A Modular Tool to Support Data Management for LCA in Industry: Methodology, Application and Potentialities
Abstract
:1. Introduction
1.1. General Framework
1.2. Literature Review
1.2.1. Issue 1: Capturing Relevant Temporal Dynamics of Industrial Processes
1.2.2. Issue 2: Management of Multiple Datasets, Environmental Labels-Specific Rules and Global Sustainability Initiatives
1.2.3. Issue 3: Provision of a Correct LCA Interpretation to a Non-Expert Audience
1.2.4. Opportunities Offered by Automated LCA Architectures
1.3. Research Gap, Use Case and Goal of the Paper
- It carries relevant environmental burdens across different impact categories, with current regulations being more and more restrictive [59,60]. Thus, there is a need to monitor product batches associated with lower impacts and provide verifiable evidence of a certain measure aimed at reducing environmental burdens.
- There is a general lack of LCI data regarding steel production processes and consumed materials [59]. Therefore, there is a need to flexibly refine the LCA model once new datasets are released.
- LCA-specific methodological issues are related to accounting for the recyclability at the end-of-life of steel products, and which impacts should be assigned to recycled steel scraps. Thus, there is a need to flexibly deal with different LSRs.
- Research Question 1 (RQ1): What is the added value that can be provided by an LCA that includes the temporal dynamics of foreground inventory data, with respect to a static LCA?
- Research Question 2 (RQ2): Why is flexibility towards secondary datasets for the background system of the LCA, multiple LCIA categories and environmental LSRs needed by an LCA tool in industry?
- Research Question 3 (RQ3): Why are advanced visualization modules useful to handle the full complexity of dynamic LCA results?
2. Methods and Modelling
2.1. General Plant Description
2.2. Methodology for the Development of the Modular Architecture
2.2.1. Primary Data Retrieval
2.2.2. Computation of Unitary Impacts
- Background models: According to the LSRs of International EPD system scheme [76] and CFP [77], the background model for electricity supply employs the Italian 2018 residual mix (i.e., the mix when all contract-specific electricity that has been sold to other customers has been subtracted from the total consumption mix [14]). Other mixes may be used, such as a specific electricity mix demonstrated by a Guarantee of Origin.
- LCIA categories: In our case study, the main LCIA method and categories used in this study are chosen according to the requests of the International EPD system scheme [76]. Moreover, the CFP scheme employs the IPCC 2013 LCIA method. However, for the sake of RQ2, we also employed ILCD 2.0 midpoint 2018 method (see Section 3.2). The modularity of the tool provides the possibility to add new impact categories, too.
2.2.3. LCA Data Collection and Wrangling
- Harmonization of time resolution across all primary foreground LCI data, constructing continuous trends to overcome the problem of discontinuous sampling. These LCI data are harmonized according to the selected time resolution, which is monthly in our case. As discussed in Section 2.2.1, some data are only monitored at larger time resolutions. The related equations for harmonizing these data are described in Section S2.1.1 of the Supplementary Materials.
- Change in units of measure. See the discussion in Section S2.1.2 of the Supplementary Materials.
- Calculation of dependent items. Specific types of data can be dependent on other data, e.g., CO emissions are dependent on the amount of natural gas burnt. See the discussion in Section S2.1.3 of the Supplementary Materials.
- Calculation of specific items, depending on the case study. See the discussion in Section S2.1.4 of the Supplementary Materials.
- The International EPD system allows groups up the consumption of raw materials and consumables into the Upstream phase, while keeping the consumption of energy, waste treatment and emissions into the Core phase [14].
- The Greenhouse Gas (GHG) protocol scheme [78] associates emissions to the Scope 1 group, energy provision to the Scope 2 and all the remaining data to the Scope 3.
- UID, to allow a connection with Consumption/emission and Production values;
- Type (production or consumption/emission data), withdrawn from factory management systems, see Section 2.2.1;
- PU in which the flow was consumed/emitted, withdrawn from factory management systems, see Section 2.2.1;
- LSR classifications, as outlined in the previous list;
- Flow key, to allow a connection with Unitary impacts sheet in the Coding module;
- Unit of measure of the flow value, compatible with the Processing operation;
- Any additional classification, depending on the company needs: Materials suppliers, detail on unit processes, up to specific sensors and devices etc.
