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Dual graph-regularized low-rank representation for hyperspectral image denoising 用于高光谱图像去噪的双图正则化低秩表示法
IF 7.5 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2024-11-23 DOI: 10.1016/j.engappai.2024.109659
Chengcai Leng , Mingpei Tang , Zhao Pei , Jinye Peng , Anup Basu
Hyperspectral images have a wide range of applications in many fields. However, when hyperspectral images are captured by spectrometers, there is inevitably considerable noise, which affects subsequent research. In recent years, many hyperspectral image denoising methods based on low-rank representations have been proposed. Artificial intelligence denoising methods are also popular. However, the research on multi noise denoising is rarely mentioned, and most literatures only focus on one noise in hyperspectral images. Thus, we propose a denoising model for hyperspectral image based on dual graph-regularized low-rank representation, which can not only reduce multiple types of noise simultaneously, but also preserves details of the original image. In particular, this is the first time that the dual low-rank representation and dual graph regularizations are used on hyperspectral images. We solve this method using the linearized alternating direction method with adaptive penalty. Finally, we conduct experiments on simulated and real data sets to verify the effectiveness of our method. The experimental results show that our method can not only effectively remove a variety of mixed noises, but also well retain the details of the image.
高光谱图像在许多领域都有广泛的应用。然而,当高光谱图像由光谱仪采集时,不可避免地会产生大量噪声,影响后续研究。近年来,人们提出了许多基于低秩表示的高光谱图像去噪方法。人工智能去噪方法也很流行。然而,关于多噪声去噪的研究却很少被提及,大多数文献只关注高光谱图像中的一种噪声。因此,我们提出了一种基于双图规则化低秩表示的高光谱图像去噪模型,它不仅能同时降低多种噪声,还能保留原始图像的细节。尤其是,这是首次在高光谱图像中使用双低秩表示和双图正则化。我们使用带有自适应惩罚的线性化交替方向法来求解这种方法。最后,我们在模拟和真实数据集上进行了实验,以验证我们方法的有效性。实验结果表明,我们的方法不仅能有效去除各种混合噪声,还能很好地保留图像的细节。
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引用次数: 0
FTPComplEx: A flexible time perspective approach to temporal knowledge graph completion FTPComplEx:一种灵活的时间视角时态知识图谱补全方法
IF 7.5 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2024-11-23 DOI: 10.1016/j.engappai.2024.109717
Ngoc-Trung Nguyen , Thuc Ngo , Nguyen Hoang , Thanh Le
The dynamic nature of interconnected data evolving over time poses significant challenges for graph representation and reasoning, particularly as temporal knowledge graphs scale in size and complexity. Existing models like TPComplEx (Time Perspective Complex Embedding) leverage tensor decomposition techniques to capture temporal dynamics, but their static weighting approach often lacks the flexibility needed to adapt to the nuanced evolution of relationships and entities. This rigidity can lead to missed temporal dependencies and loss of valuable insights, especially in large-scale graphs comprising millions or even billions of factual entries. To overcome these limitations, we propose FTPComplEx (Flexible Time Perspective Complex Embedding), a novel embedding model that introduces adjustable weights to dynamically modulate the influence of temporal information. This flexibility enables FTPComplEx to more accurately capture the intricate interactions between entities, relations, and time, providing a more robust understanding of temporal dynamics within knowledge graphs. Our extensive evaluations on benchmark datasets, including YAGO15k, ICEWS, and GDELT, demonstrate that FTPComplEx achieves state-of-the-art results, outperforming TPComplEx and other existing models. Notably, on the YAGO15k dataset, FTPComplEx achieves a 9.04% improvement in Mean Reciprocal Rank (MRR) and an 11.35% increase in Hits@1, demonstrating its effectiveness in managing complex temporal relationships. Further analysis shows that FTPComplEx maintains strong performance even with lower-rank embeddings, significantly reducing computational costs while maintaining accuracy.
