| Literature DB >> 23786775 |
George G Zaimes1, Vikas Khanna.
Abstract
BACKGROUND: Microalgae are touted as an attractive alternative to traditional forms of biomass for biofuel production, due to high productivity, ability to be cultivated on marginal lands, and potential to utilize carbon dioxide (CO2) from industrial flue gas. This work examines the fossil energy return on investment (EROIfossil), greenhouse gas (GHG) emissions, and direct Water Demands (WD) of producing dried algal biomass through the cultivation of microalgae in Open Raceway Ponds (ORP) for 21 geographic locations in the contiguous United States (U.S.). For each location, comprehensive life cycle assessment (LCA) is performed for multiple microalgal biomass production pathways, consisting of a combination of cultivation and harvesting options.Entities:
Year: 2013 PMID: 23786775 PMCID: PMC3693881 DOI: 10.1186/1754-6834-6-88
Source DB: PubMed Journal: Biotechnol Biofuels ISSN: 1754-6834 Impact factor: 6.040
Figure 1Microalgae biomass production chain and examined production pathways.
EROI, net life cycle GHG emissions, and direct WDs for examined biomass production pathways & locations
| Mobile, AL | 0.40 (44.2) | 0.46 (22.5) | 0.49 (18.9) | 0.59 (−2.8) | 0.60 (−0.4) | 0.68 (−15.1) | 0.86 (−25.7) | 1.04 (−40.4) | 22.1 | 22.3 |
| Phoenix, AZ | 0.38 (48.9) | 0.43 (28.4) | 0.47 (23.5) | 0.56 (3.0) | 0.57 (4.2) | 0.64 (−9.2) | 0.79 (−21.2) | 0.94 (−34.6) | 38.6 | 38.8 |
| San Diego, CA | 0.41 (32.0) | 0.46 (16.0) | 0.51 (6.3) | 0.60 (−9.6) | 0.63 (−12.6) | 0.69 (−21.5) | 0.91 (−38.3) | 1.06 (−47.2) | 32.8 | 33.0 |
| Daytona Beach, FL | 0.38 (43.0) | 0.44 (22.7) | 0.47 (17.5) | 0.57 (−2.7) | 0.58 (−1.6) | 0.66 (−14.8) | 0.81 (−27.1) | 0.97 (−40.2) | 24.1 | 24.3 |
| Jacksonville, FL | 0.38 (43.1) | 0.44 (22.8) | 0.47 (17.7) | 0.57 (−2.6) | 0.58 (−1.5) | 0.66 (−14.7) | 0.81 (−27.0) | 0.97 (−40.1) | 22.6 | 22.9 |
| Key West, FL | 0.38 (43.6) | 0.44 (23.4) | 0.47 (18.2) | 0.57 (−2.1) | 0.57 (−1.0) | 0.65 (−14.2) | 0.80 (−26.4) | 0.97 (−39.6) | 28.4 | 28.6 |
| Miami, FL | 0.38 (42.7) | 0.44 (22.5) | 0.48 (17.3) | 0.57 (−3.0) | 0.58 (−1.9) | 0.66 (−15.1) | 0.81 (−27.3) | 0.98 (−40.5) | 22.1 | 22.4 |
| Tallahassee, FL | 0.39 (42.4) | 0.44 (22.2) | 0.48 (17.0) | 0.57 (−3.2) | 0.58 (−2.2) | 0.66 (−15.4) | 0.82 (−27.6) | 0.98 (−40.8) | 20.8 | 21.1 |
| Tampa, FL | 0.38 (43.2) | 0.44 (23.0) | 0.47 (17.8) | 0.57 (−2.5) | 0.58 (−1.4) | 0.65 (−14.6) | 0.81 (−26.8) | 0.97 (−40.0) | 25.1 | 25.4 |
| West Palm Beach, FL | 0.38 (43.0) | 0.44 (22.7) | 0.47 (17.6) | 0.57 (−2.7) | 0.58 (−1.6) | 0.66 (−14.8) | 0.81 (−27.0) | 0.97 (−40.2) | 22.9 | 23.1 |
| Savannah, GA | 0.39 (45.0) | 0.45 (23.2) | 0.49 (19.7) | 0.59 (−2.1) | 0.60 (0.4) | 0.68 (−14.3) | 0.86 (−24.9) | 1.03 (−39.6) | 24.1 | 24.4 |
