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Intelligent Short-Term Multiscale Prediction of Parking Space Availability Using an Attention-Enhanced Temporal Convolutional Network 基于注意力增强时间卷积网络的车位可用性短期多尺度智能预测
Pub Date : 2023-05-22 DOI: 10.3390/ijgi12050208
Ke Shang, Zeyu Wan, Yulin Zhang, Zhiwei Cui, Zihan Zhang, Chenchen Jiang, Feizhou Zhang
The accurate and rapid prediction of parking availability is helpful for improving parking efficiency and to optimize traffic systems. However, previous studies have suffered from limited training sample sizes and a lack of thorough investigation into the correlations among the factors affecting parking availability. The purpose of this study is to explore a prediction method that can account for multiple factors. Firstly, a dynamic prediction method based on a temporal convolutional network (TCN) model was confirmed to be efficient for ultra-short-term parking availability with an accuracy of 0.96 MSE. Then, an attention-enhanced TCN (A-TCN) model based on spatial attention modules was proposed. This model integrates multiple factors, including related dates, extreme weather, and human control, to predict the daily congestion index of parking lots in the short term, with a prediction period of up to one month. Experimental results on real data demonstrate that the MSE of A-TCN is 0.0061, exhibiting better training efficiency and prediction accuracy than a traditional TCN for the short-term prediction time scale.
准确、快速的车位可用性预测有助于提高停车效率和优化交通系统。然而,以往的研究受到训练样本大小的限制,并且缺乏对影响停车可用性的因素之间相关性的深入调查。本研究的目的是探索一种可以考虑多种因素的预测方法。首先,验证了基于时间卷积网络(TCN)模型的超短期车位可用性动态预测方法的有效性,预测精度为0.96 MSE;在此基础上,提出了一种基于空间注意模块的注意增强TCN模型。该模型综合相关日期、极端天气、人为控制等因素,预测短期内停车场日拥堵指数,预测周期可达1个月。在实际数据上的实验结果表明,a -TCN的MSE为0.0061,在短期预测时间尺度上比传统的TCN具有更好的训练效率和预测精度。
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引用次数: 0
STO2Vec: A Multiscale Spatio-Temporal Object Representation Method for Association Analysis STO2Vec:一种面向关联分析的多尺度时空对象表示方法
Pub Date : 2023-05-21 DOI: 10.3390/ijgi12050207
Nanyu Chen, Anran Yang, Luo Chen, W. Xiong, Ning Jing
Spatio-temporal association analysis has attracted attention in various fields, such as urban computing and crime analysis. The proliferation of positioning technology and location-based services has facilitated the expansion of association analysis across spatio-temporal scales. However, existing methods inadequately consider the scale differences among spatio-temporal objects during analysis, leading to suboptimal precision in association analysis results. To remedy this issue, we propose a multiscale spatio-temporal object representation method, STO2Vec, for association analysis. This method comprises of two parts: graph construction and embedding. For graph construction, we introduce an adaptive hierarchical discretization method to distinguish the varying scales of local features. Then, we merge the embedding method for spatio-temporal objects with that for discrete units, establishing a heterogeneous graph. For embedding, to enhance embedding quality for homogeneous and heterogeneous data, we use biased sampling and unsupervised models to capture the association strengths between spatio-temporal objects. Empirical results using real-world open-source datasets show that STO2Vec outperforms other models, improving accuracy by 16.25% on average across diverse applications. Further case studies indicate STO2Vec effectively detects association relationships between spatio-temporal objects in a range of scenarios and is applicable to tasks such as moving object behavior pattern mining and trajectory semantic annotation.