随着时间的推移,相互连接的数据会发生动态变化,这给图的表示和推理带来了巨大的挑战,尤其是当时间知识图的规模和复杂性不断扩大时。现有的 TPComplEx(时间透视复杂嵌入)等模型利用张量分解技术来捕捉时间动态,但其静态加权方法往往缺乏适应关系和实体细微演变所需的灵活性。这种刻板性可能会导致遗漏时间依赖性和丢失有价值的见解,尤其是在包含数百万甚至数十亿事实条目的大规模图中。为了克服这些局限性,我们提出了 FTPComplEx(灵活的时间视角复合嵌入),这是一种新颖的嵌入模型,它引入了可调整的权重来动态调节时间信息的影响。这种灵活性使 FTPComplEx 能够更准确地捕捉实体、关系和时间之间错综复杂的相互作用,从而提供对知识图谱中时间动态的更可靠理解。我们在 YAGO15k、ICEWS 和 GDELT 等基准数据集上进行了广泛的评估,结果表明 FTPComplEx 达到了最先进的水平,优于 TPComplEx 和其他现有模型。值得注意的是,在 YAGO15k 数据集上,FTPComplEx 的平均互易等级(MRR)提高了 9.04%,点击率@1 提高了 11.35%,这证明了它在管理复杂时序关系方面的有效性。进一步的分析表明,FTPComplEx 即使使用低等级嵌入也能保持强劲的性能,在保持准确性的同时显著降低了计算成本。
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引用次数: 0
An integrated outranking technique with spherical fuzzy rough numbers for the treatment of cadmium-contaminated water problem in China 中国镉污染水处理中的球形模糊粗糙数综合排名技术
IF 7.5 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2024-11-23 DOI: 10.1016/j.engappai.2024.109633
Muhammad Akram , Maheen Sultan , Cengiz Kahraman
The Chinese economy is one of the largest and most dynamic economies in the world. Over the past few decades, China has experienced rapid economic growth from agrarian to industrial powerhouse fueled by manufacturing, exports, and services. However, this rapid growth has also brought about challenges, including environmental issues like water contamination. The indulgence of cadmium metal in regular used water can cause serious health issues, including kidney damage and cancer. Many strategies have been implemented for treatment of water contamination. The main focus of this research is to introduce a novel methodology for treatment of cadmium contaminated water problem in China. This study seeks to demonstrate the multi-criteria group decision-making ability based on the outranking relations within the confines of a contemporary, well-organized and extremely flexible model of spherical fuzzy rough numbers. Spherical fuzzy rough numbers, amalgamation of rough numbers with traditional spherical fuzzy numbers, make the use of membership, non-membership and neutral membership degrees along with the manipulation of the subjectivity and reliance on objective uncertainties. The combination of spherical fuzzy rough numbers with an outranking multi-criteria group decision making technique, Elimination and Choice Expressing Reality, integrates spherical fuzzy logic to handle uncertainty and imprecision in multi-criteria decision-making. This approach captures degrees of uncertainty and hesitancy with spherical fuzzy numbers, improving the handling of imprecise information. The working mechanism involves generation of outranking relations among alternatives by comparing predominant and subdominant options, calculating score degrees, concordance and discordance sets, and incorporating subjective spherical fuzzy rough criteria weights. Unlike traditional methods that use crisp or conventional fuzzy numbers, this technique provides a more reliable and flexible evaluation by integrating rough set theory for better handling of imprecision and uncertainty. Finally, an outranking graph is drawn that points from the supreme option to inferior one. The legitimacy of the proposed technique is, then, testified by making its comparison with other existing techniques.
