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计算机系统应用英文版:2021,30(8):317-323
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线性回归和BP神经网络在噪声监测中的应用
(集美大学 计算机工程学院, 厦门 361021)
Application of Linear Regression and BP Neural Network in Noise Monitoring
(School of Computer Engineering, Jimei University, Xiamen 361021, China)
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Received:November 30, 2020    Revised:January 18, 2021
中文摘要: 噪声监测系统能够自动测量噪声分贝值, 并实时处理系统监测到的各种声音环境信息, 但是在噪声监测系统的实际应用中, 噪声的分贝值受到温度、湿度和大气压力等多个因素影响, 与实际值存在误差. 为了提高噪声的测量精度, 必须使用相关技术进行校正, 系统采用了线性回归和BP神经网络技术, 研究了预测模型的因素和系数, 分析了模型中因素的相关性, 获得了噪声监测的自动校正模型. 从线性回归和BP神经网络自动校正数据的测试效果看, 优化了测量数据的容错性并改进了数据校正的精度, 使预测模型的判定系数R2的值有了较大提升.
Abstract:Noise monitoring systems can automatically measure decibel level and process various sound environment information in real time. However, in their practical application, the noise decibel is affected by many factors such as temperature, humidity and atmospheric pressure, which leads to the errors between measured and actual values. In view of this, the correction based on relevant technologies becomes a necessity for the accuracy improvement of noise measurement. This study adopts linear regression and Back Propagation (BP) neural network to investigate the factors and coefficients of the prediction model and analyzes the correlation of factors in the model. As a result, the automatic correction model of noise monitoring is obtained. The test effect of automatic data correction by linear regression and BP neural network indicates that the fault tolerance of measurement data is optimized and the accuracy of data correction is improved. Further, the determination coefficient (R2) of the prediction model is greatly increased.
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基金项目:福建省自然科学基金(2020J01699);福建省科技计划(2019H0021);福建省教育厅基金(JAT170326)
引用文本:
曾华朴,尤志宁,黄兴旺,浦云明.线性回归和BP神经网络在噪声监测中的应用.计算机系统应用,2021,30(8):317-323
ZENG Hua-Pu,YOU Zhi-Ning,HUANG Xing-Wang,PU Yun-Ming.Application of Linear Regression and BP Neural Network in Noise Monitoring.COMPUTER SYSTEMS APPLICATIONS,2021,30(8):317-323