An Airport Noise Event Recognition Method Based on Time Series Kernel Clustering

A time series, airport noise technology, applied in speech analysis, instruments, etc., can solve the problems of poor adaptability, low accuracy, low analysis efficiency, etc., and achieve the effect of improving recognition efficiency and recognition accuracy, and easy to obtain.

Active Publication Date: 2015-07-29
NANJING UNIV OF AERONAUTICS & ASTRONAUTICS
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Problems solved by technology

However, the current research literature on airport noise event identification is very scarce. Some existing noise identification methods are for specific mechanical equipment to identify the noise source. These methods are mainly based on the frequency domain data of the noise signal and obtained Corresponding noise frequency data, and then analyze the frequency characteristics of these noises to identify the noise source
This type of method has poor adaptability and needs to analyze and identify noise in an ideal environment. However, the noise around the airport is complex and changeable. It is difficult for traditional methods to be effectively applied in such high-noise real scenes, so the accuracy rate is very low.
In addition, the analysis efficiency of traditional methods is low. For the airport environment where noise events occur frequently, more efficient identification methods are needed to identify noise events.

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  • An Airport Noise Event Recognition Method Based on Time Series Kernel Clustering
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  • An Airport Noise Event Recognition Method Based on Time Series Kernel Clustering

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Embodiment Construction

[0019] The present invention will be further described below.

[0020] The flow of the airport noise event recognition method based on time series kernel clustering in the present invention is as follows: figure 1 As shown, it specifically includes the following steps:

[0021] Step 1: Obtain the original monitoring time series of airport noise.

[0022] Using a fixed noise monitoring point arranged around the airport, the monitoring point can obtain the noise value data of the location every second. Obtain the recent (such as one month) noise original monitoring time series Q=(q 1 ,q 2 ,q 3 ...,q n ).

[0023] Step 2: Preprocess the original monitoring time series to create a noisy time series dataset.

[0024] According to experience, set a threshold min_noise for the airport noise, then segment the original monitoring time series Q, assign the sequence part smaller than the threshold min_noise to 0 and remove it, so that the remaining sequence parts form n non-overla...

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Abstract

The invention discloses an airport noise event recognition method based on a time series kernel clustering, and belongs to the airport noise recognition field. This method comprises the following steps of: acquiring a raw monitoring time series of airport noise; pre-processing the raw monitoring time series, creating a noise time series data set; using a k-means clustering method based on an overall alignment kernel to automatically classify the noise time series data set and to get multiple clustering results through cycles; adding a noise event category label corresponding to each type of the noise time series in the multiple clustering results; creating a noise event knowledge base; and finally carrying out the noise event recognition to the noise time series to be recognized according to the knowledge base. The method of the invention has a high degree of intelligence, and effectively improves the efficiency and accuracy of the airport noise event recognition.

Description

technical field [0001] The invention relates to an airport noise identification method, in particular to an airport noise event identification method based on time series kernel clustering, and belongs to the field of airport noise event identification in airport noise monitoring technology. Background technique [0002] With the development of our country's social economy, airports have become the main symbol of modern cities. However, while airports provide fast and convenient transportation for passengers and goods, they also bring about noise pollution. At present, airport noise has become one of the problems in the prevention and control of urban environmental noise. [0003] Developed countries, regions and relevant international organizations have begun to pay attention to the problem of airport noise pollution as early as the 1960s. Developed countries have attached great importance to the problem of airport noise and promulgated numerous standards and regulations. ...

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G10L25/84
Inventor 王建东邹朋成王平水
Owner NANJING UNIV OF AERONAUTICS & ASTRONAUTICS
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