中国经济是世界上规模最大、最具活力的经济体之一。在过去的几十年里,中国经历了从农业大国到工业强国的快速经济增长,而制造业、出口和服务业则为经济增长提供了动力。然而,这种快速增长也带来了挑战,包括水污染等环境问题。普通饮用水中的金属镉会导致严重的健康问题,包括肾损伤和癌症。人们已经实施了许多策略来处理水污染。本研究的重点是介绍一种处理中国镉污染水问题的新方法。本研究试图在球形模糊粗糙数这一现代、有序且极其灵活的模型中,展示基于排序关系的多标准群体决策能力。球形模糊粗略数是粗略数与传统球形模糊数的结合,利用成员度、非成员度和中性成员度,以及对主观性的操纵和对客观不确定性的依赖。球形模糊粗略数与排名靠前的多标准群体决策技术--"消除和选择表达现实"--相结合,整合了球形模糊逻辑,以处理多标准决策中的不确定性和不精确性。这种方法用球形模糊数来捕捉不确定性和犹豫不决的程度,从而改进了对不精确信息的处理。其工作机制包括通过比较主要选项和次要选项,计算得分度、一致集和不一致集,并纳入主观球形模糊粗略标准权重,从而生成备选方案之间的排序关系。与使用简明或传统模糊数的传统方法不同,该技术通过整合粗糙集理论,更好地处理不精确和不确定性,从而提供更可靠、更灵活的评价。最后,绘制出一个从最高选项到次要选项的排名图。然后,通过与其他现有技术的比较,证明了拟议技术的合法性。
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引用次数: 0
Domain adaptation based automatic identification method of vortex induced vibration of long-span bridges without prior information 基于域适应的无先验信息大跨度桥梁涡致振动自动识别方法
IF 7.5 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2024-11-23 DOI: 10.1016/j.engappai.2024.109677
Chunfeng Wan , Jiale Hou , Guangcai Zhang , Shuai Gao , Youliang Ding , Sugong Cao , Hao Hu , Songtao Xue
Machine learning algorithms can sensitively capture the characteristics of vortex induced vibration (VIV) of the girder in long span bridge from the extensive historical data accumulated by structural health monitoring (SHM) system over several years. These algorithms have gradually become a promising method of VIV identification. However, the algorithms proposed by previous researchers require historical VIV data to select the threshold or parameters to identify VIV. Most long-span bridges have not recorded a significant amount of VIV data since VIV is rare, or the bridge were not equipped with SHM system before. This study proposes an adaptive VIV identification method based on domain adaptation methods, which can identify VIV in real-time or in historical monitoring datasets of the target bridge without prior VIV information or parameter settings. The strong generalization ability of the proposed method is verified on the SHM dataset of two long-span suspension bridges in China. It is found that the VIV recognition accuracy of the balanced distribution adaptation (BDA) based VIV identification method is higher than that of other algorithms. In this study, the BDA based algorithm is also applied to the 8 months monitoring datasets of a long span bridge and successfully identifies more than 20 VIV events of the main girder, which has shown the stability and accuracy of the proposed algorithm.
机器学习算法可以从结构健康监测(SHM)系统多年来积累的大量历史数据中灵敏地捕捉到大跨度桥梁梁体的涡致振动(VIV)特征。这些算法已逐渐成为一种有前途的 VIV 识别方法。然而,前人提出的算法需要历史 VIV 数据来选择 VIV 识别的阈值或参数。由于 VIV 比较罕见,大多数大跨度桥梁都没有记录大量的 VIV 数据,或者桥梁之前没有安装 SHM 系统。本研究提出了一种基于域自适应方法的自适应 VIV 识别方法,该方法可以在没有事先 VIV 信息或参数设置的情况下识别目标桥梁的实时或历史监测数据集中的 VIV。在中国两座大跨度悬索桥的 SHM 数据集上验证了所提方法的强大泛化能力。研究发现,基于平衡分布适应(BDA)的 VIV 识别方法的 VIV 识别准确率高于其他算法。本研究还将基于 BDA 的算法应用于一座大跨度桥梁 8 个月的监测数据集,并成功识别了 20 多个主梁 VIV 事件,证明了所提算法的稳定性和准确性。
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引用次数: 0
Machine learning for predicting maximum displacement in soil-pile-superstructure systems in laterally spreading ground 用机器学习预测横向扩展地基中土桩-上部结构系统的最大位移
IF 7.5 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2024-11-23 DOI: 10.1016/j.engappai.2024.109701
Xiaoyu Zhang , Desheng He , Junjie Wang , Shengkun Wang , Meixiang Gu
Extensive damage to pile-supported structures, often caused by earthquake-induced lateral spreading, has been reported frequently in numerous major earthquakes. To mitigate such damage, accurate prediction of the seismic behavior of the soil-pile-superstructure system (SPSS) has been extensively studied through experimental and numerical simulations. However, these methods typically require substantial time and high cost, making them challenging to adapt in practical engineering scenarios. This study successfully applied machine learning (ML) techniques to predict the maximum seismic response of the SPSS, offering a more efficient and flexible solution for engineers. Six ML algorithms were used: decision tree (DT), k-nearest neighbor (KNN), extreme gradient boosting (XGB), random forest (RF), artificial neural network (ANN), and Gaussian process regression (GPR). A detailed evaluation of these algorithms has shown that ML models can effectively predict the maximum displacement of both pile and soil. Notably, XGB outperformed other methods in terms of accuracy, stability, and efficiency. Furthermore, the study indicates that the velocity-dependent ground motion parameter, root mean square velocity (vRMS), effectively represents the ground motion parameters for accurately predicting maximum pile-soil displacement. This study demonstrates the potential of ML in geotechnical earthquake engineering, establishing a basis for further applications and contributing to enhanced seismic design of pile-supported structures in liquefiable soils.
