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2024 International Conference on Optimization Computing and Wireless Communication (ICOCWC)最新文献

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Fuzzy Optics Enabled Antenna Model for Push-To-Talk Communication in Underwater Networks 用于水下网络一键通通信的模糊光学天线模型
Pub Date : 2024-01-29 DOI: 10.1109/ICOCWC60930.2024.10470907
Prakash Pandey, Prerna Mahajan, A. Raizada
This paper explores a unique antenna model to allow push-totalk underwater communications. This antenna version uses fuzzy logic to adaptively control the transmission and reception parameters of the antenna. The russification of the antenna parameters reduces the complexity of antenna control, permitting even low-give-up underwater gadgets to transmit and acquire alerts successfully. This version uses binary water droplet-like antenna systems, which are adaptively tuned in response to various sign energy levels. The binary antenna structure can attain enormous gains with minimal cease-consumer setup time and value. Moreover, this antenna model allows for a quick reconfiguration to suit converting water conditions and tool features, allowing the antenna to keep top-quality overall performance for underwater conversation. Our assessment of this version in actual-global situations shows that push-to-communicate communique is feasible with reasonable hyperlink reliability.
本文探讨了一种独特的天线模型,以实现水下推送通话通信。这种天线利用模糊逻辑自适应地控制天线的发射和接收参数。天线参数的简化降低了天线控制的复杂性,即使是低赠送率的水下小工具也能成功地发射和获取警报。该版本使用二进制水滴状天线系统,可根据不同的信号能量水平进行自适应调整。二进制天线结构能以最短的用户设置时间和价值获得巨大的增益。此外,这种天线模型允许快速重新配置,以适应不同的水域条件和工具特征,从而使天线在水下对话中保持一流的整体性能。我们在全球实际情况下对该版本进行的评估表明,推送通信是可行的,具有合理的超链接可靠性。
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引用次数: 0
Exploring the Potential of Recurrent Neural Networks for Medical Image Segmentation 探索递归神经网络在医学图像分割中的潜力
Pub Date : 2024-01-29 DOI: 10.1109/ICOCWC60930.2024.10470661
Aaditya Jain, Sanjeev Kumar Mandal, Monika Abrol
Recurrent Neural Networks (RNNs) are a modern-day state-of-the-art algorithm that is brand new modern getting used for clinical picture segmentation. RNNs are, in particular, nicely applicable for this undertaking due to the fact they can be skilled to bear in mind patterns over long sequences brand new information. This enables them to perceive structural patterns in an image and carry out sophisticated segmentation obligations together with tumor or organ boundary identification. similarly, RNNs have the ability to contain earlier know-how from different pics and medical data, as well as contextual know-how from external resources such as electronic fitness information. This paper critiques the contemporary in RNNs for medical picture segmentation, outlining the key methods and programs contemporary RNNs inside the field. We discuss both the successes and demanding situations of trendy RNN-based procedures and provide destiny studies directions for the improvement of modern-day extra correct and efficient segmentation equipment.
递归神经网络(RNN)是一种现代最先进的算法,被用于临床图片分割。RNN 尤其适用于这项工作,因为它们能够熟练地记住长序列全新信息的模式。这使它们能够感知图像中的结构模式,并执行复杂的分割任务,如肿瘤或器官边界识别。同样,RNN 还能包含来自不同图片和医疗数据的早期知识,以及来自外部资源(如电子健康信息)的上下文知识。本文评论了用于医学图片分割的当代 RNN,概述了该领域的关键方法和当代 RNN 程序。我们讨论了基于 RNN 的新程序的成功之处和面临的挑战,并为改进现代更正确、更高效的分割设备提供了未来的研究方向。
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引用次数: 0
Assessing Optimal Hyper parameters of Deep Neural Networks on Cancers Datasets 在癌症数据集上评估深度神经网络的最佳超参数
Pub Date : 2024-01-29 DOI: 10.1109/ICOCWC60930.2024.10470543
Pankaj Kumar Goswami, A. Kannagi, Anubhav Sony
This paper studies the most valuable hyperparameters of deep neural networks applied to most cancer datasets. We appoint a mixture of looking algorithms, including grid seeks, random search, and Bayesian optimization, to discover the best mixture of hyperparameters for deep neural networks. The overall performance of the one-of-a-kind algorithms is evaluated towards present most cancers datasets and as compared towards each other. Outcomes show that Bayesian optimization becomes the maximum green and correct technique for finding the most fulfilling hyperparameter for our goal deep neural networks. This research can provide precious insight to practitioners who layout and build deep-mastering models for most cancer datasets. Furthermore, it also helps to optimize the performance of the trained neural networks while applied to this specific trouble location. The painting aims to assess the most beneficial hyperparameters of deep neural networks (DNNs) on most cancer datasets. DNNs are increasingly employed within the class and analysis of cancer datasets due to their ability to capture complicated styles and hit upon relationships between relevant capabilities. However, the effectiveness of those models is somewhat affected by the layout and selection of hyperparameters, which govern their education and represent a critical factor in the model optimization manner. In this painting, we optimize the choice of hyperparameters for a DNN using a grid search approach for every dataset, one after the other. Primarily, we optimize several parameters, along with the number of layers, neurons in keeping with layer, activation functions, studying fee, range of epochs, batch size, and dropout charge. The performance of the optimized DNN version is then evaluated by studying its accuracy, AUROC, and precision while evaluating on a take-a-look-at the set. Consequences show that extensive improvements in overall performance may be performed while the most reliable hyperparameters are chosen.
