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DeepPipe: A multi-stage knowledge-enhanced physics-informed neural network for hydraulic transient simulation of multi-product pipeline DeepPipe:用于多产品管道水力瞬态模拟的多级知识增强型物理信息神经网络
IF 10.4 1区 计算机科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-11-01 DOI: 10.1016/j.jii.2024.100726
Jian Du , Haochong Li , Kaikai Lu , Jun Shen , Qi Liao , Jianqin Zheng , Rui Qiu , Yongtu Liang
In the chemical pipelining industry, owing to the high-pressure transportation process, an accurate hydraulic transient simulation tool plays a central role in preventing the slack line flow and overpressure from causing pipeline operation treacherous. Nevertheless, the current model-driven method often faces challenges in balancing computational efficiency with accuracy, and the existing data-driven models struggle to produce explainable results from the physics perspectives since insufficient theoretical principles are incorporated into the model training. Additionally, the existing physics-informed learning architecture fails to achieve a gradient-balanced training, resulting from the significant magnitude difference in outputs and multiple loss terms. Consequently, a Multi-Stage Knowledge-Enhanced Physics-Informed Neural Network (MS-KE-PINN) is proposed for the hydraulic transient simulation of multi-product pipelines. To enforce the neural network producing simulation results with high consistency to physical laws, the governing equations, boundary, and initial condition are incorporated into the training process for an efficient mesh-free simulation. Then, considering that the significant magnitude difference between outputs can easily lead to deficient performance in the gradient descent, the magnitude conversion on the outputs and the equivalent conversion of the governing equations are implemented to enhance the training effect of the neural network. Subsequently, to tackle the imbalanced gradient of multiple loss terms with fixed weights, a multi-stage hierarchical training strategy is designed to improve the approximation capacity of the neural network. Numerical simulation cases demonstrate a better approximation function of the proposed model than the state-of-art models, while the mean absolute percentage errors yielded by MS-KE-PINN are reduced by 77.4 %, 88.7 %, and 87.8 % in three simulation operation conditions for pressure prediction. Furthermore, experimental investigations from a real-world multi-product pipeline suggest that the proposed model can still draw accurate simulation results even under complex and dynamic hydraulic transient scenarios in practice, with root mean squared errors reduced by 94.8 % and 80 % than that of the physics-informed neural network. To this end, the proposed model can conduct accurate and effective hydraulic transient analysis, thus ensuring the safe operation of the pipeline.
在化工管道行业中,由于高压运输过程,精确的水力瞬态模拟工具在防止松弛的管线流动和超压造成管道运行危险方面发挥着核心作用。然而,目前的模型驱动方法往往面临计算效率与准确性之间的平衡问题,现有的数据驱动模型也很难从物理学角度得出可解释的结果,因为在模型训练中没有充分纳入理论原则。此外,现有的物理信息学习架构无法实现梯度平衡训练,这是因为输出和多个损失项之间存在显著的量级差异。因此,针对多产品管道的水力瞬态模拟,提出了多阶段知识增强型物理信息神经网络(MS-KE-PINN)。为使神经网络生成的仿真结果与物理规律高度一致,在训练过程中纳入了治理方程、边界和初始条件,以实现高效的无网格仿真。然后,考虑到输出量之间的巨大差异容易导致梯度下降过程中的性能缺陷,我们对输出量进行了量级转换,并对控制方程进行了等效转换,以增强神经网络的训练效果。随后,针对固定权重的多个损失项梯度不平衡的问题,设计了多级分层训练策略,以提高神经网络的逼近能力。数值模拟结果表明,与最先进的模型相比,所提出的模型具有更好的逼近功能,而在压力预测的三种模拟操作条件下,MS-KE-PINN 所产生的平均绝对百分比误差分别减少了 77.4%、88.7% 和 87.8%。此外,对实际多产品管道的实验研究表明,即使在复杂多变的液压瞬态情况下,所提出的模型仍能得出准确的模拟结果,其均方根误差比物理信息神经网络分别减少了 94.8% 和 80%。因此,所提出的模型可以进行准确有效的水力瞬态分析,从而确保管道的安全运行。
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引用次数: 0
EDLIoT: A method for decreasing energy consumption and latency using scheduling algorithm in Internet of Things EDLIoT:在物联网中使用调度算法降低能耗和延迟的方法