2.2.4. LCA Data Manipulation
UID | Month | Cons/Ems | Flow Key | Unit | Very High Detail | Medium Detail | Low Detail PU | Low Detail EPD Scheme | Low Detail GHG Protocol |
---|---|---|---|---|---|---|---|---|---|
UID | Jan | ⋯ | Electricity | kWh | Electric Arc Furnace | Energy | Steelmaking | Core | Scope 2 |
UID | Jan | ⋯ | Electricity | kWh | Ladle Furnace | Energy | Steelmaking | Core | Scope 2 |
UID | Jan | ⋯ | Gas supply | Sm3 | Burner #1, steelmaking | Energy | Steelmaking | Core | Scope 3 |
UID | Jan | ⋯ | Gas supply | Sm3 | Hot rolling, wire rods | Energy | Hot rolling | Core | Scope 3 |
UID | Jan | ⋯ | Refractory | kg | Electric Arc Furnace | Consumables | Steelmaking | Upstream | Scope 3 |
UID | Jan | ⋯ | Refractory | kg | Ladle Furnace | Consumables | Steelmaking | Upstream | Scope 3 |
UID | Jan | ⋯ | Scraps | kg | Scraps | Materials | Steelmaking | Upstream | Scope 3 |
UID | Jan | ⋯ | CO2 emissions | kg | Natural gas, burner #1, steelmaking | Emissions | Steelmaking | Core | Scope 1 |
UID | Jan | ⋯ | CO2 emissions | kg | Natural gas, hot rolling, wire rods #2 | Emissions | Hot rolling | Core | Scope 1 |
⋯ | ⋯ | ⋯ | ⋯ | ⋯ | ⋯ | ⋯ | ⋯ | ⋯ | ⋯ |
- Inclusion of co-products produced by the factory. In our study, some types of wastes are sent to recycling and excess heat is provided to the municipality via district heating. The related equations are described in Section S2.2.1 of the Supplementary Materials [77].
- Treatment of consumptions which are common across products, such as auxiliary services, which are defined at plant level. See the related equations in Section S2.2.2 of the Supplementary Materials.
- Specific calculations, depending on the case study. See the discussion in Section S2.2.3 of the Supplementary Materials.
- Further specifications depending on the selected LSR. See the discussion below.
2.2.5. LCA Results Visualization
- Zooming into a specific LCA result: Comparing the contribution of different drivers, grouped by unit processes, production units, EPD and GHG protocol classifications, etc., according to the Mapping information from the Spreadsheet module;
- Providing the wider picture: Comparing LCA results over time, products, LCIA categories, labels, etc.
3. Results
3.1. RQ1: Dynamic LCA Results
3.2. RQ2: Variability Due to Background Datasets, LCIA Methods and LSRs
3.3. RQ3: Usefulness of Dashboards Visualizations
- Product (from steel billets to thermally treated hot rolled steel);
- Type of product (families, single product, product batches);
- LCIA category;
- Groups of processes;
- Type of charts (line, bar, treemap, pie, heatmap, etc.);
- LCA labels;
- Timesteps.
- Comparison across months and products, with focus on contributions for a specific timestep and product (Figure 5);
- Comparison of LCA results for selected products over time, with zoom on specific LCI consumptions of that product (Figure 6);
- Comparison across LCIA categories and products, with a focus on specific impact drivers (Figure 7);
- Comparison across prospective what-if scenarios (Figure 8).
