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An Open Data-Based Omnichannel Approach for Personalized Healthcare 基于开放数据的个性化医疗保健全渠道方法
Pub Date : 2024-07-18 DOI: 10.3390/info15070415
Ailton Moreira, M. Santos
Currently, telemedicine and telehealth have grown, prompting healthcare institutions to seek innovative ways to incorporate them into their services. Challenges such as resource allocation, system integration, and data compatibility persist in healthcare. Utilizing an open data approach in a versatile mobile platform holds great promise for addressing these challenges. This research focuses on adopting such an approach for a mobile platform catering to personalized care services. It aims to bridge identified gaps in healthcare, including fragmented communication channels and limited real-time data access, through an open data approach. This study builds upon previous research in omnichannel healthcare using prototyping to design a mobile companion for personalized care. By combining an omnichannel mobile companion with open data principles, this research successfully tackles key healthcare gaps, enhancing patient-centered care and improving data accessibility and integration. The strategy proves effective despite encountering challenges, although additional issues in personalized care services warrant further exploration and consideration.
目前,远程医疗和远程保健不断发展,促使医疗机构寻求创新方法将其纳入服务。在医疗保健领域,资源分配、系统集成和数据兼容性等挑战依然存在。在多功能移动平台中采用开放数据的方法很有希望应对这些挑战。本研究的重点是在满足个性化医疗服务的移动平台中采用这种方法。其目的是通过开放数据方法弥合医疗保健中已发现的差距,包括分散的通信渠道和有限的实时数据访问。本研究在以往全渠道医疗保健研究的基础上,利用原型设计来设计个性化护理的移动伴侣。通过将全渠道移动伴侣与开放数据原则相结合,本研究成功地解决了医疗保健领域的主要差距,加强了以患者为中心的护理,提高了数据的可访问性和整合性。尽管遇到了挑战,但这一策略证明是有效的,不过个性化护理服务中的其他问题还需要进一步探索和考虑。
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引用次数: 0
NATCA YOLO-Based Small Object Detection for Aerial Images 基于 NATCA YOLO 的航空图像小目标检测
Pub Date : 2024-07-18 DOI: 10.3390/info15070414
Yicheng Zhu, Zhenhua Ai, Jinqiang Yan, Silong Li, Guowei Yang, Teng Yu
The object detection model in UAV aerial image scenes faces challenges such as significant scale changes of certain objects and the presence of complex backgrounds. This paper aims to address the detection of small objects in aerial images using NATCA (neighborhood attention Transformer coordinate attention) YOLO. Specifically, the feature extraction network incorporates a neighborhood attention transformer (NAT) into the last layer to capture global context information and extract diverse features. Additionally, the feature fusion network (Neck) incorporates a coordinate attention (CA) module to capture channel information and longer-range positional information. Furthermore, the activation function in the original convolutional block is replaced with Meta-ACON. The NAT serves as the prediction layer in the new network, which is evaluated using the VisDrone2019-DET object detection dataset as a benchmark, and tested on the VisDrone2019-DET-test-dev dataset. To assess the performance of the NATCA YOLO model in detecting small objects in aerial images, other detection networks, such as Faster R-CNN, RetinaNet, and SSD, are employed for comparison on the test set. The results demonstrate that the NATCA YOLO detection achieves an average accuracy of 42%, which is a 2.9% improvement compared to the state-of-the-art detection network TPH-YOLOv5.