IF 10.4 1区 计算机科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-11-01 DOI: 10.1016/j.jii.2024.100719
Arash Ghorbannia Delavar, Hamed Bagheri
Decreasing energy consumption in networks with limited resources, such as the Internet of Things, has always been one of the main challenges in guaranteeing network performance. In this article, cooperative game theory is employed to improve the cooperation patterns of fog computing resources. The EDLIoT method consists of two main steps: “Topology Construction” and “Determining Optimal Fog Computing Resources to Process IoT Object Tasks”. In the first step of the proposed method, the set of reliable communications in the network is identified to establish connections between IoT objects and fog computing resources in the form of a tree structure. Then, in the second step, a model based on cooperative game theory and the cost function is used to determine the optimal computing resources in the fog layer for outsourcing the processing tasks of IoT objects. In EDLIoT, active IoT objects perform computation in the fog layer instead of locally, to conserve energy. This is done so that IoT objects, if possible, discover the most suitable processing resources in the fog based on characteristics such as energy consumption, delay, and processing power of the computing resource. The efficiency of the proposed method has been evaluated in a simulated environment, and the results have been compared with those of previous algorithms. The results demonstrate that using the EDLIoT method, in addition to decreasing energy consumption and delay, more computing tasks can be processed through fog resources, thereby increasing the quality of service for IoT users.
在物联网等资源有限的网络中降低能耗一直是保证网络性能的主要挑战之一。本文采用合作博弈论来改进雾计算资源的合作模式。EDLIoT 方法包括两个主要步骤:"拓扑构建 "和 "确定处理物联网对象任务的最佳雾计算资源"。在所提方法的第一步,确定网络中的可靠通信集,以树形结构的形式建立物联网对象与雾计算资源之间的连接。然后,在第二步中,使用基于合作博弈论和成本函数的模型来确定雾层中用于外包处理物联网对象任务的最优计算资源。在 EDLIoT 中,活动物联网对象在雾层而不是本地执行计算,以节约能源。这样做是为了让物联网对象尽可能根据计算资源的能耗、延迟和处理能力等特征,发现雾层中最合适的处理资源。我们在模拟环境中评估了所提方法的效率,并将结果与之前的算法进行了比较。结果表明,使用 EDLIoT 方法,除了能降低能耗和延迟外,还能通过雾资源处理更多计算任务,从而提高物联网用户的服务质量。
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引用次数: 0
Understanding data quality in a data-driven industry context: Insights from the fundamentals 在数据驱动的行业背景下了解数据质量:从根本上获得启示
IF 10.4 1区 计算机科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-11-01 DOI: 10.1016/j.jii.2024.100729
Qian Fu, Gemma L. Nicholson, John M. Easton
The increasing adoption of commercial-off-the-shelf infrastructure components and the rising integration of sensors into assets have led to a notable proliferation of operational data in industrial systems. As a result, a significant portion of investment and risk management decisions now heavily rely on the provenance and quality of heterogeneous data, sourced both internally and externally from specific industrial systems. This paper presents a review that covers three critical aspects of data quality: first, ensuring data quality through deliberate design; second, understanding the dynamic interplay between data and its users within sociotechnical systems; and third, attributing ongoing value to data resources as their roles evolve. These aspects are examined through a lens encompassing both traditional and the state-of-the-art theoretical frameworks for defining data quality. In addition, we incorporate insights from contemporary empirical research and highlight relevant industry standards and best practice guidelines. The synthesised insights serve as a practical foundation and reference for researchers and industry professionals alike, enabling them to refine and advance their understanding of data quality within the landscape of data-driven industries.
