| Literature DB >> 27428372 |
Angela J Dean1,2,3, Kelly S Fielding1,2, Fiona J Newton2,4.
Abstract
Sustainable approaches to water management require broad community acceptance of changes in policy, practice and technology, which in turn, requires an engaged community. A critical first step in building an engaged community is to identify community knowledge about water management, an issue rarely examined in research. To address this, we surveyed a representative sample of Australian adults (n = 5172). Knowledge was assessed using 15 questions about impact of household activities on waterways, the urban water cycle, and water management. This survey also examined demographics, psychosocial characteristics, exposure to water-related information, and water-related behaviors and policy support. Participants correctly answered a mean of 8.0 questions (Range 0-15). Most respondents knew that household actions can reduce water use and influence waterway health, whereas less than one third correctly identified that domestic wastewater is treated prior to entering waterways, urban stormwater is not treated, and that these are carried via different pipes. Higher water knowledge was associated with older age, higher education and living in non-urban areas. Poorer water knowledge was associated with speaking a language other than English in the home. Garden size, experience of water restrictions, satisfaction, waterway use for swimming, and certain information sources were also associated with knowledge. Greater water knowledge was associated with adoption of water-saving and pollution-reduction behaviors, and support for both alternative water sources and raingardens. These findings confirm the importance of community knowledge, and identify potential subgroups who may require additional targeting to build knowledge and support for water management initiatives.Entities:
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Year: 2016 PMID: 27428372 PMCID: PMC4948862 DOI: 10.1371/journal.pone.0159063
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Responses to water knowledge statements (population weighted data).
| 1. Water conservation actions by householders can significantly reduce the amount of water used in urban areas | 73.0% (3789) |
| 2. What individual residents do in their home and garden has consequences for the health of waterways and coastal bays | 71.6% (3714) |
| 3. Waterways can be damaged by stormwater flows | 67.0% (3478) |
| 4. The fertilizers that individual householders use in their garden can have a negative impact on the health of waterways | 66.6% (3456) |
| 5. Planting native plants along a waterway’s bank improves the health of waterways | 66.3% (3443) |
| 6. Soil erosion from urban areas does not affect the health of waterways | 59.8% (3105) |
| 7. The pesticides that individual householders use in their garden have no negative impact on the health of waterways | 57.8% (3000) |
| 8. I know where my household drinking water comes from (e.g. dam, groundwater, desalinated water etc.) | 53.6% (2779) |
| 9. Waterways can cope easily with large amounts of sediment (i.e. eroded soil suspended in the water) | 52.6% (2728) |
| 10. A catchment is the total land area draining to a specific waterway | 43.9% (2280) |
| 11. The amount of water available for use is finite | 40.9% (2123) |
| 12. I know what catchment my household is part of | 37.2% (1929) |
| 13. Stormwater from roofs and roads is treated to remove pollutants before entering the waterways | 29.9% (1112) |
| 14. Domestic wastewater and stormwater are carried through the same pipes | 29.2% (1517) |
| 15. Wastewater from domestic bathrooms and laundries receives little or no treatment before entering waterways | 26.0% (1349) |
*reverse scored items where the correct response is ‘disagree’ or ‘strongly disagree’.
**Multiple choice question.
Final model examining associations with water-related knowledge using multilevel models and population weighted data (AIC original model = 10097.91; AIC final model = 10057.90,).
| Age | 47.0±16.4 (18–85) | 180.54 | 0.21±0.02 | 0.18, 0.24 |
| Sex (male) | 49.1% (2548) | 39.88 | 0.15±0.02 | 0.11, 0.20 |
| Remoteness | See text | 15.28 | 0.01±0.01 | 0.03, 0.07 |
| State of residence—Victoria | 24.0% (1248) | 2.80 | -0.08±0.08 | -0.03, 0.31 |
| >1 parent born outside Australia | 47.7% (2477) | 20.16 | -0.12±0.03 | -0.17, -0.07 |
| Language other than English at home | 18.7% (970) | 9.97 | -0.11±0.04 | -0.19, -0.04 |
| Ancestry–Northwest Europe | 55.5% (2883) | 88.75 | 0.25±0.3 | 0.20, 0.30 |
| Ancestry–Sub-Saharan Africa | 0.9% (45) | 3.69 | 0.25±0.13 | -0.01, 0.50 |
| Income | See | 5.94 | 0.03±0.01 | 0.01, 0.06 |
| Highest education completed | TAFE 33.9% (1761) | 33.18 | 0.26±0.03 | 0.19, 0.32 |
| Uni 35.1% (1824) | 0.10±0.03 | 0.04, 0.16 | ||
| Currently studying | 5.3% (275) | 23.45 | 0.26±0.05 | 0.15, 0.36 |
| Experience of water restrictions | 81.7% (4242) | 90.16 | 0.31±0.03 | 0.25, 0.38 |
| Waterway use—swimming | 16.0% (842) | 7.78 | 0.09±0.03 | 0.03, 0.16 |
| Garden size | 82.1% (4262) with garden | 10.25 | 0.04±0.01 | 0.02, 0.07 |
| Life satisfaction | 6.54±1.74 (0–10) | 15.07 | 0.05±0.01 | 0.03, 0.08 |
| Participation | 1.89±2.43 (0–11) | 3.79 | 0.02±0.01 | 0.00, 0.05 |
| Water information–utility newsletter | 12.7% (658) | 5.20 | 0.09±0.04 | 0.01, 0.17 |
| Water information–utility bill | 26.0% (1348) | 4.10 | 0.07±0.04 | 0.00, 0.14 |
| Water information–local govt. newsletter | 9.0% (465) | 8.85 | 0.13±0.04 | 0.05, 0.22 |
| Water information–social media | 2.7% (138) | 4.46 | 0.14±0.07 | 0.01, 0.28 |
| No water information | 51.3% (2665) | 9.89 | -0.10±0.03 | -0.17, -0.04 |
*p<0.05
**p<0.01
***p<0.001
†p<0.06.
