智能河流水质和水位监测:一种混合神经网络方法

Chellaswamy C, G. S, Ramasubramanian B, Dhelipan Raj A, Dhilipkumar S, Koushikkaran K
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引用次数: 0

摘要

河水在每个大都市社会中都扮演着重要的角色;除了提供许多其他好处外,它还对农产品的生产做出了重大贡献,从而对一个国家的经济做出了重大贡献。因此,河流水质监测是必要的,虽然困难。本研究的目的是创建一种定量技术来评估印度南部河流的水质状况。为了这项研究,在卡韦里河沿岸的三个不同的地方获得了水测试样本。水位信息通过一种叫做CNN-LSMN的混合方法(卷积神经网络和长短期记忆网络的结合)从照片中检索。使用放置在测试位置的现场摄像机测量水平点。以下六个典型指标用于评估水质:浊度、温度、pH、TDS、电导率和总硬度。本研究采用修改后的美国国家卫生基金会(NSF)水质指数(WQI)来确定水质。采用传粉优化方法对关键水质指标进行优化。使用标准性能指标将所提出方法的性能与现有技术的性能进行比较。从性能指标上比较建议的CNN-LSMN的性能,发现检测准确率有提高,达到4.62%。研究结果表明,该方法有助于准确估计河流的水位和水质。
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Smart River Water Quality and Level Monitoring: a Hybrid Neural Network Approach
River water plays an important role in every metropolitan society; it contributes significantly to the production of agricultural products and hence to the economy of a country besides offering many other benefits. Therefore, river water monitoring is necessary though difficult. The goal of this research is to create a quantitative technique for assessing the water quality state of the Indian rivers in the southern part of India. Water test samples were obtained at three distinct places along the Kaveri River for this study. The water level information was retrieved from the photos using a hybrid method (a combination of convolutional neural network and long short-term memory network) called CNN-LSMN. The level points were measured using the field camera placed in the test locations. The following six typical metrics were used to assess the water quality: turbidity, temperature, pH, TDS, conductivity, and total hardness. In this study, the water quality index (WQI) of the modified National Sanitation Foundation (NSF) was used to determine the quality of water. Furthermore, the flower pollination optimization method was used to optimise the critical water quality indicators. Standard performance metrics were used to compare the performance of the proposed approach with that of the existing techniques. Upon comparing the performance of the suggested CNN-LSMN in terms of performance measures, it was found that the detection accuracy had improved and it was 4.62%. The proposed technique in this study was found to be beneficial for precisely estimating the water level and quality of the rivers.
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