随着商用现成基础设施组件的日益普及,以及传感器与资产集成度的不断提高,工业系统中的运行数据显著增加。因此,现在很大一部分投资和风险管理决策都严重依赖于来自特定工业系统内部和外部的异构数据的出处和质量。本文综述了数据质量的三个关键方面:第一,通过精心设计确保数据质量;第二,了解数据及其用户在社会技术系统中的动态相互作用;第三,随着数据资源作用的不断发展,赋予数据资源持续的价值。这些方面将通过一个包含传统和最新数据质量定义理论框架的视角进行研究。此外,我们还纳入了当代实证研究的见解,并强调了相关行业标准和最佳实践指南。这些综合见解为研究人员和行业专业人士提供了实用的基础和参考,使他们能够在数据驱动的行业环境中完善和提升对数据质量的理解。
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引用次数: 0
Identification of material excavation difficulty and uncertainty analysis based on Bayesian deep learning 基于贝叶斯深度学习的材料挖掘难度识别和不确定性分析
IF 10.4 1区 计算机科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-11-01 DOI: 10.1016/j.jii.2024.100728
Shijiang Li , Shaojie Wang , Xiu Chen , Gongxi Zhou , Liang Hou
Accurately assessing the difficulty of material excavation is crucial for reducing excavator energy consumption, ensuring operational safety, and optimizing excavator efficiency. Addressing the challenges of uncertain and difficult-to-judge excavation conditions for underground materials, this paper proposes a Bayesian deep learning-based method that integrates excavation process data to identify excavation difficulty. Firstly, we constructed a deep learning model based on Bayesian theory and decomposed the uncertainty of the identification results into aleatory uncertainty and epistemic uncertainty. Next, through a mechanistic analysis of the interaction between materials and the excavator bucket during excavation, we identified the input features for the model. Finally, we validated the effectiveness of the method through experiments. The results show that the proposed method not only accurately identifies the excavation difficulty of the material but also quantifies and decomposes the uncertainty of the identification results, demonstrating both theoretical significance and practical application value.
准确评估材料挖掘难度对于降低挖掘机能耗、确保作业安全和优化挖掘机效率至关重要。针对地下材料挖掘条件不确定、难以判断的难题,本文提出了一种基于贝叶斯深度学习的方法,综合挖掘过程数据来识别挖掘难度。首先,我们构建了基于贝叶斯理论的深度学习模型,并将识别结果的不确定性分解为可知的不确定性和认识的不确定性。其次,通过对挖掘过程中材料与挖掘机铲斗之间相互作用的机理分析,我们确定了模型的输入特征。最后,我们通过实验验证了该方法的有效性。结果表明,所提出的方法不仅能准确识别材料的挖掘难度,还能对识别结果的不确定性进行量化和分解,体现了理论意义和实际应用价值。
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引用次数: 0
An effective farmer-centred mobile intelligence solution using lightweight deep learning for integrated wheat pest management 利用轻量级深度学习为小麦病虫害综合治理提供以农民为中心的有效移动智能解决方案
IF 10.4 1区 计算机科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-11-01 DOI: 10.1016/j.jii.2024.100705
Shunbao Li , Zhipeng Yuan , Ruoling Peng , Daniel Leybourne , Qing Xue , Yang Li , Po Yang
Integrated Pest Management (IPM) techniques have been widely used in agriculture to manage pest damage in the most economical way and to minimise harm to people, property and the environment. However, current research and products on the market cannot consolidate this process. Most existing solutions either require experts to visually identify pests or cannot automatically assess pest levels and make decisions based on detection results. To make the process from pest identification to pest management decision making more automated and intelligent, we propose an end-to-end integrated pest management solution that uses deep learning for semi-automated pest detection and an expert system for pest management decision making. Specifically, a low computational cost sampling point generation algorithm is proposed to enable mobile devices to generate uniformly distributed sampling points in irregularly shaped fields. We build a pest detection model based on YoloX and use Pytorch Mobile to deploy it on mobile phones, allowing users to detect pests offline. We develop a standardised sampling specification and a mobile application to guide users to take photos that allow pest population density to be calculated. A rule-based expert system is established to derive pest management thresholds from prior agricultural knowledge and make decisions based on pest detection results. We also propose a human-in-the-loop algorithm to continuously track and update the validity of the thresholds in the expert system. The mean average precision of the pest detection model is 58.17% for 97 classes, 75.29% for 2 classes, and 57.33% for 11 classes on three pest datasets, respectively. The usability of the pest management system is assessed by the User Experience Surveys and achieves a System Usability Scale (SUS) score of 76. The usability of the proposed solution is validated by qualitative field experiments.
