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Improved perturbation based hybrid firefly algorithm and long short-term memory based intelligent security model for IoT network intrusion detection 基于扰动的改进混合萤火虫算法和基于长短期记忆的物联网网络入侵检测智能安全模型
IF 4 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2024-12-01 DOI: 10.1016/j.compeleceng.2024.109926
Janmenjoy Nayak , Pooja Puspita Priyadarshani , Pandit Byomakesha Dash
The widespread implementation of the Internet of Things (IoT) has introduced several potential opportunities and benefits in all aspects of our life. However, regrettably, IoT is also accompanied by a range of vulnerabilities and susceptibility to attacks and anomalies. The primary goal of these attacks is to illicitly acquire confidential information from the system while also causing disruptions in system availability for authorized users. This research introduces an improved Long Short-Term Memory (LSTM) architecture designed to accurately detect attacks in an IoT environment. The hyper-parameters of LSTM are tuned employing a novel Memetic Self Adaptive Firefly Algorithm (MAFA). This research introduced a perturbation operator and integrated it into the proposed MAFA to prevent the occurrence of local optimum solutions in the standard firefly approach. With comparative assessment of the suggested methodology and other competing deep learning (DL) approaches, it has been determined that the proposed method outperforms in different performance measures including F1 score, F2 score, Fbeta score, precision, recall, ROC-AUC score and accuracy. The MAFA-LSTM methodology is superior to all other approaches studied, with an accuracy of 99.99%. It is highly efficient for accurately detecting intrusions in an IoT environment.
物联网(IoT)的广泛实施已经在我们生活的各个方面引入了一些潜在的机会和好处。然而,令人遗憾的是,物联网也伴随着一系列漏洞和易受攻击和异常的影响。这些攻击的主要目标是从系统中非法获取机密信息,同时导致授权用户的系统可用性中断。本研究介绍了一种改进的长短期记忆(LSTM)架构,旨在准确检测物联网环境中的攻击。采用一种新颖的模因自适应萤火虫算法(MAFA)对LSTM的超参数进行调谐。为了防止标准萤火虫方法中出现局部最优解,本研究引入了一个摄动算子并将其集成到所提出的MAFA中。通过对建议的方法和其他竞争的深度学习(DL)方法的比较评估,已经确定提出的方法在不同的性能指标上表现优异,包括F1分数、F2分数、Fbeta分数、精度、召回率、ROC-AUC分数和准确性。MAFA-LSTM方法优于所有其他研究方法,准确率为99.99%。它对于准确检测物联网环境中的入侵非常有效。
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引用次数: 0
Reliability-based preventive maintenance scheduling in power generation systems: A lévy flight and chaotic local search-based discrete mayfly algorithm 基于可靠性的发电系统预防性维修调度:一种基于lsamvy飞行和混沌局部搜索的离散mayfly算法
IF 4 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2024-11-30 DOI: 10.1016/j.compeleceng.2024.109904
Soufiane Belagoune , Konstantinos Zervoudakis , Bousaadia Baadji , Atif Karim , Noureddine Bali
An adequate and reliable precautionary upkeep plan in power generation systems is required to reduce failures, to improve the generator's lifespan, to diminish repair costs and to ensure consistent power supply to consumers with managing the energy flows in power systems. The Generators’ Precautionary Upkeep Planning (GPUP) problem is a complex optimization problem. It is a critical challenge in the power generation industry, involving the optimization of maintenance schedules for power generators to minimize the generation reserve and maximize the reliability. This problem consists of several important restrictions which include the load power demand and the labour force restrictions. In this research paper, a Discrete Chaotic Mayfly Optimization (DCMFO) algorithm which uses Lévy flight random walk for female mayflies and chaotic local search move rule for male ones, is adapted for designing an appropriate precautionary upkeep scheme of a list of generators in power generation systems. The DCMFO algorithm is evaluated using 21-unit test thermal power system. The results indicate that unlike the classical DMFO algorithm, the DCMFO algorithm has proven to have superior optimization capabilities and to surpass all earlier adopted algorithms in performance. This reinforces DCMFO's standing as the current leading optimization algorithm for solving this particular problem, ever since its initial inception. The DCMFO's efficiency and reliability have been demonstrated with different cases through several statistical tests.
