Collection and Processing of Roadside Grass Clippings: A Supply Chain Optimization Case Study for East Flanders
Abstract
:1. Introduction
2. Literature Review
Source | Most Important Conclusions | |
---|---|---|
East Flanders | [19] | Logistical challenges are: seasonality, geographical spread, rapid degradation, required pre-treatment, pollution, and (only) 2 mowing periods. Quantities of clippings per year fluctuate considerably. Only the weighing at the processor is reported, meaning that the full supply is not known (in case grass clippings are mowed but not collected) Ideally, the roadside grass is ensiled or processed within ten days after harvest. |
Flanders | [20,21] | “As far as the management of roadside grass is concerned, it has already been demonstrated that this represents a high cost for the responsible authorities. Not only mowing but also disposal and processing can be a financial obstacle.” |
Alterra | [22] | Points of attention: Supply uncertainty, complex logistics, insufficient awareness of managers that they are raw material producers, tendering method, lack of clarity regarding which party in the chain should take control. |
Bermg(r)as | [23] | The litter problem is essential in wet fermentation, but does not pose a problem with dry fermentation. |
East Flanders | [24] | Uncertainty surrounding the storage costs, treatment cost, and processing price. Receiving correct volume data can be a problem regarding which the change from composting to fermentation can be a solution. Consequently, all the involved parties need to be in agreement. |
Bermstroom | [25] | Roadside clippings for paper production: the increasing demand for e-commerce develops parallel to the increasing request for paper and cardboard shipping materials. The Flanders case is rather complex, since the local industry focuses on high-quality graph paper, which requires additional research [26]. Innovations regarding the different steps in the value chain were investigated during the project. This value chain includes the following steps: (1) mowing, (2) transport and storage, (3) paper production, and (4) closing the loop. |
Grassification | [27] | Valorization of roadside clippings to create a value chain— the common challenges for processing roadside grass clippings are the following: supply (chain) is not optimal, resulting in high costs, grass clippings are heterogeneous in supply, and political challenges stemming from an unsupportive legal framework. |
Economic potential of bio-streams | [28] | Main findings/limitation: Due to the local and widespread character of grass clippings, good logistical planning is crucial to mobilize and guarantee sufficient supply; there is no uniform quality standard in regards to all clippings; and the roadside grass clippings are not considered waste. Therefore, sufficient attention is not paid to the subject. |
3. Description of the Developed Scenarios
3.1. Scenario 1
3.2. Scenario 2
3.3. Scenario 3
3.4. Scenario 4
3.5. Scenario 5: Optimization
4. The Calculation Tool
4.1. Trips
4.2. Vehicle Parameters
4.3. Load Parameters
4.4. Calculation Module
4.5. Contact Module
5. Scenario Results
5.1. Scenario 1
- -
- The cost per kilometer (e.g., by entering the road pricing or a higher fuel cost);
- -
- The hourly cost (e.g., due to an increase in the hourly wage of the driver);
- -
- The weight reduction of the grass clippings at the collection point;
- -
- The density of the roadside grass clippings at the collection point;
- -
- The load capacity of the truck in tons;
- -
- The loading volume of the truck in m3;
- -
- The collection distances;
- -
- The empty return trip is not considered (e.g., in case a return flow can be found).
- (1)
- A higher cost per kilometer makes the collection of roadside clippings more expensive. An increase in the cost of fuel increases the logistics cost of collection. Road pricing will also increase this cost, depending on the route (where payment must be made). Introducing road pricing in regards to the main roads will likely have a relatively small impact.
- (2)
- A higher hourly cost also increases the logistics costs, i.e., by increasing the driver’s wage costs.
- (3)
- A weight reduction at the collection points can significantly decrease logistics costs because the number of transport movements decreases. A weight reduction of 50% leads to a 49% reduction in logistics costs. This cost reduction must be compared with the extra costs needed to obtain this weight reduction at the individual warehouses. These additional costs are case-specific, and are not incorporated in this paper.