害虫综合治理(IPM)技术已广泛应用于农业领域,以最经济的方式治理害虫危害,并最大限度地减少对人类、财产和环境的危害。然而,目前的研究和市场上的产品无法巩固这一过程。大多数现有解决方案要么需要专家目测识别害虫,要么无法自动评估害虫数量并根据检测结果做出决策。为了使从害虫识别到害虫管理决策的过程更加自动化和智能化,我们提出了一种端到端的害虫综合管理解决方案,利用深度学习进行半自动害虫检测,并利用专家系统进行害虫管理决策。具体来说,我们提出了一种低计算成本的采样点生成算法,使移动设备能够在不规则形状的田地中生成均匀分布的采样点。我们建立了一个基于 YoloX 的害虫检测模型,并使用 Pytorch Mobile 将其部署到手机上,使用户能够离线检测害虫。我们开发了标准化采样规范和移动应用程序,指导用户拍照,以便计算害虫种群密度。我们建立了一个基于规则的专家系统,从先前的农业知识中推导出害虫管理阈值,并根据害虫检测结果做出决策。我们还提出了一种人环算法,用于持续跟踪和更新专家系统中阈值的有效性。在三个害虫数据集上,害虫检测模型的平均精度分别为 97 类 58.17%、2 类 75.29%、11 类 57.33%。害虫管理系统的可用性由用户体验调查进行评估,系统可用性量表(SUS)得分为 76 分。定性现场实验验证了建议解决方案的可用性。
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引用次数: 0
Advance industrial monitoring of physio-chemical processes using novel integrated machine learning approach 利用新型综合机器学习方法推进对物理化学过程的工业监测
IF 10.4 1区 计算机科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-10-21 DOI: 10.1016/j.jii.2024.100709
Husnain Ali , Rizwan Safdar , Muhammad Hammad Rasool , Hirra Anjum , Yuanqiang Zhou , Yuan Yao , Le Yao , Furong Gao
With the rapid transition of Industry 4.0 to 5.0, modern industrial physio-chemical processes are characterized by two critical challenges: process safety and the quality of the final product. Traditional industrial monitoring methods have low reliability in accuracy and robustness, and they are inefficiently providing satisfactory results. This paper introduces a novel integration technique that employs machine learning (ML) to tackle the challenges associated with real industrial monitoring in physical and industrial processes. The proposed framework integrates distributed canonical correlation analysis - R-vine copula (DCCA-RVC), global local preserving projection (GLPP), and 2-Dimensional Deng information entropy (2-DDE). The framework's ability and productivity are assessed utilizing existing approaches such as wavelet-PCA, MRSAE, and DALSTM-AE and the new proposed novel integrated machine learning-based (DCCA-RVC) approach as benchmarks for model performance. The proposed novel approach has been validated by testing it on the ethanol-water system distillation column (DC) and Tennessee Eastman Process (TEP), utilizing it as actual industrial benchmarks. The results demonstrate that the novel integration ML-technique (DCCA-RVC) T22 – GLP monitoring graphs for the fault class type 1 in the distillation column showed a (FAR) of 0 %, a (FDR) of 100 %, a precision of 100 %, F1-score of 100 % and an accuracy of 100 %. However, for the TEP process failure event 13, the (FAR) was 0 %, the (FDR) was 99 %, the accuracy was 100 %, the F1-score was 99.5 %, and the accuracy was 99.5 %.