无人机航拍图像场景中的物体检测模型面临着一些挑战,例如某些物体的比例变化很大以及存在复杂的背景。本文旨在利用 NATCA(邻域注意变换器协调注意)YOLO 解决航空图像中的小物体检测问题。具体来说,特征提取网络在最后一层加入了邻域注意力变换器(NAT),以捕捉全局背景信息并提取不同的特征。此外,特征融合网络(Neck)还加入了坐标注意(CA)模块,以捕捉信道信息和更远距离的位置信息。此外,原始卷积块中的激活函数被 Meta-ACON 所取代。NAT 作为新网络的预测层,以 VisDrone2019-DET 目标检测数据集为基准进行评估,并在 VisDrone2019-DET-test-dev 数据集上进行测试。为了评估 NATCA YOLO 模型在检测航空图像中的小物体方面的性能,在测试集上采用了其他检测网络(如 Faster R-CNN、RetinaNet 和 SSD)进行比较。结果表明,NATCA YOLO 检测的平均准确率为 42%,与最先进的检测网络 TPH-YOLOv5 相比提高了 2.9%。
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引用次数: 0
Higher Education Students’ Perceptions of GenAI Tools for Learning 高校学生对 GenAI 学习工具的看法
Pub Date : 2024-07-18 DOI: 10.3390/info15070416
Wajeeh M. Daher, Asma Hussein
Students’ perceptions of tools with which they learn affect the outcomes of this learning. GenAI tools are new tools that have promise for students’ learning, especially higher education students. Examining students’ perceptions of GenAI tools as learning tools can help instructors better plan activities that utilize these tools in the higher education context. The present research considers four components of students’ perceptions of GenAI tools: efficiency, interaction, affect, and intention. To triangulate data, it combines the quantitative and the qualitative methodologies, by using a questionnaire and by conducting interviews. A total of 153 higher education students responded to the questionnaire, while 10 higher education students participated in the interview. The research results indicated that the means of affect, interaction, and efficiency were significantly medium, while the mean of intention was significantly high. The research findings showed that in efficiency, affect, and intention, male students had significantly higher perceptions of AI tools than female students, but in the interaction component, the two genders did not differ significantly. Moreover, the degree affected only the perception of interaction of higher education students, where the mean value of interaction was significantly different between B.A. and Ph.D. students in favor of Ph.D. students. Moreover, medium-technology-knowledge and high-technology-knowledge students differed significantly in their perceptions of working with AI tools in the interaction component only, where this difference was in favor of the high-technology-knowledge students. Furthermore, AI knowledge significantly affected efficiency, interaction, and affect of higher education students, where they were higher in favor of high-AI-knowledge students over low-AI-knowledge students, as well as in favor of medium-AI-knowledge students over low-AI-knowledge students.
学生对学习工具的看法会影响学习效果。GenAI工具是一种新工具,有望促进学生的学习,尤其是高等教育学生的学习。研究学生对 GenAI 工具作为学习工具的看法,可以帮助教师更好地规划在高等教育中利用这些工具的活动。本研究考虑了学生对 GenAI 工具看法的四个组成部分:效率、互动、情感和意向。为了对数据进行三角测量,本研究结合了定量和定性方法,使用了调查问卷并进行了访谈。共有 153 名高校学生回答了问卷,10 名高校学生参与了访谈。研究结果表明,情感、互动和效率的均值明显处于中等水平,而意向的均值明显处于较高水平。研究结果表明,在效率、情感和意向方面,男生对人工智能工具的感知明显高于女生,但在交互部分,男女生没有明显差异。此外,学位只影响了高校学生的交互感知,其中本科生和博士生的交互感知均值有明显差异,博士生的交互感知均值更高。此外,中等技术知识学生和高技术知识学生仅在交互部分对使用人工智能工具的看法存在显著差异,这种差异有利于高技术知识学生。此外,人工智能知识对高校学生的效率、互动和情感也有明显影响,其中高人工智能知识学生比低人工智能知识学生更有优势,中人工智能知识学生也比低人工智能知识学生更有优势。
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引用次数: 0
Exploring the Factors in the Discontinuation of a Talent Pool Information System: A Case Study of an EduTech Startup in Indonesia 探索人才库信息系统停用的因素:印度尼西亚教育科技初创企业案例研究
Pub Date : 2024-07-17 DOI: 10.3390/info15070412
Sabila Nurwardani, Ailsa Zayyan, Endah Fuji Astuti, Panca O. Hadi Putra
This research was conducted to determine the reasons behind users’ discontinuation of talent pool information system use. A qualitative approach was chosen to explore these factors in depth. Respondents were selected using purposive sampling techniques, and the data collection process was carried out through semi-structured interviews. The thematic analysis method was then applied to the transcripts of the interviews with the users. Based on the qualitative methodology employed, we found seven factors behind users’ discontinuation of the use of the studied information system. The seven factors were grouped based on two dimensions, namely, experiential factors and external factors. Poor system quality, informational issues, interface issues, and unfamiliarity with the system influenced the experiential factors. On the other hand, the external factors were influenced by workforce needs, talent mismatches, and a lack of socialization. This research offers a novel, in-depth analysis of the factors that cause users to stop using information systems based on direct experience from users. In addition, the results of this study will be used as feedback companies can use to improve their systems.
