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EvolutionViT: Multi-objective evolutionary vision transformer pruning under resource constraints EvolutionViT:资源约束下的多目标进化视觉转换器修剪
IF 8.1 1区 计算机科学 N/A COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2024-08-28 DOI: 10.1016/j.ins.2024.121406

Vision Transformer (ViT) has emerged as a pivotal model for a variety of visual tasks, surpassing convolutional neural networks by a substantial margin. However, the performance of ViT is seriously impaired by intensive computational and storage costs requirements, posing significant barriers for real-world applications or deployment on resource-constrained edge devices. To address this limitation, compressing the ViT to accelerate its inference at no appreciable degradation of vision performance has attracted widespread attention. Although there are some studies on accelerating ViT, they seldom consider resource constraints and multi-criteria decision making in the process. This article formulates ViT pruning as a large-scale constrained multi-objective optimization problem, and proposes a patch pruning framework for accelerating ViT, called EvolutionViT, based on the developed multi-objective optimization model. EvolutionViT can effectively tradeoff between computational cost and performance under resource constraints, automatically searching for solutions while optimizing two conflicting objectives. In particular, exploiting the knee solution and boundary solutions to directly guide the entire evolutionary process, EvolutionViT can efficiently identify a knee solution that satisfies the resource constraints, which in turn avoids the manual search for a good trade-off. To verify and evaluate our proposed method, we compare EvolutionViT with a number of representative ViT models on the ImageNet dataset. The comprehensive simulation results show that the proposed EvolutionViT demonstrates a competitive advantage compared to peers, with significantly reduced computational expense at the cost of slightly degraded performance.

视觉转换器(ViT)已成为各种视觉任务的关键模型,大大超过了卷积神经网络。然而,ViT 的性能因需要大量计算和存储成本而严重受损,给实际应用或在资源受限的边缘设备上部署带来了巨大障碍。为了解决这一限制,压缩 ViT 以加快其推理速度,同时又不明显降低视觉性能的方法引起了广泛关注。虽然有一些关于加速 ViT 的研究,但它们很少考虑资源限制和过程中的多标准决策。本文将 ViT 修剪表述为一个大规模约束的多目标优化问题,并基于所建立的多目标优化模型提出了一个用于加速 ViT 的补丁修剪框架,称为 EvolutionViT。EvolutionViT 可以在资源限制条件下有效权衡计算成本和性能,在优化两个冲突目标的同时自动搜索解决方案。特别是,利用膝解法和边界解法直接指导整个进化过程,EvolutionViT 可以有效地找出满足资源约束的膝解法,从而避免了人工寻找良好权衡方案的过程。为了验证和评估我们提出的方法,我们在 ImageNet 数据集上比较了 EvolutionViT 和一些有代表性的 ViT 模型。综合仿真结果表明,与同类产品相比,我们提出的 EvolutionViT 具有竞争优势,在性能略有下降的情况下大幅降低了计算成本。
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引用次数: 0
A novel multi-state reinforcement learning-based multi-objective evolutionary algorithm 基于强化学习的新型多目标进化算法
IF 8.1 1区 计算机科学 N/A COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2024-08-28 DOI: 10.1016/j.ins.2024.121397

Multi-objective evolutionary algorithms (MOEAs) are widely employed to tackle multi-objective optimization problems (MOPs). However, the choice of different crossover operators significantly impacts the algorithm's ability to balance population diversity and convergence effectively. To enhance algorithm performance, this paper introduces a novel multi-state reinforcement learning-based multi-objective evolutionary algorithm, MRL-MOEA, which utilizes reinforcement learning (RL) to select crossover operators. In MRL-MOEA, a state model is established according to the distribution of individuals in the objective space, and different crossover operators are designed for the transition between different states. Additionally, in the process of evolution, the population still exhibits inadequate convergence in certain regions, leading to sparse areas within the regular Pareto Front (PF). To address this issue, a strategy for adjusting weight vectors has been devised to achieve uniform distribution of the PF. The experimental results of MRL-MOEA on several benchmark suites with a varying number of objectives ranging from 3 to 10, including WFG and DTLZ, demonstrate MRL-MOEA's competitiveness compared to other algorithms.

