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Related Concept Videos

Testing Water Quality01:14

Testing Water Quality

206
When the quality of water for concrete preparation is uncertain, its impact on the setting time of cement and compressive strength of mortar is assessed by comparison with de-ionized or distilled water benchmarks. American Society for Testing and Materials (ASTM) C1602 requires the setting times to be within 90 minutes of the control, British Standard (BS) 3146:1980 allows a 30-minute variance in the initial setting, while British Standards European Norm (BS EN) 1008 specifies initial setting...
206

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Continuous Instream Monitoring of Nutrients and Sediment in Agricultural Watersheds
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Water Quality Indicator Interval Prediction in Wastewater Treatment Process Based on the Improved BES-LSSVM

Meng Zhou1, Yinyue Zhang1, Jing Wang1

  • 1School of Electrical and Control Engineering, North China University of Technology, Beijing 100144, China.

Sensors (Basel, Switzerland)
|January 22, 2022
PubMed
Summary
This summary is machine-generated.

This study introduces a new method for predicting effluent water quality, specifically biochemical oxygen demand (BOD) and ammonia nitrogen (NH3-N). The approach enhances prediction accuracy and efficiency for wastewater treatment plants.

Keywords:
data pre-processingimproved IBES-LSSVM algorithminterval prediction methodwater quality monitoring

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Area of Science:

  • Environmental Science
  • Water Quality Management
  • Computational Chemistry

Background:

  • Effective monitoring of wastewater treatment plant performance relies on accurate prediction of key effluent indicators like biochemical oxygen demand (BOD) and ammonia nitrogen (NH3-N).
  • Existing prediction models often face challenges in accuracy, computational efficiency, and handling data uncertainty.

Purpose of the Study:

  • To develop a novel interval prediction method for effluent water quality indicators (BOD and NH3-N).
  • To improve the accuracy and efficiency of wastewater treatment plant performance monitoring and control.

Main Methods:

  • Data pre-processing and gray correlation analysis to identify key predictive variables for BOD and NH3-N.
  • Development of an improved bald eagle search-least squares support vector machine (IBES-LSSVM) algorithm for prediction.
  • Application of interval estimation to quantify model uncertainty.

Main Results:

  • The proposed IBES-LSSVM method demonstrated high prediction accuracy for BOD and NH3-N.
  • The approach significantly reduced computational time compared to existing algorithms.
  • The interval estimation effectively analyzed the uncertainty of the LSSVM model.

Conclusions:

  • The novel interval prediction method offers a robust and efficient solution for wastewater effluent quality monitoring.
  • The IBES-LSSVM algorithm provides a reliable tool for predicting key water quality parameters with quantifiable uncertainty.
  • This approach facilitates better control and management of wastewater treatment processes.