- (4)
- A decrease in transport movements also leads to a decrease in transshipments, thus decreasing transshipment costs.
- (5)
- The density of roadside grass clippings is an essential secondary condition for transport. A density of 0.22 tons per m3 was used as a default value, representing that the volume restrictions, and not the tonnage, will determine the number of trucks required. If one succeeds in increasing the density from 0.22 to 0.45 tons per m3, this will lead to a cost reduction of 50%. Densities higher than 0.45 do not reflect in additional cost reductions.
- (6)
- An increase in the load factor of the trucks has no effect, due to inherent volume limitations.
- (7)
- The logistics costs naturally increase if the distance between the collection points and the processing plant is higher (i.e., not in the Port of Ghent area). It is, therefore, essential to check whether a more optimal processing location can be determined. The determination of an optimal location is examined in Scenario 5.
5.2. Scenario 2
5.3. Scenario 3
5.4. Scenario 4
5.5. Scenario 5: Optimization
6. Additional Costs
6.1. Mowing and First Collection
6.2. Storage
- -
- Pit: EUR 5.2925/ton;
- -
- Slot silo: EUR 7.7125/tonne to EUR 9.8743/tonne;
- -
- Slurfsilo: EUR 8.0926/ton;
- -
- Wrapped bales: EUR 40.09/tonne.
6.3. Gate Fee
6.4. Total Cost
7. Conclusions and Discussion
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
- Devriendt, N.; Van Dael, M.; Van Roye, K.; Speijer, F. Haalbaarheidsanalyse Business Cases en Opmaak van Business Plannen Met Betrekking tot Logistieke Optimalisatie van Bio-Restromen; VITO: Lier, Belgium, 2014. [Google Scholar]
- OVAM. Aanbod en Bestemming Biomassa(rest)stromen Voor de Circulaire Economie in Vlaanderen; OVAM: Mechelen, Belgium, 2017. [Google Scholar]
- GR3. Grass as a Green Gas Resource: Energy from Landscapes by Promoting the Use of Grass Residues as a Renewable Energy Resource; Flemish Government: Brussel, Belgium, 2014.
- Demirbas, A. Waste management, waste resource facilities and waste conversion processes. Energy Convers. Manag. 2011, 52, 1280–1287. [Google Scholar] [CrossRef]
- Kan, A. General characteristics of waste management: A review. Energy Educ. Sci. Technol. Part A Energy Sci. Res. 2009, 23, 55–69. [Google Scholar]
- Ravi, R.; Fernandes de Souza, M.; Adriaens, A.; Vingerhoets, R.; Luo, H.; Van Dael, M.; Meers, E. Exploring the environmental consequences of roadside grass as a biogas feedstcok in Northwest Europe. J. Environ. Manag. 2023, 344, 118538. [Google Scholar] [CrossRef] [PubMed]
- André, L.; Zdanevitch, I.; Pineau, C.; Lencauchez, J.; Damiano, A.; Pauss, A.; Ribeiro, T. Dry anaerobic co-digestion of roadside grass and cattle manure at a 60 L batch pilot scale. Bioresour. Technol. 2019, 289, 121737. [Google Scholar] [CrossRef] [PubMed]
- European Biogas Association. EBA Statistical Report 2022; EBA: Bruxelles, Belgium, 2022. [Google Scholar]
- Directorate-General for Energy. European Commission and Industry Leaders Launch Biomethane Industrial Partnership. Retrieved from European Commission. Available online: https://commission.europa.eu/news/european-commission-and-industry-leaders-launch-biomethane-industrial-partnership-2022-09-28_en (accessed on 28 September 2022).
- International Energy Agency. A 10-Point Plan to Reduce the European Union’s Reliance on Russion Natural Gas; IEA: Paris, France, 2022.