据报道,在多次大地震中,由地震引起的横向扩展通常会对桩支撑结构造成大面积破坏。为了减轻这种破坏,人们通过实验和数值模拟对土壤-桩-上部结构系统(SPSS)的地震行为进行了广泛研究。然而,这些方法通常需要大量的时间和高昂的成本,使其在实际工程应用中面临挑战。本研究成功应用了机器学习(ML)技术来预测 SPSS 的最大地震响应,为工程师提供了更高效、更灵活的解决方案。研究采用了六种 ML 算法:决策树 (DT)、k-近邻 (KNN)、极梯度提升 (XGB)、随机森林 (RF)、人工神经网络 (ANN) 和高斯过程回归 (GPR)。对这些算法的详细评估表明,ML 模型可以有效预测桩和土的最大位移。值得注意的是,XGB 在准确性、稳定性和效率方面都优于其他方法。此外,研究还表明,与速度相关的地面运动参数--均方根速度(vRMS)能有效代表地面运动参数,从而准确预测桩土的最大位移。这项研究证明了 ML 在岩土地震工程中的潜力,为进一步应用奠定了基础,并有助于加强可液化土中桩支撑结构的抗震设计。
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引用次数: 0
A novel approach in constructing virtual real driving emission trips through genetic algorithm optimization 通过遗传算法优化构建虚拟真实驾驶排放行程的新方法
IF 7.5 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2024-11-23 DOI: 10.1016/j.engappai.2024.109637
Jose Ponce, Alvin Barbier, Carlos E. Palau, Carlos Guardiola
The Real Driving Emission (RDE) test became a critical part of the process conducted by manufacturers to fulfill the approval procedure of every new vehicle model. This test measures the regulated emissions from a vehicle during a trip, which follows a specific set of operation requirements, aiming to assess the vehicle’s emission levels in real-world conditions. Additionally, In-Service Conformity (ISC) tests, which consist in performing an RDE trip, were also introduced to demonstrate vehicles emissions compliance over their lifespan. Considering that modern vehicles embed exhaust emission sensors and connectivity capabilities, it is believed that there is an opportunity for manufacturers to leverage the data generated by these vehicles to forecast the outcomes of an ISC test. However, as this study presents through the analysis of an extensive database of more than 600 trips from a mild-hybrid diesel vehicle, none of the real-world trips might comply with all the driving requirements of the RDE standard. Faced with this outcome, this work proposes the application of a Genetic Algorithm (GA) optimization to construct virtual RDE trips from real-driving data. In particular, the proposed methodology leverages such algorithm to combine real driving fragments from various trips in order to align with the main RDE trip requirements. The methodology focuses on vehicle, engine, and exhaust after-treatment variables, utilizing signal optimization connections to create a realistic analysis of vehicle pollutants. The research suggests that a combination of vehicle speed, coolant temperature, exhaust temperature, and Selective Catalytic Reduction (SCR) load leads to a significant number of RDE-compliant results under simplified legislative conditions, from which emissions profiles could be assessed. The proposed methodology details the development of an Adaptive Genetic Algorithm (AGA) and the data pipeline to create specific RDE trips, offering the capability to customize the desired Driving Cycles (DC).
