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Main Authors: Li, Mengran, Chen, Junzhou, Jiang, Guanying, Li, Fuliang, Zhang, Ronghui, Gong, Siyuan, Lv, Zhihan
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2412.01122
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author Li, Mengran
Chen, Junzhou
Jiang, Guanying
Li, Fuliang
Zhang, Ronghui
Gong, Siyuan
Lv, Zhihan
author_facet Li, Mengran
Chen, Junzhou
Jiang, Guanying
Li, Fuliang
Zhang, Ronghui
Gong, Siyuan
Lv, Zhihan
contents Accurately estimating time of arrival (ETA) for trucks is crucial for optimizing transportation efficiency in logistics. GPS trajectory data offers valuable information for ETA, but challenges arise due to temporal sparsity, variable sequence lengths, and the interdependencies among multiple trucks. To address these issues, we propose the Temporal-Attribute-Spatial Tri-space Coordination (TAS-TsC) framework, which leverages three feature spaces-temporal, attribute, and spatial-to enhance ETA. Our framework consists of a Temporal Learning Module (TLM) using state space models to capture temporal dependencies, an Attribute Extraction Module (AEM) that transforms sequential features into structured attribute embeddings, and a Spatial Fusion Module (SFM) that models the interactions among multiple trajectories using graph representation learning.These modules collaboratively learn trajectory embeddings, which are then used by a Downstream Prediction Module (DPM) to estimate arrival times. We validate TAS-TsC on real truck trajectory datasets collected from Shenzhen, China, demonstrating its superior performance compared to existing methods.
format Preprint
id arxiv_https___arxiv_org_abs_2412_01122
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle TAS-TsC: A Data-Driven Framework for Estimating Time of Arrival Using Temporal-Attribute-Spatial Tri-space Coordination of Truck Trajectories
Li, Mengran
Chen, Junzhou
Jiang, Guanying
Li, Fuliang
Zhang, Ronghui
Gong, Siyuan
Lv, Zhihan
Artificial Intelligence
Accurately estimating time of arrival (ETA) for trucks is crucial for optimizing transportation efficiency in logistics. GPS trajectory data offers valuable information for ETA, but challenges arise due to temporal sparsity, variable sequence lengths, and the interdependencies among multiple trucks. To address these issues, we propose the Temporal-Attribute-Spatial Tri-space Coordination (TAS-TsC) framework, which leverages three feature spaces-temporal, attribute, and spatial-to enhance ETA. Our framework consists of a Temporal Learning Module (TLM) using state space models to capture temporal dependencies, an Attribute Extraction Module (AEM) that transforms sequential features into structured attribute embeddings, and a Spatial Fusion Module (SFM) that models the interactions among multiple trajectories using graph representation learning.These modules collaboratively learn trajectory embeddings, which are then used by a Downstream Prediction Module (DPM) to estimate arrival times. We validate TAS-TsC on real truck trajectory datasets collected from Shenzhen, China, demonstrating its superior performance compared to existing methods.
title TAS-TsC: A Data-Driven Framework for Estimating Time of Arrival Using Temporal-Attribute-Spatial Tri-space Coordination of Truck Trajectories
topic Artificial Intelligence
url https://arxiv.org/abs/2412.01122