Parameter tuning in distributed Home Automation Systems: towards a tabu search approach

This paper deals with the problem of designing an efficient metaheuristics optimization method to tune the parameters of a Home Automation System (HAS). Using a simulation environment, the performances of a home automation system in exploiting limited resources (electricity, gas, hot water) can be described in terms of suitable indices that depend on behavioural parameters of the individual appliances and can be practically evaluated. The choice of the best set of parameters for the model is the common intention of most simulation studies and for this reason in recent years the field of the simulation optimization has received increasing attention. Our method has proven effective in finding good parameter configurations, even starting from very poor initial solutions.

[1]  Sigurdur Olafsson,et al.  Simulation optimization , 2002, Proceedings of the Winter Simulation Conference.

[2]  Cigdem Alabas-Uslu,et al.  Simulation optimization using tabu search , 2000, 2000 Winter Simulation Conference Proceedings (Cat. No.00CH37165).

[3]  Fred Glover,et al.  Practical introduction to simulation optimization , 2003, Proceedings of the 2003 Winter Simulation Conference, 2003..

[4]  Alain Hertz,et al.  A TUTORIAL ON TABU SEARCH , 1992 .

[5]  László Gerencsér,et al.  Optimization over discrete sets via SPSA , 1999, WSC '99.

[6]  Michael C. Fu,et al.  Optimization for Simulation: Theory vs. Practice , 2002 .

[7]  Fred W. Glover,et al.  Simulation optimization: a review, new developments, and applications , 2005, Proceedings of the Winter Simulation Conference, 2005..

[8]  D. Scaradozzi,et al.  A simulation environment for the analysis of home automation systems , 2007, 2007 Mediterranean Conference on Control & Automation.

[9]  Michael C. Fu,et al.  Feature Article: Optimization for simulation: Theory vs. Practice , 2002, INFORMS J. Comput..

[10]  Giuseppe Conte,et al.  An Approach to Home Automation by Means of MAS Theory , 2007 .

[11]  R. H. Myers,et al.  Response Surface Methodology: Process and Product Optimization Using Designed Experiments , 1995 .

[12]  Victor R. Lesser,et al.  An Agent Infrastructure to Build and Evaluate Multi-Agent Systems: The Java Agent Framework and Multi-Abent System Simulator , 2000, Agents Workshop on Infrastructure for Multi-Agent Systems.

[13]  Fred W. Glover,et al.  Future paths for integer programming and links to artificial intelligence , 1986, Comput. Oper. Res..

[14]  Averill M. Law,et al.  Simulation Modeling and Analysis , 1982 .