scispace - formally typeset
Open AccessJournal ArticleDOI

Swarm Intelligence-Based Performance Optimization for Mobile Wireless Sensor Networks: Survey, Challenges, and Future Directions

TLDR
The issues that need to be paid attention to in the research of swarm intelligence algorithm optimization for MWSNs are put forward, and the development trend and prospect of this research direction in the future are prospected.
Abstract
Network performance optimization has always been one of the important research subjects in mobile wireless sensor networks. With the expansion of the application field of MWSNs and the complexity of the working environment, traditional network performance optimization algorithms have become difficult to meet people’s requirements due to their own limitations. The traditional swarm intelligence algorithms have some shortcomings in solving complex practical multi-objective optimization problems. In recent years, scholars have proposed many novel swarm intelligence optimization algorithms, which have strong applicability and achieved good experimental results in solving complex practical problems. These algorithms, like their natural systems of inspiration, show the desirable properties of being adaptive, scalable, and robust. Therefore, the swarm intelligent algorithms (PSO, ACO, ASFA, ABC, SFLA) are widely used in the performance optimization of mobile wireless sensor networks due to its cluster intelligence and biological preference characteristics. In this paper, the main contributions is to comprehensively analyze and summarize the current swarm intelligence optimization algorithm and key technologies of mobile wireless sensor networks, as well as the application of swarm intelligence algorithm in MWSNs. Then, the concept, classification and architecture of Internet of things and MWSNs are described in detail. Meanwhile, the latest research results of the swarm intelligence algorithms in performance optimization of MWSNs are systematically described. The problems and solutions in the performance optimization process of MWSNs are summarized, and the performance of the algorithms in the performance optimization of MWSNs is compared and analyzed. Finally, combined with the current research status in this field, the issues that need to be paid attention to in the research of swarm intelligence algorithm optimization for MWSNs are put forward, and the development trend and prospect of this research direction in the future are prospected.

read more

Content maybe subject to copyright    Report

Citations
More filters
Journal Article

Mobile Data Gathering with Load Balanced Clustering and Dual Data Uploading in Wireless Sensor Networks

TL;DR: The main aim of employing this project is to get a good scalability and a long lifetime for the required network and for the lower data gathering recess.
Journal ArticleDOI

Fault diagnosis based on extremely randomized trees in wireless sensor networks

TL;DR: An ensemble learning-based lightweight technique called Extremely Randomized Trees or Extra-Trees-based detection scheme has the ability of robustness towards signal noise and strong reduction of bias and variance error and the performances were compared with those of the state-of-the-art machine learning algorithms.
Journal ArticleDOI

MCH-EOR: Multi-objective Cluster Head Based Energy-aware Optimized Routing algorithm in Wireless Sensor Networks

TL;DR: A Multi-Objective Based Clustering and Sailfish Optimizer guided routing method to sustain energy efficiency in WSNs and shows significantly better results than other optimization-based approaches.
Journal ArticleDOI

AgriTrust-A Trust Management Approach for Smart Agriculture in Cloud-based Internet of Agriculture Things.

TL;DR: This article has proposed a novel trust management mechanism to identify malicious and compromised nodes by utilizing trust parameters that computes trust based on the pre-defined time interval and utilizes the previous trust degree to develop an absolute trust degree.
Journal ArticleDOI

A Novel Data Fusion Strategy Based on Extreme Learning Machine Optimized by Bat Algorithm for Mobile Heterogeneous Wireless Sensor Networks

TL;DR: Compared with the traditional SEP algorithm, BP neural network algorithm and ELM algorithm, the proposed BAT-ELM-based data fusion algorithm can effectively reduce network traffic, save network energy, improve network work efficiency, and significantly prolong network's lifetime.
References
More filters
Journal ArticleDOI

Blockchains and Smart Contracts for the Internet of Things

TL;DR: The conclusion is that the blockchain-IoT combination is powerful and can cause significant transformations across several industries, paving the way for new business models and novel, distributed applications.
Journal ArticleDOI

Integration of Cloud computing and Internet of Things

TL;DR: This paper provides an up-to-date picture of CloudIoT applications in literature, with a focus on their specific research challenges, and identifies open issues and future directions in this field, which it expects to play a leading role in the landscape of the Future Internet.
Journal ArticleDOI

Industrial Internet of Things: Challenges, Opportunities, and Directions

TL;DR: The concepts of IoT, Industrial IoT, and Industry 4.0 are clarified and the challenges associated with the need of energy efficiency, real-time performance, coexistence, interoperability, and security and privacy are focused on.
Journal ArticleDOI

Recent advances in differential evolution – An updated survey

TL;DR: It is found that it is a high time to provide a critical review of the latest literatures published and also to point out some important future avenues of research on DE.
Journal ArticleDOI

The Future of Industrial Communication: Automation Networks in the Era of the Internet of Things and Industry 4.0

TL;DR: The impact of IoT and CPSs on industrial automation from an industry 4.0 perspective is reviewed, a survey of the current state of work on Ethernet time-sensitive networking (TSN) is given, and the need for harmonization beyond networking is pointed out.
Related Papers (5)