多目标进化算法(MOEAs)被广泛用于解决多目标优化问题(MOPs)。然而,选择不同的交叉算子会严重影响算法有效平衡种群多样性和收敛性的能力。为了提高算法性能,本文介绍了一种新颖的基于多态强化学习的多目标进化算法 MRL-MOEA,它利用强化学习(RL)来选择交叉算子。在 MRL-MOEA 中,根据目标空间中个体的分布建立状态模型,并为不同状态之间的转换设计不同的交叉算子。此外,在演化过程中,种群在某些区域仍表现出收敛性不足,导致规则帕累托前沿(PF)内区域稀疏。针对这一问题,我们设计了一种调整权重向量的策略,以实现帕累托前沿的均匀分布。MRL-MOEA 在 WFG 和 DTLZ 等多个目标数从 3 到 10 不等的基准套件上的实验结果表明,与其他算法相比,MRL-MOEA 具有很强的竞争力。
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引用次数: 0
Self-organizing hierarchical incremental learning framework and universal approximation analysis based on stochastic configuration mechanism 基于随机配置机制的自组织分层增量学习框架和通用近似分析
IF 8.1 1区 计算机科学 N/A COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2024-08-28 DOI: 10.1016/j.ins.2024.121402

Conventional machine learning algorithms face significant limitations when dealing with high-dimensional data. Besides, deep learning models often require substantial computational resources and have a high processing time despite their excellent performance. Hence, this paper proposes an expanded stochastic configuration network and a self-organizing hierarchical incremental learning (SHIL) framework to overcome these challenges. Specifically, this study introduces a novel supervised hierarchical clustering tree based on the minimum redundancy maximum correlation algorithm, which mines internal data structures to construct diverse hierarchies. Subsequently, by exploiting the parent-child node relationships in the tree structure, SHIL defines the maximum number of nodes as the switching condition between levels uses the supervisory mechanism as the parameter selection criterion, and adopts the tolerance error as the termination criterion for the training. Furthermore, the universal approximation property of the SHIL framework is provided. The proposed SHIL framework is validated on several benchmark datasets, image datasets, and industrial robot cases, with the corresponding experimental results demonstrating that SHIL significantly improves computational efficiency and ensures high accuracy.

传统的机器学习算法在处理高维数据时面临很大的局限性。此外,深度学习模型虽然性能卓越,但往往需要大量的计算资源和较长的处理时间。因此,本文提出了一种扩展的随机配置网络和自组织分层增量学习(SHIL)框架,以克服这些挑战。具体来说,本研究引入了一种基于最小冗余最大相关算法的新型有监督分层聚类树,该算法通过挖掘内部数据结构来构建多样化的层次结构。随后,SHIL 利用树结构中的父子节点关系,将最大节点数定义为层次间的切换条件,将监督机制作为参数选择标准,并采用容许误差作为训练的终止标准。此外,还提供了 SHIL 框架的通用逼近特性。提出的 SHIL 框架在多个基准数据集、图像数据集和工业机器人案例中进行了验证,相应的实验结果表明,SHIL 显著提高了计算效率并确保了高精度。
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引用次数: 0
Multimodal graph learning with framelet-based stochastic configuration networks for emotion recognition in conversation 利用基于小帧的随机配置网络进行多模态图学习,实现对话中的情感识别
IF 8.1 1区 计算机科学 N/A COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2024-08-28 DOI: 10.1016/j.ins.2024.121393

The multimodal emotion recognition in conversation (ERC) task presents significant challenges due to the complexity of relationships and the difficulty in achieving semantic fusion across various modalities. Graph learning, recognized for its capability to capture intricate data relations, has been suggested as a solution for ERC. However, existing graph-based ERC models often fail to address the fundamental limitations of graph learning, such as assuming pairwise interactions and neglecting high-frequency signals in semantically-poor modalities, which leads to an over-reliance on text. While these issues might be negligible in other applications, they are crucial for the success of ERC. In this paper, we propose a novel framework for ERC, namely multimodal graph learning with framelet-based stochastic configuration networks (i.e., Frame-SCN). Specifically, framelet-based stochastic configuration networks, which employ 2D directional Haar framelets to extract both low- and high-pass components, are introduced to learn the unified semantic embeddings from multimodal data, mitigating prediction biases caused by an excessive reliance on text without introducing an unnecessarily large number of parameters. Also, we develop a modality-aware information extraction module that is able to extract both general and sensitive information in a multimodal semantic space, alleviating potential noise issues. Extensive experiment results demonstrate that our proposed Frame-SCN outperforms many state-of-the-art approaches on two widely used multimodal ERC datasets.