为了减少故障,提高发电机的使用寿命,降低维修成本,并通过管理电力系统中的能量流确保为用户提供稳定的电力供应,需要在发电系统中制定适当、可靠的预防性维护计划。发电机预防性维护规划(GPUP)问题是一个复杂的优化问题。它是发电行业面临的一个重要挑战,涉及优化发电机的维护计划,以最大限度地减少发电储备,最大限度地提高可靠性。这个问题包含几个重要的限制条件,其中包括负荷电力需求和劳动力限制。本文采用离散混沌蜉蝣优化算法(DCMFO),对雌性蜉蝣使用莱维飞行随机漫步,对雄性蜉蝣使用混沌局部搜索移动规则,为发电系统中的一系列发电机设计适当的预防性维护方案。利用 21 台试验火电系统对 DCMFO 算法进行了评估。结果表明,与经典的 DMFO 算法不同,DCMFO 算法已被证明具有卓越的优化能力,在性能上超越了所有早期采用的算法。这巩固了 DCMFO 自诞生以来在解决这一特定问题方面的领先地位。DCMFO 的效率和可靠性已通过若干统计测试在不同案例中得到了证明。
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引用次数: 0
A Novel Hybrid Ensemble Wind Speed Forecasting Model Employing Wavelet Transform and Deep Learning 基于小波变换和深度学习的混合集合风速预报模型
IF 4 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2024-11-30 DOI: 10.1016/j.compeleceng.2024.109820
Vishnu Namboodiri V , Rahul Goyal
Efficient wind speed forecasting is crucial for operations, optimizations, and decision-making interventions in wind energy systems. However, capturing nonlinearity and relevant information from the wind speed data poses challenges in developing efficient wind speed forecasting models. The present study proposes a novel hybrid ensemble wind speed forecasting model based on signal decomposition, deep learning model, and hyperparameter optimization for short-term applications to improve the model performances. This study comprises a novel architecture, a novel hybrid ensemble wind speed forecasting model, a two-level optimization strategy, and a transfer learning approach. The present study consists of three stages: model development, validation, and transfer learning. The proposed model employs wavelet transform, deep learning models such as Long Short-Term Memory (LSTM), Bidirectional Long Short-Term Memory (BiLSTM), Convolutional Neural Network (CNN), and a combined model using Convolutional Neural Network and Bidirectional Long Short-Term Memory (CNN-BiLSTM) and meta-heuristic optimization algorithms. The novel architecture of the CNN-BiLSTM model is capable of exhibiting better results than baseline models. Artificial Bee Colony (ABC) and the Differential Evolution (DE) algorithms are explored to optimize the model hyperparameters. The ensemble weights of the proposed model are optimized through a DE algorithm. The model implementation is presented through a transfer learning technique using pre-trained models from the model development and validation phases. The model comparison results indicate that the proposed models outperform these models. The transfer learning results of Proposed Model-1 (PM-1) are Root Mean Squared Error (RMSE)- 0.1943 m/s, Mean Squared Error (MSE)- 0.0378 m/s, Mean Absolute Error (MAE) 0.1542 m/s, coefficient of determination (R2)- 0.9883, and Index of Agreement (IA)- 0.9997. The Proposed Model-2 (PM-2) is 0.1554 m/s (RMSE), 0.0241 m/s (MSE), 0.1263 m/s (MAE), 0.9915 (R2), and 0.9998 (IA). The proposed model architecture and the transfer learning are viable approaches for wind speed forecasting applications.