时空关联分析在城市计算、犯罪分析等领域受到广泛关注。定位技术和定位服务的发展促进了关联分析在时空尺度上的扩展。然而,现有的关联分析方法在分析过程中没有充分考虑时空对象之间的尺度差异,导致关联分析结果的精度不够理想。为了解决这一问题,我们提出了一种多尺度时空对象表示方法STO2Vec进行关联分析。该方法包括图的构造和嵌入两部分。对于图的构造,我们引入了一种自适应层次离散化方法来区分局部特征的不同尺度。然后,我们将时空对象的嵌入方法与离散单元的嵌入方法合并,建立一个异构图。在嵌入方面,为了提高同质和异构数据的嵌入质量,我们使用有偏采样和无监督模型来捕获时空对象之间的关联强度。使用真实开源数据集的实证结果表明,STO2Vec优于其他模型,在不同应用中平均提高了16.25%的准确率。进一步的案例研究表明,STO2Vec可以有效地检测一系列场景中时空对象之间的关联关系,并适用于移动对象行为模式挖掘和轨迹语义注释等任务。
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引用次数: 0
MAAFEU-Net: A Novel Land Use Classification Model Based on Mixed Attention Module and Adjustable Feature Enhancement Layer in Remote Sensing Images MAAFEU-Net:基于混合关注模块和可调特征增强层的遥感影像土地利用分类新模型
Pub Date : 2023-05-20 DOI: 10.3390/ijgi12050206
Yonghong Zhang, Huajun Zhao, Guangyi Ma, Don Xie, Sutong Geng, Huanyu Lu, Wei Tian, K. T. C. L. K. Sian
The classification of land use information is important for land resource management. With the purpose of extracting precise spatial information, we present a novel land use classification model based on a mixed attention module and adjustable feature enhancement layer (MAAFEU-net). Our unique design, the mixed attention module, allows the model to concentrate on target-specific discriminative features and capture class-related features within different land use types. In addition, an adjustable feature enhancement layer is proposed to further enhance the classification ability of similar types. We assess the performance of this model using the publicly available GID dataset and the self-built Gwadar dataset. Six semantic segmentation deep networks are used for comparison. The experimental results show that the F1 score of MAAFEU-net is 2.16% and 2.3% higher than the next model and that MIoU is 3.15% and 3.62% higher than the next model. The results of the ablation experiments show that the mixed attention module improves the MIoU by 5.83% and the addition of the adjustable feature enhancement layer can further improve it by 5.58%. Both structures effectively improve the accuracy of the overall land use classification. The validation results show that MAAFEU-net can obtain land use classification images with high precision.
土地利用信息分类是土地资源管理的重要内容。为了精确提取空间信息,提出了一种基于混合关注模块和可调特征增强层(MAAFEU-net)的土地利用分类模型。我们独特的设计,即混合关注模块,使模型能够专注于特定目标的判别特征,并捕获不同土地利用类型中与阶级相关的特征。此外,提出了一种可调节的特征增强层,进一步增强相似类型的分类能力。我们使用公开可用的GID数据集和自建的瓜达尔数据集评估该模型的性能。采用六种语义分割深度网络进行比较。实验结果表明,MAAFEU-net的F1分数比下一模型分别高2.16%和2.3%,MIoU分别比下一模型高3.15%和3.62%。烧蚀实验结果表明,混合注意模块将MIoU提高了5.83%,添加可调特征增强层可进一步提高5.58%。这两种结构都有效地提高了整体土地利用分类的准确性。验证结果表明,MAAFEU-net能够获得精度较高的土地利用分类图像。
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引用次数: 0
Quantifying the Effect of Socio-Economic Predictors and the Built Environment on Mental Health Events in Little Rock, AR 量化社会经济预测因素和建筑环境对AR小石城心理健康事件的影响
Pub Date : 2023-05-18 DOI: 10.3390/ijgi12050205
Alfieri Ek, Grant Drawve, Samantha Robinson, Jyotishka Datta
Law enforcement agencies continue to grow in the use of spatial analysis to assist in identifying patterns of outcomes. Despite the critical nature of proper resource allocation for mental health incidents, there has been little progress in statistical modeling of the geo-spatial nature of mental health events in Little Rock, Arkansas. In this article, we provide insights into the spatial nature of mental health data from Little Rock, Arkansas between 2015 and 2018, under a supervised spatial modeling framework. We provide evidence of spatial clustering and identify the important features influencing such heterogeneity via a spatially informed hierarchy of generalized linear, tree-based, and spatial regression models, viz. the Poisson regression model, the random forest model, the spatial Durbin error model, and the Manski model. The insights obtained from these different models are presented here along with their relative predictive performances. The inferential tools developed here can be used in a broad variety of spatial modeling contexts and have the potential to aid both law enforcement agencies and the city in properly allocating resources. We were able to identify several built-environment and socio-demographic measures related to mental health calls while noting that the results indicated that there are unmeasured factors that contribute to the number of events.