真实驾驶排放(RDE)测试已成为生产商对每种新车型履行审批程序的关键部分。该测试测量车辆在行驶过程中的规定排放量,测试过程遵循一套特定的操作要求,旨在评估车辆在实际条件下的排放水平。此外,还引入了在役符合性(ISC)测试,包括执行一次 RDE 旅程,以证明车辆在其使用寿命内的排放符合性。考虑到现代汽车嵌入了尾气排放传感器和连接功能,相信制造商有机会利用这些车辆产生的数据来预测 ISC 测试的结果。然而,正如本研究通过分析轻度混合动力柴油车 600 多次行驶的广泛数据库所呈现的那样,没有一次实际行驶可能符合 RDE 标准的所有行驶要求。面对这一结果,本研究提出了应用遗传算法(GA)优化从真实驾驶数据中构建虚拟 RDE 行程的方法。特别是,建议的方法利用这种算法将各种行程中的真实驾驶片段结合起来,以符合主要的 RDE 行程要求。该方法侧重于车辆、发动机和尾气后处理变量,利用信号优化连接对车辆污染物进行真实分析。研究表明,在简化的立法条件下,结合车辆速度、冷却液温度、排气温度和选择性催化还原(SCR)负荷,可以得出大量符合 RDE 标准的结果,并据此评估排放概况。建议的方法详细介绍了自适应遗传算法 (AGA) 和数据管道的开发,以创建特定的 RDE 行程,提供定制所需驾驶循环 (DC) 的能力。
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引用次数: 0
Enhanced cross-domain lithology classification in imbalanced datasets using an unsupervised domain Adversarial Network 利用无监督域对抗网络加强不平衡数据集的跨域岩性分类
IF 7.5 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2024-11-22 DOI: 10.1016/j.engappai.2024.109668
Yunxin Xie , Liangyu Jin , Chenyang Zhu , Weibin Luo , Qian Wang
Recent advancements in Artificial Intelligence (AI), particularly deep learning, have significantly improved lithology identification in reservoir exploration by leveraging micrographic rock imagery. Deep neural networks excel in feature extraction, enhancing classification accuracy. However, these models are prone to domain shifts, which often degrade their performance in real-world applications. This paper proposes an unsupervised domain adaptation framework that integrates Fisher linear discriminant analysis and Online Hard Example Mining (OHEM) to mitigate domain shifts and improve classification, particularly in datasets with imbalanced classes. The model employs a ω-balanced global–local domain discriminator to align feature distributions between different domains and introduces focal loss with class-wise weighted factors for better handling of imbalanced data. Additionally, an adapted version of OHEM identifies difficult samples during training, allowing the model to concentrate on challenging cases. The proposed method is validated on micrographic rock imagery from the Tibet, Qinghai, and Xinjiang regions, achieving an average accuracy of 83.2%, which is 13.8% higher than ResNet50 and at least 1% superior to other domain adaptation models. This research highlights the potential of AI-driven solutions in geoscientific applications and provides a robust framework for unsupervised lithology classification.
人工智能(AI)技术,尤其是深度学习技术的最新进展,极大地改善了利用显微岩石图像进行储层勘探的岩性识别能力。深度神经网络在特征提取方面表现出色,提高了分类的准确性。然而,这些模型容易受到领域偏移的影响,这往往会降低它们在实际应用中的性能。本文提出了一种无监督领域适应框架,该框架集成了费希尔线性判别分析和在线硬实例挖掘(OHEM),以减轻领域偏移并改进分类,尤其是在类别不平衡的数据集中。该模型采用了ω-平衡全局-局部域判别器来调整不同域之间的特征分布,并引入了带有类别加权因子的焦点损失,以更好地处理不平衡数据。此外,经过调整的 OHEM 版本还能在训练过程中识别困难样本,使模型能够集中处理具有挑战性的案例。所提出的方法在西藏、青海和新疆地区的微观岩石图像上进行了验证,平均准确率达到 83.2%,比 ResNet50 高出 13.8%,比其他领域适应模型高出至少 1%。这项研究凸显了人工智能驱动的解决方案在地球科学应用中的潜力,并为无监督岩性分类提供了一个稳健的框架。
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引用次数: 0
SinkFlow: Fast and traceable root-cause localization for multidimensional anomaly events SinkFlow:快速、可追溯地定位多维异常事件的根本原因
IF 7.5 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2024-11-22 DOI: 10.1016/j.engappai.2024.109582
Zhichao Hu , Likun Liu , Lina Ma , Xiangzhan Yu
With the development of various artificial intelligence (AI)–based applications, detecting anomalies and analyzing the root causes from massive data are critical to increasing the usability of AI. Fast, accurate root-cause analysis (RCA) that finds the main reason for an anomaly, as well as reasonable explanations, helps in solving problems effectively. Thus, RCA plays an important role in troubleshooting and fault diagnosis, making its application in data analysis crucial. Previous root-cause-localization approaches for multidimensional anomaly events encompass various techniques to reduce search space and have improved the localization performance. However, they do not effectively balance the requirements in terms of performance, compatibility, and interpretability. To solve these problems, we propose a new root-cause-localization method called SinkFlow. It provides a unified framework event-aggregation Graph (EAG) to describe the constraints of event aggregation and relations between events, so it can be easily generalized to various domains. SinkFlow introduces an applicable measure evaluation method for both fundamental and derived measures to quantify the impact of events. Also, it utilizes an optimal search strategy to reduce the search space based on the anomaly behavioral consistency and deviation significance. Our experimental results on semisynthetic datasets show that SinkFlow achieved better performance than other baselines and ran much faster, achieving a 1.88% increase of the F1-score and only 25% of the time cost of the second best localization method. In addition, SinkFlow offered clear, visible explanations of the localization results to answer the questions of why they are root causes and how the anomaly is formed.