有效的风速预测对风能系统的运行、优化和决策干预至关重要。然而,从风速数据中获取非线性和相关信息对开发有效的风速预报模型提出了挑战。本文提出了一种基于信号分解、深度学习和超参数优化的混合集合风速预报模型,以提高模型的短期应用性能。本研究包括一种新的体系结构、一种新的混合集合风速预测模型、两级优化策略和迁移学习方法。本研究分为三个阶段:模型开发、验证和迁移学习。该模型采用小波变换、长短期记忆(LSTM)、双向长短期记忆(BiLSTM)、卷积神经网络(CNN)等深度学习模型,以及卷积神经网络和双向长短期记忆(CNN-BiLSTM)组合模型和元启发式优化算法。CNN-BiLSTM模型的新结构能够比基线模型显示更好的结果。探讨了人工蜂群(ABC)算法和差分进化(DE)算法来优化模型超参数。通过DE算法对模型的集成权值进行优化。模型实现是通过迁移学习技术来实现的,该技术使用来自模型开发和验证阶段的预训练模型。模型对比结果表明,本文提出的模型优于这些模型。提议模型-1 (PM-1)的迁移学习结果为均方根误差(RMSE)- 0.1943 m/s,均方误差(MSE)- 0.0378 m/s,平均绝对误差(MAE) 0.1542 m/s,决定系数(R2)- 0.9883,一致指数(IA)- 0.9997。模型-2 (PM-2)分别为0.1554 m/s (RMSE)、0.0241 m/s (MSE)、0.1263 m/s (MAE)、0.9915 (R2)和0.9998 (IA)。所提出的模型结构和迁移学习是风速预报应用的可行方法。
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引用次数: 0
Network-aware electric vehicle charging/discharging scheduling for grid load management in a hierarchical framework 基于分层框架的电网负荷管理的网络感知电动汽车充放电调度
IF 4 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2024-11-30 DOI: 10.1016/j.compeleceng.2024.109903
Mohammad Sarkhosh, Abbas Fattahi
The increasing adoption of electric vehicles (EVs) poses significant challenges for power system operations, requiring scalable coordination to mitigate their negative impacts and leverage their potential to enhance grid conditions. This paper introduces a scalable, three-layer hierarchical framework for optimal EV charge and discharge scheduling (EVCDS) that coordinates key agents: EVs, EV aggregators (EVAs), and the distribution network operator (DNO). The optimization problem is developed as an exchange problem and solved using the alternating direction method of multipliers (ADMM) in a decentralized approach. The proposed EVCDS addresses economic factors by minimizing battery degradation costs at the EV level and charging costs at the EVA level, while managing technical aspects at the DNO level by minimizing load curve variance and limiting power capacity. Moreover,voltages at network nodes are calculated using the DistFlow model to simplify the optimization and ensure compliance with standard operational limits. Compared to uncoordinated EV charging, EVCDS reduces load profile deviations by 85% and total costs by 91%, while also improving bus voltage profiles.
电动汽车(ev)的日益普及给电力系统运营带来了重大挑战,需要可扩展的协调来减轻其负面影响,并利用其潜力来改善电网状况。本文介绍了一个可扩展的三层分层框架,用于优化电动汽车充放电调度(EVCDS),该框架协调了关键代理:电动汽车、电动汽车聚合器(EVAs)和配电网运营商(DNO)。将优化问题发展为一个交换问题,并采用分散式乘法器的交替方向法求解。提出的EVCDS通过最小化EV级别的电池退化成本和EVA级别的充电成本来解决经济因素,同时通过最小化负载曲线方差和限制功率容量来管理DNO级别的技术方面。此外,使用DistFlow模型计算网络节点电压,以简化优化并确保符合标准操作限制。与非协调充电相比,EVCDS可将负载分布偏差降低85%,总成本降低91%,同时还可改善母线电压分布。
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引用次数: 0
iZKP-AKA: A secure and improved ZKP-AKA protocol for sustainable healthcare iZKP-AKA:用于可持续医疗保健的安全和改进的ZKP-AKA协议
IF 4 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2024-11-30 DOI: 10.1016/j.compeleceng.2024.109886
Shubham Kumar , Kanhaiya Kumar , Abhishek Anand , Awaneesh Kumar Yadav , Manoj Misra , An Braeken
The use of IoT in healthcare has undoubtedly brought many significant adaptations and benefits that changed medical facilities. However, the possibility of unauthorized access to private medical data is a serious issue that requires appropriate attention to protect the user’s privacy. Recently, a proposed scheme by Gurjot et al. suggested an authentication mechanism to provide anonymity and other security characteristics. We did the security analysis and informally proved that their scheme is prone to various attacks, such as failure to offer perfect forward secrecy, ephemeral secret leakage, traceability, replay, stolen device attacks, and also face desynchronization issues. These issues make the proposed scheme unsuitable for the healthcare system. Therefore, there is an impelling need to design an authentication mechanism that can restrict the attacker from getting any sensitive information. Considering the above requirements, we present a novel Zero Knowledge Proof based Authenticated Key Agreement (ZKP-AKA) protocol. The security of our proposed authentication mechanism is examined using the informal (non-mathematical) and formal (Scyther tool) security verification to confirm that the proposed protocol offers the prominent security features mentioned above. We also measure the performance to show that our proposed mechanism is suitable for IoT devices in the healthcare intelligent system by doing a comparative analysis with its competitors in terms of communication, computational, message exchange and energy consumption costs.
