The future of impact assessment in Austria and Germany – streamlining impact assessment to save the planet?
In: Impact assessment and project appraisal, Band 41, Heft 3, S. 215-222
ISSN: 1471-5465
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In: Impact assessment and project appraisal, Band 41, Heft 3, S. 215-222
ISSN: 1471-5465
SSRN
SSRN
In: Environmental management: an international journal for decision makers, scientists, and environmental auditors, Band 70, Heft 6, S. 1004-1022
ISSN: 1432-1009
AbstractPublic green and open spaces fulfil various social, ecological, economic, and aesthetic roles, which can be complementary while also competing with one another. The COVID-19 pandemic catalysed multiple societal changes, including citizens' perception, needs and expectations relating to urban green spaces. This article discusses the extent to which the temporally and geographically changed patterns of experiencing these natural spaces also influenced users' perception and behaviour as well as their appreciation of the conservation areas. The study is based upon two surveys carried out in the greater metropolitan region of Vienna, the capital city of Austria. A quantitative survey (representative online panel) among Viennese population (n = 1012), as well as qualitive interviews with experts responsible for conservation areas, administrators of federal parks, along with NGOs representatives were carried out in spring and summer 2021. Our study shows changed perception of urban citizens towards green spaces during the COVID-19 pandemic. An increased importance of time spent in nature (68%) and possibility to visit large green areas (67%) was reported by Viennese citizens. Also, higher recognition of green spaces located close to home was observed among 69% of the respondents. There were significant differences in opinions on green areas during the pandemic in various age and gender groups. Thus, the presented study contributes to the ongoing international discussion on the transition of societal needs and its effects on urban green spaces induced by the pandemic. Presented results highlight the need of urgent transformation towards a more sustainable, resilient and healthy urban space.
In: Impact assessment and project appraisal, Band 42, Heft 2, S. 200-208
ISSN: 1471-5465
In: Urban Planning, Band 10
The impacts on living conditions and natural habitats deriving from planning decisions require complex analysis of cross-acting factors, which in turn require interdisciplinary data. At the municipal level, both data collection and the knowledge needed to interpret it are often lacking. Additionally, climate change and species extinction demand rapid and effective policies in order to preserve soil resources for future generations. Ex-ante evaluation of planning measures is insufficient owing to a lack of data and linear models capable of simulating the impacts of complex systemic relationships. Integrating machine learning (ML) into systemic planning increases awareness of impacts by providing decision-makers with predictive analysis and risk mitigation tools. ML can predict future scenarios beyond rigid linear models, identifying patterns, trends, and correlations within complex systems and depicting hidden relationships. This article focuses on a case study of single-family houses in Upper Austria, chosen for its transferability to other regions. It critically reflects on an ML approach, linking data on past and current planning regulations and decisions to the physical environment. We create an inventory of categories of areas with different features to inform nature-based solutions and backcasting planning decisions and build a training dataset for ML models. Our model predicts the effects of planning decisions on soil sealing. We discuss how ML can support local planning by providing area assessments in soil sealing within the case study. The article presents a working approach to planning and demonstrates that more data is needed to achieve well-founded planning statements.
In: Impact assessment and project appraisal, Band 41, Heft 3, S. 181-189
ISSN: 1471-5465