| Literature DB >> 29321575 |
Mario Mureddu1, Angelo Facchini2,3, Antonio Scala4, Guido Caldarelli5,4,6,7, Alfonso Damiano1.
Abstract
We study how renewable energy impacts regional infrastructures considering the full deployment of electric mobility at that scale. We use the Sardinia Island in Italy as a paradigmatic case study of a semi-closed system both by energy and mobility point of view. Human mobility patterns are estimated by means of census data listing the mobility dynamics of about 700,000 vehicles, the energy demand is estimated by modeling the charging behavior of electric vehicle owners. Here we show that current renewable energy production of Sardinia is able to sustain the commuter mobility even in the theoretical case of a full switch from internal combustion vehicles to electric ones. Centrality measures from network theory on the reconstructed network of commuter trips allows to identify the most important areas (hubs) involved in regional mobility. The analysis of the expected energy flows reveals long-range effects on infrastructures outside metropolitan areas and points out that the most relevant unbalances are caused by spatial segregation between production and consumption areas. Finally, results suggest the adoption of planning actions supporting the installation of renewable energy plants in areas mostly involved by the commuting mobility, avoiding spatial segregation between consumption and generation areas.Entities:
Year: 2018 PMID: 29321575 PMCID: PMC5762725 DOI: 10.1038/s41598-017-17838-5
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Number of daily incoming and outgoing vehicles in the 35 major municipalities of Sardinia.
| Municipality | Incoming | Outgoing | Total | Energy Balance (kWh) |
|---|---|---|---|---|
| CAGLIARI | 60968 | 33745 | 94713 | 320541 |
| SASSARI | 36793 | 29220 | 66013 | 34374 |
| OLBIA | 15110 | 13104 | 28214 | 36252 |
| QUARTU SANT’ELENA | 10296 | 16313 | 26609 | −17734 |
| NUORO | 10977 | 8374 | 19351 | 4722 |
| ORISTANO | 11865 | 7059 | 18924 | 31023 |
| ALGHERO | 8519 | 8672 | 17191 | −4948 |
| SELARGIUS | 4897 | 7466 | 12363 | 5118 |
| IGLESIAS | 6154 | 6057 | 12211 | 30747 |
| ASSEMINI | 4795 | 6728 | 11523 | 32934 |
| CARBONIA | 5786 | 5699 | 11485 | 1255 |
| SESTU | 5069 | 5454 | 10523 | 30201 |
| PORTO TORRES | 4902 | 4916 | 9818 | 167157 |
| MONSERRATO | 4914 | 4798 | 9712 | −5828 |
| CAPOTERRA | 2980 | 5794 | 8774 | 5840 |
| TEMPIO PAUSANIA | 3644 | 3133 | 6777 | 6949 |
| ELMAS | 3736 | 2316 | 6052 | 3876 |
| VILLACIDRO | 3027 | 2953 | 5980 | 82152 |
| ARZACHENA | 3297 | 2613 | 5910 | 5043 |
| SINNAI | 1951 | 3951 | 5902 | −491 |
| TORTOLI’ | 3391 | 2385 | 5776 | 16775 |
| MACOMER | 3329 | 2229 | 5558 | 44170 |
| OZIERI | 2881 | 2504 | 5385 | 83428 |
| SINISCOLA | 2529 | 2370 | 4899 | 16663 |
| QUARTUCCIU | 1579 | 3198 | 4777 | −2572 |
| GUSPINI | 2250 | 2421 | 4671 | 178701 |
| LA MADDALENA | 2266 | 2312 | 4578 | 504 |
| SORSO | 1554 | 2996 | 4550 | −1404 |
| SANLURI | 2357 | 1872 | 4229 | 12867 |
| SANT’ANTIOCO | 1917 | 2035 | 3952 | 589 |
| TERRALBA | 1781 | 2163 | 3944 | 22996 |
| DECIMOMANNU | 1898 | 1876 | 3774 | 4017 |
| SAN GAVINO MONREALE | 2012 | 1708 | 3720 | −214 |
| DORGALI | 1638 | 1847 | 3485 | 2949 |
| DOLIANOVA | 1229 | 2221 | 3450 | 183 |
Figure 1The plot shows the cumulative number of incoming and outcoming vehicles per each municipality. The red line indicated the more central municipalites, listed in Table 1.
Figure 2Georeferenced distribution of both the betweenness and eigenvector centrality of the municipalities of the commuting network of the island of Sardinia. Panel (a) refers to the betweenness centrality, while panel (b) refers to the eigenvector centrality. The maps have been produced with QGIS version 2.18.4[15].
Figure 3Georefenced distribution of average daily power production and estimated EVs electricity demand per each municipality of the case study. Distributed generation by RES is shown in green scale, whereas consumption is shown in red scale. The energy balance between distributed generation and electricity EV demand for each municipality is shown for the municipalities listed in Table 1. Municipalities in red colors show negative negative energy balance (i.e. net consumption), while green municipalities show a positive balance (i.e. a surplus in net production). The maps have been produced with QGIS version 2.18.4[15].
Energetic characteristics of the vehicles considered in the scenario and composition of the fleet[16].
| Vehicle | Capacity (kWh) | Autonomy (km) | Estimated consumption | Fleet composition |
|---|---|---|---|---|
| Nissan Leaf | 24 | 199 | 0.12 | 80% |
| Volkswagen E-Golf | 24 | 190 | 0.127 | 15% |
| Tesla Model S | 85 | 491 | 0.173 | 5% |
Figure 4Geographical representation of the daily energy flows between each municipality. Relevant energy flows are present in the southern part of the Island, where the municipality of Cagliari is located. Map colors indicate the municipalities listed in Table 1 showing negative or positive (i.e. surplus) in the energy balance. Red means negative balance, while green is positive. The high flows (red) are mainly originated by the spatial segregation between production and consumption areas. Long range effects are visible in the areas surrounding Cagliari and Sassari (north-west), and are colored in pink (262–935 kWh). The map has been produced with QGIS version 2.18.4[15].