执法机构继续越来越多地使用空间分析来协助确定结果的模式。尽管对精神卫生事件进行适当的资源分配至关重要,但在阿肯色州小石城对精神卫生事件的地理空间性质进行统计建模方面进展甚微。在本文中,我们在有监督的空间建模框架下,对2015年至2018年阿肯色州小石城心理健康数据的空间性质进行了深入研究。我们提供了空间聚类的证据,并通过广义线性、基于树的和空间的回归模型,即泊松回归模型、随机森林模型、空间Durbin误差模型和曼斯基模型,确定了影响这种异质性的重要特征。本文将介绍从这些不同模型中获得的见解以及它们的相对预测性能。这里开发的推理工具可用于各种空间建模环境,并有可能帮助执法机构和城市合理分配资源。我们能够确定几个与心理健康电话相关的建筑环境和社会人口指标,同时注意到结果表明,有一些未测量的因素导致了事件的数量。
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引用次数: 0
Variations in the Spatial Distribution of Smart Parcel Lockers in the Central Metropolitan Region of Tianjin, China: A Comparative Analysis before and after COVID-19 新型冠状病毒肺炎疫情前后天津市中心城区智能包裹柜空间分布变化分析
Pub Date : 2023-05-16 DOI: 10.3390/ijgi12050203
Mengyue Ding, Nadeem Ullah, Sara Grigoryan, Yike Hu, Yan Song
The COVID-19 pandemic has led to a significant increase in e-commerce, which has prompted residents to shift their purchasing habits from offline to online. As a result, Smart Parcel Lockers (SPLs) have emerged as an accessible end-to-end delivery service that fits into the pandemic strategy of maintaining social distance and no-contact protocols. Although numerous studies have examined SPLs from various perspectives, few have analyzed their spatial distribution from an urban planning perspective, which could enhance the development of other disciplines in this field. To address this gap, we investigate the distribution of SPLs in Tianjin’s central urban area before and after the pandemic (i.e., 2019 and 2022) using kernel density estimation, average nearest neighbor analysis, standard deviation elliptic, and geographical detector. Our results show that, in three years, the number of SPLs has increased from 51 to 479, and a majority were installed in residential communities (i.e., 92.2% in 2019, and 97.7% in 2022). We find that SPLs were distributed randomly before the pandemic, but after the pandemic, SPLs agglomerated and followed Tianjin’s development pattern. We identify eight influential factors on the spatial distribution of SPLs and discuss their individual and compound effects. Our discussion highlights potential spatial distribution analysis, such as dynamic layout planning, to improve the allocation of SPLs in city planning and city logistics.
