IoT, machine learning and photogrammetry in small hydropower towards energy and digital transition: potential energy and viability analyses

H. Ramos, Ó. E. Coronado-Hernández
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引用次数: 1

Abstract

This research aims to evaluate and put into practise the design of a small hydropower plant on a stream at São Vicente, in Madeira Island, supported by internet of things (IoT). The photogrammetry technique is also used with a comprehensive digital transformation, in which new concepts, methods and models, such as machine learning (ML), and big data analytics play an important role due to the huge availability time series that have to be exploited in hydropower design studies. Nowadays, digitalization and massive data availability are imposing new ways to address many of the current challenges associated with the energy and digital transition. This research is based on a simple small hydropower design, to present an integrated methodology using new methods assigned by an internet protocol system, which includes the development of different steps and components supported by GIS, photogrammetry and the use of advanced tools, with the support of a drone survey with internet communication (IoT) that allow the generation of experimentally-based estimates in situ characterization, the volumetric flow, the hydrological data treatment, the hydraulic calculations and economic estimations for a real hydro project. Therefore, hydrological variables, hydraulic analysis and topographical survey are carried out in the IoT application platform supported by new tools and methods to optimise the size of hydraulic structures, estimate the performance and potential of the hydropower plant towards the best solution for energy and digital transition. Firstly, the data-base for the all study and posterior sizing of the case study of hydropower plant are defined and then the corresponding analyses and results are presented. Then, the cost estimation for the construction, maintenance and operation of the selected elements that compose the hydropower topology are determined, as well as the respective economic balance, considering the annual energy production. In addition, both economic and environmental return on investment is discussed. Finally, an analysis to equate the cost estimates and the respective benefits of hydropower generation using this new approach applicability is stablished, taking into account some economic indicators to determine the profitability of the project.
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小水电向能源和数字化转型中的物联网、机器学习和摄影测量:势能和可行性分析
本研究旨在评估并实施马德拉岛奥维森特(o Vicente)溪流上的小型水电站设计,该设计由物联网(IoT)支持。摄影测量技术也被用于全面的数字化转型,其中新的概念、方法和模型,如机器学习(ML)和大数据分析,由于在水电设计研究中必须利用大量可用时间序列,发挥了重要作用。如今,数字化和海量数据可用性为解决当前与能源和数字化转型相关的许多挑战提供了新的方法。本研究基于一个简单的小型水电设计,采用互联网协议系统指定的新方法提出了一种综合方法,其中包括由GIS支持的不同步骤和组件的开发、摄影测量和先进工具的使用,以及具有互联网通信(IoT)的无人机调查的支持,该调查允许生成基于实验的原位表征估计、体积流量、水文数据处理、实际水利工程的水力计算与经济评价。因此,在物联网应用平台上进行水文变量、水力分析和地形调查,并采用新的工具和方法来优化水工结构的大小,估计水电站的性能和潜力,以实现能源和数字化转型的最佳解决方案。首先定义了水电厂案例研究的全部研究和后验规模的数据库,然后给出了相应的分析和结果。然后,考虑年发电量,确定构成水电拓扑的选定要素的建设、维护和运行成本估算,以及各自的经济平衡。此外,还讨论了投资的经济效益和环境效益。最后,通过分析将成本估算与水电发电各自的效益等同起来,建立了新方法的适用性,并考虑了一些经济指标来确定项目的盈利能力。
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