Intelligent ALMM System for Discrete Optimization Problems - The Idea of Knowledge Base Application

The paper introduces the concept of intelligent information system for solving discrete optimization problems, named Intelligent ALMM System. The system is a new version of the software tool named ALMM Solver [8, 13]. The paper propose new idea of functioning the solver and its new, essentially extended structure. Presented in the paper Intelligent ALMM System not only solves discrete optimization problems, but also: assists its users in the selection of an appropriate solving method, helps configure algorithms and helps the development of problem model software representations. In order to implement this new idea the author proposes the use of a Knowledge Base linked with the Intelligent User Interface. Both ALMM Solver and Intelligent ALMM System utilize a modeling paradigm named Algebraic-Logical Meta-Model of Multistage Decision Processes (ALMM) and its theory both developed by Dudek-Dyduch E. ALMM enables a unified approach to creating discrete optimization problem models, representing knowledge about these problems and presenting solving methods and algorithms.

[1]  Ewa Dudek-Dyduch,et al.  ALMM Solver - A Tool for Optimization Problems , 2014, ICAISC.

[2]  Zbigniew Gomolka,et al.  Improvement of image processing by using homogeneous neural networks with fractional derivatives theorem , 2011 .

[3]  Ewa Dudek-Dyduch,et al.  Component Library of Problem Models for ALMM Solver , 2017, J. Inf. Telecommun..

[4]  J. Paulo Davim,et al.  Artificial Intelligence Tools , 2012 .

[5]  Ewa Dudek-Dyduch,et al.  ALMM Solver: The Idea and the Architecture , 2015, ICAISC.

[6]  Ewa Dudek-Dyduch,et al.  ALMM Solver for Combinatorial and Discrete Optimization Problems - Idea of Problem Model Library , 2016, ACIIDS.

[7]  Nick Taylor,et al.  A Framework for Evolutionary Computation in Agent-Based Systems , 1999 .

[8]  Zbigniew Gomolka,et al.  Cognitive Investigation on Pilot Attention During Take-Offs and Landings Using Flight Simulator , 2017, ICAISC.

[9]  Ewa Dudek-Dyduch Modeling Manufacturing Processes with Disturbances - A New Method Based on Algebraic-Logical Meta-Models , 2015, ICAISC.

[10]  Ewa Dudek-Dyduch,et al.  Extended Learning Method for Designation of Co-operation , 2014, Trans. Comput. Collect. Intell..

[11]  Ewa Dudek-Dyduch Algebraic Logical Meta-Model of Decision Processes - New Metaheuristics , 2015, ICAISC.

[12]  Jacek Blazewicz,et al.  Handbook on Scheduling , 2007 .

[13]  Ewa Dudek-Dyduch,et al.  Idea of switching algebraic-logical models in flow-shop scheduling problem with defects , 2013, 2013 18th International Conference on Methods & Models in Automation & Robotics (MMAR).

[14]  Ewa Dudek-Dyduch,et al.  Learning-based algorithms in scheduling , 2000, J. Intell. Manuf..

[15]  Grzegorz Bocewicz,et al.  Multimodal Processes Rescheduling: Cyclic Steady States Space Approach , 2013 .

[16]  Toby Walsh,et al.  Handbook of Constraint Programming , 2006, Handbook of Constraint Programming.