Moving path hybrid forecasting method oriented to data sparse environment

A mobile path, data-oriented technology, applied in the field of mobile computing, can solve problems such as difficult to work, low value density of perceived data, and difficult to work in the accuracy of movement path prediction

Inactive Publication Date: 2017-02-15
XIAN UNIV OF SCI & TECH
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  • Abstract
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  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

However, in practical applications, the above methods have two problems, specifically as follows: 1) The context and background knowledge data are not easy to obtain, making it difficult to combine Map Matching Technique or Traffic Flow statistical methods to It is difficult to improve the prediction accuracy of moving path

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  • Moving path hybrid forecasting method oriented to data sparse environment
  • Moving path hybrid forecasting method oriented to data sparse environment
  • Moving path hybrid forecasting method oriented to data sparse environment

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Embodiment Construction

[0025] A mixed prediction method for moving paths in a data-sparse environment, comprising the following steps:

[0026] S1: Obtain mobile location data information;

[0027] The information receives and stores data from multiple location-aware sources (vehicle GPS, mobile smartphone, PDA, etc.). In this embodiment, the mobile location data information includes the trajectory segments to be predicted.

[0028] S2: Data processing: perform data preprocessing and data semantic analysis on the data;

[0029] Such as figure 1 As shown: the preprocessing of the data is: the preprocessing operation of the collected historical trajectory data, specifically including: 1) the noise data introduced due to the change of the signal strength of the positioning device and the channel change during the data transmission process, the The module performs noise detection and filtering processing; 2) Due to the instability of the link connection during the rapid movement of the moving object ...

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Abstract

The invention provides a moving path hybrid forecasting method oriented to a data sparse environment. The moving path hybrid forecasting method comprises the steps of: acquiring mobile position data information; processing data , wherein data preprocessing and data semantic analysis are carried out on the data; constructing a semantic knowledge base, wherein original trajectory data is subjected to rich semantic transformation and fusion processing, so as to construct the semantic knowledge base; constructing a hybrid online prediction model which is based on the semantic knowledge base and established on the basis of forward pattern similarity degree matching calculation and a high-order Markov model; and outputting a predicted path, wherein a trajectory fragment to be predicted is input into the hybrid online prediction model for prediction, and the predicted path is output. The moving path hybrid forecasting method effectively overcomes the problem of pattern matching failure caused by data sparse condition, significantly improves the accuracy of path prediction, and satisfies the requirements on real-time performance, high efficiency, predictability and the like of mobile service application.

Description

technical field [0001] The invention belongs to the technical field of mobile computing, and in particular relates to a mixed prediction method for moving paths in a data-sparse environment. Background technique [0002] At present, with the rapid development and widespread popularization of mobile positioning and tracking technology, it is possible to use location-aware devices to obtain historical trajectory data of moving objects. It has become a significant trend and inevitable feature in the field of mobile computing to realize the value extraction and knowledge discovery of historical trajectory big data through semantic modeling and calculation of historical trajectory data, thereby supporting related mobile service applications. attention from academia and industry. [0003] Based on the large-scale group sensing historical trajectory data, the universal and regular mobile characteristics and behavior patterns can be efficiently mined and extracted to build a mobile...

Claims

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Application Information

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IPC IPC(8): G06Q10/04
CPCG06Q10/04
Inventor 王亮汪梅程勇
Owner XIAN UNIV OF SCI & TECH
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