{"title":"Motion Control of a Mobile Robot Using the Hedge-Algebras-Based Controller","authors":"Sy-Tai Nguyen, Thi-Thoa Mac, H. Bui","doi":"10.1155/2023/6613293","DOIUrl":null,"url":null,"abstract":"Hedge–algebras (HA) theory provides a useful mathematical tool for modeling the linguistic values of a linguistic variable. These values are quantified by real numbers between 0 and 1. Therefore, the HA-based controller (HAC) has many advantages over the traditional fuzzy set theory-based controller (FC) in setup steps, control efficiency, computation time, and optimization. This study aims to control the avoidance of obstacles in the workspace and move to the destination of an autonomous robot using HAC, in which the HAC is optimized using the balancing composite motion optimization (BCMO) to return the optimal path. In which the investigated model is inherited from a reference. The HAC is established and optimized to minimize the traveling distance of the mobile robot and help it to avoid obstacles simultaneously. Simulations include one and two obstacle environments. Design variables, when optimizing, include the fuzzy parameters of linguistic variables and the reference range of state variables. This work is the first study in motion control of mobile robots based on the HA theory. The simulation data show that the proposed control rule base suits the mobile robot models. Therefore, the control efficiency of HAC is higher than that of a FC both in terms of the traveling distance of the robot and computation time (CPU time). Also, the establishment steps of the HAC controller show that HAC is more explicit, easier to optimize, and simpler to operate than FC. Research results in the present work also indicate that HAC can be developed and applied in motion control problems for different robot models with the advantages of a smaller traveling distance and faster computation time.","PeriodicalId":186435,"journal":{"name":"J. Robotics","volume":"66 7","pages":"6613293:1-6613293:13"},"PeriodicalIF":0.0000,"publicationDate":"2023-11-15","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"J. Robotics","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1155/2023/6613293","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Hedge–algebras (HA) theory provides a useful mathematical tool for modeling the linguistic values of a linguistic variable. These values are quantified by real numbers between 0 and 1. Therefore, the HA-based controller (HAC) has many advantages over the traditional fuzzy set theory-based controller (FC) in setup steps, control efficiency, computation time, and optimization. This study aims to control the avoidance of obstacles in the workspace and move to the destination of an autonomous robot using HAC, in which the HAC is optimized using the balancing composite motion optimization (BCMO) to return the optimal path. In which the investigated model is inherited from a reference. The HAC is established and optimized to minimize the traveling distance of the mobile robot and help it to avoid obstacles simultaneously. Simulations include one and two obstacle environments. Design variables, when optimizing, include the fuzzy parameters of linguistic variables and the reference range of state variables. This work is the first study in motion control of mobile robots based on the HA theory. The simulation data show that the proposed control rule base suits the mobile robot models. Therefore, the control efficiency of HAC is higher than that of a FC both in terms of the traveling distance of the robot and computation time (CPU time). Also, the establishment steps of the HAC controller show that HAC is more explicit, easier to optimize, and simpler to operate than FC. Research results in the present work also indicate that HAC can be developed and applied in motion control problems for different robot models with the advantages of a smaller traveling distance and faster computation time.
对冲代数(HA)理论为语言变量的语言值建模提供了有用的数学工具。因此,与传统的基于模糊集理论的控制器(FC)相比,基于 HA 的控制器(HAC)在设置步骤、控制效率、计算时间和优化方面具有很多优势。本研究旨在使用 HAC 控制自主机器人避开工作空间中的障碍物并移动到目的地,其中使用平衡复合运动优化(BCMO)对 HAC 进行优化,以返回最优路径。其中所研究的模型继承自参考模型。建立和优化 HAC 的目的是使移动机器人的行进距离最小化,并帮助其同时避开障碍物。模拟包括一个和两个障碍物环境。优化时的设计变量包括语言变量的模糊参数和状态变量的参考范围。这项工作是基于 HA 理论对移动机器人运动控制的首次研究。仿真数据表明,所提出的控制规则库适合移动机器人模型。因此,无论从机器人的移动距离还是计算时间(CPU 时间)来看,HAC 的控制效率都高于 FC。此外,从 HAC 控制器的建立步骤来看,HAC 比 FC 更明确、更容易优化、更易于操作。本研究的结果还表明,HAC 可以开发并应用于不同机器人模型的运动控制问题,具有移动距离更小、计算时间更短的优点。