Figure 4. At an early stage of the participatory process mentioned above, MFA
402
practitioners and stakeholders should address the issue of incompleteness and errors in system
403
structure. Although such errors can be reduced by engaging experts from industries and
404
authorities in the system design process, there is a considerable degree of freedom in the
405
system design stage37 that may induce relevant uncertainties2. The degree of reconciliation is
406
a useful indicator in this regard, although the source of high values may be unclear and be a
407
result of mistakes in system design, inconsistencies in the data, or both.
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. Ultimately, the
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The degree of data reconciliation for MFAs with comparatively extensive and consistent
409
databases was found to be between 4 and 9% in Klinglmair, et al. 2. The degree of data
410
reconciliation for the studied minor metal MFAs ranged from 6 to 11% (Table 2), although
411
one would expect higher values because of the comparatively weak information basis. Yet, in
412
the minor metal case, much data were pre-balanced during the data collection process because
413
neighboring flows were often quantified based on similar data (a necessity induced by the
414
considerable shortage of data, cf. SI2-4). As a result, the metric is remarkably low in all
415
three systems, although the databases are observed to be comparatively weak. As more data is
416
collected on individual flows and less pre-balancing is needed, MFA practitioners should
417
expect to increase and be careful when communicating such an increase to policy-makers.
418
Confronted with several available methods for MFA reliability assessments and given limited
419
time and resources, MFA practitioners might ask which method should be used for minor
420
metal studies or for studies of other materials. In Table 3, we provide an overview of
421
advantages, besides that of providing quantitative information on the overall reliability of
422
MFAs, and disadvantages of both methods based on their general characteristics and the
423
discussion above. One should note here that they can be applied in a complementary manner.
424
For instance, the degree of data reconciliation can be used to support the design of structure,
425
while data are managed using a DCM which allows determining information content and
426
system uncertainty. Ultimately, information content and system uncertainty should be used for
427
weak knowledge situations, while the degree of reconciliation is most useful for more robust
428
knowledge situations. As statistical information becomes available, MFA practitioners should
429
move to approaches based on probability distributions3.
430
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Table 3 Advantages and disadvantages of two methods for the assessment of MFA results reliability and recommendations for their use.
Information content and system uncertainty
Degree of data reconciliation
+ Basis for a data/knowledge management + Support in design of system structure (step system +
one)
Break-down
of
uncertainty
into
cognitively manageable components - No basis for data/knowledge management
- Resources required to fill in DCM
- Possibly difficult evaluation of specific - Low degrees of data reconciliation can
IDs
(e.g.,
attribute
“diversity”
and result from consistency between poor data
“semantics”)
and poor system design by chance or
- No support in design of system structure because poor data bias system design (step one)
- Pre-balancing leads to a low degree of data reconciliation - No identification of uncertainty source
Recommended for situations with weak Recommended for situations with more information basis, unclear data quality and complete databases many data gaps 433 434
Concluding remarks
435
As minor metals become increasingly important in our daily lives, so does the ability to
436
provide reliable information on their amounts mined, used, dissipated, and recycled. We
437
demonstrated the feasibility of two reliability assessment methods in minor metal MFAs in
438
the absence of statistically exploitable data. The DCM approach and that of data
439
reconciliation provide overall reliability measurements that allow comparisons across time,
440
space, and metals for more effective policy and management. Based on our case applications, 23 ACS Paragon Plus Environment
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441
we provided recommendations such as a participatory process for system design and IDs
442
evaluation. We highlighted the advantages, disadvantages, and complementarities that MFA
443
practitioners should expect from these procedures in the field of metal MFAs. Additional case
444
studies will facilitate comparisons of MFA systems, help map learning processes on MFAs
445
over time, and enable learning about the benefits, limitations, and pitfalls of the applied
446
procedures and other, similar approaches38, 39. Metal MFA practice still dominantly relies on
447
probability-based approaches despite repeated calls for more adequate ways to appraise
448
uncertainty. We recommend that the evaluation of reliability becomes a more integral part of
449
metal MFA practice, and that new approaches which are specific to the nature of available
450
information are proposed, tested, discussed, and refined. Finding consensus and establishing
451
best practices is an endeavor with the potential to increase the impact of MFA in decision
452
making in management and policy contexts.
453
Acknowledgements
454
The authors wish to thank the U.S. Geological Survey for support of this research. We
455
particularly thank Brian Jaskula and Desiree Polyak for valuable inputs. We acknowledge the
456
two anonymous reviewers for their insightful comments and suggestions.
457 458
Supporting information
459
SI1: Life cycle stages of rhenium, gallium, and germanium in the US economy in 2012 (PDF
460
format)
461
SI2: Data Characterization Matrix of the rhenium case study (Microsoft Excel format)
462
SI3: Data Characterization Matrix of the gallium case study (Microsoft Excel format)
463
SI4: Data Characterization Matrix of the germanium case study (Microsoft Excel format) 24 ACS Paragon Plus Environment
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