Evolving Structure - Optimising Content
نویسنده
چکیده
This paper describes the initial results of a new form of evolutionary system specifically designed for time series modeling. The system combines a grammaticallybased Genetic Programming system with various optimisation techniques. The system uses the evolutionary system to construct the structure of equations and optimisation techniques to essentially fill in the details. Three forms of optimisation are described: optimisation of constants in an equation; the optimisation of both the constants and variables in an equation; and the use of a hillclimbing mutation to further tune the evolved and optimised equations. Preliminary results indicate that this combination of techniques produces significant improvements in convergence based on the training data, and produces equivalent generalisation on unseen data, for a given number of population member evaluations.
منابع مشابه
Potentials of Evolving Linear Models in Tracking Control Design for Nonlinear Variable Structure Systems
Evolving models have found applications in many real world systems. In this paper, potentials of the Evolving Linear Models (ELMs) in tracking control design for nonlinear variable structure systems are introduced. At first, an ELM is introduced as a dynamic single input, single output (SISO) linear model whose parameters as well as dynamic orders of input and output signals can change through ...
متن کاملThe Evolution of Motor Control Approaches to control optimisation and robustness in DC motors EASy MSc Thesis
6.0 Experiment 2: 6.1 Evolving coil switching pattern generators for a brushless DC motor 6.2 Brushless Motors – principles of operation 6.3 Experimental setup 6.4 Power driver design 6.5 Fitness function 6.6 Problems and issues that arose during testing 6.7 Evolving a controller for a fully functioning motor 6.8 Evolving a controller with random coil failures 6.9 Evaluating a normal controller...
متن کاملOptimising Existing Software with Genetic Programming
We show genetic improvement of programs (GIP) can scale by evolving increased performance in a widely-used and highly complex 50 000 line system. GISMOE found code that is 70 times faster (on average) and yet is at least as good functionally. Indeed it even gives a small semantic gain.
متن کاملPrint Article
The educational knowledge domain may be understood as a system composed of multiple, co-evolving networks that reflect the form and content of a cultural field. This paper describes the educational knowledge domain as having a community structure (form) based in relations of production (authoring) and consumption (referencing), and a cognitive structure (content) based in relations of ideas and...
متن کامل