随着工业 4.0 向 5.0 的快速过渡,现代工业物理化学过程面临着两大关键挑战:过程安全和最终产品的质量。传统的工业监测方法在准确性和鲁棒性方面可靠性较低,而且不能有效地提供令人满意的结果。本文介绍了一种新颖的集成技术,它利用机器学习(ML)来应对物理和工业流程中与实际工业监控相关的挑战。所提出的框架集成了分布式典型相关分析--R-藤蔓协方差(DCCA-RVC)、全局局部保存投影(GLPP)和二维邓氏信息熵(2-DDE)。利用现有方法,如小波-PCA、MRSAE 和 DALSTM-AE,以及新提出的基于机器学习的新型集成方法(DCCA-RVC)作为模型性能的基准,对该框架的能力和生产率进行了评估。通过在乙醇-水系统蒸馏塔(DC)和田纳西伊士曼工艺(TEP)上进行测试,验证了所提出的新方法,并将其作为实际的工业基准。结果表明,新型集成 ML 技术(DCCA-RVC)T22 - GLP 监测图对蒸馏塔中故障类型 1 的显示(FAR)为 0 %,(FDR)为 100 %,精确度为 100 %,F1 分数为 100 %,准确度为 100 %。然而,对于 TEP 过程故障事件 13,(FAR)为 0 %,(FDR)为 99 %,精确度为 100 %,F1 分数为 99.5 %,精确度为 99.5 %。
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引用次数: 0
Design and implementation of an active load test rig for high-precision evaluation of servomechanisms in industrial applications 设计和实施主动负载测试台,用于对工业应用中的伺服机构进行高精度评估
IF 10.4 1区 计算机科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-10-17 DOI: 10.1016/j.jii.2024.100696
Alessio Tutarini , Pietro Bilancia , Jhon Freddy Rodríguez León , Davide Viappiani , Marcello Pellicciari
Position-controlled servomechanisms are the core elements of flexible manufacturing plants, primarily utilized to actuate robotic systems and automated machines. To match specific torque and costs requirements, typical servomechanism arrangements comprise precision reducers, which introduce motion errors that heavily limit the final performance achievable. Such errors are complex to model and depend from speed, dynamic loading conditions and temperature. Accurate characterization is fundamental to develop digital twins and advanced control strategies aimed at their active prediction and compensation. To properly assess the servomechanisms behavior and elaborate high-fidelity virtual models, instrumented test rigs have been proposed which can replicate the time-varying working conditions encountered in real industrial environments. In this context, the present paper reports about a novel engineering method for developing an active loading apparatus, namely a programmable mechatronic device that can deliver custom loads in a highly dynamic manner. The proposed system, consisting of a secondary servomotor and related rotating vector reducer, is integrated and synchronized within an existing instrumented test rig and is controlled in torque mode via a programmable logic controller. The paper mainly focuses on the description of the implemented closed-loop control and on the related tuning and calibration processes, demonstrating that the proposed solutions avoid important measurement errors that could compromise the final effectiveness of the system. The study finally explores the potential benefits of introducing a filter to further enhance system performance. At last, to prove the importance of stabilizing the rig and demonstrate the influence of the control parameters on its measurements, a standard test aimed at assessing the reducer transmission error is conducted adopting different parameter settings.
位置控制伺服机构是柔性制造工厂的核心要素,主要用于驱动机器人系统和自动化机器。为了满足特定的扭矩和成本要求,典型的伺服机构布置包括精密减速器,这些减速器会产生运动误差,严重限制了最终性能的实现。这种误差的建模非常复杂,取决于速度、动态负载条件和温度。准确的特征描述是开发数字孪生系统和先进控制策略的基础,旨在对其进行主动预测和补偿。为了正确评估伺服机构的行为并建立高保真虚拟模型,有人提出了仪器测试平台,它可以复制在实际工业环境中遇到的随时间变化的工作条件。在此背景下,本文介绍了一种用于开发主动加载装置的新型工程方法,即一种可编程机电一体化装置,它能以高度动态的方式提供定制负载。所提议的系统由二级伺服电机和相关旋转矢量减速器组成,集成并同步于现有的仪器测试平台,并通过可编程逻辑控制器在扭矩模式下进行控制。论文主要侧重于描述所实施的闭环控制以及相关的调整和校准过程,证明所提出的解决方案避免了可能影响系统最终效果的重要测量误差。研究最后探讨了引入滤波器进一步提高系统性能的潜在好处。最后,为了证明稳定钻机的重要性并证明控制参数对其测量的影响,采用不同的参数设置进行了一项旨在评估减速器传输误差的标准测试。
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引用次数: 0
SCL: A sustainable deep learning solution for edge computing ecosystem in smart manufacturing SCL:面向智能制造边缘计算生态系统的可持续深度学习解决方案
IF 10.4 1区 计算机科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-10-15 DOI: 10.1016/j.jii.2024.100703
Himanshu Gauttam , K.K. Pattanaik , Saumya Bhadauria , Garima Nain