| Baton Rouge, LA | 0.39 (39.2) | 0.45 (20.8) | 0.49 (13.6) | 0.58 (−4.7) | 0.60 (−5.4) | 0.67 (−16.8) | 0.86 (−31.0) | 1.01 (−42.3) | 22.6 | 22.8 |
| Lake Charles, LA | 0.39 (39.0) | 0.45 (20.6) | 0.49 (13.5) | 0.58 (−4.9) | 0.60 (−5.6) | 0.67 (−16.9) | 0.86 (−31.1) | 1.02 (−42.4) | 23.0 | 23.2 |
| New Orleans, LA | 0.40 (38.9) | 0.45 (20.5) | 0.49 (13.4) | 0.58 (−5.0) | 0.60 (−5.7) | 0.67 (−17.0) | 0.86 (−31.2) | 1.02 (−42.5) | 22.1 | 22.3 |
| Austin, TX | 0.39 (41.5) | 0.45 (20.6) | 0.49 (16.1) | 0.59 (−4.8) | 0.59 (−3.1) | 0.68 (−16.9) | 0.85 (−28.5) | 1.03 (−42.3) | 29.8 | 30.0 |
| Brownsville, TX | 0.39 (41.8) | 0.45 (20.9) | 0.49 (16.4) | 0.58 (−4.5) | 0.59 (−2.8) | 0.68 (−16.6) | 0.84 (−28.2) | 1.02 (−42.0) | 30.6 | 30.8 |
| Corpus Christi, TX | 0.39 (42.1) | 0.45 (21.3) | 0.48 (16.8) | 0.58 (−4.1) | 0.59 (−2.5) | 0.67 (−16.3) | 0.84 (−27.8) | 1.02 (−41.7) | 29.7 | 29.9 |
| Houston, TX | 0.39 (42.0) | 0.45 (21.1) | 0.49 (16.7) | 0.58 (−4.2) | 0.59 (−2.6) | 0.67 (−16.4) | 0.84 (−27.9) | 1.02 (−41.8) | 25.6 | 25.8 |
| Lufkin, TX | 0.39 (41.5) | 0.45 (20.6) | 0.49 (16.1) | 0.59 (−4.8) | 0.59 (−3.1) | 0.68 (−16.9) | 0.85 (−28.5) | 1.03 (−42.3) | 26.1 | 26.3 |
| Port Arthur, TX | 0.40 (35.2) | 0.46 (16.9) | 0.51 (9.7) | 0.60 (−8.6) | 0.62 (−9.4) | 0.70 (−20.6) | 0.91 (−34.9) | 1.08 (−46.2) | 22.8 | 23.0 |
| San Antonio, TX | 0.39 (41.3) | 0.45 (20.4) | 0.49 (16.0) | 0.59 (−4.9) | 0.60 (−3.3) | 0.68 (−17.1) | 0.85 (−28.6) | 1.03 (−42.5) | 29.9 | 30.1 |
| Victoria, TX | 0.39 (41.9) | 0.45 (21.0) | 0.49 (16.5) | 0.58 (−4.4) | 0.59 (−2.7) | 0.68 (−16.5) | 0.84 (−28.1) | 1.02 (−41.9) | 27.4 | 27.7 |
monoethanolamine, direct injection, centrifuge, chamber filter press, natural gas drying, waste heat drying.
* Values in parentheses represent Net Life Cycle GHG Emissions expressed in unit of (g CO2 eq/MJ-Biomass). Values outside of parentheses represent EROIfossil. The last two columns represent water demand (WD).
1 The results for the WD are presented in units of (liters/MJ-biomass).
Figure 2Life cycle energy analysis for Phoenix, Arizona. Detailed description for scenarios A-H are provided in Table 1.
Figure 3Life cycle GHG analysis for Phoenix, Arizona. Detailed description for scenarios A-H are provided in Table 1.
Figure 4Sensitivity analysis for Phoenix, Arizona. Detailed description for sensitivity parameters are provided in Table 2.
Critical parameters for sensitivity analysis
| 50/40/5 | 20/25/50 | 5/20/70 | |
| 80 | 100 | 250 | |
| Flue gas (DI) [20% decrease CO2 injected] | Flue gas (DI) | Pure CO2 (MEA) | |
| CFP [20% decrease electricity consumption] | CFP | CF | |
| WHD | NGD | NGD [20% increase NG consumption] | |
| 35 | 25 | 5 | |
| 100 | 75 | 50 | |
| 36 | 65 | 180 | |