本研究旨在确定用户停止使用人才库信息系统背后的原因。研究选择了定性方法来深入探讨这些因素。采用目的性抽样技术选择受访者,并通过半结构化访谈进行数据收集。然后,对用户的访谈记录采用了主题分析法。根据所采用的定性方法,我们发现了用户停止使用所研究的信息系统背后的七个因素。这七个因素按两个维度进行了分组,即经验因素和外部因素。系统质量差、信息问题、界面问题和对系统不熟悉是影响体验因素的主要因素。另一方面,外部因素则受到劳动力需求、人才不匹配和缺乏社会化等因素的影响。这项研究基于用户的直接经验,对导致用户停止使用信息系统的因素进行了新颖、深入的分析。此外,这项研究的结果还将作为反馈信息,供企业用来改进其系统。
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引用次数: 0
DPP: A Novel Disease Progression Prediction Method for Ginkgo Leaf Disease Based on Image Sequences DPP:基于图像序列的银杏叶病新型病情发展预测方法
Pub Date : 2024-07-16 DOI: 10.3390/info15070411
Shubao Yao, Jianhui Lin, Hao Bai
Ginkgo leaf disease poses a grave threat to Ginkgo biloba. The current management of Ginkgo leaf disease lacks precision guidance and intelligent technologies. To provide precision guidance for disease management and to evaluate the effectiveness of the implemented measures, the present study proposes a novel disease progression prediction (DPP) method for Ginkgo leaf blight with a multi-level feature translation architecture and enhanced spatiotemporal attention module (eSTA). The proposed DPP method is capable of capturing key spatiotemporal dependencies of disease symptoms at various feature levels. Experiments demonstrated that the DPP method achieves state-of-the-art prediction performance in disease progression prediction. Compared to the top-performing spatiotemporal predictive learning method (SimVP + TAU), our method significantly reduced the mean absolute error (MAE) by 19.95% and the mean square error (MSE) by 25.35%. Moreover, it achieved a higher structure similarity index measure (SSIM) of 0.970 and superior peak signal-to-noise ratio (PSNR) of 37.746 dB. The proposed method can accurately forecast the progression of Ginkgo leaf blight to a large extent, which is expected to provide valuable insights for precision and intelligent disease management. Additionally, this study presents a novel perspective for the extensive research on plant disease prediction.
银杏叶病对银杏叶构成严重威胁。目前对银杏叶病的管理缺乏精确指导和智能技术。为了给银杏叶病管理提供精确的指导,并评估已实施措施的效果,本研究提出了一种新型的银杏叶病病情发展预测(DPP)方法,该方法采用多层次特征转换架构和增强型时空注意力模块(eSTA)。所提出的 DPP 方法能够捕捉不同特征水平上疾病症状的关键时空依赖关系。实验证明,DPP 方法在疾病进展预测方面达到了最先进的预测性能。与表现最佳的时空预测学习方法(SimVP + TAU)相比,我们的方法显著降低了 19.95% 的平均绝对误差(MAE)和 25.35% 的均方误差(MSE)。此外,该方法的结构相似性指数(SSIM)达到了 0.970,峰值信噪比(PSNR)达到了 37.746 dB。所提出的方法能在很大程度上准确预测银杏叶枯病的发展,有望为精准、智能的病害管理提供有价值的见解。此外,本研究还为植物病害预测的广泛研究提供了一个新的视角。
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引用次数: 0
Optimization of Memristor Crossbar’s Mapping Using Lagrange Multiplier Method and Genetic Algorithm for Reducing Crossbar’s Area and Delay Time 使用拉格朗日乘法器方法和遗传算法优化晶闸管横条映射以减少横条面积和延迟时间
Pub Date : 2024-07-15 DOI: 10.3390/info15070409
Seungmyeong Cho, Rina Yoon, Ilpyeong Yoon, Jihwan Moon, Seokjin Oh, Kyeong-Sik Min
Memristor crossbars offer promising low-power and parallel processing capabilities, making them efficient for implementing convolutional neural networks (CNNs) in terms of delay time, area, etc. However, mapping large CNN models like ResNet-18, ResNet-34, VGG-Net, etc., onto memristor crossbars is challenging due to the line resistance problem limiting crossbar size. This necessitates partitioning full-image convolution into sub-image convolution. To do so, an optimized mapping of memristor crossbars should be considered to divide full-image convolution into multiple crossbars. With limited crossbar resources, especially in edge devices, it is crucial to optimize the crossbar allocation per layer to minimize the hardware resource in term of crossbar area, delay time, and area–delay product. This paper explores three optimization scenarios: (1) optimizing total delay time under a crossbar’s area constraint, (2) optimizing total crossbar area with a crossbar’s delay time constraint, and (3) optimizing a crossbar’s area–delay-time product without constraints. The Lagrange multiplier method is employed for the constrained cases 1 and 2. For the unconstrained case 3, a genetic algorithm (GA) is used to optimize the area–delay-time product. Simulation results demonstrate that the optimization can have significant improvements over the unoptimized results. When VGG-Net is simulated, the optimization can show about 20% reduction in delay time for case 1 and 22% area reduction for case 2. Case 3 highlights the benefits of optimizing the crossbar utilization ratio for minimizing the area–delay-time product. The proposed optimization strategies can substantially enhance the neural network’s performance of memristor crossbar-based processing-in-memory architectures, especially for resource-constrained edge computing platforms.