- Piepenschneider, M.; Bühle, L.; Hensgen, F.; Wachendorf, M. Energy recovery from grass of urban roadside verges by anaerobic digestion and combustion after pre-processing. Biomass-Bioenergy 2016, 85, 278–287. [Google Scholar] [CrossRef]
- Piepenschneider, M.; De Moor, S.; Hensgen, F.; Meers, E.; Wachendorf, M. Element concentrations in urban grass cuttings from roadside verges in the face of energy recovery. Environ. Sci. Pollut. Res. 2015, 22, 7808–7820. [Google Scholar] [CrossRef]
- Bühle, L.; Hensgen, F.; Donnison, L.; Heinsoo, K.; Wachendorf, M. Life cycle assessment of the integrated generation of solid fuel and biogas from biomass (IFBB) in comparison to different energy recovery, animal-based and non-refining management systems. Bioresour. Technol. 2012, 111, 230–239. [Google Scholar] [CrossRef] [PubMed]
- Van Meerbeek, K.; Muys, B.; Hermy, M. Lignocellulosic biomass for bioenergy beyond intensive cropland and forests. Renew. Sustain. Energy Rev. 2019, 102, 139–149. [Google Scholar] [CrossRef]
- Maity, S.K. Opportunities recent trends challenges of integrated biorefinery: Part I. Renew. Sustain. Energy Rev. 2015, 43, 1427–1445. [Google Scholar] [CrossRef]
- Roni, M.S.; Thompson, D.N.; Hartley, D.S. Distributed biomass supply chain cost optimization to evaluate multiple feedstocks for a biorefinery. Appl. Energy 2019, 254, 113660. [Google Scholar] [CrossRef]
- De Meyer, A.; Cattrysse, D.; Rasinmäki, J.; Van Orshoven, J. Methods to optimise the design and management of biomass-for-bioenergy supply chains: A reveiw. Renew. Sustain. Energy Rev. 2014, 31, 657–670. [Google Scholar] [CrossRef]
- Gelfand, I.; Sahajpal, R.; Zhang, X.; Izaurralde, R.C.; Gross, K.L.; Robertson, G.P. Sustainable bioenergy production from marginal lands in the US midwest. Nature 2013, 493, 514–517. [Google Scholar] [CrossRef] [PubMed]
- Grenzeloze Logistiek. Eindrapport Bermmaaisel; Grenzeloze Logistiek: Ghent, Belgium, 2014. [Google Scholar]
- Graskracht. Inventarisatie 01.04.2010–30.09.2012—Eindrapport; PHL Bio-Research: Philadelphia, PA, USA, 2012. [Google Scholar]
- Graskracht. Werkpakket 4: Systeeminnovatie; Universiteit Hasselt and Vlaco: Hasselt, Belgium, 2012. [Google Scholar]
- Spijker, J.; Bakker, R.; Ehlert, P.; Albersen, H.; de Jong, J.; Zwart, K. Toepassingsmogelijkheden voor Natuur en Bermmaaisel; Alterra: Wageningen, The Netherlands, 2013. [Google Scholar]
- OWS; IGEAN; VITO; UGent. Bermg(r)as—Droge Anaerobe Vergisting van Bermgras, in Combinatie Met GFT+. 2014. Available online: https://normecows.com/media/2023/02/Bermgras-openbaar-rapport.pdf (accessed on 30 November 2022).
- Rebel & Tri-vizor. Valorisatie van Bio-Restromen. Eindrapport Bermgras; Vlaamse Overheid: Brussels, Belgium, 2014.
- Thys, P. Bermstroom: Bermmaaisel als Grondstof voor Papier; De Vlaamse Waterweg: Hasselt, Belgium, 2018. [Google Scholar]
- Vlaamse Waterweg. (sd). Bermgras als Grondstof voor de Productie van Papier. Opgehaald van Innovatieve Overheidsopdrachten. Available online: https://www.innovatieveoverheidsopdrachten.be/projecten/bermgras-als-grondstof-voor-de-productie-van-papier (accessed on 10 December 2022).
