首页> 外文期刊>International Journal of Interactive Mobile Technologies >Application Programming Interface for Flood Forecasting from Geospatial Big Data and Crowdsourcing Data
【24h】

Application Programming Interface for Flood Forecasting from Geospatial Big Data and Crowdsourcing Data

机译:地理空间大数据和众包数据的洪水预测应用程序编程界面

获取原文
       

摘要

Nowadays, natural disasters tend to increase and become more severe. They do affect life and belongings of great numbers of people. One kind of such disasters that hap-pen frequently almost every year is floods in all regions across the world. A prepara-tion measure to cope with upcoming floods is flood forecasting in each particular area in order to use acquired data for monitoring and warning to people and involved per-sons, resulting in the reduction of damage. With advanced computer technology and remote sensing technology, large amounts of applicable data from various sources are provided for flood forecasting. Current flood forecasting is done through computer processing by different techniques. The famous one is machine learning, of which the limitation is to acquire a large amount big data. The one currently used still requires manpower to download and record data, causing delays and failures in real-time flood forecasting. This research, therefore, proposed the development of an automatic big data downloading system from various sources through the development of applica-tion programming interface (API) for flood forecasting by machine learning. This research relied on 4 techniques, i.e., maximum likelihood classification (MLC), fuzzy logic, self-organization map (SOM), and artificial neural network with RBF Kernel. According to accuracy assessment of flood forecasting, the most accurate technique was MLC (99.2%), followed by fuzzy logic, SOM, and RBF (97.8%, 96.6%, and 83.3%), respectively.
机译:如今,自然灾害往往会增加并变得更严重。他们会影响大量人的生活和财产。一项如此灾难,他常常几乎每年都在全球各地的洪水。应对即将到来的洪水应对的准备措施是在每个特定领域的洪水预测,以便使用所获得的数据来监测和警告人员并涉及每个儿子,从而减少损坏。通过先进的计算机技术和遥感技术,提供了来自各种来源的大量适用数据,用于洪水预测。通过不同技术的计算机处理来完成当前的洪水预测。着名的是机器学习,其中限制是获得大量大数据。目前使用的人仍然需要人力下载和记录数据,导致实时洪水预测中的延迟和失败。因此,这项研究提出了通过开发通过机器学习的洪水预测的应用程序 - 减脱编程接口(API)来开发来自各种来源的自动大数据下载系统。该研究依赖于4种技术,即最大似然分类(MLC),模糊逻辑,自组织地图(SOM)和具有RBF内核的人工神经网络。根据洪水预测的准确性评估,最准确的技术是MLC(99.2%),其次是模糊逻辑,SOM和RBF(97.8%,96.6%和83.3%)。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号