This paper proposes a novel multi-objective root system growth optimizer (MORSGO) for the copper strip burdening optimization. The MORSGO aims to handle multi-objective problems with satisfactory convergence and diversity via implementing adaptive root growth operators with a pool of multi-objective search rules and strategies. Specifically, the single-objective root growth operators including branching, regrowing and auxin-based tropisms are deliberately designed. They have merits of appropriately balancing exploring & exploiting and self-adaptively varying population size to reduce redundant computation. The effective multi-objective strategies including the fast non-dominated sorting and the farthest-candidate selection are developed...
Robust optimization over time (ROOT) is a relatively recent topic in the field of dynamic evolutiona...
The multi-objective evolutionary algorithm based on decomposition (MOEA/D) has shown to be very effi...
Many real-world applications of multi-objective optimization involve a large number of objectives. A...
This paper proposes a novel multi-objective root system growth optimizer (MORSGO) for the copper str...
This paper presents a general optimization model gleaned ideas from plant root growth behaviors in t...
Most bio-inspired algorithms simulate the behaviors of animals. This paper proposes a new plant-insp...
Traditional multi-objective evolutionary algorithms (MOEAs) consider multiple objectives as a whole ...
In this work, a new plant-inspired optimization algorithm namely the hybrid artificial root foraging...
Nature has the ability of sustainability and improvisation for better survival. This unique characte...
Abstract. The CPEA, an Evolutionary Algorithm that preserves diversity by find-ing clusters in the p...
Most nature-inspired algorithms simulate intelligent behaviors of animals and insects that can move ...
Plant root foraging exhibits complex behaviors analogous to those of animals, including the adaptabi...
Handling multiple number of objectives in industrial optimization problems is a regular affair. The ...
Inspired by the behaviors of plant root growth, an Artificial Root Mass (ARM) optimization algorithm...
In large-scale non-linear construction optimization problems, the capability of an algorithm to find...
Robust optimization over time (ROOT) is a relatively recent topic in the field of dynamic evolutiona...
The multi-objective evolutionary algorithm based on decomposition (MOEA/D) has shown to be very effi...
Many real-world applications of multi-objective optimization involve a large number of objectives. A...
This paper proposes a novel multi-objective root system growth optimizer (MORSGO) for the copper str...
This paper presents a general optimization model gleaned ideas from plant root growth behaviors in t...
Most bio-inspired algorithms simulate the behaviors of animals. This paper proposes a new plant-insp...
Traditional multi-objective evolutionary algorithms (MOEAs) consider multiple objectives as a whole ...
In this work, a new plant-inspired optimization algorithm namely the hybrid artificial root foraging...
Nature has the ability of sustainability and improvisation for better survival. This unique characte...
Abstract. The CPEA, an Evolutionary Algorithm that preserves diversity by find-ing clusters in the p...
Most nature-inspired algorithms simulate intelligent behaviors of animals and insects that can move ...
Plant root foraging exhibits complex behaviors analogous to those of animals, including the adaptabi...
Handling multiple number of objectives in industrial optimization problems is a regular affair. The ...
Inspired by the behaviors of plant root growth, an Artificial Root Mass (ARM) optimization algorithm...
In large-scale non-linear construction optimization problems, the capability of an algorithm to find...
Robust optimization over time (ROOT) is a relatively recent topic in the field of dynamic evolutiona...
The multi-objective evolutionary algorithm based on decomposition (MOEA/D) has shown to be very effi...
Many real-world applications of multi-objective optimization involve a large number of objectives. A...