增加对时空预测神经常微分方程的关注

IF 4.3 1区 地球科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Peixiao Wang, Tong Zhang, Hengcai Zhang, Shifen Cheng, Wangshu Wang
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引用次数: 0

摘要

摘要可解释时空预测是地理空间人工智能发展的热点。神经有序微分方程(NODE)作为一种新的可解释时空预测方法而出现。然而,大多数现有的基于节点的预测模型仍然需要解决一些挑战,例如空间数据建模困难和挖掘数据中的长期时间依赖关系。在这项研究中,我们提出了一个时空注意节点(STA-ODE)来解决上述两个挑战。首先,我们定义了一个时空常微分方程,通过一个新的时空导数网络来迭代预测每个时间点的值。其次,我们开发了一种注意力机制来融合多个预测值,以捕获数据中的长期时间依赖性。为了训练STA-ODE模型,我们设计了一个损失函数,将空间维度的预测结果与时间维度的预测结果对齐,以校准模型的参数。利用3个真实时空数据集(交通流量数据集、PM2.5监测数据集和温度监测数据集)对模型进行了验证。实验结果表明,STA-ODE在预测精度方面优于现有的7条基线。此外,我们还利用可视化技术证明了STA-ODE模型具有良好的可解释性和预测精度。关键词:地理空间人工智能时空预测时空注意力神经常微分方程致谢本文的数值计算在武汉大学超级计算中心的超级计算系统上完成。披露声明作者未报告潜在的利益冲突。支持本研究结果的数据和代码可在“figshare.com”上获得,识别码为https://doi.org/10.6084/m9.figshare.22678153.Additional。基金资助:国家重点研发计划项目[批准号:2021YFB3900803];项目编号:BX20230360],武汉大学-华为地理信息创新实验室开放基金[批准号:20230360];国家自然科学基金项目[批准号:42101423和42371470],中国科学院特约科研助理计划,中国科学院科技创新工程项目[批准号:08R8A092YA]。作者简介王培晓,中国科学院地理科学与资源研究所资源与环境信息系统国家重点实验室博士后。武汉大学测绘与遥感信息工程国家重点实验室博士学位,福州大学数字中国研究院硕士学位。他的研究方向包括时空数据挖掘和时空预测,尤其关注交通运输系统的时空预测。张彤,武汉大学测绘与遥感信息工程国家重点实验室研究员。他获得了硕士学位。2003年获武汉大学地图学与地理信息系统(GIS)学士学位,2007年获美国圣地亚哥州立大学和加州大学圣巴巴拉分校地理学博士学位。他的研究课题包括城市计算和机器学习。张恒才,中国科学院地理科学与资源研究所资源与环境信息系统国家重点实验室副教授。毕业于中国科学院地理科学与资源研究所,获博士学位。中国地理信息系统学会理论与方法专业委员会委员、美国计算机学会SIGSPATIAL中国分会委员。他的兴趣集中在时空数据挖掘和3d计算。程世芬,中国科学院地理科学与资源研究所资源与环境信息系统国家重点实验室副教授。毕业于中国科学院地理科学与资源研究所,获博士学位。主要研究方向为时空数据挖掘、城市计算和智能交通。Wangshu Wangshu Wang是维也纳科技大学制图研究中心的博士后研究员。她于2023年获得维也纳理工大学博士学位。她的研究重点是时空数据挖掘和室内行人导航。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adding attention to the neural ordinary differential equation for spatio-temporal prediction
AbstractExplainable spatio-temporal prediction gains attraction in the development of geospatial artificial intelligence. The neural ordinal differential equation (NODE) emerges as a new solution for explainable spatio-temporal prediction. However, challenges still need to be solved in most existing NODE-based prediction models, such as difficulty modeling spatial data and mining long-term temporal dependencies in data. In this study, we propose a spatio-temporal attentional NODE (STA-ODE) to address the two challenges above. First, we define a spatio-temporal ordinary differential equation to predict a value at each time iteratively by a novel spatio-temporal derivative network. Second, we develop an attention mechanism to fuse multiple prediction values for capturing long-term temporal dependencies in data. To train the STA-ODE model, we design a loss function that aligns the prediction results in spatial dimension with prediction results in temporal dimension to calibrate the parameters of the model. The proposed model was validated with three real-world spatio-temporal datasets (traffic flow dataset, PM2.5 monitoring dataset, and temperature monitoring dataset). Experimental results showed that STA-ODE outperformed seven existing baselines regarding prediction accuracy. In addition, we used visualization to demonstrate the sound interpretability and prediction accuracy of the STA-ODE model.Keywords: Geospatial artificial intelligencespatio-temporal predictionspatio-temporal attentionneural ordinary differential equation AcknowledgementsThe numerical calculations in this paper have been done on the supercomputing system in the Supercomputing Center of Wuhan University.Disclosure statementNo potential conflict of interest was reported by the author(s).Data and codes availability statementThe data and codes that support the findings of this study are available in ‘figshare.com’ with the identifier https://doi.org/10.6084/m9.figshare.22678153.Additional informationFundingThis project was supported by National Key Research and Development Program of China [Grant No. 2021YFB3900803], National