新冠肺炎疫情导致电子商务大幅增长,这促使居民将购买习惯从线下转向线上。因此,智能包裹寄存柜(SPLs)已成为一种无障碍的端到端快递服务,符合保持社交距离和不接触协议的大流行战略。虽然有许多研究从不同的角度考察了城市规划空间,但很少有研究从城市规划的角度分析城市规划空间分布,这可以促进该领域其他学科的发展。为了解决这一差距,我们采用核密度估计、平均近邻分析、标准差椭圆和地理检测器等方法研究了疫情前后(即2019年和2022年)天津市中心城区SPLs的分布情况。我们的研究结果表明,在三年内,SPLs的数量从51个增加到479个,并且大多数安装在住宅社区(即2019年为92.2%,2022年为97.7%)。我们发现,疫情发生前,小城镇小城镇是随机分布的,疫情发生后,小城镇小城镇小城镇呈聚集性分布,并遵循了天津市的发展规律。本文确定了8个影响土壤养分空间分布的因素,并讨论了它们的单独效应和复合效应。我们的讨论重点是潜在的空间分布分析,如动态布局规划,以改善城市规划和城市物流中的特殊物品配置。
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引用次数: 1
Flexible Trip-Planning Queries 灵活的行程规划查询
Pub Date : 2023-05-16 DOI: 10.3390/ijgi12050204
Gloria Bordogna, P. Carrara, Luca Frigerio, Simone Lella
The current practice of users searching for different types of geo-resources in a geographic area and wishing to identify the most convenient routes for visiting the most relevant ones, requires the iterative formulation of several queries: first to identify the more interesting resources and then to select the best route to visit them. In order to simplify this process, in this paper a novel functionality for a geographic information retrieval (GIR) system is proposed, which retrieves and ranks several routes for visiting a number of relevant georeferenced resources as a result of a single query, named flexible trip-planning query. An original retrieval model is defined to identify the relevant resources and to rank the most convenient routes by taking into account personal user preferences. To this end, a graph-based algorithm is defined, exploiting prioritized aggregation to optimize the routes’ identification and ranking. The proposed algorithm is applied in the proof-of-concept of a Smart cOmmunity-based Geographic infoRmation rEtrievAl SysTem (SO-GREAT) designed to strengthen local communities: it collects and manages open data from regional authorities describing categories of authoritative territorial resources and services, such as schools, hospitals, etc., and from volunteered geographic services (VGSs) created by citizens to offer services in their neighbourhood.
目前,用户在一个地理区域内搜索不同类型的地理资源,并希望确定最方便的路线来访问最相关的地理资源,这需要几个查询的迭代公式:首先识别更感兴趣的资源,然后选择最佳路线来访问它们。为了简化这一过程,本文提出了一种新的地理信息检索(GIR)系统功能,该功能可以通过一次查询来检索和排序访问多个相关地理参考资源的多条路线,称为灵活的行程规划查询。定义了一个原始检索模型来识别相关资源,并根据用户的个人偏好对最方便的路径进行排序。为此,定义了一种基于图的算法,利用优先级聚合来优化路由的识别和排序。所提出的算法应用于旨在加强地方社区的智能社区地理信息检索系统(SO-GREAT)的概念验证:它收集和管理来自地区当局描述权威领土资源和服务类别(如学校、医院等)的开放数据,以及来自公民为其社区提供服务而创建的志愿地理服务(VGSs)的开放数据。
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引用次数: 0
Crime Risk Analysis of Tangible Cultural Heritage in China from a Spatial Perspective 空间视角下的中国物质文化遗产犯罪风险分析
Pub Date : 2023-05-15 DOI: 10.3390/ijgi12050201
Ning Ding, Yiming Zhai, Hongyu Lv
Tangible cultural heritage is vulnerable to various risks, particularly those stemming from criminal activity. Through analyzing the distribution and flow of crime risks from a spatial perspective based on quantitative methods, risks can be better managed to contribute to the protection of cultural heritage. This paper explores and summarizes the spatial characteristics of crime risks from 2011 to 2019 in China. Firstly, the average nearest neighbor (ANN) and the Jenks Natural Breaks Classification method showed that the national key protected heritage sites (NPS) and crime risks exhibit clustering features in space, and most of the NPS were located in the middle and lower reaches of the Yangtze River and the Yellow River. Secondly, the economy has no impact on crime risks in the spatial statistical analysis. However, the population density, distribution of NPS, and tourism development influenced specific types of crime risks. Finally, Global Moran’s I was used to examine the strong sensitivity between crime risks and cultural relics protection policies. The quantitative results of this study can be applied to improve strategies for crime risk prevention and the effectiveness of heritage security policy formulation.