对话中的多模态情感识别(ERC)任务由于关系的复杂性和在不同模态间实现语义融合的难度而面临巨大挑战。图学习因其捕捉错综复杂的数据关系的能力而被公认为是一种针对 ERC 的解决方案。然而,现有的基于图的 ERC 模型往往无法解决图学习的基本局限性,例如假定成对交互和忽略语义贫乏模态中的高频信号,从而导致过度依赖文本。虽然这些问题在其他应用中可以忽略不计,但它们对 ERC 的成功至关重要。在本文中,我们提出了一种用于 ERC 的新型框架,即基于小帧随机配置网络(即 Frame-SCN)的多模态图学习。具体来说,基于小帧的随机配置网络采用二维定向哈尔小帧来提取低通和高通分量,用于从多模态数据中学习统一的语义嵌入,从而在不引入不必要的大量参数的情况下,减轻因过度依赖文本而导致的预测偏差。此外,我们还开发了一种模态感知信息提取模块,能够在多模态语义空间中提取一般信息和敏感信息,从而缓解潜在的噪声问题。广泛的实验结果表明,在两个广泛使用的多模态 ERC 数据集上,我们提出的 Frame-SCN 优于许多最先进的方法。
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引用次数: 0
A fully interpretable stacking fuzzy classifier with stochastic configuration-based learning for high-dimensional data 针对高维数据的基于随机配置学习的完全可解释堆积模糊分类器
IF 8.1 1区 计算机科学 N/A COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2024-08-24 DOI: 10.1016/j.ins.2024.121359

This study proposes a stacking fuzzy classifier with stochastic configuration-based learning that can achieve higher training and testing performances and sound interpretability of fuzzy rules. By using the understandable first-order Takagi–Sugeno–Kang fuzzy system, we initially stack each successive subclassifier on both the remaining misclassified training data and the corresponding outputs of the previous subclassifier. Subsequently, a Stacking Fuzzy Classifier with Fully Interpretable and Short fuzzy Rules (FISR-SFC) further improves its prediction by linearly aggregating the outputs of all the subclassifiers. FISR-SFC trains each subclassifier using the proposed stochastic configuration-based learning procedure to utilize its training excellence on gradually smaller misclassified training data and simultaneously maintain the full interpretability of each subclassifier. Experimental results on twelve benchmarking datasets reveal that FISR-SFC is at least comparable to and even better than the comparative classifiers in terms of average testing accuracy/G-mean and/or short rules with full interpretability.

本研究提出了一种基于随机配置学习的堆叠模糊分类器,它可以实现更高的训练和测试性能以及模糊规则的良好可解释性。通过使用可理解的一阶高木-菅野-康(Takagi-Sugeno-Kang)模糊系统,我们首先将每个连续的子分类器堆叠在剩余的误分类训练数据和前一个子分类器的相应输出上。随后,具有完全可解释和简短模糊规则的堆叠模糊分类器(FISR-SFC)通过线性聚合所有子分类器的输出,进一步改进其预测。FISR-SFC 使用所提出的基于随机配置的学习程序来训练每个子分类器,以利用其在逐渐减少的误分类训练数据上的训练优势,同时保持每个子分类器的完全可解释性。在 12 个基准数据集上的实验结果表明,FISR-SFC 在平均测试准确率/均值和/或短规则的完全可解释性方面,至少可媲美甚至优于同类分类器。
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引用次数: 0
Learning a multi-cluster memory prototype for unsupervised video anomaly detection 学习用于无监督视频异常检测的多集群记忆原型
IF 8.1 1区 计算机科学 N/A COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2024-08-23 DOI: 10.1016/j.ins.2024.121385

In recent years, there has been rapid development in video anomaly detection (VAD). The previous methods ignored the differences between normal videos and only emphasized learning the commonalities of normal videos. In order to improve the performance of anomaly detection, we delve into the spatial distribution of normal video features and utilize their differences for clustering, leading to more minor reconstruction errors for normal videos and more significant reconstruction errors for abnormal videos. To achieve this goal, we introduce a Multi-Cluster Memory Prototype framework (MCMP) for VAD, which explores the coarse-grained and fine-grained information from video snippet features simultaneously to learn a memory prototype, thereby significantly improving the ability to discriminate abnormal events in complex scenes. First, a video feature clustering method that employs contrastive learning is introduced to group samples sharing similar fine-grained features. Second, the memory mechanism is used to capture the feature distribution of normal samples. Lastly, the Gaussian filter feature transformation method is introduced to make normal and abnormal features more distinguishable. The frame level AUC of MCMP on ShanghaiTech and UCF-Crime benchmark datasets has increased by 1.26% and 0.45% compared to state-of-the-art methods. Our code is publicly available at https://github.com/WuIkun5658/MCMP.