Postdoctoral Innovation Talents Support Program [Grant No. BX20230360], Open funds of the Wuhan University-Huawei Geoinformatics Innovation Laboratory [Grant No. TC20210901025-2023-04], National Natural Science Foundation of China [Grant Nos. 42101423 and 42371470], Special Research Assistant Program of Chinese Academy of Sciences, Innovation Project of LREIS [Grant No. 08R8A092YA].Notes on contributorsPeixiao WangPeixiao Wang is a Postdoctoral Fellow from State Key Laboratory of Resources and Environmental Information System, Institute of Geographic Sciences and Nature Resources Research, Chinese Academy of Sciences. He received Ph.D. degree under from State Key Laboratory of Information Engineering in Surveying, Mapping and Remote Sensing, Wuhan University, and received the M.S. degree from The Academy of Digital China, Fuzhou University. His research topics include spatiotemporal data mining, and spatiotemporal prediction, especially focus on spatiotemporal prediction of transportation systems.Tong ZhangTong Zhang is a Professor with the State Key Laboratory of Information Engineering in Surveying, Mapping and Remote Sensing (LIESMARS), Wuhan University. He received the M.Eng. degree in cartography and geographic information system (GIS) from Wuhan University, Wuhan, China, in 2003, and the Ph.D. degree in geography from San Diego State University, and the University of California at Santa Barbara in 2007. His research topics include urban computing and machine learning.Hengcai ZhangHengcai Zhang is an Associate Professor of State Key Laboratory of Resources and Environmental Information Systems, Institute of Geographical Sciences and Natural Resources Research, Chinese Academy of Sciences. He received his Ph.D. degree from Institute of Geographical Sciences and Natural Resources Research, Chinese Academy of Sciences. He is the member of the Theory and Methodology Committee of the Chinese Association of Geographic Information System, and member of Chinese Branch of ACM SIGSPATIAL. His interests focus on spatial-temporal data mining and 3D-Computing.Shifen ChengShifen Cheng is an Associate Professor of State Key Laboratory of Resources and Environmental Information Systems, Institute of Geographical Sciences and Natural Resources Research, Chinese Academy of Sciences. He received his Ph.D. degree from Institute of Geographical Sciences and Natural Resources Research, Chinese Academy of Sciences. His research interests include spatiotemporal data mining, urban computing and intelligent transportation.Wangshu WangWangshu Wang is a postdoctoral fellow at the Research Unit Cartography at the Vienna University of Technology. She received her Ph.D. degree from the Vienna University of Technology in 2023. Her research focuses on spatiotemporal data mining and indoor pedestrian navigation.
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来源期刊
CiteScore
11.00
自引率
7.00%
发文量
81
审稿时长
9 months
期刊介绍: International Journal of Geographical Information Science provides a forum for the exchange of original ideas, approaches, methods and experiences in the rapidly growing field of geographical information science (GIScience). It is intended to interest those who research fundamental and computational issues of geographic information, as well as issues related to the design, implementation and use of geographical information for monitoring, prediction and decision making. Published research covers innovations in GIScience and novel applications of GIScience in natural resources, social systems and the built environment, as well as relevant developments in computer science, cartography, surveying, geography and engineering in both developed and developing countries.
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