忆阻器横梁具有前景广阔的低功耗和并行处理能力,使其在延迟时间、面积等方面能够高效地实现卷积神经网络(CNN)。然而,将 ResNet-18、ResNet-34、VGG-Net 等大型 CNN 模型映射到忆阻器横梁上具有挑战性,因为线路电阻问题限制了横梁的尺寸。这就需要将全图像卷积划分为子图像卷积。为此,应考虑优化忆阻器横梁的映射,将全图卷积分为多个横梁。由于横条资源有限,特别是在边缘器件中,因此优化每层的横条分配以最大限度地减少横条面积、延迟时间和面积-延迟乘积等硬件资源至关重要。本文探讨了三种优化方案:(1) 在横梁面积限制条件下优化总延迟时间;(2) 在横梁延迟时间限制条件下优化横梁总面积;(3) 在无限制条件下优化横梁面积-延迟时间乘积。拉格朗日乘法适用于有约束条件的情况 1 和 2。对于无约束情况 3,则采用遗传算法(GA)来优化面积-延迟时间乘积。仿真结果表明,优化结果比未优化结果有显著改善。在对 VGG-Net 进行仿真时,对案例 1 进行优化后,延迟时间减少了约 20%,对案例 2 进行优化后,面积减少了 22%。案例 3 突出了优化横梁利用率对最小化面积-延迟时间乘积的益处。所提出的优化策略可大幅提高基于忆阻器横梁的内存处理架构的神经网络性能,尤其适用于资源受限的边缘计算平台。
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引用次数: 0
Digital Educational Tools for Undergraduate Nursing Education: A Review of Serious Games, Gamified Applications and Non-Gamified Virtual Reality Simulations/Tools for Nursing Students 护理本科教育的数字教育工具:面向护理专业学生的严肃游戏、游戏化应用和非游戏化虚拟现实模拟/工具综述
Pub Date : 2024-07-15 DOI: 10.3390/info15070410
V. Chatzea, Ilias Logothetis, Michail Kalogiannakis, Michael Rovithis, Nikolas Vidakis
Educational technology has advanced tremendously in recent years, with several major developments becoming available in healthcare professionals’ education, including nursing. Furthermore, the COVID-19 pandemic resulted in obligatory physical distancing, which forced an accelerated digital transformation of teaching tools. This review aimed to summarize all the available digital tools for nursing undergraduate education developed from 2019 to 2023. A robust search algorithm was implemented in the Scopus database, resulting in 1592 publications. Overall, 266 relevant studies were identified enrolling more than 22,500 undergraduate nursing students. Upon excluding multiple publications on the same digital tool, studies were categorized into three broad groups: serious games (28.0%), gamified applications (34.5%), and VR simulations and other non-gamified digital interventions (37.5%). Digital tools’ learning activity type (categories = 8), geographical distribution (countries = 34), educational subjects (themes = 12), and inclusion within a curriculum course (n = 108), were also explored. Findings indicate that digital educational tools are an emerging field identified as a potential pedagogical strategy aiming to transform nursing education. This review highlights the latest advances in the field, providing useful insights that could inspire countries and universities which have not yet incorporated digital educational tools in their nursing curriculum, to invest in their implementation.
