支流洪水预警预报系统

P. Panapitiya, D. Dhammearatchi, R. Perera
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摘要

洪水预警系统的发展对发展中国家来说是一个相对较新的和昂贵的领域,尽管它已经引起了有关各方的注意,因为这种预警系统可以避免生命损失和减少洪水造成的财产损失。与独立的预警系统相比,具有预测或预测洪水事件能力的预警系统对相关利益攸关方更有用,因为它可以用于快速规划和行动。支流周围的地质区域更有可能发生洪水,而没有来自大自然的相当大的警告,因为它高度依赖于主河的行为。该系统使用物联网(IoT)设备进行数据捕获和传输。河水水位,雨水状况和水流速率(排放速率)是用传感器测量的。利用采集到的数据对人工神经网络进行训练,并结合实时数据馈送进行水位预测。通过这样做,根据当前的读数预测洪水事件。通知通过预定义的通知通道发送。由于考虑了更多的数据类型,人工神经网络预测水位具有相当高的准确性。这种使用人工神经网络和物联网设备的集体方法使预测更容易、更可靠,同时使用更多变量使预测更准确。此外,这些收集的数据可以在未来用于灾难恢复和减灾规划,因为它们保存在公众可以访问的云环境中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Flood Early Warning and Prediction System for Tributary Streams
Flood Early Warning system development is relatively new and costly area for developing countries, though it has captured attention of the respective parties since such Early Warning System can avoid loss of lives and reduce property damages from floods. Rather than standalone early warning system, warning system with the ability to forecast or predict flood events is more useful for the relevant stake holders where it can be used to plan and act fast. Geological areas around tributary streams are more likely to flood without considerable warnings from the nature as it highly depends on the main river behavior. This system uses Internet of Things (IoT) devices for data capture and transfer. River Water level, Rain status and the Water flow rate (discharge rate) is measured using Sensors. An Artificial Neural Network (ANN) is trained with collected data and integrated with live data feed in order to predict the water level. By doing so forecasting flood events according to the current readings. Notifications are sent via pre-defined notification channels. Due to the higher number of data types considered, ANN predicts water level with considerable accuracy. This collective approach of using ANN and IoT devices has made the forecasting easier and more reliable while using more variables made the predictions more accurate. In addition, these collected data can be used in the future for disaster recovery and mitigation planning since they are kept in cloud environment where public can access.
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