包含雨量计、温湿度压力传感器、超声波传感器、土壤湿度传感器和风速计的多层人工神经网络洪水预报系统

F. Cruz, M. G. Binag, Marlou Ryan G. Ga, F. A. Uy
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引用次数: 2

摘要

菲律宾位于太平洋附近,位于台风带之一,平均每年有19至20个热带气旋发生。这些热带气旋给人民的财产、基础设施和生活造成了毁灭性的影响。本研究结合雨量计、土壤湿度传感器和水位传感器,开发了基于环境温度、相对湿度、气压、风速等不同天气参数的洪水水位预测系统。利用MATLAB神经网络工具开发多层人工神经网络预测模型,该模型以传感器的不同天气数据值为输入,以水位数据为输出。利用MATLAB开发模型后,将训练、测试和验证数据集分成70%、15%和15%的数据,拟合优度分别为0.93868、0.94381和0.95607。然后将预测模型的权重和偏差整合到系统中,并进行测试,得出RMSD值为5.6349。
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Multi-Layered Artificial Neural Network Flood Prediction System with Rain Gauge, Temperature Humidity Pressure Sensor, Ultrasonic Sensor, Soil Moisture Sensor and Anemometer
Located near the Pacific Ocean, Philippines is along in one of the places regarded as a Typhoon Belt having an average of 19 to 20 tropical cyclones occurring every year. These tropical cyclones leave a devastating effect especially to properties, infrastructures and lives of the people. The development of a system that can predict the flood level based on different weather parameters such as ambient temperature, relative humidity, barometric pressure and wind speed integrated with rain gauge, soil moisture sensor and water level sensor were conducted in this study. MATLAB Neural Network Tool was used to develop the Multi-Layer Artificial Neural Network prediction model whose inputs were based on different weather data values from the sensors and targets the water level data as the output. Upon development of the model using MATLAB, the training, test and validation datasets which was divided into 70%, 15% and 15% of the data shows a goodness- of-fit of 0.93868, 0.94381 and 0.95607 respectively. The weights and biases of the prediction model were then integrated to the system and was tested yielding to an RMSD value of 5.6349.
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