An Improved Artificial Fish Swarm Algorithm for Solving the Problem of
Investigation Path Planning
- URL: http://arxiv.org/abs/2310.13375v1
- Date: Fri, 20 Oct 2023 09:35:51 GMT
- Title: An Improved Artificial Fish Swarm Algorithm for Solving the Problem of
Investigation Path Planning
- Authors: Qian Huang, Weiwen Qian, Chang Li, Xuan Ding
- Abstract summary: We propose a chaotic artificial fish swarm algorithm based on multiple population differential evolution (DE-CAFSA)
We incorporate adaptive field of view and step size adjustments, replace random behavior with the 2-opt operation, and introduce chaos theory and sub-optimal solutions.
Experimental results demonstrate that DE-CAFSA outperforms other algorithms on various public datasets of different sizes.
- Score: 8.725702964289479
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Informationization is a prevailing trend in today's world. The increasing
demand for information in decision-making processes poses significant
challenges for investigation activities, particularly in terms of effectively
allocating limited resources to plan investigation programs. This paper
addresses the investigation path planning problem by formulating it as a
multi-traveling salesman problem (MTSP). Our objective is to minimize costs,
and to achieve this, we propose a chaotic artificial fish swarm algorithm based
on multiple population differential evolution (DE-CAFSA). To overcome the
limitations of the artificial fish swarm algorithm, such as low optimization
accuracy and the inability to consider global and local information, we
incorporate adaptive field of view and step size adjustments, replace random
behavior with the 2-opt operation, and introduce chaos theory and sub-optimal
solutions to enhance optimization accuracy and search performance.
Additionally, we integrate the differential evolution algorithm to create a
hybrid algorithm that leverages the complementary advantages of both
approaches. Experimental results demonstrate that DE-CAFSA outperforms other
algorithms on various public datasets of different sizes, as well as showcasing
excellent performance on the examples proposed in this study.
Related papers
- Deep Reinforcement Learning for Online Optimal Execution Strategies [49.1574468325115]
This paper tackles the challenge of learning non-Markovian optimal execution strategies in dynamic financial markets.
We introduce a novel actor-critic algorithm based on Deep Deterministic Policy Gradient (DDPG)
We show that our algorithm successfully approximates the optimal execution strategy.
arXiv Detail & Related papers (2024-10-17T12:38:08Z) - Frog-Snake prey-predation Relationship Optimization (FSRO) : A novel nature-inspired metaheuristic algorithm for feature selection [0.0]
This study proposes the Frog-Snake prey-predation Relationship Optimization (FSRO) algorithm.
It is inspired by the prey-predation relationship between frogs and snakes for application to discrete optimization problems.
The proposed algorithm conducts computational experiments on feature selection using 26 types of machine learning datasets.
arXiv Detail & Related papers (2024-02-13T06:39:15Z) - Faster Adaptive Federated Learning [84.38913517122619]
Federated learning has attracted increasing attention with the emergence of distributed data.
In this paper, we propose an efficient adaptive algorithm (i.e., FAFED) based on momentum-based variance reduced technique in cross-silo FL.
arXiv Detail & Related papers (2022-12-02T05:07:50Z) - High-dimensional Bayesian Optimization Algorithm with Recurrent Neural
Network for Disease Control Models in Time Series [1.9371782627708491]
We propose a new high dimensional Bayesian Optimization algorithm combining Recurrent neural networks.
The proposed RNN-BO algorithm can solve the optimal control problems in the lower dimension space.
We also discuss the impacts of different numbers of the RNN layers and training epochs on the trade-off between solution quality and related computational efforts.
arXiv Detail & Related papers (2022-01-01T08:40:17Z) - Solving Large-Scale Multi-Objective Optimization via Probabilistic
Prediction Model [10.916384208006157]
An efficient LSMOP algorithm should have the ability to escape the local optimal solution from the huge search space.
Maintaining the diversity of the population is one of the effective ways to improve search efficiency.
We propose a probabilistic prediction model based on trend prediction model and generating-filtering strategy, called LT-PPM, to tackle the LSMOP.
arXiv Detail & Related papers (2021-07-16T09:43:35Z) - An Overview and Experimental Study of Learning-based Optimization
Algorithms for Vehicle Routing Problem [49.04543375851723]
Vehicle routing problem (VRP) is a typical discrete optimization problem.
Many studies consider learning-based optimization algorithms to solve VRP.
This paper reviews recent advances in this field and divides relevant approaches into end-to-end approaches and step-by-step approaches.
arXiv Detail & Related papers (2021-07-15T02:13:03Z) - PAMELI: A Meta-Algorithm for Computationally Expensive Multi-Objective
Optimization Problems [0.0]
The proposed algorithm is based on solving a set of surrogate problems defined by models of the real one.
Our algorithm also performs a meta-search for optimal surrogate models and navigation strategies for the optimization landscape.
arXiv Detail & Related papers (2021-03-19T11:18:03Z) - A Two-stage Framework and Reinforcement Learning-based Optimization
Algorithms for Complex Scheduling Problems [54.61091936472494]
We develop a two-stage framework, in which reinforcement learning (RL) and traditional operations research (OR) algorithms are combined together.
The scheduling problem is solved in two stages, including a finite Markov decision process (MDP) and a mixed-integer programming process, respectively.
Results show that the proposed algorithms could stably and efficiently obtain satisfactory scheduling schemes for agile Earth observation satellite scheduling problems.
arXiv Detail & Related papers (2021-03-10T03:16:12Z) - Deep Reinforcement Learning for Field Development Optimization [0.0]
In this work, the goal is to apply convolutional neural network-based (CNN) deep reinforcement learning (DRL) algorithms to the field development optimization problem.
The proximal policy optimization (PPO) algorithm is considered with two CNN architectures of varying number of layers and composition.
Both networks obtained policies that provide satisfactory results when compared to a hybrid particle swarm optimization - mesh adaptive direct search (PSO-MADS) algorithm.
arXiv Detail & Related papers (2020-08-05T06:26:13Z) - Combining Deep Learning and Optimization for Security-Constrained
Optimal Power Flow [94.24763814458686]
Security-constrained optimal power flow (SCOPF) is fundamental in power systems.
Modeling of APR within the SCOPF problem results in complex large-scale mixed-integer programs.
This paper proposes a novel approach that combines deep learning and robust optimization techniques.
arXiv Detail & Related papers (2020-07-14T12:38:21Z) - Adaptivity of Stochastic Gradient Methods for Nonconvex Optimization [71.03797261151605]
Adaptivity is an important yet under-studied property in modern optimization theory.
Our algorithm is proved to achieve the best-available convergence for non-PL objectives simultaneously while outperforming existing algorithms for PL objectives.
arXiv Detail & Related papers (2020-02-13T05:42:27Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.