近年来,视频异常检测(VAD)得到了快速发展。以往的方法忽略了正常视频之间的差异,只强调学习正常视频的共性。为了提高异常检测的性能,我们深入研究了正常视频特征的空间分布,并利用其差异进行聚类,从而使正常视频的重建误差更小,异常视频的重建误差更大。为实现这一目标,我们为 VAD 引入了多集群记忆原型框架(MCMP),该框架可同时利用视频片段特征的粗粒度和细粒度信息来学习记忆原型,从而显著提高对复杂场景中异常事件的判别能力。首先,采用对比学习的视频特征聚类方法,将具有相似细粒度特征的样本分组。其次,利用记忆机制捕捉正常样本的特征分布。最后,引入高斯滤波特征变换方法,使正常和异常特征更易区分。与最先进的方法相比,MCMP 在 ShanghaiTech 和 UCF-Crime 基准数据集上的帧级 AUC 分别提高了 1.26% 和 0.45%。我们的代码可在 https://github.com/WuIkun5658/MCMP 公开获取。
{"title":"Learning a multi-cluster memory prototype for unsupervised video anomaly detection","authors":"","doi":"10.1016/j.ins.2024.121385","DOIUrl":"10.1016/j.ins.2024.121385","url":null,"abstract":"<div><p>In recent years, there has been rapid development in video anomaly detection (VAD). The previous methods ignored the differences between normal videos and only emphasized learning the commonalities of normal videos. In order to improve the performance of anomaly detection, we delve into the spatial distribution of normal video features and utilize their differences for clustering, leading to <em>more minor</em> reconstruction errors for normal videos and <em>more significant</em> reconstruction errors for abnormal videos. To achieve this goal, we introduce a Multi-Cluster Memory Prototype framework (MCMP) for VAD, which explores the coarse-grained and fine-grained information from video snippet features simultaneously to learn a memory prototype, thereby significantly improving the ability to discriminate abnormal events in complex scenes. First, a video feature clustering method that employs contrastive learning is introduced to group samples sharing similar fine-grained features. Second, the memory mechanism is <em>used</em> to capture the feature distribution of normal samples. Lastly, <em>the</em> Gaussian filter feature transformation method <em>is introduced to make</em> normal and abnormal features more distinguishable. The frame level AUC of MCMP on ShanghaiTech and UCF-Crime benchmark datasets has increased by 1.26% and 0.45% compared to state-of-the-art methods. <em>Our code is publicly available at</em> <span><span><em>https://github.com/WuIkun5658/MCMP</em></span><svg><path></path></svg></span><em>.</em></p></div>","PeriodicalId":51063,"journal":{"name":"Information Sciences","volume":null,"pages":null},"PeriodicalIF":8.1,"publicationDate":"2024-08-23","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"142084039","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":1,"RegionCategory":"计算机科学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
Finite-time quasi-projective synchronization of fractional-order reaction-diffusion delayed neural networks 分数阶反应-扩散延迟神经网络的有限时间准同步化
IF 8.1 1区 计算机科学 N/A COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2024-08-22 DOI: 10.1016/j.ins.2024.121365

This paper investigates the finite-time quasi-projective synchronization (FTQPS) issue of fractional-order reaction-diffusion neural networks (FORDNNs). To the best of our knowledge, this paper introduces the concept of FTQPS for the first time. First, an integral-type Lyapunov function is constructed relying on the characterization of the reaction-diffusion term and some inequality methods. Subsequently, the nonlinear feedback control strategy is designed to achieve the FTQPS goal and some sufficient conditions are obtained to guarantee FTQPS of FORDNNs. Further, the system's synchronization speed is measured by estimating the settling time. It should be noted that the above control strategy is also applicable to conventional integer-order reaction-diffusion neural networks with time delays. Finally, a numerical example is used to illustrate the validity of the theoretical analysis presented.

