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首页> 外文期刊>Journal of Medical Imaging and Health Informatics >Unit Commitment Problem Solved by the Hybrid Particle Swarm-Whale Optimization Method Using Algorithm for Medical Internet of Things MIoT
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Unit Commitment Problem Solved by the Hybrid Particle Swarm-Whale Optimization Method Using Algorithm for Medical Internet of Things MIoT

机译:使用算法的混合粒子鲸鲸优化方法来解决的单位承诺问题利用医学互联网

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Nowadays the Whale Optimization Algorithm (WOA) technique has gained significant attention from researchers for different applications; especially in medical image processing for tasks such as image segmentation. For accurate diagnosis and treatment, automated information is required from different medical images (MRI and CT) modalities through image segmentation. Accurate segmentation leads to an accurate diagnosis. Segmentation accuracy has recently been achieved by WOA; however, there have yet to be refinements by the WOA, which are indeed required to address the complete objectives of medical image segmentation. In this paper, we focused on using a novel hybrid optimization technique based on WOA and Particle Swarm Optimization (PSO) called HPSO_WOA to solve the unit commitment problem with reference to medical image segmentation. We presented the evaluation of HPSO_WOA with PSO and WOA in order to solve this unit commitment problem. For the most part, there are two steps to manage this issue. The initial step discovers which units will be worked on, which tends to be comprehended by utilizing numerous techniques, for example, the priority list strategy. The second step determines the distribution of the load demand among the units, which are committed from the first step to minimize cost and achieve the load demand and constraints, which were solved in this study by using the three previously stated methods. By using the HPSO_WOA method, in all iterations of simulation, the best particle in the WOA population is inserted into the PSO population and manipulated, and then returned to the WOA population. There are four testing cases used: 4, 10, 20, and 40 generators. It combines both exploration and exploitation characteristics, so the reliability, speed of convergence, and accuracy are increased.
机译:如今,鲸鱼优化算法(WOA)技术从研究人员获得了不同应用的重视;尤其是用于图像分割的任务的医学图像处理。为了准确诊断和处理,通过图像分割,从不同的医学图像(MRI和CT)方式需要自动化信息。准确的细分导致准确的诊断。最近通过WOA实现了分割准确性;但是,WOA还尚未改进,这确实需要解决医学图像分割的完全目标。在本文中,我们专注于基于WOA和粒子群优化(PSO)的新型混合优化技术,称为HPSO_WOA,参考医学图像分割来解决单位承诺问题。我们向PPSO_WOA提供了PSO和WOA的评估,以解决本机的承诺问题。在大多数情况下,管理此问题有两个步骤。初始步骤发现将在哪个单元工作,这倾向于通过利用许多技术来理解,例如优先级列表策略。第二步决定了单位之间的负载需求的分布,其从第一步中提交,以最小化成本并实现负载需求和约束,通过使用三种先前陈述的方法在本研究中解决。通过使用HPSO_WOA方法,在模拟的所有迭代中,WOA种群中的最佳粒子被插入PSO人口并被操纵,然后返回WOA人口。使用了四种测试用例:4,10,20和40个发电机。它结合了勘探和开发特性,因此增加了收敛速度和准确性。

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