在医疗保健中使用物联网无疑带来了许多重大的适应和好处,改变了医疗设施。然而,未经授权访问私人医疗数据的可能性是一个严重的问题,需要适当注意以保护用户的隐私。最近,Gurjot等人提出的方案提出了一种身份验证机制,以提供匿名性和其他安全特性。我们做了安全分析并非正式地证明了他们的方案容易受到各种攻击,例如无法提供完美的前向保密,短暂的秘密泄漏,可追溯性,重播,被盗设备攻击,并且还面临去同步问题。这些问题使得提议的方案不适合医疗保健系统。因此,迫切需要设计一种身份验证机制,以限制攻击者获取任何敏感信息。考虑到上述需求,我们提出了一种新的基于零知识证明的认证密钥协议(ZKP-AKA)协议。使用非正式(非数学)和正式(Scyther工具)安全验证来检查我们提议的身份验证机制的安全性,以确认提议的协议提供了上面提到的重要安全特性。我们还测量了性能,通过在通信、计算、消息交换和能耗成本方面与竞争对手进行比较分析,表明我们提出的机制适用于医疗智能系统中的物联网设备。
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引用次数: 0
BlockGuard: Advancing digital copyright integrity with blockchain technique BlockGuard:利用区块链技术推进数字版权完整性
IF 4 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2024-11-30 DOI: 10.1016/j.compeleceng.2024.109897
Wenjiang Shang , Hailing Li , Xiaoze Ni , Ting Chen , Tao Liu
In the swiftly advancing media sector, piracy remains a significant challenge, eroding consumer willingness to pay, undermining rightful economic gains for copyright holders, and diluting creative incentives for content creators. Existing copyright protection mechanisms are inadequate for robust intellectual property safeguarding within complex digital environments, especially lacking in lifecycle tracking, authenticity verification, and dispute resolution. This paper introduces BlockGuard, a pioneering blockchain-based credible digital copyright management system designed to mitigate these issues through strategic use of blockchain and digital watermarking techniques. Furthermore, it enhances issue resolution via the application of Non-Fungible Token (NFT) contracts. BlockGuard aims to achieve three primary objectives. Firstly, it enables comprehensive lifecycle tracking of digital assets, ensuring visibility from content creation to its diverse applications. Secondly, by employing digital watermarking, it provides stringent authenticity verification to drastically reduce copyright infringements. Lastly, leveraging blockchain’s immutability and transparency, it streamlines dispute resolution processes. BlockGuard presents an efficient, secure, and transparent approach for managing digital copyrights in today’s media landscape. It showcases a detailed protection center and public appraisal workflow, and verifies the effectiveness of three originality detection processes. In terms of performance, BlockGuard requires 88% of the storage space on secondary storage compared to conventional solutions (that store only the original image) and incurs minimal storage overhead at the kilobyte level on blockchain storage. Furthermore, its most resource-intensive operation consumes no more than 200,000 gas, with other operations requiring no more than 100,000 gas, equivalent to a standard Ethereum transaction.
