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Dust and noise monitoring system
2022-07-29 06:12:00 【Miao Hanyun】
In recent years , The acceleration of urbanization in China , The number of urban construction sites is also increasing . The large amount of dust and noise caused by the construction process has brought great trouble to the people working and living nearby , It has also attracted attention at all levels . therefore , Dust and noise monitoring system has also entered people's vision . that , What is the function of the dust and noise monitoring system ?
1. Real time monitoring .
The dust and noise monitoring system can monitor the noise and dust data of all on-site monitoring points , And real-time display of dynamic . meanwhile , The on-site dust and noise monitoring system can also read the noise and dust values of the on-site monitoring points , And display the time axis wave diagram of each monitoring point in the monitoring center .
2. Alarm alert .
The dust and noise monitoring system can automatically alarm , When the alarm value of the on-site monitoring point is set in advance , Once the alarm value is reached , Will immediately call the police . meanwhile , The on-site dust and noise monitoring system can also automatically judge the noise and dust value , Automatically cause system alarm , Locate the specific geographical location of the site
3. Historical data query .
Dust and noise monitoring system can retain data , And keep all the noise and dust values collected . meanwhile , Analyze noise and dust areas based on historical data and generate reports , It is convenient for data query and analysis of real-time data based on database .
4. Trend analysis .
The dust and noise monitoring system can display the trend chart of noise and dust on the client software , It makes it easier for users to analyze the trend of noise and dust . meanwhile , Through the analysis of immediate and historical trends , It can clearly understand the dust noise at a certain period of time on the construction site , Provide scientific basis for supervision . Besides , Its additional meteorological parameters can predict and warn the pollution situation in the later stage .
The above are the main functions of the dust noise monitoring system . Urban environmental quality is also a new indicator to evaluate the success of urban construction . It is due to the maturity of dust and noise monitoring system technology 、 The improvement of functions and the increasing attention of people to the living environment , Stakeholders can strengthen the monitoring of dust and noise on the construction site , Good results have been achieved .
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