Details Details PDF BIBTEX RIS Title On transformation of STRIPS planning to linear programming Journal title Archives of Control Sciences Yearbook 2011 Numer No 3 Authors Galuszka, Adam Divisions of PAS Nauki Techniczne Publisher Committee of Automatic Control and Robotics PAS Date 2011 Identifier DOI: 10.2478/v10170-010-0042-3 ; ISSN 1230-2384 References Ambite J. (2001), Planning by rewriting, J. of Artificial Intelligence Research, 15, 207. ; Avriel M. (1998), Stowage planning for container ships to reduce the number of shifts, Annals of Operations Research, 76, 55, doi.org/10.1023/A:1018956823693 ; Backstrom Ch. (1998), Computational aspects of reordering plans, J. of Artificial Intelligence Research, 9, 99. ; Baral Ch. (2000), Computational complexity of planning and approximate planning in the presence of incompleteness, Artificial Intelligence, 122, 241, doi.org/10.1016/S0004-3702(00)00043-6 ; Bartak R. 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