在迅速发展的媒体领域,盗版仍然是一个重大挑战,它侵蚀了消费者的付费意愿,损害了版权所有者的合法经济收益,并削弱了内容创作者的创作动机。现有的版权保护机制不足以在复杂的数字环境中实现强大的知识产权保护,特别是缺乏生命周期跟踪、真实性验证和争议解决。本文介绍了BlockGuard,这是一种开创性的基于区块链的可信数字版权管理系统,旨在通过战略性地使用区块链和数字水印技术来缓解这些问题。此外,它通过应用不可替代令牌(NFT)合约来增强问题解决。BlockGuard旨在实现三个主要目标。首先,它可以对数字资产进行全面的生命周期跟踪,确保从内容创建到各种应用程序的可见性。其次,通过采用数字水印,提供严格的真实性验证,大大减少版权侵权。最后,利用b区块链的不变性和透明度,它简化了争议解决过程。BlockGuard为当今媒体环境中的数字版权管理提供了一种高效、安全和透明的方法。展示了详细的保护中心和公众鉴定工作流程,验证了三个独创性检测流程的有效性。在性能方面,与传统解决方案(仅存储原始映像)相比,BlockGuard在二级存储上需要88%的存储空间,并且在区块链存储上产生最小的千字节级存储开销。此外,其最资源密集型的操作消耗不超过20万个gas,其他操作需要不超过10万个gas,相当于一个标准的以太坊交易。
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引用次数: 0
Fuzzy-ER Net: Fuzzy-based Efficient Residual Network-based lung cancer classification Fuzzy-ER网络:基于模糊高效残差网络的肺癌分类
IF 4 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2024-11-29 DOI: 10.1016/j.compeleceng.2024.109891
Nayana N. Murthy, K. Thippeswamy
Globally, Lung Cancer (LC) continues to be the primary cause of cancer-related death. Effective diagnosis is essential to save the lives of people. Nevertheless, manual Computed Tomography (CT) scan analysis takes more time and is inaccurate. The principal intention of this paper is to establish a hybrid Fuzzy-based Efficient Residual Network (Fuzzy-ER Net) for LC classification. The prime phase is the acquisition of input CT images from the database and the obtained CT image is sent to the pre-processing stage where noise is eradicated utilizing a Double bilateral filter. Thereafter, segmentation of the lung lobe is done by using a Dual-Attention V-network (DAV-Net). Moreover, feature extraction is performed, where features that are extracted include area, irregularity index, Local Vector Pattern (LVP), Local Gabor XOR Pattern (LGXP), and Statistical Fuzzy Local Binary Pattern (SFLBP). Eventually, LC classification is done by utilizing the proposed hybrid Fuzzy-ER Net. Here, the proposed Fuzzy-ER Net is newly devised by assimilating fuzzy concepts, EfficientNet, and Deep Residual Network (DRN). Additionally, the evaluation of the Fuzzy-ER Net on the basis of various metrics shows that it achieved maximum accuracy, True Positive Rate (TPR), of 93.2 % and 94.8 %, minimum False Positive Rate (FPR) is 5.7 %, maximum precision of 92.6 %, and maximum F-measure of 93.7 %.