Edge computing empowered Deep Learning (DL) solutions have risen as the foremost facilitators of automation in a multitude of smart manufacturing applications. These models are implemented on edge devices with frozen learning capabilities to execute DL inference task(s). Nevertheless, the data they process is susceptible to intermittent alterations amidst the ever-changing landscape of dynamic smart manufacturing ecosystem. It sparks the demand for model maintenance solution(s) to address adaptability and dynamism issues to enhance the efficiency of smart manufacturing solutions. Moreover, additional issue(s), such as the non-availability of comprehensive data (or the availability of solely contemporary data), near-real-time execution of DL model maintenance task, etc., imposes daunting obstructions in devising an efficient DL model maintenance strategy. This work proposes a novel approach that encompasses the merits of Continual Learning (CL) and Split Learning (SL) driven by edge intelligence, amalgamating them into a hybrid solution aptly named Split-based Continual Learning (SCL). CL ensures the sustained performance of the DL model amidst constraints related to data availability. At the same time, SL empowers near-real-time execution at the edge to achieve improved efficiency. An extension of the SCL scheme, termed as Extended SCL (ESCL), is implemented to addresses the interaction soundness aspects among the mobile edge devices in a collaborative execution environment. Evaluation of a vision-based product-quality inspection use case in an emulated hardware test-bed setup signifies that the performance of SCL and ESCL schemes have the potential to meet the needs of smart manufacturing. SCL attains an appreciable reduction in the model maintenance cost in the range of 21 to 48 and 12 to 29 percent compared to the ECN-only and basic-SL schemes. The ESCL scheme further improved the performance by 18 to 34 and 20 to 36 percent respectively over the basic-SL and SCL.
边缘计算驱动的深度学习(DL)解决方案已成为众多智能制造应用中自动化的首要推动者。这些模型是在具有冷冻学习能力的边缘设备上实现的,用于执行深度学习推理任务。然而,在动态智能制造生态系统瞬息万变的环境中,它们处理的数据很容易受到间歇性变化的影响。这引发了对模型维护解决方案的需求,以解决适应性和动态性问题,提高智能制造解决方案的效率。此外,其他一些问题,如无法获得全面数据(或仅能获得当代数据)、近乎实时地执行 DL 模型维护任务等,都对设计高效的 DL 模型维护策略造成了巨大障碍。这项工作提出了一种新方法,它包含了边缘智能驱动的持续学习(CL)和拆分学习(SL)的优点,并将它们融合为一种混合解决方案,被恰当地命名为基于拆分的持续学习(SCL)。CL 可确保 DL 模型在与数据可用性相关的限制条件下保持持续性能。与此同时,SL 支持边缘近实时执行,以提高效率。对 SCL 方案进行了扩展,称为扩展 SCL(ESCL),以解决协作执行环境中移动边缘设备之间的交互健全性问题。在模拟硬件测试平台设置中对基于视觉的产品质量检测用例进行的评估表明,SCL 和 ESCL 方案的性能有可能满足智能制造的需求。与纯ECN方案和基本SL方案相比,SCL方案显著降低了模型维护成本,降幅分别为21%至48%和12%至29%。与基本 SL 和 SCL 相比,ESCL 方案的性能分别提高了 18% 至 34% 和 20% 至 36%。
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引用次数: 0
A smart multiphysics approach for wind turbines design in industry 5.0 用于工业 5.0 风力涡轮机设计的智能多物理场方法
IF 10.4 1区 计算机科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-10-11 DOI: 10.1016/j.jii.2024.100704
Kambiz Tehrani , Milad Beikbabaei , Ali Mehrizi-Sani , Mo Jamshidi
This paper aims to develop a smart multiphysics approach for wind turbine design utilizing Industry 5.0. A new blade profile is developed and optimized by non-dominated sorting genetic algorithm II (NSGA-II) for shape design, and a 3D modeling of wind turbines is proposed. The aerodynamic modeling of a horizontal axis wind turbine (HAWT) is an important step in the design of wind turbines. The blade geometry design plays an important role in a wind turbine to maximize the aerodynamic performance and extract as much kinetic energy as possible from the wind resource. This paper addresses a high-level design and optimization for the parameters of a new blade. Moreover, a 3D modeling of large wind turbines (>7 MW) is proposed that can be used in wind farms. This approach can be used in real-time design in Industry 5.0 using different data from sensors. Finally, the optimized blade increases the produced power by 10% (from 7.5 MW to 8.2 MW). The proposed approach allows people to work alongside machinery to improve processes and provide personalization for companies manufacturing wind turbines.