物质文化遗产容易受到各种风险的影响,尤其是来自犯罪活动的风险。通过定量方法从空间角度分析犯罪风险的分布和流动,更好地管理风险,为文化遗产保护做出贡献。本文对2011 - 2019年中国犯罪风险的空间特征进行了探索和总结。首先,采用平均近邻法(ANN)和Jenks自然断裂分类法(nks Natural Breaks Classification)分析发现,国家重点保护遗产地及其犯罪风险在空间上呈现聚类特征,且大部分国家重点保护遗产地位于长江中下游和黄河中下游地区;其次,在空间统计分析中,经济对犯罪风险没有影响。然而,人口密度、NPS分布和旅游业发展对特定类型的犯罪风险有影响。最后,利用Global Moran’s I检验了犯罪风险与文物保护政策之间的强敏感性。本研究的定量结果可用于改进犯罪风险预防策略和遗产安全政策制定的有效性。
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引用次数: 0
Isolated or Colocated? Exploring the Spatio-Temporal Evolution Pattern and Influencing Factors of the Attractiveness of Residential Areas to Restaurants in the Central Urban Area 孤立的还是共同的?中心城区住区对餐饮吸引力的时空演变规律及影响因素研究
Pub Date : 2023-05-15 DOI: 10.3390/ijgi12050202
Ruien Tang, Guolin Hou, Rui Du
Catering and urban elements have a strong spatial association. The spatial clustering and dispersal patterns of catering can effectively influence cities’ economic and socio-spatial reconfiguration. This research first introduced the concept of the ARTR (the attractiveness of residential areas to restaurants) and measured its value as well as its spatial and temporal evolutionary patterns using global and local colocation quotients. The DBSCAN algorithm and spatial hot-spot analysis were used to analyze their spatial evolution patterns. On this basis, a multiscale geographically weighted regression (MGWR) model was used to analyze the scale of and spatial variation in the drivers. The results show that (1) Nanjing’s ARTR is at a low level, with the most significant decline in ARTR occurring from 2005 to 2020 for MRs and HRs, while LRs did not significantly respond to urban regeneration. (2) The spatial layout of the ARTR in Nanjing has gradually evolved from a circular structure to a semi-enclosed structure, and the circular structure has continued to expand outward. At the same time, the ARTR for different levels of catering shows a diverse distribution in the margins. (3) Urban expansion and regeneration have led to increasingly negative effects of the clustering level, commercial competition, economic level and neighborhood newness, while the density of the road network has been more stable. (4) The road network density has consistently remained a global influence. Commercial diversity has changed from a local factor to a global factor, while economic and locational factors have strongly spatially non-smooth relationships with the ARTR. The results of this study can provide a basis for a harmonious relationship between catering and residential areas in the context of urban expansion and regeneration.
餐饮与城市元素有着强烈的空间关联。餐饮业的空间集聚与分散模式能够有效地影响城市的经济和社会空间重构。本研究首先引入了ARTR(住宅区对餐馆的吸引力)的概念,并使用全球和当地的colocation quotients测量了其价值及其时空演化模式。采用DBSCAN算法和空间热点分析对其空间演化规律进行了分析。在此基础上,采用多尺度地理加权回归(MGWR)模型分析了驱动因素的尺度和空间变异。结果表明:(1)南京城市用地面积总体处于较低水平,2005 - 2020年城市用地面积下降最为显著的是MRs和hr,而LRs对城市更新的响应不显著;(2)南京区域中心的空间布局逐渐由圆形结构向半封闭结构演变,圆形结构不断向外扩展。同时,不同层次餐饮的ARTR在边际上呈现出不同的分布。(3)城市扩张更新导致城市集聚水平、商业竞争水平、经济水平和邻里新颖性的负面效应日益增强,而路网密度趋于稳定。(4)路网密度始终具有全球影响力。商业多样性已从地方性因素转变为全球性因素,而经济和区位因素与ARTR在空间上存在强烈的非平滑关系。研究结果可为城市扩张与更新背景下餐饮与居住区的和谐关系提供依据。
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引用次数: 0
A Survey of Methods and Input Data Types for House Price Prediction 房价预测方法与输入数据类型综述
Pub Date : 2023-05-14 DOI: 10.3390/ijgi12050200
M. Geerts, S. V. Broucke, Jochen De Weerdt
Predicting house prices is a challenging task that many researchers have attempted to address. As accurate house prices allow better informing parties in the real estate market, improving housing policies and real estate appraisal, a comprehensive overview of house price prediction strategies is valuable for both research and society. In this work, we present a systematic literature review in order to provide insights with regard to the data types and modeling approaches that have been utilized in the current body of research. As such, we identified 93 articles published between 1992 and 2021 presenting a particular technique for house price prediction. Subsequently, we scrutinized these works and scored them according to model and data novelty. A cluster analysis allowed mapping of the property valuation domain and identification of trends. Although conventional methods and traditional input data remain predominant, house price prediction research is slowly adopting more advanced techniques and innovative data sources. In addition, we identify opportunities to include more advanced input data types such as unstructured data and complex spatial data and to introduce deep learning and tailored methods, which could guide further research.
