Neural networks (NN) have been recently applied together with evolutionary algorithms (EAs) to solve dynamic optimization problems. The applied NN estimates the position of the next optimum based on the previous time best solutions. After detecting a change, the predicted solution can be employed to move the EA’s population to a promising region of the solution space in order to accelerate convergence and improve accuracy in tracking the optimum. While previous works show improvement of the results, they neglect the overhead created by NN. In this work, we reflect the time spent for training NN in the optimization time and compare the results with a baseline EA. We explore if by considering the generated overhead, NN is still able to improv...
This is an invited tutorial on "Evolutionary Computation for Dynamic Optimization Problems", which w...
Dynamic optimization is frequently cited as a prime application area for evolutionary algorithms. In...
Biological and artificial evolution can be speeded up by environmental changes. From the evolutionar...
Dynamic optimisation occurs in a variety of realworld problems. To tackle these problems, evolutiona...
Prediction in evolutionary dynamic optimization (EDO), such as predicting the movement of optima, or...
open access articlePrediction in evolutionary dynamic optimization (EDO), such as predicting the mov...
Real-world optimisation problems are often dynamic. Previously good solutions must be updated or rep...
In the present work, we study possibilities of using artificial neural networks for accelerating of ...
Non-stationary, or dynamic, problems change over time. There exist a variety of forms of dynamism. T...
If the optimization problem is dynamic, the goal is no longer to find the extrema, but to track thei...
Although Artificial Neural Networks (ANNs) are important Data Mining techniques, the search for the ...
Classical Machine Learning methods are usually developed to work in static data sets. Yet, real worl...
Abstract If the optimization problem is dynamic, the goal is no longer to find the extrema, but to t...
Real-world optimisation problems are often dynamic. Previously good solutions must be updated or rep...
Non-stationary, or dynamic, problems change over time. There exist a variety of forms of dynamism. T...
This is an invited tutorial on "Evolutionary Computation for Dynamic Optimization Problems", which w...
Dynamic optimization is frequently cited as a prime application area for evolutionary algorithms. In...
Biological and artificial evolution can be speeded up by environmental changes. From the evolutionar...
Dynamic optimisation occurs in a variety of realworld problems. To tackle these problems, evolutiona...
Prediction in evolutionary dynamic optimization (EDO), such as predicting the movement of optima, or...
open access articlePrediction in evolutionary dynamic optimization (EDO), such as predicting the mov...
Real-world optimisation problems are often dynamic. Previously good solutions must be updated or rep...
In the present work, we study possibilities of using artificial neural networks for accelerating of ...
Non-stationary, or dynamic, problems change over time. There exist a variety of forms of dynamism. T...
If the optimization problem is dynamic, the goal is no longer to find the extrema, but to track thei...
Although Artificial Neural Networks (ANNs) are important Data Mining techniques, the search for the ...
Classical Machine Learning methods are usually developed to work in static data sets. Yet, real worl...
Abstract If the optimization problem is dynamic, the goal is no longer to find the extrema, but to t...
Real-world optimisation problems are often dynamic. Previously good solutions must be updated or rep...
Non-stationary, or dynamic, problems change over time. There exist a variety of forms of dynamism. T...
This is an invited tutorial on "Evolutionary Computation for Dynamic Optimization Problems", which w...
Dynamic optimization is frequently cited as a prime application area for evolutionary algorithms. In...
Biological and artificial evolution can be speeded up by environmental changes. From the evolutionar...