本文旨在开发一种利用工业 5.0 进行风力涡轮机设计的智能多物理场方法。通过非支配排序遗传算法 II(NSGA-II)开发和优化了一种新的叶片外形设计,并提出了风力涡轮机的三维建模方法。水平轴风力涡轮机(HAWT)的空气动力学建模是风力涡轮机设计的重要步骤。叶片几何形状设计在风力涡轮机中发挥着重要作用,可最大限度地提高空气动力性能,并从风力资源中提取尽可能多的动能。本文针对新型叶片的参数进行了高层次设计和优化。此外,还提出了一种可用于风力发电场的大型风力涡轮机(7 兆瓦)三维建模方法。这种方法可用于工业 5.0 的实时设计,使用来自传感器的不同数据。最后,优化后的叶片可将发电功率提高 10%(从 7.5 兆瓦提高到 8.2 兆瓦)。所提出的方法可以让人与机器一起工作,从而改进流程,为风力涡轮机制造公司提供个性化服务。
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引用次数: 0
EBH-IoT: Energy-efficient secured data collection and distribution of electronics health record for cloud assisted blockchain enabled IoT based healthcare system EBH-IoT:基于云辅助区块链的物联网医疗系统电子健康记录的高能效安全数据收集与分发
IF 10.4 1区 计算机科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-10-10 DOI: 10.1016/j.jii.2024.100702
Anita Sahoo, Srichandan Sobhanayak
The integration of Health IoT (H-IoT) and blockchain technologies are being heavily exploited and used in many domains, especially for e-healthcare to collect the data i.e electronic health record (EHR) from the patient. The H-IoT devices have the ability to provide real-time sensory data from patients to be processed and analyzed, and distributed. Blockchain is providing decentralized computation, distribution and storage for EHR data. Therefore, the integration of H-IoT and Blockchain technologies can become a reasonable choice for the design of decentralized H-IoT-based e-healthcare systems. But the H-IoT network has some intrinsic challenges like low computation, energy constraint, security, energy optimization, data storage, and real-time data analytic. Also, conventional EHR-based systems suffer from issues such as the potential loss of data, inadequate security and consensus on the unchangeable nature of health records, fragmented connections between different institutions, and ineffective clinical data retrieval methods, among other challenges. In this article, first, we study the performance of blockchain technology in the healthcare system. Second, we propose an improved Harris Hawk Optimization algorithm (HHO) based clustering mechanism for the collection and sharing of EHR. The proposed system was tested and validated using the Hyperledger-fabric based electronic healthcare record (EHR) sharing system along with Matlab. The proposed system achieves 12%, and 7% incremental improvement in terms of latency, throughput for the Blockchain networks. While the proposed clustering technique achieves 10%, 12%, 14%, and 16% improvements in alive node, energy consumption, throughput and average transmission delay compared to existing state of the art.
健康物联网(H-IoT)与区块链技术的整合正在许多领域得到大量开发和使用,特别是在电子医疗保健领域,以收集患者的数据,即电子健康记录(EHR)。H-IoT 设备能够提供患者的实时感知数据,并对其进行处理、分析和分发。区块链为电子病历数据提供去中心化的计算、分发和存储。因此,将 H-IoT 与区块链技术相结合,可以成为设计基于 H-IoT 的去中心化电子医疗系统的合理选择。但 H-IoT 网络存在一些内在挑战,如低计算量、能源限制、安全性、能源优化、数据存储和实时数据分析等。此外,传统的基于电子病历的系统还存在数据可能丢失、安全性不足和健康记录不可更改的共识、不同机构之间的连接分散、临床数据检索方法无效等问题。本文首先研究了区块链技术在医疗系统中的性能。其次,我们提出了一种基于哈里斯鹰优化算法(HHO)的改进型聚类机制,用于电子病历的收集和共享。我们使用基于超级账本架构的电子病历(EHR)共享系统和 Matlab 对所提出的系统进行了测试和验证。在区块链网络的延迟和吞吐量方面,拟议系统分别实现了 12% 和 7% 的增量改进。与现有技术水平相比,拟议的聚类技术在活节点、能耗、吞吐量和平均传输延迟方面分别提高了 10%、12%、14% 和 16%。
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Journal of Industrial Information Integration
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