预测房价是一项具有挑战性的任务,许多研究人员都试图解决这个问题。由于准确的房价可以更好地告知房地产市场各方,改善住房政策和房地产评估,因此全面概述房价预测策略对研究和社会都有价值。在这项工作中,我们提出了一个系统的文献综述,以便提供关于数据类型和建模方法的见解,这些方法已在当前的研究中使用。因此,我们确定了1992年至2021年间发表的93篇文章,提出了一种特定的房价预测技术。随后,我们仔细审查这些作品,并根据模型和数据的新颖性进行评分。聚类分析允许绘制财产估价领域和确定趋势。虽然传统的方法和传统的输入数据仍然占主导地位,但房价预测研究正在慢慢采用更先进的技术和创新的数据源。此外,我们确定了包括更高级输入数据类型(如非结构化数据和复杂空间数据)的机会,并引入深度学习和定制方法,这可以指导进一步的研究。
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引用次数: 1
Efficient Management and Scheduling of Massive Remote Sensing Image Datasets 海量遥感影像数据集的高效管理与调度
Pub Date : 2023-05-13 DOI: 10.3390/ijgi12050199
Jiankun Zhu, Zhen Zhang, Fei Zhao, Haoran Su, Zhengnan Gu, Leilei Wang
The rapid development of remote sensing image sensor technology has led to exponential increases in available image data. The real-time scheduling of gigabyte-level images and the storage and management of massive image datasets are incredibly challenging for current hardware, networking and storage systems. This paper’s three novel strategies (ring caching, multi-threading and tile-prefetching mechanisms) are designed to comprehensively optimize the remote sensing image scheduling process from image retrieval, transmission and visualization perspectives. A novel remote sensing image management and scheduling system (RSIMSS) is designed using these three strategies as its core algorithm, the PostgreSQL database and HDFS distributed file system as its underlying storage system, and the multilayer Hilbert spatial index and image tile pyramid to organize massive remote sensing image datasets. Test results show that the RSIMSS provides efficient and stable image storage performance and allows real-time image scheduling and view roaming.
随着遥感图像传感器技术的快速发展,可用图像数据呈指数级增长。千兆级图像的实时调度以及海量图像数据集的存储和管理对于当前的硬件、网络和存储系统来说都是极具挑战性的。本文设计了环缓存、多线程和块预取机制三种新策略,从图像检索、传输和可视化的角度对遥感图像调度过程进行了综合优化。以这三种策略为核心算法,以PostgreSQL数据库和HDFS分布式文件系统为底层存储系统,采用多层Hilbert空间索引和图像块金字塔对海量遥感图像数据集进行组织,设计了一种新型的遥感图像管理与调度系统(RSIMSS)。测试结果表明,RSIMSS提供了高效稳定的图像存储性能,并支持实时图像调度和视图漫游。
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引用次数: 0
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ISPRS Int. J. Geo Inf.
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