New MCDM methods under uncertainty applied to integrated natural risks management
Abstract
No single, stand-alone decision-aid method, expert assessment methodology or physical, deterministic approaches can be used to solve complex real life problems which often imply several actors and base on heterogeneous imperfect information provided by several more or less reliable sources. This paper presents adapted and extended Multi-Criteria Decision-Making Methods (MCDMs) to help expertise process and adapt to information availability and quality. New MCDMs including fuzzy sets, possibility, belief function theories and information fusion have been designed to cope with imperfect information and uncertainty. The paper recalls and describes their main features and interest before describing a comparison between Cost-Benefit Analysis (CBA, Analytical Hierarchy Process (AHP) and the new Belief Function based Technique for Order Preference by Similarity to Ideal Solution (BF-TOPSIS) methods recently developed in the context of natural risks in mountains.