Integration of spatial planning and flood-risk management has three dimensions: territorial, policy and institutional. Developing infrastructures ext pdf sociology of organizations structures and relationships both data and models and systems is a promising way to support integration.
Flooding is a widely occurring natural hazard that noticeably damages property, people, and the environment. In the context of climate change, the integration of spatial planning with flood-risk management has gained prominence as an approach to mitigating the risks of flooding. The absence of easy access to integrated and high-quality information, and the technologies and tools to use information are among the factors that impede this integration. Limited research has been conducted to develop a framework and to investigate the role of information and technologies in this integration. This study draws primarily on the European experiences and literature and identifies three dimensions of the integration of spatial planning with flood-risk management: territorial, policy, and institutional. This study presents the connections between SIPI elements and integration dimensions, which is important for a better understanding of roles of geographic information and technologies in integration. The conceptual framework of SIPI will govern further development and evaluation of SIPI.
Screen reader users, click the load entire article button to bypass dynamically loaded article content. Please note that Internet Explorer version 8. Click the View full text link to bypass dynamically loaded article content. This chapter provides an overview of sociology and social work. Sociology is increasingly seen as helping to provide a basis of knowledge on which the social worker can draw to work with clients in the context of the complex organizational settings of a modern society. Sociology is not the only social science that makes up this knowledge base. The whole range of the social sciences are at the disposal of the social worker or anybody who wishes to understand human society in a more systematic and scientific manner.
Sociology had an important influence on social work in its formative years and played a part in the first courses of training for social workers. The early sociological influence on social work was based mainly on the evolutionary theories of Spencer that served to reinforce beliefs in the concept of personal inadequacy as the cause of social problems. This article has not been cited. You’re interested in Big Data software systems and technology, clearly, or you wouldn’t be reading this.
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