在全球范围内,肺癌(LC)仍然是癌症相关死亡的主要原因。有效的诊断对于挽救生命至关重要。然而,人工计算机断层扫描(CT)扫描分析需要更多的时间和不准确。本文的主要目的是建立一种基于混合模糊的高效残差网络(Fuzzy-ER网)用于LC分类。初始阶段是从数据库中获取输入的CT图像,并将获得的CT图像发送到预处理阶段,在预处理阶段利用双双边滤波器消除噪声。然后,使用双注意v -网络(DAV-Net)对肺叶进行分割。然后进行特征提取,提取的特征包括面积、不规则指数、局部向量模式(LVP)、局部Gabor异或模式(LGXP)和统计模糊局部二值模式(SFLBP)。最后,利用提出的混合模糊- er网络进行LC分类。本文提出的模糊er网络是通过吸收模糊概念、高效网络和深度残差网络(DRN)而设计的。此外,在各种指标的基础上对Fuzzy-ER网络的评价表明,它达到了最大准确度,真阳性率(TPR)为93.2%和94.8%,最小假阳性率(FPR)为5.7%,最大精度为92.6%,最大F-measure为93.7%。
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引用次数: 0
A robust variational mode decomposition based deep random vector functional link network for dynamic system identification 一种基于变分模态分解的深度随机向量泛函链网络用于动态系统辨识
IF 4 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2024-11-29 DOI: 10.1016/j.compeleceng.2024.109887
Rakesh Kumar Pattanaik , Susanta Kumar Rout , Mrutyunjaya Sahani , Mihir Narayan Mohanty
The complexity of system identification problems has been escalated due to their diverse range of applications. In this paper, the non-linear system identification problem is addressed by proposing a deep random vector functional link network (Deep-RVFLN) based on the optimized variational mode decomposition (OVMD). The proposed method has a faster learning speed and trains the network accurately without tuning parameters. Introducing a random link network connecting the input and output layers may lead to reduction in model complexity. To enhance the accuracy and reduce errors, a random vector functional link network (RVFLN) has been implemented with an increased number of hidden layers. The variational mode decomposition (VMD) algorithm is applied to decompose the signal and select optimum modes using an improved particle swarm optimization (IPSO) algorithm. In this method, the data fidelity factor (α) and the number of decomposition modes (k) are chosen by a new discrete Teaser energy operator (DTEO). The DTEO algorithm is utilized to estimate Teaser energy and it serves as a dependable indicator of overall system reliability. To test the efficacy of the model, three complex non-linear benchmark models named autoregressive (AR), moving average (MA), and autoregressive moving average (ARMA) have been considered with examples 1, 2, and 3 respectively. Based on the results and analysis, the proposed method was found to be better than other state-of-the-art methods. Finally, the proposed Deep-RVFLN identifier is implemented on a high-speed reconfigurable field-programmable gate array (FPGA) to validate the efficacy of the proposed method for non-linear system identification in the hardware platform.
系统识别问题的复杂性由于其应用范围的多样化而不断升级。本文提出了一种基于优化变分模态分解(OVMD)的深度随机向量泛函链路网络(deep - rvfln),解决了非线性系统辨识问题。该方法具有学习速度快、训练精度高、无需参数调优等优点。引入连接输入和输出层的随机链路网络可以降低模型的复杂性。为了提高精度和减少误差,采用了一种增加隐藏层数的随机向量功能链路网络(RVFLN)。采用变分模态分解(VMD)算法对信号进行分解,并采用改进的粒子群优化(IPSO)算法选择最优模态。该方法采用一种新的离散Teaser能量算子(DTEO)选择数据保真度因子(α)和分解模式数(k)。采用DTEO算法对Teaser能量进行估计,作为系统整体可靠性的可靠指标。为了检验模型的有效性,我们分别用例1、2和3考虑了自回归(AR)、移动平均(MA)和自回归移动平均(ARMA)三种复杂的非线性基准模型。结果表明,该方法优于其他先进的方法。最后,在高速可重构现场可编程门阵列(FPGA)上实现了所提出的Deep-RVFLN标识,验证了该方法在硬件平台上非线性系统识别的有效性。
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引用次数: 0
Optimal frame selection-based watermarking using a meta-heuristic algorithm for securing video content 基于最优帧选择的基于元启发式算法的水印保护视频内容
IF 4 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2024-11-28 DOI: 10.1016/j.compeleceng.2024.109857
Roop Singh , Raju Pal , Deepak Joshi
Optimal embedding factor selection is still an open challenging issue in video watermarking. To address the same, this paper introduces a modified gravitational search algorithm (MGSA) based video watermarking (VW) scheme, termed VW-MGSA. In this proposed method, a novel variant of gravitational search algorithm i.e MGSA is employed to attain multiple optimal embedding factors (MOEF). VW-MGSA embeds watermark logo into maximum entropy blocks of size 8 × 8 followed by 1-level RDWT and Schur transform. The proposed GSA variant (MGSA) was evaluated experimentally and statistically using 22 standard benchmark functions, covering unimodal, multimodal, and fixed-dimension categories. The performance has been assessed using key metrics such as mean, standard deviation, Friedman test, and convergence graphs. These results confirm that the proposed variant outperforms existing meta-heuristic algorithms. Moreover, VW-MGSA has been validated on 8 standard benchmark videos over 19 attacks and evaluated using PSNR, SSIM, and NC metrics. The experimental and statistical results confirm that VW-MGSA outperforms existing video watermarking methods. It significantly improves the balance between imperceptibility and robustness compared to existing methods, with a measured improvement of 39.63%. The improved performance of the VW-MGSA can be applied to real-world platforms like Netflix and Amazon Prime to safeguard licensed content, with watermarks aiding in tracing piracy sources.