4. Discussion
4.1. Summary of the 3 Research Questions
4.1.1. RQ1: A Dynamic LCA Discloses a Remarkable Variability of LCA Results
4.1.2. RQ2: LCA Results Are Sensitive to Variations of Background Datasets, LCIA Methods and LSRs
4.1.3. RQ3: Interactive Dashboards Can Handle a High Amount of LCA Results, Together with What-If Scenarios
4.2. Limitations
- be increasingly regulated, thus needing to know how to increase their environmental impacts;
- be characterized by high heterogeneity and variability of products composition, for which a detailed monitoring makes sense;
- show a lack of high quality LCI datasets on relevant items (e.g., chemicals consumed in the fashion industry);
- show a remarkable variability of LCA results associated to secondary datasets for the background system (e.g., as found for LCA impacts of bio-based plastics across manufacturing countries [31]);
- employ a high percentage of recycled materials, or produce products that can be recycled, thus needing specific methodological choices that may vary across LSRs.
4.3. Towards Near-Real-Time LCA of Single Product Batches and Company-Level Sustainability Targets
5. Conclusions
- RQ1: A dynamic LCA shows how the temporal dynamics of industrial processes affect the variability of LCA results associated to different product batches. In our specific case, while a static LCA would provide the information that Energy and Materials groups constitute the highest contributors to LCA results, the dynamic LCA shows that the variability of results is mostly due to Materials group, rather than Energy. Monthly LCA results show a remarkable variability, up to ±14% around the yearly average value. The higher the time resolution of LCAs, the more variability is likely to be disclosed.
- RQ2: The unitary impacts computed using different background models and LCIA methods may even differ by one order of magnitude, while a 20% difference of LCA results is found by following the LSRs of the International EPD system and the CFP.
- RQ3: The high amount of LCA results can be visualized in a tidy way through interactive dashboards, which can visualize a high amount of values by dynamically updating charts depending on the user’s selections.The charts can provide the full complexity of the LCA methodology by allowing the user to navigate results across time, products, LCIA categories and environmental labels, while allowing to zoom into the contributions of specific drivers of environmental impacts and changing the process classifications. The higher the temporal resolution, the higher the amount of data to be managed, which further increases the need of these dashboards. Moreover, through a bi-directional interaction with the Coding module, dashboards can visualize results of prospective what-if scenarios, that can relate targets on environmental performance with efficiency improvement or substitution measures.
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
CDP | Carbon Disclosure Project |
CFP | Carbon Footprint |
EAF | Electric Arc Furnace |
EPD | Environmental Product Declaration |
ERP | Enterprise Resource Planning |
GHG | Greenhouse Gas |
GLO | Global |
GPI | General Programme Instructions |
GRI | Global Reporting Initiative |
GWP | Global Warming Potential |
HBI | Hot Briquetted Iron |
ILCD | International Life Cycle Data system |
IPCC | Intergovernmental Panel on Climate Change |
ISO | International Organization for Standardization |
LCA | Life Cycle Assessment |
LCC | Life Cycle Costing |
LCI | Life Cycle Inventory |
LCIA | Life Cycle Impact Assessment |
LSR | Label Specific Rules |
PB | Planet Boundaries |
PCR | Product Category Rules |
PEF | Product Environmental Footprint |
POFP | Photochemical Ozone Formation Potential |
PU | Production Unit |
RES | Renewable Energy Source |
RER | Rest of Europe |
RQ | Research Question |
SbT | Science-based Target |
SDG | Sustainable Development Goal |
UI | Unitary Impact |
UID | Unique Identifier |
UN | United Nations |
WSP | Water Scarcity Potential |
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Function | Employed Technology | Motivation |
