BDCH-DBSCAN-based taxi passenger-carrying hotspot identification method

A technology of passenger-carrying hotspots and identification methods, which is applied in the field of traffic big data, can solve problems such as inability to accurately find hotspots, poor visualization effects, and wide coverage areas, and achieve fast multi-threaded clustering, concise output results, and hotspot display precise effect

Active Publication Date: 2018-08-17
HUAIYIN INSTITUTE OF TECHNOLOGY
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Problems solved by technology

However, this method simply considers the distance between data points and the minimum number of points required for each core point. In the case of a large amoun...

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  • BDCH-DBSCAN-based taxi passenger-carrying hotspot identification method
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  • BDCH-DBSCAN-based taxi passenger-carrying hotspot identification method

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Embodiment Construction

[0035] The present invention will be further described below in conjunction with the accompanying drawings and specific embodiments.

[0036] A method for identifying hotspots of taxi passengers based on BDCH-DBSCAN, including the following steps:

[0037] (1) Firstly, a large number of taxi GPS data tracks are provided. The GPS data track used in this embodiment is the taxi GPS track data of Huaian City from 2016 to 2017. The data size is about 200G, and the sampling time interval is 30 to 60 seconds. Each GPS data track includes multiple GPS data points, and each GPS data point includes the license plate number of the taxi, the sampling time of the current sampling point, passenger status, longitude, latitude, cluster number (0: unclassified, -1: Noise point, positive number: serial number), cluster hotspot center identification parameter (0: non-cluster center, 1: cluster center); the cluster number is the class cluster number, which is the unique identification of each cla...

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Abstract

The invention discloses a BDCH-DBSCAN-based taxi passenger-carrying hotspot identification method. The method comprises the steps of firstly providing a large amount of taxi GPS data tracks, and deleting interference data from the data tracks; extracting get-on data points and get-off data points in the GPS data tracks; performing multi-thread block clustering on the extracted data points, separating out core points by adopting a DBSCAN algorithm, obtaining a neighbor node set of the core points, and performing cluster expansion operation on the core points, wherein cluster expansion refers tooperations of performing class cluster division on neighbor points of the core points and adding the neighbor core points with a number greater than a minimum cluster point number and domains of theneighbor core points into clusters; and according to a curved surface distance between two points, finding out neighbor nodes in a scanning radius, finding out a maximum density point in each clusterto serve as a cluster center, and cyclically clustering cluster center sets again until the set quantity and the precision meet the requirements. According to the method, large-scale data can be adapted; class cluster centers are convenient to identify; the multi-thread clustering speed is high; and the accuracy is high.

Description

technical field [0001] The invention relates to the field of traffic big data, in particular to a BDCH-DBSCAN-based identification method for taxi passenger hotspots. Background technique [0002] Nowadays, GPS trajectory data, as a kind of traffic big data, has been widely used. The pick-up and pick-up hotspots formed by a large number of taxi pick-up and pick-up points are of great significance to the analysis of the temporal and spatial distribution of residents' travel and urban traffic planning. [0003] In the prior art, there are mainly two ways to extract hotspots based on taxi passengers: (1) By dividing grid cells: such as the improved DBSCAN algorithm based on road network constraints, and the K-Means traffic hotspots based on grids; The area recognition algorithm uses the data field potential value threshold method to detect the aggregation mode of the trajectory points and extract the hotspot area. (2) Unsupervised clustering methods: such as the DBSCAN algori...

Claims

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Application Information

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IPC IPC(8): G06F17/30
CPCG06F16/285G06F16/29
Inventor 高尚兵黄子赫李木子陈超李胜东周君严云洋陈晓兵潘登峰龚野
Owner HUAIYIN INSTITUTE OF TECHNOLOGY
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