- Interreg2seas. Opgehaald van Grassification. 2018. Available online: https://www.interreg2seas.eu/nl/Grassification (accessed on 20 November 2022).
- Knotter, S.; Devriendt, N.; Carpentier, M. Economisch Potentieel van Biomassaresten uit Landschapsbeheer; Vlaamse Landmaatschappij: Schaarbeek, Belgium, 2022. [Google Scholar]
- Blauwens, G.; Meersman, H.; Sys, C.; Van de Voorde, E.; Vanelslander, T. Kilometerheffing in Vlaanderen—De Impact op de Havenconcurrentie en Logistiek; Universiteit Antwerpen: Antwerpen, Belgium, 2011. [Google Scholar]
- Blauwens, G.; De Baere, P.; Van de Voorde, E. Transport Economics, 5th ed.; Uitgeverij De Boeck: Berchem, Belgium, 2020. [Google Scholar]
- Grosso, M. Improving the Competitiveness of Intermodal Transport: Applications on European Corridors. Ph.D. Thesis, Universiteit Antwerpen, Antwerpen, Belgium, 2011. [Google Scholar]
- OVAM. Geïntegreerde Verwerkingsmogelijkheden (Inclusief Energetische Valorisatie) van Bermmaaisel; OVAM: Mechelen, Belgium, 2009. [Google Scholar]
Storage Point | Tons (Wet Matter) | Storage Point | Tons (Wet Matter) | ||
---|---|---|---|---|---|
1 | X1 | 529 | 22 | X22 | 302 |
2 | X2 | 293 | 23 | X23 | 38 |
3 | X3 | 131 | 24 | X24 | 521 |
4 | X4 | 377 | 25 | X25 | 321 |
5 | X5 | 670 | 26 | X26 | 180 |
6 | X6 | 264 | 27 | X27 | 196 |
7 | X7 | 417 | 28 | X28 | 66 |
8 | X8 | 172 | 29 | X29 | 111 |
9 | X9 | 374 | 30 | X30 | 54 |
10 | X10 | 292 | 31 | X31 | 154 |
11 | X11 | 341 | 32 | X32 | 115 |
12 | X12 | 594 | 33 | X33 | 372 |
13 | X13 | 237 | 34 | X34 | 159 |
14 | X14 | 162 | 35 | X35 | 144 |
15 | X15 | 272 | 36 | X36 | 468 |
16 | X16 | 179 | 37 | X37 | 54 |
17 | X17 | 187 | 38 | X38 | 88 |
18 | X18 | 179 | 39 | X39 | 177 |
19 | X19 | 162 | 40 | X40 | 54 |
20 | X20 | 240 | 41 | X41 | 123 |
21 | X21 | 162 | Total | 9931 |
Scenario | Mode of Transport | X (First Collection Point) | Y (Second Collection Point) | Z (Processing) |
---|---|---|---|---|
Scenario 1 | Road transport | 41 locations (Oost-Vlaanderen) | 0 | 1 (Port Gent, Kluizendok) |
Scenario 2 | Road transport | 41 locations (Oost-Vlaanderen) | 4 (East-Flanders) | 1 (Port Gent, Kluizendok) |
Scenario 3 | Road transport | 9 locations (Oost-Vlaanderen) | 0 | 1 (Port Gent, Kluizendok) |
Scenario 4 | Road transport and inland shipping | 41 locations (Oost-Vlaanderen) | 1 (Oudenaarde) | 1 (Port Gent, Kluizendok) |
Scenario 5 | Road transport | 41 locations (Oost-Vlaanderen) | 0 | 1 (optimal location is determined in paper) |
ax | Tonnage of roadside grass clippings at collection point x (wet matter) | Value |
e | Possible weight reduction on site dx (in %) | Value |
bx | Tonnage of roadside grass clippings at collection point x (after weight reduction) | Formula |
g | Conversion factor to convert wet matter into dry matter (in % of wet matter) | Value |
cx | Tonnage of roadside grass clippings at collection point x (dry matter; forms lower limit of bx) | Formula |
dx | Location of collection point(s) (expressed in Longitude and Latitude) | Value |
fx | Density of grass clippings (in ton/m3) | Value |
hz | Location of the processing of roadside grass clippings (expressed in Longitude and Latitude) | Value |