---|---|---|
Primary data retrieval | Spreadsheets, documents collected by the company | Currently, the tool is not directly linked with the factory management system. |
Computation of unitary impacts | OpenLCA | Software in which LCA models used for EPD certification of the ORI Martin products were developed |
LCA data collection and wrangling | Microsoft Excel | Possibility to gather data from different sources (company files, LCA software results) and to process them, using multiple different rules, to a wrangled format which is easily manageable for python coding; all steps performed within a single spreadsheet. |
LCA data manipulation | Python | Necessary to manipulate the high amount of data, given the different timesteps, LCIA categories, products. |
LCA results visualization | Plotly library, coded in python | Possibility to implement interactive dashboards |
Medium Detail | Description of Groups of Flow Keys | Low Detail EPD Scheme | Low Detail GHG Protocol |
---|---|---|---|
Energy | Supply of electricity and natural gas | Core | Scope 2 (electricity) |
Scope 3 (gas) | |||
Materials | Supply of materials which will constitute the final product: | Upstream | Scope 3 |
steel scraps, Hot Briquetted Iron (HBI), pig iron and iron alloys | |||
Consumables | Supply of coal, quicklime, oxygen, argon, nitrogen, | Upstream | Scope 3 |
refractories, electrodes and withdrawal of water | |||
Waste treatment | Treatment of wastes | Core | Scope 3 |
Emissions | Direct emissions to air and water | Core | Scope 1 |
Waste transport | Transport of wastes to the treatment site | Core | Scope 3 |
Upstream transport | Explicitly modelled transports of materials and consumables | Upstream | Scope 3 |
Dataset | Best Case | Medium Case | Worst Case | |
---|---|---|---|---|
Steel scraps | Value | 0.0128 | 0.0243 * | 0.0526 |
Source | [79] | sorting and pressing | [79] | |
of iron scrap (RER) [72] | ||||
Ferrochromium | Value | 3.04 | 4.78 * | 5.987 |
Source | [73] | market for ferrochromium, | [80] | |
high carbon, 55% Cr (GLO) [72] | ||||
Ferromolybdenum | Value | 3.16 | 8.500 | 47.458 * |
Source | [74] | [80] | [74] model with ecoinvent database [72] | |
Ferrosilicon | Value | 3.44 | 4.00 | 8.24 * |
Source | [73] | [80] | market for ferrosilicon (GLO) [72] |
Impact Category | Unit | Electricity | Gas Supply | Oxygen | Pig Iron | CO Emissions | LCIA Method |
---|---|---|---|---|---|---|---|
Global warming potential | kg CO-eq | 6.12 × 10 | 5.80 × 10 | 3.60 × 10 | 1.60 | 1.00 | EPD |
Water scarcity potential | m-eq | 8.59 × 10 | 2.45 × 10 | 1.17 | 8.24 × 10 | 0 | EPD |
climate change total | kg CO-eq | 6.25 × 10 | 6.53 × 10 | 3.67 × 10 | 1.71 | 1.00 | ILCD 2.0 |
midpoint | |||||||
dissipated water | m-eq | 8.67 × 10 | 1.85 × 10 | 1.88 × 10 | 1.78 × 10 | 0 | ILCD 2.0 |
midpoint | |||||||
Variation EPD-ILCD, GWP | - | −2.1% | −11.2% | −1.7% | −6.3% | 0.0% | - |
Variation EPD-ILCD, WSP | - | −0.9% | 32.4% | 519.0% | −95.4% | - | - |
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Rovelli, D.; Brondi, C.; Andreotti, M.; Abbate, E.; Zanforlin, M.; Ballarino, A. A Modular Tool to Support Data Management for LCA in Industry: Methodology, Application and Potentialities. Sustainability 2022, 14, 3746. https://doi.org/10.3390/su14073746
Rovelli D, Brondi C, Andreotti M, Abbate E, Zanforlin M, Ballarino A. A Modular Tool to Support Data Management for LCA in Industry: Methodology, Application and Potentialities. Sustainability. 2022; 14(7):3746. https://doi.org/10.3390/su14073746
Chicago/Turabian StyleRovelli, Davide, Carlo Brondi, Michele Andreotti, Elisabetta Abbate, Maurizio Zanforlin, and Andrea Ballarino. 2022. "A Modular Tool to Support Data Management for LCA in Industry: Methodology, Application and Potentialities" Sustainability 14, no. 7: 3746. https://doi.org/10.3390/su14073746
APA StyleRovelli, D., Brondi, C., Andreotti, M., Abbate, E., Zanforlin, M., & Ballarino, A. (2022). A Modular Tool to Support Data Management for LCA in Industry: Methodology, Application and Potentialities. Sustainability, 14(7), 3746. https://doi.org/10.3390/su14073746