本文研究了分数阶反应扩散神经网络(FORDNN)的有限时间准投影同步(FTQPS)问题。据我们所知,本文首次引入了 FTQPS 的概念。首先,根据反应扩散项的特征和一些不等式方法,构建了积分型 Lyapunov 函数。随后,设计了实现 FTQPS 目标的非线性反馈控制策略,并得到了一些保证 FORDNNs FTQPS 的充分条件。此外,还通过估计沉降时间来测量系统的同步速度。需要指出的是,上述控制策略同样适用于具有时间延迟的传统整数阶反应扩散神经网络。最后,我们用一个数值实例来说明理论分析的正确性。
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引用次数: 0
Multi-Attribute evaluation-based graph model for conflict resolution considering heterogeneous behaviors 基于多属性评估的冲突解决图模型(考虑异质行为
IF 8.1 1区 计算机科学 N/A COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2024-08-22 DOI: 10.1016/j.ins.2024.121386

The graph model for conflict resolution (GMCR) is a useful tool for modeling and analyzing conflicts. In a conflict, the decision maker (DM)’s evaluation of feasible states is often influenced by multiple attributes. When in different feasible states, DMs may assign different importance to each attribute. Therefore, this paper applies multi-attribute evaluation (MAE) to GMCR and proposes the MAE-based stability definition. In addition, due to differences in relationships and opinions among DMs, opponents will behave differently in response to the action of the focal DM. To analyze the heterogeneous behavior of opponents, this paper proposes a heterogeneous behavior analysis method based on social network analysis (SNA) and opinion similarity. Then, the MAE-based mixed stability definitions are proposed to perform the stability analysis considering heterogeneous behaviors. Finally, this paper applies the proposed method to the Elmira contamination conflict and makes a sensitivity analysis to prove the validity of the proposed method.

冲突解决图模型(GMCR)是模拟和分析冲突的有用工具。在冲突中,决策者(DM)对可行状态的评估往往受到多种属性的影响。当处于不同的可行状态时,DM 可能会对每个属性赋予不同的重要性。因此,本文将多属性评估(MAE)应用于 GMCR,并提出了基于 MAE 的稳定性定义。此外,由于 DM 之间的关系和观点不同,对手对焦点 DM 的行动会做出不同的反应。为了分析对手的异质性行为,本文提出了一种基于社会网络分析(SNA)和意见相似性的异质性行为分析方法。然后,提出了基于 MAE 的混合稳定性定义,以进行考虑异质行为的稳定性分析。最后,本文将提出的方法应用于埃尔米拉污染冲突,并进行了敏感性分析,以证明所提方法的有效性。
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引用次数: 0
An insightful multicriteria model for the selection of drilling technique for heat extraction from geothermal reservoirs using a fuzzy-rough approach 利用模糊粗糙法选择地热储层热量提取钻井技术的多标准洞察模型
IF 8.1 1区 计算机科学 N/A COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2024-08-22 DOI: 10.1016/j.ins.2024.121353

Geothermal energy stands out as an exceptional renewable resource for power generation, offering a consistent power production without the intermittency issues. Despite its potential to deliver a consistent supply of electricity on demand, geothermal adoption is hindered due to substantial costs. Utilising the most effective drilling method can alleviate this challenge by boosting efficiency and reducing operational costs. The primary goal of this study is to identify the best drilling method for extracting heat from geothermal reservoirs. This optimised approach facilitates better access to geothermal reservoirs, leading to increased heat recovery rates and improved project viability. Traditional methods often fall short in evaluating optimal drilling alternatives due to uncertainties. To address this, our research introduces an innovative paradigm that integrates novel T-Spherical Hesitant Fuzzy Rough (TSHFR) set, method for the removal effects of criteria with a geometric mean and ranking alternatives with weights of criterion hybrid Multiple Criteria Decision-Making (MCDM) techniques. By leveraging the novel TSHFR concept, our approach allows for a comprehensive assessment of various factors. This holistic evaluation ensures an exhaustive comprehension of the decision-making environment. The study reveals that reservoir characteristics play a significant role in selecting a sustainable drilling alternative. Furthermore, directional drilling appears as the most promising method with higher energy yields followed by slim hole drilling. The robustness and credibility of these findings are established through sensitivity and comparative analyses, indicating the potential applicability of this MCDM method to analogous challenges in different contexts. The findings of the ranking techniques were validated using Spearman's rank correlation coefficient, which revealed a positive and notable correlation. This research will empower stakeholders to make informed decisions, thereby enhancing the overall efficiency and sustainability of geothermal energy projects.