近年来,教育技术取得了巨大进步,包括护理在内的医疗保健专业人员教育中出现了几项重大发展。此外,COVID-19大流行导致了强制性的物理距离,这迫使教学工具加速数字化转型。本综述旨在总结 2019 年至 2023 年期间开发的用于护理本科教育的所有可用数字工具。我们在 Scopus 数据库中采用了强大的搜索算法,共搜索到 1592 篇出版物。总体而言,共发现了 266 项相关研究,涉及 22500 多名护理本科生。在排除关于同一数字工具的多篇论文后,研究被分为三大类:严肃游戏(28.0%)、游戏化应用(34.5%)以及 VR 模拟和其他非游戏化数字干预(37.5%)。此外,还探讨了数字工具的学习活动类型(类别 = 8)、地理分布(国家 = 34)、教育科目(主题 = 12)以及是否包含在课程中(n = 108)。研究结果表明,数字教育工具是一个新兴领域,被认为是一种旨在改变护理教育的潜在教学策略。本综述重点介绍了这一领域的最新进展,提供了有益的见解,可激励尚未将数字教育工具纳入护理课程的国家和大学投资实施这些工具。
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引用次数: 0
Multi-Level Attention with 2D Table-Filling for Joint Entity-Relation Extraction 利用二维填表的多层次注意力进行联合实体关系提取
Pub Date : 2024-07-14 DOI: 10.3390/info15070407
Zhenyu Zhang, Lin Shi, Yang Yuan, Huanyue Zhou, Shoukun Xu
Joint entity-relation extraction is a fundamental task in the construction of large-scale knowledge graphs. This task relies not only on the semantics of the text span but also on its intricate connections, including classification and structural details that most previous models overlook. In this paper, we propose the incorporation of this information into the learning process. Specifically, we design a novel two-dimensional word-pair tagging method to define the task of entity and relation extraction. This allows type markers to focus on text tokens, gathering information for their corresponding spans. Additionally, we introduce a multi-level attention neural network to enhance its capacity to perceive structure-aware features. Our experiments show that our approach can overcome the limitations of earlier tagging methods and yield more accurate results. We evaluate our model using three different datasets: SciERC, ADE, and CoNLL04. Our model demonstrates competitive performance compared to the state-of-the-art, surpassing other approaches across the majority of evaluated metrics.
联合实体关系提取是构建大规模知识图谱的一项基本任务。这项任务不仅依赖于文本跨度的语义,还依赖于文本之间错综复杂的联系,包括分类和结构细节,而这些正是以往大多数模型所忽视的。在本文中,我们提出将这些信息纳入学习过程。具体来说,我们设计了一种新颖的二维词对标记法来定义实体和关系提取任务。这样,类型标记器就能专注于文本标记,收集相应跨度的信息。此外,我们还引入了多级注意力神经网络,以增强其感知结构感知特征的能力。我们的实验表明,我们的方法可以克服早期标记方法的局限性,并产生更准确的结果。我们使用三个不同的数据集对我们的模型进行了评估:SciERC、ADE 和 CoNLL04。与最先进的方法相比,我们的模型表现出极具竞争力的性能,在大多数评估指标上都超过了其他方法。
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引用次数: 0
Application of Attention-Enhanced 1D-CNN Algorithm in Hyperspectral Image and Spectral Fusion Detection of Moisture Content in Orah Mandarin (Citrus reticulata Blanco) 注意力增强型 1D-CNN 算法在奥拉柑(Citrus reticulata Blanco)水分含量的高光谱图像和光谱融合检测中的应用
Pub Date : 2024-07-14 DOI: 10.3390/info15070408
Weiq Li, Yifan Wang, Yue Yu, Jie Liu
A method fusing spectral and image information with a one-dimensional convolutional neural network(1D-CNN) for the detection of moisture content in Orah mandarin (Citrus reticulata Blanco) was proposed. The 1D-CNN model integrated with three different attention modules (SEAM, ECAM, CBAM) and machine learning models were applied to individual spectrum and fused information by passing the traditional feature extraction stage. Additionally, the dimensionality reduction of hyperspectral images and extraction of one-dimensional color and textural features from the reduced images were performed, thus avoiding the large parameter volumes and efficiency decline inherent in the direct modeling of two-dimensional images. The results indicated that the 1D-CNN model with integrated attention modules exhibited clear advantages over machine learning models in handling multi-source information. The optimal machine learning model was determined to be the random forest (RF) model under the fusion information, with a correlation coefficient (R) of 0.8770 and a root mean square error (RMSE) of 0.0188 on the prediction set. The CBAM-1D-CNN model under the fusion information exhibited the best performance, with an R of 0.9172 and an RMSE of 0.0149 on the prediction set. The 1D-CNN models utilizing fusion information exhibited superior performance compared to single spectrum, and 1D-CNN with the fused information based on SEAM, ECAM, and CBAM respectively improved Rp by 4.54%, 0.18%, and 10.19% compared to the spectrum, with the RMSEP decreased by 11.70%, 14.06%, and 31.02%, respectively. The proposed approach of 1D-CNN integrated attention can obtain excellent regression results by only using one-dimensional data and without feature pre-extracting, reducing the complexity of the models, simplifying the calculation process, and rendering it a promising practical application.
