A hyper-heuristic multi-criteria decision support system for eco-efficient product life cycle
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Decision support is required when complex situations arise during product development which takes into account the whole product life cycle. This is especially true when impacted by the ill-defined consequences on the environment in an ever increasingly eco-conscious world. Analytical Hierarchy process (AHP) is one method of providing decision support, and is an instance of a decision support heuristic. Machine learning methods have proved themselves on many well defined problems with clearly defined objectives. In particular, we focus on the recently emerging field of hyper-heuristics which is a blend of human designed heuristics, with the extension of machine designed heuristics. In essence humans can operate at the higher concept or abstract level, while machine heuristics can operate at a lower level. There are a number of issues within the proposed framework, including visualizing a multi-dimensional surface of designs along the Pareto front, as well as dealing with different types of data during the decision making process. It is proposed that Hyper-heuristics, supplemented with other methodologies to deal with vague or missing data, offer a framework in which to begin to address several of the complex compromises that arise during product development.