Memetic Search in Differential Evolution Algorithm
TL;DR: Results show that the anticipated algorithm go one better than the basic DE and its recent deviations in a good number of the experiments, which indicates efficiency and efficacy of MSDE.
read more
Abstract: Differential Evolution (DE) is a renowned optimization stratagem that can easily solve nonlinear and comprehensive problems. DE is a well known and uncomplicated population based probabilistic approach for comprehensive optimization. It has apparently outperformed a number of Evolutionary Algorithms and further search heuristics in the vein of Particle Swarm Optimization at what time of testing over both yardstick and actual world problems. Nevertheless, DE, like other probabilistic optimization algorithms, from time to time exhibits precipitate convergence and stagnates at suboptimal position. In order to stay away from stagnation behavior while maintaining an excellent convergence speed, an innovative search strategy is introduced, named memetic search in DE. In the planned strategy, positions update equation customized as per a memetic search stratagem. In this strategy a better solution participates more times in the position modernize procedure. The position update equation is inspired from the memetic search in artificial bee colony algorithm. The proposed strategy is named as Memetic Search in Differential Evolution (MSDE). To prove efficiency and efficacy of MSDE, it is tested over 8 benchmark optimization problems and three real world optimization problems. A comparative analysis has also been carried out among proposed MSDE and original DE. Results show that the anticipated algorithm go one better than the basic DE and its recent deviations in a good number of the experiments.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
Fitness Based Position Update in Spider Monkey Optimization Algorithm
TL;DR: The proposed algorithm is named as Fitness based Position Update in SMO (FPSMO) algorithm as it updates position of individuals based on their fitness as it enhances the rate of convergence.
29
Modified Position Update in Spider Monkey Optimization Algorithm
Sandeep Kumar,Vivek Kumar Sharma,Rajani Kumari +2 more
- 01 Jan 2014
TL;DR: A modified strategy in SMO is proposed in order to enhance performance of original SMO and modifies both local leader and global leader phase and is named as Modified Position Update in Spider Monkey Optimization (MPU-SMO).
Improving biorefinery planning: Integration of spatial data using exact optimization nested in an evolutionary strategy
TL;DR: A planning approach that uses Geographic Information Systems (GIS) to account for spatially scattered biomass when optimizing a biorefinery’s location, capacity, and configuration is developed.
23
EATFormer: Improving Vision Transformer Inspired by Evolutionary Algorithm
TL;DR: A novel pyramid EATFormer backbone that only contains the proposed EA-based Transformer (EAT) block is proposed, which consists of three residual parts, i.e. Multi-Scale Region Aggregation (MSRA), Global and Local Interaction (GLI), and Feed-Forward Network (FFN) modules, to model multi-scale, interactive, and individual information separately.
References
•Book
Adaptation in natural and artificial systems
John H. Holland
- 01 Jan 1975
TL;DR: Names of founding work in the area of Adaptation and modiication, which aims to mimic biological optimization, and some (Non-GA) branches of AI.
•Book
Differential Evolution: A Practical Approach to Global Optimization (Natural Computing Series)
Kenneth Price,Rainer Storn,Jouni Lampinen +2 more
- 13 Dec 2005
TL;DR: This volume explores the differential evolution (DE) algorithm in both principle and practice and is a valuable resource for professionals needing a proven optimizer and for students wanting an evolutionary perspective on global numerical optimization.
5.9K
`` Direct Search'' Solution of Numerical and Statistical Problems
Robert Hooke,T. A. Jeeves +1 more
TL;DR: The phrase "direct search" is used to describe sequential examination of trial solutions involving comparison of each trial solution with the "best" obtained up to that time together with a strategy for determining (as a function of earlier results) what the next trial solution will be.
4.5K
Problem Definitions and Evaluation Criteria for the CEC 2005 Special Session on Real-Parameter Optimization
Ponnuthurai Nagaratnam Suganthan,Nikolaus Hansen,Jing Liang,Kalyanmoy Deb,Y. P. Chen,Anne Auger,Santosh Tiwari +6 more
- 01 Jan 2005
TL;DR: This special session is devoted to the approaches, algorithms and techniques for solving real parameter single objective optimization without making use of the exact equations of the test functions.