Robust optimization over time is a new way to tackle dynamic optimization problems where the goal is to find solutions that remain acceptable over an extended period of time. The state-of-the-art methods in this domain try to identify robust solutions based on their future predicted fitness values. However, predicting future fitness values is difficult and error prone. In this paper, we propose a new framework based on a multi-population method in which sub-populations are responsible for tracking peaks and also gathering characteristic information about them. When the quality of the current robust solution falls below the acceptance threshold, the algorithm chooses the next robust solution based on the collected information. We propose fou...
Particle swarm optimization History-Driven approach Dynamic environments Swarm intelligence a b s t ...
Robust optimization tries to find flexible solutions when solving problems with uncertain scenarios ...
Copyright @ 2011 IEEETo solve dynamic optimization problems, multiple population methods are used t...
Robust optimization over time is a new way to tackle dynamic optimization problems where the goal is...
Robust Optimization Over Time (ROOT) is a new method of solving Dynamic Optimization Problems in res...
Jin Y, Tang K, Yu X, Sendhoff B, Yao X. A framework for finding robust optimal solutions over time. ...
The focus of most research in evolutionary dynamic optimization has been tracking moving optimum (TM...
Yu X, Jin Y, Tang K, Yao X. Robust optimization over time — A new perspective on dynamic ...
Dynamic optimization problems (DOPs) are those whose specifications change over time during the opti...
Robust optimization over time (ROOT) is a relatively recent topic in the field of dynamic evolutiona...
In dynamic multiobjective optimization problems, the environmental parameters change over time, whic...
Robust optimization over time is a new approach to solving dynamic optimization problems. It aims to...
Abstract: Many real-world problems are modeled as multi-objective optimization problems whose optima...
Many real world problems can be formalized as optimisation problems. Yet, the environment in the rea...
In real-world applications, it is often desired that a solution is not only of high performance, but...
Particle swarm optimization History-Driven approach Dynamic environments Swarm intelligence a b s t ...
Robust optimization tries to find flexible solutions when solving problems with uncertain scenarios ...
Copyright @ 2011 IEEETo solve dynamic optimization problems, multiple population methods are used t...
Robust optimization over time is a new way to tackle dynamic optimization problems where the goal is...
Robust Optimization Over Time (ROOT) is a new method of solving Dynamic Optimization Problems in res...
Jin Y, Tang K, Yu X, Sendhoff B, Yao X. A framework for finding robust optimal solutions over time. ...
The focus of most research in evolutionary dynamic optimization has been tracking moving optimum (TM...
Yu X, Jin Y, Tang K, Yao X. Robust optimization over time — A new perspective on dynamic ...
Dynamic optimization problems (DOPs) are those whose specifications change over time during the opti...
Robust optimization over time (ROOT) is a relatively recent topic in the field of dynamic evolutiona...
In dynamic multiobjective optimization problems, the environmental parameters change over time, whic...
Robust optimization over time is a new approach to solving dynamic optimization problems. It aims to...
Abstract: Many real-world problems are modeled as multi-objective optimization problems whose optima...
Many real world problems can be formalized as optimisation problems. Yet, the environment in the rea...
In real-world applications, it is often desired that a solution is not only of high performance, but...
Particle swarm optimization History-Driven approach Dynamic environments Swarm intelligence a b s t ...
Robust optimization tries to find flexible solutions when solving problems with uncertain scenarios ...
Copyright @ 2011 IEEETo solve dynamic optimization problems, multiple population methods are used t...