Raman Spectroscopy System for Water Pollution Control based on Artificial Neural Network

D. Rustandi
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Abstract

: Water resources are an important material resource for living and production. China is a country with poor water resources, and at the same time, the existing water resources in China are all polluted to varying degrees, especially the quality of surface water is closely related to the quality of people's production and life. With the boom in artificial neural network (ANN) research, neural networks have now been used in a number of fields such as graphics processing, expert decision making systems, sound processing, etc. due to the advantages of ANNs themselves, which have achieved amazing results. The theory has turned into a new multifaceted avant-garde discipline associated with multiple fields. In recent years, ANN research has been gradually applied to environmental science, some of which have applied ANN research to areas such as water eutrophication prediction and water quality prediction. The application of ANN technology to surface water quality prediction is at an early stage, and its characteristics make it a great advantage in this field. This paper investigates the use of BP ANNs to predict surface water quality, to make rapid and accurate predictions of surface water pollution, and to provide decisions for the protection of water resources and pollution prevention.
基于人工神经网络的水污染控制拉曼光谱系统
水资源是生活和生产的重要物质资源。中国是一个水资源贫乏的国家,同时,中国现有的水资源都不同程度地受到污染,特别是地表水的质量与人们的生产生活质量密切相关。随着人工神经网络(artificial neural network, ANN)研究的蓬勃发展,由于神经网络自身的优势,目前神经网络已被应用于图形处理、专家决策系统、声音处理等多个领域,并取得了惊人的成果。这一理论已经发展成为一门与多领域相关联的新的多面前卫学科。近年来,人工神经网络研究逐渐应用于环境科学领域,部分研究机构已将人工神经网络研究应用于水体富营养化预测、水质预测等领域。人工神经网络技术在地表水水质预测中的应用尚处于起步阶段,其自身的特点使其在该领域具有很大的优势。研究了利用BP神经网络进行地表水水质预测,快速准确地预测地表水污染,为水资源保护和污染防治提供决策依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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