随着各种基于人工智能(AI)的应用的发展,从海量数据中检测异常并分析根本原因对于提高人工智能的可用性至关重要。快速、准确的根本原因分析(RCA)可以找到异常的主要原因以及合理的解释,有助于有效地解决问题。因此,RCA 在故障排除和故障诊断中发挥着重要作用,使其在数据分析中的应用变得至关重要。以往针对多维异常事件的根源定位方法包含各种缩小搜索空间的技术,并提高了定位性能。然而,这些方法并不能有效平衡性能、兼容性和可解释性等方面的要求。为了解决这些问题,我们提出了一种名为 SinkFlow 的新型根源定位方法。它提供了一个统一的框架事件聚合图(EAG)来描述事件聚合的约束条件和事件之间的关系,因此可以很容易地推广到各种领域。SinkFlow 引入了一种适用于基本度量和衍生度量的度量评估方法,以量化事件的影响。此外,它还利用优化搜索策略,根据异常行为的一致性和偏差的重要性来缩小搜索空间。我们在半合成数据集上的实验结果表明,SinkFlow 比其他基线方法取得了更好的性能,运行速度也更快,F1 分数提高了 1.88%,时间成本仅为第二好的定位方法的 25%。此外,SinkFlow 对定位结果提供了清晰可见的解释,回答了为什么它们是根本原因以及异常是如何形成的问题。
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引用次数: 0
Selection of Internet of Things-enabled sustainable real-time monitoring strategies for manufacturing processes using a disc spherical fuzzy Schweizer–Sklar aggregation model 利用圆盘球形模糊 Schweizer-Sklar 聚合模型为制造过程选择物联网支持的可持续实时监控策略
IF 7.5 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2024-11-22 DOI: 10.1016/j.engappai.2024.109607
Shahzaib Ashraf , Muhammad Naeem , Wania Iqbal , Hafiz Muhammad Athar Farid , Hafiz Muhammad Shakeel , Vladimir Simic , Erfan Babaee Tırkolaee
The emergence of the Internet of Things (IoT) for monitoring in real-time is geared towards sustainable energy consumption practices by taking control over energy loss. The promising potential of current IoT real-time monitoring systems paves the way for future developments in monitoring devices with eco-friendly sensing capabilities. As a result, the creation of effective IoT real-time monitoring devices targeted at decreasing energy loss becomes crucial. This modeling procedure falls under the realm of multiple-attribute group decision-making (MAGDM), aiming to integrate the Schweizer–Sklar (SS) τ-norm and τ-conorm within the disc spherical fuzzy (D-SF) framework. The objective is to enhance the flexibility of D-SF in dealing with intricate and uncertain data. The core focus of this research is on deriving SS τ-norm and τ-conorm for D-SF data, consequently introducing innovative aggregation operators. The article offers the fundamental D-SF operations using SS aggregation operators in a systematic manner, with thorough theorem justifications. A new MAGDM tool is presented, created simply to manage ambiguous and imprecise data utilizing the suggested operators. Our model is specifically designed to tackle the critical issue of reducing energy loss in IoT real-time monitoring systems. The research not only focuses on model accuracy but also emphasizes its effectiveness in solving this pressing problem, demonstrating significant advancements in sustainable energy practices. Moreover, the proposed aggregation operators are subjected to a comparative analysis. This comprehensive comparison not only enhances the operators’ efficacy but also underscores their relevance in real-world decision-making scenarios.