ixz | Volume to be transported from location x to z (based on bx) | Formula |
j | Maximum volume to be transported per vehicle (in m3) | Value |
k | Maximum load to be transported per vehicle (in ton) | Value |
lxz | Number of journeys between x and z | Formula |
mxz | Distance in km between x and z | Value |
nxz | Travel time in hours between x and z | Value |
oxz | Loading and unloading time per trip between x and z (in hours) | Value |
pxz | Yes/No in response to “Will the return trip be included in the calculations” | Value |
q | Cost per kilometer transport | Value |
r | Cost per hour transport | Value |
sxz | Total cost of transport between x and z to transport bx | Formula |
txz | Total transport cost per ton (wet matter) between x and z to transport bx | Formula |
uxz | Total transport cost per tonne (dry matter) between x and z to transport bx | Formula |
bx | ax.(e/100) |
cx | ax.(g/100) |
ixz | bx/fx |
lxz | Max(roundup(bx/k,0),roundup(ixz/j,0)) |
sxz | In the case of a round trip: lxz.[((2.mxz.q) + ((2.nxz) + oxz).r] In the case of a single trip: lxz.[((mxz.q) + ((nxz) + oxz).r] |
txz | sxz/ax |
uxz | sxz/cx |
wxz | lxz.vxz |
xxz | wxz/ax |
yxz | wxz/cx |
Cost Factor | % | |
---|---|---|
Cost per kilometer | Interest and depreciation (fixed part) | 13.91 |
Insurance | 6.29 | |
Drivers’ wages (including all expenses and premiums) | 68.42 | |
Road tax, Eurovignette, contributions, fees | 3.38 | |
Other costs (administration, etc.) | 8.00 | |
100 | ||
Cost per hour | Interest and depreciation (variable part) | 10.00 |
Fuel | 80.00 | |
Tires | 2.00 | |
Maintenance, repair | 8.00 | |
100 |
Payload | Cost per Kilometer | Hourly Cost |
---|---|---|
0.5 5 8 20 28 | 0.23 0.33 0.38 0.47 0.52 | 23.47 24.98 26.23 30.07 31.35 |
e | Possible weight reduction on location dx (in %) | 100 |
fx | Density of roadside grass clippings (in tons/m³) Source: [3] | 0.22 |
g | Conversion factor to convert wet matter into dry matter (in % of wet matter) | 24.32 |
j | Maximum volume to be transported per vehicle (in m3) | 45 |
k | Maximum load to be transported per vehicle (in ton) | 20 |
pxz | Yes/No in response to “Will the return trip be included in the calculations” | Yes |
oxz | Loading and unloading time per trip between x and z (in hours, source [19]) | 1 |
q | Cost per kilometer transport (Source: [30,31]) | 0.5 |
r | Cost per hour transport (Source: [30,31]) | 30 |
Changed Variable | New Value–in % Change | Total Cost of Transport | Transport Cost per Ton (Wet) | Transport Cost per Ton (Dry) | Difference in % Compared to Ref |
---|---|---|---|---|---|
Reference | 106,002 | 10.77 | 44.29 | ||
Kilometer cost | q = +20 | 113,499 | 11.53 | 47.42 | +7 |
Hourly cost | r = +20 | 119,705 | 12.16 | 50.02 | +13 |
Weight reduction | e = −20 | 85,348 | 8.67 | 35.66 | −19 |
e = −50 | 53,997 | 5.49 | 22.56 | −49 | |
e = g = −75.68 | 27,283 | 2.77 | 11.40 | −74 | |
Density | fx= +81 | 58,487 | 5.94 | 24.44 | −45 |
fx= +104 | 53,245 | 5.41 | 22.25 | −50 | |
Load in tons | k = +20 | 106,002 | 10.77 | 44.29 | 0 |
k = +40 | 106,002 | 10.77 | 44.29 | 0 | |