提出了一种利用一维卷积神经网络(1D-CNN)融合光谱和图像信息检测奥拉柑(Citrus reticulata Blanco)水分含量的方法。一维卷积神经网络模型集成了三种不同的注意力模块(SEAM、ECAM、CBAM)和机器学习模型,通过传统的特征提取阶段,应用于单个光谱和融合信息。此外,还对高光谱图像进行了降维处理,并从降维后的图像中提取一维色彩和纹理特征,从而避免了直接对二维图像建模所固有的参数量大和效率下降的问题。结果表明,与机器学习模型相比,集成了注意力模块的一维-CNN 模型在处理多源信息方面具有明显优势。在融合信息下,最佳机器学习模型被确定为随机森林(RF)模型,预测集上的相关系数(R)为 0.8770,均方根误差(RMSE)为 0.0188。融合信息下的 CBAM-1D-CNN 模型表现最佳,在预测集上的 R 值为 0.9172,均方根误差为 0.0149。与单一频谱相比,利用融合信息的 1D-CNN 模型表现出更优越的性能,基于 SEAM、ECAM 和 CBAM 的融合信息的 1D-CNN 与频谱相比,Rp 分别提高了 4.54%、0.18% 和 10.19%,RMSEP 分别降低了 11.70%、14.06% 和 31.02%。所提出的一维-CNN 集成注意力方法只需使用一维数据,无需特征预提取,就能获得优异的回归结果,降低了模型的复杂度,简化了计算过程,具有广阔的实际应用前景。
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引用次数: 0
Integrating Change Management with a Knowledge Management Framework: A Methodological Proposal 将变革管理与知识管理框架相结合:方法论建议
Pub Date : 2024-07-13 DOI: 10.3390/info15070406
Bernal Picado Argüello, V. González-Prida
This study proposes the integration of change management with a knowledge management framework to address knowledge retention and successful change management in the context of Industry 5.0. Using the ADKAR model, it is suggested to implement strategies for training and user acceptance testing. The research highlights the importance of applying the human capital life cycle in knowledge and change management, demonstrating the effectiveness of this approach in adapting to Industry 5.0. The methodology includes a review of the state of the art in intangible asset management, change management models, and the integration of change and knowledge management. In addition, a case study is presented in a food production company that validates the effectiveness of the ADKAR model in implementing digital technologies, improving process efficiency and increasing employee acceptance of new technologies. The results show a significant improvement in process efficiency and a reduction in resistance to change. The originality of the study lies in the combination of the ADKAR model with intangible asset and knowledge management, providing a holistic solution for change management in the Industry 5.0 era. Future implications suggest the need to explore the applicability of the ADKAR model in different industries and cultures, as well as its long-term effects on organisational sustainability and innovation. This comprehensive approach can serve as a guide for other organisations seeking to implement successful digital transformations.
本研究建议将变革管理与知识管理框架相结合,以解决工业 5.0 背景下的知识保留和成功变革管理问题。利用 ADKAR 模型,建议实施培训和用户验收测试战略。研究强调了在知识和变革管理中应用人力资本生命周期的重要性,证明了这种方法在适应工业 5.0 方面的有效性。研究方法包括回顾无形资产管理、变革管理模式以及变革与知识管理整合的最新进展。此外,还介绍了一个食品生产公司的案例研究,该案例验证了 ADKAR 模型在实施数字技术、提高流程效率和增加员工对新技术的接受度方面的有效性。研究结果表明,流程效率有了显著提高,员工对变革的抵触情绪也有所减少。这项研究的独创性在于将 ADKAR 模型与无形资产和知识管理相结合,为工业 5.0 时代的变革管理提供了一个整体解决方案。未来的影响表明,有必要探索 ADKAR 模型在不同行业和文化中的适用性,以及它对组织可持续性和创新的长期影响。这种全面的方法可以为其他寻求成功实施数字化转型的组织提供指导。
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引用次数: 0
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