地热能作为一种特殊的可再生资源在发电领域脱颖而出,它可以提供稳定的电力生产,而不会出现间歇性问题。尽管地热具有按需稳定供电的潜力,但由于成本高昂,地热的应用受到了阻碍。采用最有效的钻探方法可以提高效率,降低运营成本,从而缓解这一难题。本研究的主要目标是确定从地热储层中提取热量的最佳钻探方法。这种优化方法有助于更好地利用地热储层,从而提高热回收率,改善项目可行性。由于存在不确定性,传统方法往往无法评估最佳钻探替代方案。为解决这一问题,我们的研究引入了一种创新范式,该范式整合了新颖的 T-Spherical Hesitant Fuzzy Rough (T-SHFR) 集、用几何平均数消除标准影响的方法以及用标准权重对替代方案进行排序的混合多重标准决策(MCDM)技术。通过利用新颖的 T-SHFR 概念,我们的方法可以对各种因素进行综合评估。这种整体评估确保了对决策环境的全面了解。研究结果表明,储层特征在选择可持续钻井方案中起着重要作用。此外,定向钻井似乎是最有前途的方法,能量产出更高,其次是细孔钻井。通过敏感性分析和比较分析,确定了这些结论的稳健性和可信度,表明这种 MCDM 方法可能适用于不同环境下的类似挑战。使用斯皮尔曼等级相关系数对排序技术的研究结果进行了验证,结果显示存在显著的正相关关系。这项研究将使利益相关者能够做出明智的决定,从而提高地热能源项目的整体效率和可持续性。
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引用次数: 0
A novel multi-source information fusion method for emergency spatial resilience assessment based on Dempster-Shafer theory 基于 Dempster-Shafer 理论的多源信息融合应急空间复原力评估新方法
IF 8.1 1区 计算机科学 N/A COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2024-08-22 DOI: 10.1016/j.ins.2024.121373

In the midst of today's intricate and ever-changing natural and social landscape, this study is committed to proposing a novel multi-source information fusion method for assessing the spatial resilience of urban emergency evacuation and rescue. Its overarching aim is to uncover latent challenges and contribute to the enhancement of a city's capacity to respond to emergencies. To achieve this, we have devised a comprehensive assessment indicator system, capable of not only quantifying a city's spatial resilience but also offering indispensable guidance for urban emergency evacuation and rescue spatial planning. Furthermore, we have introduced an innovative evaluation methodology framework. This framework includes the establishment of the basic probability assignment (BPA) model, a pioneering method for generating BPA for observed values, and the novel application of hierarchical weighting and fusion techniques. By extending the Dempster-Shafer theory, we have not only enhanced the method's ability to express and integrate uncertain information but also significantly improved the precision of the evaluation. Ultimately, we conducted a quantitative assessment using Shenzhen, China, as a case study, identifying existing issues and proposing highly-targeted improvement strategies. These research findings not only provide robust support for the augmentation of urban emergency capabilities in Shenzhen but also offer pioneering insights for the quantitative assessment and advancement of emergency spatial resilience in cities across the globe.

在当今错综复杂、瞬息万变的自然和社会环境中,本研究致力于提出一种新颖的多源信息融合方法,用于评估城市紧急疏散和救援的空间弹性。其总体目标是发现潜在的挑战,为提高城市应对紧急情况的能力做出贡献。为此,我们设计了一套综合评估指标体系,不仅能够量化城市的空间弹性,还能为城市应急疏散和救援空间规划提供不可或缺的指导。此外,我们还引入了创新的评估方法框架。该框架包括基本概率赋值(BPA)模型的建立、为观测值生成 BPA 的开创性方法,以及分层加权和融合技术的新颖应用。通过扩展 Dempster-Shafer 理论,我们不仅增强了该方法表达和整合不确定信息的能力,还显著提高了评估的精确度。最终,我们以中国深圳为案例进行了量化评估,找出了存在的问题,并提出了针对性很强的改进策略。这些研究成果不仅为深圳城市应急能力的提升提供了有力支持,也为全球城市空间应急复原力的定量评估和提升提供了开创性的见解。
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引用次数: 0
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