aVariables included in the original model but not retained in the final model as fixed effects: current employment, State of residence (NSW, QLD, SA, WA, TAS), Ancestry (ATSI, Australia-Pacific, SouthEast Europe, SouthEast Asia, Northeast Asia, SouthCentral Asia, Americas, and North Africa-Middle East), Regular waterway use–fishing, Regular waterway use–boating, Number of children, Household size, Duration at current address, Currently renting, Living in apartment, Water information (from newspaper, television, radio, online news, or water website), and rainfall patterns (average rainfall, number of days of rainfall).
bNumber of cases (observations) included in the final model = 5194.
Final models examining associations between knowledge, and water-related behaviors and policy support, using population weighted data.
| 4.96 | 14.21 | 10.61 | 13.45 | 5.16 | ||||||
| 0.36 | 0.24 | 0.15 | 0.19 | 0.16 | ||||||
| Age | 84.94 | 0.12±0.01 | 9.82 | 0.05±0.02 | 9.24 | 0.04±0.01 | 111.85 | -0.16±0.01 | ||
| Sex (male) | 8.57 | -0.07±0.02 | 23.53 | 0.13±0.03 | ||||||
| Education TAFE | 5.26 | 0.02±0.03 | 12.13 | 0.02±0.03 | ||||||
| Uni | -0.08±0.03 | 0.15±0.03 | ||||||||
| State—NSW | 9.61 | -0.12±0.01 | 26.94 | -0.22±0.04 | 3.78 | 0.10±0.05 | ||||
| State–Victoria | 15.55 | -0.24±0.06 | 9.69 | 0.20±0.06 | ||||||
| State–Western Australia | 9.19 | -0.16±0.05 | 28.33 | -0.31±0.06 | 35.96 | 0.30±0.05 | 4.76 | 0.15±0.07 | ||
| State—Tasmania | 28.09 | -0.65±0.12 | ||||||||
| State—Queensland | 5.95 | -0.11±0.04 | ||||||||
| State–South Australia | 13.13 | 0.24±0.07 | 6.71 | 0.14±0.05 | 8.93 | 0.24±0.08 | ||||
| Remoteness | 3.56 | 0.02±0.01 | 14.42 | 0.05±0.01 | 3.31 | -0.02±0.01 | ||||
| Annual rainfall | 8.00 | 0.00±0.00 | 4.09* | 0.00±0.00 | 6.28 | 0.00±0.00 | ||||
| Number of days of rain/year | 7.76 | 0.00±0.00 | ||||||||
| Garden | 381.13 | 0.64±0.03 | 41.90 | 0.24±0.04 | 66.72 | 0.31±0.04 | 14.87 | 0.14±0.04 | ||
| Renting | 217.36 | -0.39±0.03 | 699.08 | -0.80±0.03 | 24.13 | -0.16±0.03 | ||||
| Experience of water restrictions | 41.80 | 0.09±0.01 | ||||||||
| Experience of behavior change during restrictions | 38.18 | 0.08±0.01 | 20.19 | 0.06±0.01 | 30.36 | 0.08±0.01 | 17.30 | 0.06±0.01 | 21.61 | 0.06±0.01 |
| Environmental identity | 187.99 | 0.21±0.02 | 61.61 | 0.13±0.01 | 119.28 | 0.20±0.02 | 83.85 | 0.15±0.02 | 72.17 | 0.15±0.02 |
*p<0.05
**p<0.01
***p<0.001.