在视频水印中,最优嵌入因子的选择仍然是一个具有挑战性的开放性问题。为了解决这一问题,本文提出了一种改进的基于引力搜索算法(MGSA)的视频水印(VW)方案,称为VW-MGSA。该方法采用引力搜索算法的一种新变体MGSA来获得多个最优嵌入因子(MOEF)。VW-MGSA将水印标识嵌入到大小为8 × 8的最大熵块中,然后进行1级RDWT和Schur变换。采用22个标准基准函数,包括单峰、多峰和固定维类别,对提出的GSA变体(MGSA)进行了实验和统计评估。使用关键指标如均值、标准差、弗里德曼检验和收敛图来评估性能。这些结果证实,所提出的变体优于现有的元启发式算法。此外,VW-MGSA已经在19次攻击的8个标准基准视频上进行了验证,并使用PSNR, SSIM和NC指标进行了评估。实验和统计结果表明,该方法优于现有的视频水印方法。与现有方法相比,该方法显著改善了不可感知性和鲁棒性之间的平衡,实测改进率为39.63%。VW-MGSA性能的改进可以应用于现实世界的平台,如Netflix和亚马逊Prime,以保护授权内容,水印有助于追踪盗版来源。
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引用次数: 0
Advanced sensorless control of a 12S/19P YASA-AFFSSPM motor using extended state observer and adaptive sliding mode control 采用扩展状态观测器和自适应滑模控制的12S/19P YASA-AFFSSPM电机的先进无传感器控制
IF 4 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2024-11-28 DOI: 10.1016/j.compeleceng.2024.109932
Javad Rahmani-Fard , Mohammed Jamal Mohammed
This paper focuses on enhancing the sensorless control performance of a 12slots/19 poles yokeless and segmented armature axial flux-switching sandwiched permanent-magnet motor by proposing a rotor position Extended State Observer based on a extended back-EMF model method. Additionally, an adaptive sliding mode speed loop compensation method is introduced to address the significant cogging torque of the motor. By injecting the observed cogging torque as compensation into the q-axis current harmonic, this method aims to improve the motor's vibration and disturbance rejection performance in sliding mode control while eliminating steady-state errors in rotor speed and position estimation. The effectiveness of these control algorithms is validated through simulations and experiments under various operating conditions, demonstrating their potential for improving the position signal-free tracking performance of the investigated motor. The results indicate that the proposed control strategies achieve a maximum speed estimation error of approximately 1 rpm during steady-state operation and a maximum position estimation error of about 1.5°, showcasing high accuracy and robustness against disturbances.
本文提出了一种基于扩展反电动势模型的转子位置扩展状态观测器,以提高12槽/19极无栅分段电枢轴向磁通开关夹芯永磁电机的无传感器控制性能。此外,还引入了一种自适应滑模速度环补偿方法,以解决电机齿槽转矩较大的问题。该方法通过将观测到的齿槽转矩作为补偿注入到q轴电流谐波中,以提高电机在滑模控制中的抗振和抗干扰性能,同时消除转子转速和位置估计中的稳态误差。通过各种操作条件下的仿真和实验验证了这些控制算法的有效性,证明了它们在改善所研究电机的位置无信号跟踪性能方面的潜力。结果表明,所提出的控制策略在稳态运行时的最大速度估计误差约为1 rpm,最大位置估计误差约为1.5°,具有较高的精度和对干扰的鲁棒性。
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引用次数: 0
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Computers & Electrical Engineering
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