用于实时监控的物联网(IoT)的出现,旨在通过控制能源损耗实现可持续能源消耗。当前物联网实时监控系统的巨大潜力为未来开发具有环保传感功能的监控设备铺平了道路。因此,创建有效的物联网实时监控设备以减少能源损耗变得至关重要。该建模程序属于多属性群体决策(MAGDM)的范畴,旨在将 Schweizer-Sklar (SS) τ 规范和 τ 规范整合到圆盘球形模糊(D-SF)框架中。目的是增强 D-SF 在处理复杂和不确定数据时的灵活性。这项研究的核心重点是推导出 D-SF 数据的 SS τ 准则和 τ 准则,从而引入创新的聚合算子。文章系统地介绍了使用 SS 聚合算子的基本 D-SF 操作,并提供了详尽的定理说明。文章还介绍了一种新的 MAGDM 工具,该工具利用建议的算子管理模糊和不精确的数据。我们的模型专为解决物联网实时监控系统中减少能量损失这一关键问题而设计。这项研究不仅关注模型的准确性,还强调了模型在解决这一紧迫问题方面的有效性,展示了在可持续能源实践方面取得的重大进展。此外,还对提出的聚合算子进行了比较分析。这种全面的比较不仅增强了算子的功效,还强调了它们在现实世界决策场景中的相关性。
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引用次数: 0
Gearbox fault diagnosis based on temporal shrinkage interpretable deep reinforcement learning under strong noise 强噪声下基于时间收缩可解释深度强化学习的齿轮箱故障诊断
IF 7.5 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2024-11-22 DOI: 10.1016/j.engappai.2024.109644
Zeqi Wei , Hui Wang , Zhibin Zhao , Zheng Zhou , Ruqiang Yan
Gearbox fault diagnosis is crucial for the safe operation of mechanical systems. While Deep Learning (DL) has demonstrated promising results in this area, most existing methods rely on static supervised learning, lacking the dynamic, interactive learning capabilities similar to human decision-making. To tackle this issue, this study presents a novel approach that combines the strengths of Deep Reinforcement Learning (DRL) with the interpretability of a temporal shrinkage interpretable network. DRL integrates the perception abilities of DL with the decision-making capabilities of Reinforcement Learning (RL), offering a more comprehensive solution for complex challenges. In this method, gearbox fault diagnosis is formulated as a sequential decision problem within a Classification Markov Decision Process (CMDP). A multi-scale temporal shrinkage module is utilized to construct an interpretable network, which enhances model interpretability and reduces the negative impact of noisy data in harsh working conditions. The diagnosis agent autonomously learns the optimal classification policy, reducing the need for manual intervention and human expertise. Experimental results show excellent generalization and stability, achieving over 98.5% accuracy even in noisy conditions. It outperforms existing methods and highlights its robustness in challenging operational environments.
齿轮箱故障诊断对于机械系统的安全运行至关重要。虽然深度学习(DL)在这一领域取得了令人鼓舞的成果,但大多数现有方法都依赖于静态监督学习,缺乏类似于人类决策的动态、交互式学习能力。为解决这一问题,本研究提出了一种新方法,将深度强化学习(DRL)的优势与时态收缩可解释网络的可解释性相结合。DRL 将深度强化学习(DL)的感知能力与强化学习(RL)的决策能力相结合,为复杂的挑战提供了更全面的解决方案。在该方法中,变速箱故障诊断被表述为分类马尔可夫决策过程(CMDP)中的一个顺序决策问题。利用多尺度时间收缩模块来构建可解释网络,从而提高了模型的可解释性,并减少了恶劣工作条件下噪声数据的负面影响。诊断代理可自主学习最佳分类策略,从而减少了对人工干预和人类专业知识的需求。实验结果表明,即使在嘈杂的条件下,也能达到 98.5% 以上的准确率,具有出色的泛化和稳定性。它优于现有的方法,并突出了其在具有挑战性的操作环境中的鲁棒性。
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Engineering Applications of Artificial Intelligence
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