2022
DOI: 10.1002/adfm.202112155
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Intelligent Sound Monitoring and Identification System Combining Triboelectric Nanogenerator‐Based Self‐Powered Sensor with Deep Learning Technique

Abstract: Urban sound management is required in a variety of fields such as transportation, security, water conservancy and construction, among others. Given the diverse array of available noise sensors and the widespread opportunity to connect these sensors via mobile broadband Internet access, many researchers are eager to apply sound-sensor networks for urban sound management. Existing sensing networks typically consist of expensive information-sensing devices, the cost and maintenance of which limit their large-scal… Show more

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Cited by 46 publications
(26 citation statements)
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References 39 publications
(42 reference statements)
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“…It is not difficult to find that it is consistent with the change of the black curve in Figure 3b. All the values of ΔR/R0 in the range of 100 Hz to 400 Hz are higher than the results reported by previous works, [ 14,31,39–41 ] indicating that the proposed MPAS has better sensitivity. The inset picture in Figure 3b shows the detailed results of the ΔR/R0values of the sensor from 50 Hz to 500 Hz.…”
Section: Resultscontrasting
confidence: 72%
See 1 more Smart Citation
“…It is not difficult to find that it is consistent with the change of the black curve in Figure 3b. All the values of ΔR/R0 in the range of 100 Hz to 400 Hz are higher than the results reported by previous works, [ 14,31,39–41 ] indicating that the proposed MPAS has better sensitivity. The inset picture in Figure 3b shows the detailed results of the ΔR/R0values of the sensor from 50 Hz to 500 Hz.…”
Section: Resultscontrasting
confidence: 72%
“…As a new research direction of machine learning, deep learning can effectively extract features by learning the inherent rules and connections of the sample data to achieve a prediction of the results. [31,[39][40][41]43] It is one of the effective ways to achieve artificial intelligence. The combination of deep learning with other fields has been extensively studied for the advantages of high learning capacity, wide coverage, strong adaptability, and good anti-interference.…”
Section: Speech Recognition With Deep Learning Based Mpasmentioning
confidence: 99%
“…However, for more complex personnel information recognition, this elementary perception function cannot be applied. To obtain personnel identification and status information from sensor data, advanced artificial intelligence (AI) technologies based on deep learning (DL)-assisted data analytics can be applied to a personnel monitoring system. As the fusion of AI and IoT, an AI of things (AIoT) system can intelligently process data obtained by sensors. By applying DL data analytics to the sensory information, personalized authentication and object status can be identified. A convolutional neural network (CNN) can learn to extract vital features from the original sensing signals, which provides a way to efficiently analyze audio, video, and image and provide a fast response.…”
Section: Introductionmentioning
confidence: 99%
“…The experimental results show that the sensor is sensitive to small liquid leakage and the classification accuracy is over 90%. In addition, many sensors based on triboelectric nanogenerators were proposed, such as self-powered acceleration sensors, 28 , 29 , 30 , 31 self-powered flowmeters, 32 , 33 sound monitoring and identification sensors, 34 , 35 vibration frequency monitoring sensors, 36 , 37 etc.…”
Section: Introductionmentioning
confidence: 99%