本文研究了应用于大多数癌症数据集的深度神经网络最有价值的超参数。我们采用网格搜索、随机搜索和贝叶斯优化等混合搜索算法,为深度神经网络发现最佳的超参数混合物。我们针对目前大多数癌症数据集评估了这些独特算法的整体性能,并进行了相互比较。结果表明,贝叶斯优化是为我们的目标深度神经网络找到最合适的超参数的最绿色、最正确的技术。这项研究能为那些为大多数癌症数据集设计和构建深度主模型的从业人员提供宝贵的见解。此外,它还有助于优化训练有素的神经网络的性能,同时将其应用于这一特定的麻烦位置。这幅画旨在评估深度神经网络(DNN)在大多数癌症数据集上最有利的超参数。由于 DNNs 能够捕捉复杂的样式并发现相关能力之间的关系,因此在癌症数据集的分类和分析中越来越多地采用 DNNs。然而,这些模型的有效性在一定程度上受到超参数布局和选择的影响,超参数控制着模型的教育,是模型优化方式中的关键因素。在这幅画中,我们采用网格搜索方法,对每个数据集逐一优化 DNN 的超参数选择。我们主要优化了几个参数,包括层数、与层保持一致的神经元、激活函数、研究费用、历时范围、批量大小和辍学费用。然后,通过研究其准确度、AUROC 和精确度来评估优化后 DNN 版本的性能,同时对一组数据进行评估。结果表明,在选择最可靠的超参数时,整体性能可以得到广泛提高。
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引用次数: 0
Distribution Network Reconstruction Based on Discrete Particle Swarm Algorithm Based on Quantum Coding 基于量子编码的离散粒子群算法的配电网络重构
Pub Date : 2024-01-29 DOI: 10.1109/ICOCWC60930.2024.10470728
Ning Luo, Ludong Chen, Jinsen Liu, Pengcheng Zhang, Fei Zheng
Quantum-coded discrete particle swarm optimization (QBPSO) is a new optimization method which combines quantum computation principle and traditional particle swarm optimization (PSO) algorithm. By introducing the probabilistic representation of qubits, the algorithm improves the population diversity and enhances the global search ability. In the distribution network reconfiguration problem, the algorithm can be used to find the optimal structure of the network in order to reduce the loss, balance the load, improve the reliability of power supply and so on.
量子编码离散粒子群优化(QBPSO)是一种将量子计算原理与传统粒子群优化(PSO)算法相结合的新型优化方法。通过引入量子比特的概率表示,该算法提高了种群多样性,增强了全局搜索能力。在配电网络重构问题中,该算法可用于寻找最优网络结构,以降低损耗、平衡负荷、提高供电可靠性等。
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引用次数: 0
Implementing Information Security Models to Reduce Cyber Security Risks in Networked Applications 实施信息安全模式,降低网络应用中的网络安全风险
Pub Date : 2024-01-29 DOI: 10.1109/ICOCWC60930.2024.10470822
Ajay Rastogi, R. Raghavendra, Megha Pandeya
This paper examines the need for imposing data safety models to reduce cyber security risks in networked packages. Security models enable groups to research the current kingdom in their networks and evaluate the associated security risks. The paper offers an overview of existing and developing fashions and evaluates their overall performance. It provides details of a safety model that has evolved to boom protection threat awareness in agencies., presenting a more standardized problem-on-hand method for analyzing and decreasing cyber safety risks. The paper concludes with a dialogue of the benefits and challenges of using protection fashions. With the ever-evolving international of networked applications and cyber threats., using security fashions have to be an essential and prioritized degree for groups to increase their cybersecurity posture and reduce the risk of network threats..
本文探讨了实施数据安全模型的必要性,以降低联网软件包中的网络安全风险。通过安全模型,各团体可以研究其网络中的当前王国,并评估相关的安全风险。本文概述了现有的和正在开发的模式,并对其整体性能进行了评估。本文详细介绍了为提高各机构的保护威胁意识而发展起来的安全模型,为分析和降低网络安全风险提供了一种更加标准化的问题解决方法。最后,本文就使用保护模式的益处和挑战进行了对话。随着国际网络应用和网络威胁的不断发展,使用安全模式必须成为企业提高网络安全态势和降低网络威胁风险的重要优先事项。
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引用次数: 0
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2024 International Conference on Optimization Computing and Wireless Communication (ICOCWC)
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