Load in volume | j = +11 | 94,861 | 9.64 | 39.64 | −11 |
All collection points 75 km away | mxz = mxz + 75 nxz = nxz + 75/65 | 252,396 | 25.65 | 105.46 | +138 |
Return trip | Pxz = No | 68,226 | 6.93 | 28.51 | −36 |
Changed Variable | New Value–in % Change | Total Cost of Transport | Transport Cost per Ton (Wet) | Transport Cost per Ton (Dry) | Difference in % Compared to Ref |
---|---|---|---|---|---|
Reference | 106,002 | 10.77 | 44.29 | ||
153,787 | 15.63 | 64.26 | +45 | ||
Weight reduction | e = 0 in 1e location; e = −20 in 2e location | 137,787 | 14.00 | 57.57 | +30 |
e = 0 in 1e location; e = −50 in 2e location | 113,899 | 11.57 | 47.59 | +7 | |
e = 0 in 1e location; e = −60 in 2e location | 105,836 | 10.75 | 44.22 | 0 | |
e = 0 in 1e location; e = −75.68 in 2e location | 93,386 | 9.49 | 39.02 | −12 | |
Weight reduction and density | e = 0 in 1e location; e = −75.68 in 2e location; fx = 0 in 1e location; fx = +81 in 2e location | 84,607 | 8.60 | 35.35 | −20 |
e = 0 in 1e location; e = −75.68 in 2e location; fx = 0 in 1e location; fx = +81 in 2e location | 83,539 | 8.49 | 34.90 | −21 |
Changed Variable | New Value–in % Change | Total Cost of Transport | Transport Cost per Ton (Wet) | Transport Cost per Ton (Dry) | Difference in % Compared to Ref |
---|---|---|---|---|---|
Reference | 106,002 | 10.77 | 44.29 | ||
88,275 | 8.97 | 36.88 | −17 | ||
Weight reduction | e = −20 | 70,614 | 7.18 | 29.50 | −33 |
e = −50 | 44,390 | 4.51 | 18.55 | −58 | |
e = g = −75.68 | 21,669 | 2.20 | 9.05 | −80 | |
Density | fx= +81 | 48,675 | 4.95 | 20.34 | −54 |
fx= +104 | 43,895 | 4.46 | 18.34 | −59 | |
Load in ton | k = +20 | 88,275 | 8.97 | 36.88 | −17 |
Load in volume | j = +11 | 79,397 | 8.07 | 33.17 | −25 |
All collection points 75 km away | mxz = mxz + 75 nxz = nxz + 75/65 | 232,361 | 23.61 | 97.09 | +119 |
Return trip | Pxz = No | 59,122 | 6.01 | 24.70 | −44 |
e | Possible weight reduction on location dx (in %) | 100 |
fx | Density of grass clippings (in tons/m³) (Source: [3]) | 0.22 |
g | Conversion factor to convert wet matter into dry matter (in % of wet matter) | 24.32 |
j | Maximum volume to be transported by truck (in m3) Maximum volume to be transported by barge (in m3) | 45 2840 |
k | Maximum load to be transported by truck (in tons) Maximum load to be transported by barge (in tonnes) | 20 2000 |
pxz | Yes/No in response to “Will the return trip be included in the calculations” | Ja |
q | Cost per kilometer transport (Bron: own calculations, based on [31]) | 6 |
r | Cost per hour transport (Bron: own calculations, based on [31]) | 32 |
Changed Variable | New Value | Total Cost of Transport | Transport Cost per Ton (Wet) | Transport Cost per Ton (Dry) | Difference in % Compared to Ref |
---|---|---|---|---|---|
Reference | 106,002 | 10.77 | 44.29 | ||
151,608 | 15.41 | 63.35 | +43 | ||
Weight reduction | e = 0 in 1e location; e= −20 in 2e location | 147,340 | 14.97 | 61.56 | +39 |
e = 0 in 1e location; e= −50 in 2e location | 140,227 | 14.25 | 58.59 | +32 | |
e = 0 in 1e location; e = −75.68 in 2e location | 134,536 | 13.67 | 56.21 | +27 | |
