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Fluvial Particle Characterization using Artificial Neural Network And Spectral Image Processing

机译:利用人工神经网络和光谱图像处理对河流颗粒进行表征

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Sand, chemical waste, microbes and other solid materials flowing with the water bodies are of great significance to us as they cause substantial impact to different sectors including drinking water management, hydropower generation, irrigation, aquatic life preservation and various other socio-ecological factors. Such particles can't completely be avoided due to the high cost of construction and maintenance of the waste-treatment methods. A detailed understanding of solid particles in surface water system can have benefit in effective, economic, environmental and social management of water resources. This paper describes an automated system of fluvial particle characterization based on spectral image processing that lead to the development of devices for monitoring flowing particles in river. Previous research in coherent field has shown that it is possible to automatically classify shapes and sizes of solid particles ranging from 300-400 μm using artificial neural networks (ANN) and image processing. Computer facilitated with hyper spectral and multi spectral images using ANN can further classify fluvial materials into organic, inorganic, biodegradable, bio non degradable and microbes. This makes the method attractive for real time monitoring of particles, sand and microorganism in water bodies at strategic locations. Continuous monitoring can be used to determine the effect of socio-economic activities in upstream rivers, or to monitor solid waste disposal from treatment plants and industries or to monitor erosive characteristic of sand and its contribution to degradation of efficiency of hydropower plant or to identify microorganism, calculate their population and study the impact of their presence. Such system can also be used to characterize fluvial particles for planning effective utilization of water resources in micro-mega hydropower plant, irrigation, aquatic life preservation etc.
机译:沙,化学废物,微生物和其他随水体流动的固体物质对我们具有重要意义,因为它们对包括饮用水管理,水力发电,灌溉,水生生物保护和其他各种社会生态因素在内的不同部门产生重大影响。由于构建和维护废物处理方法的高昂成本,无法完全避免此类颗粒。对地表水系统中固体颗粒的详细了解可以对水资源的有效,经济,环境和社会管理有所帮助。本文介绍了一种基于光谱图像处理的河流颗粒自动表征系统,该系统导致了监测河流中流动颗粒的设备的发展。先前在相干领域的研究表明,可以使用人工神经网络(ANN)和图像处理对300-400μm范围内的固体颗粒的形状和大小进行自动分类。使用人工神经网络在高光谱和多光谱图像的协助下,计算机可以将河流物质进一步分类为有机,无机,可生物降解,不可生物降解和微生物。这使得该方法对于实时监控关键位置的水体中的颗粒,沙子和微生物具有吸引力。连续监测可用于确定上游河流的社会经济活动的影响,或监测来自处理厂和工业的固体废物处置,或监测沙的侵蚀性特征及其对水力发电效率的降低的贡献或鉴定微生物,计算他们的人口并研究他们的存在所带来的影响。这种系统还可用于表征河流颗粒的特征,以计划对超大型水力发电厂的水资源进行有效利用,灌溉,水生生物保护等。

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