Title :
Uncertainty in scheduling: probability, problem reduction, abstractions and the user
Author :
Berry, Padine M.
Author_Institution :
Artificial Intelligence Applications Inst., Edinburgh Univ., UK
Abstract :
In most realistic scheduling situations, the information available to the decision-maker is both incomplete and uncertain. This complicates the automation of intelligent reasoning systems in the real world. The author discusses the issues involved in reasoning in uncertain environments and argues that scheduling is essentially a problem of decision-making under uncertainty. She classifies various types of uncertainty and proposes techniques to address these problems within the advanced software domain. These techniques include the use of probabilistic modelling, problem reduction, temporal abstractions and the user. Relevant issues are illustrated through an advanced scheduling system being developed at the University of Geneva. The author also mentions how these techniques relate to TOSCA, a system developed for manufacturing by AIAI
Keywords :
inference mechanisms; knowledge based systems; manufacturing data processing; scheduling; uncertainty handling; AIAI; TOSCA; advanced scheduling system; advanced software domain; decision-maker; decision-making; intelligent reasoning systems; manufacturing; probabilistic modelling; problem reduction; real world; realistic scheduling situations; temporal abstractions; uncertain environments; uncertainty;
Conference_Titel :
Advanced Software Technologies for Scheduling, IEE Colloquium on
Conference_Location :
London