Weight reduction and Density | e = 0 in 1e location; e = −75.68 in 2e location; fx = 0 in 1e location; fx = +81 in 2e location | 133,113 | 13.53 | 55.62 | +26 |
Boundary Conditions Area | ||
---|---|---|
N | MAX | 51.40755 |
MIN | 50.85255 | |
E | MAX | 5.615141 |
MIN | 2.621267 |
Location | Figure | Index | Explanation |
---|---|---|---|
Location 1 | Figure 14 | 100 | Location One is the optimal location with an index of 100 |
Location 2 | Figure 15 | 101 | Location Two is the second most optimal location with an index of 101, stating an increase in transport costs of one percent compared to location one. |
Location 3 | Figure 16 | 114 | Location Three is the third most optimal location with an index of 114, stating an increase in transport costs of 14 percent compared to location one. |
Location 4 | Figure 17 | 116 | Location Four is the fourth most optimal location with an index of 116, stating an increase in transport costs of 16 percent compared to location one. |
Location 5 | Figure 18 | 120 | Location Five is the fifth most optimal location with an index of 120, stating an increase in transport costs of 20 percent compared to location one. |
Municipality | Tonnage | Cost | Included | Source | Cost per Ton |
---|---|---|---|---|---|
Dendermonde (2012) | 261 | 89,093 | Mowing, vacuuming, draining | Minutes municipality | 340.99 |
Waregem (2011) | 125 | 45,805 | Mowing, vacuuming, draining | Environmental year program | 366.42 |
Zele (2011) | 260 | 47,792 | Mowing, vacuuming, draining | Newsletter municipality | 183.82 |
Process | Cost Borne by | Furthermore of Interest? | Range (Euro/Ton ns) | |||
---|---|---|---|---|---|---|
MIN | MAX | |||||
Mowing and collection | Road manager | No | 180 | 360 | ||
Gate fee | Road manager | No | 30 | 70 | ||
Transport costs | New market player | Yes | 2 | =7 | 15 | =55 |
Storage costs | New market player | Yes | 5 | 40 |
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De Wieuw, F.; Pauwels, T.; Sys, C.; Van de Voorde, E.; van Hassel, E.; Vanelslander, T.; Willems, J. Collection and Processing of Roadside Grass Clippings: A Supply Chain Optimization Case Study for East Flanders. Sustainability 2023, 15, 14006. https://doi.org/10.3390/su151814006
De Wieuw F, Pauwels T, Sys C, Van de Voorde E, van Hassel E, Vanelslander T, Willems J. Collection and Processing of Roadside Grass Clippings: A Supply Chain Optimization Case Study for East Flanders. Sustainability. 2023; 15(18):14006. https://doi.org/10.3390/su151814006
Chicago/Turabian StyleDe Wieuw, Frederik, Tom Pauwels, Christa Sys, Eddy Van de Voorde, Edwin van Hassel, Thierry Vanelslander, and Jeffrey Willems. 2023. "Collection and Processing of Roadside Grass Clippings: A Supply Chain Optimization Case Study for East Flanders" Sustainability 15, no. 18: 14006. https://doi.org/10.3390/su151814006
APA StyleDe Wieuw, F., Pauwels, T., Sys, C., Van de Voorde, E., van Hassel, E., Vanelslander, T., & Willems, J. (2023). Collection and Processing of Roadside Grass Clippings: A Supply Chain Optimization Case Study for East Flanders. Sustainability, 15(18), 14006. https://doi.org/10.3390/su151814006